4,672 results on '"Bernardi M."'
Search Results
2. Identification of tidal features in deep optical galaxy images with Convolutional Neural Networks
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Sánchez, H. Domínguez, Martin, G., Damjanov, I., Buitrago, F., Huertas-Company, M., Bottrell, C., Bernardi, M., Knapen, J. H., Vega-Ferrero, J., Hausen, R., Kado-Fong, E., Población-Criado, D., Souchereau, H., Leste, O. K., Robertson, B., Sahelices, B., and Johnston, K. V.
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Astrophysics - Instrumentation and Methods for Astrophysics ,Astrophysics - Astrophysics of Galaxies - Abstract
Interactions between galaxies leave distinguishable imprints in the form of tidal features which hold important clues about their mass assembly. Unfortunately, these structures are difficult to detect because they are low surface brightness features so deep observations are needed. Upcoming surveys promise several orders of magnitude increase in depth and sky coverage, for which automated methods for tidal feature detection will become mandatory. We test the ability of a convolutional neural network to reproduce human visual classifications for tidal detections. We use as training $\sim$6000 simulated images classified by professional astronomers. The mock Hyper Suprime Cam Subaru (HSC) images include variations with redshift, projection angle and surface brightness ($\mu_{lim}$ =26-35 mag arcsec$^{-2}$). We obtain satisfactory results with accuracy, precision and recall values of Acc=0.84, P=0.72 and R=0.85, respectively, for the test sample. While the accuracy and precision values are roughly constant for all surface brightness, the recall (completeness) is significantly affected by image depth. The recovery rate shows strong dependence on the type of tidal features: we recover all the images showing shell features and 87% of the tidal streams; these fractions are below 75% for mergers, tidal tails and bridges. When applied to real HSC images, the performance of the model worsens significantly. We speculate that this is due to the lack of realism of the simulations and take it as a warning on applying deep learning models to different data domains without prior testing on the actual data., Comment: 13 pages, 10 figures, accepted for publication in MNRAS
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- 2023
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3. Stellar population analysis of MaNGA early-type galaxies: IMF dependence and systematic effects
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Bernardi, M., Sanchez, H. Dominguez, Sheth, R. K., Brownstein, J. R., and Lane, R. R.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We study systematics associated with estimating simple stellar population (SSP) parameters -- age, metallicity [M/H], $\alpha$-enhancement [$\alpha$/Fe] and IMF shape -- and associated $M_*/L$ gradients, of elliptical slow rotators (E-SRs), fast rotators (E-FRs) and S0s from stacked spectra of galaxies in the MaNGA survey. These systematics arise from (i) how one normalizes the spectra when stacking; (ii) having to subtract emission before estimating absorption line strengths; (iii) the decision to fit the whole spectrum or just a few absorption lines; (iv) SSP model differences (e.g. isochrones, enrichment, IMF). The MILES+Padova SSP models, fit to the H$_\beta$, $\langle$Fe$\rangle$, TiO$_{\rm 2SDSS}$ and [MgFe] Lick indices in the stacks, indicate that out to the half-light radius $R_e$: (a) ages are younger and [$\alpha$/Fe] values are lower in the central regions but the opposite is true of [M/H]; (b) the IMF is more bottom-heavy in the center, but is close to Kroupa beyond about $R_e/2$; (c) this makes $M_*/L$ about $2\times$ larger in the central regions than beyond $R_e/2$. While the models of Conroy et al. (2018) return similar [M/H] and [$\alpha$/Fe] profiles, the age and (hence) $M_*/L$ profiles can differ significantly even for solar abundances and a Kroupa IMF; different responses to non-solar abundances and IMF parametrization further compound these differences. There are clear (model independent) differences between E-SRs, E-FRs and S0s: younger ages and less enhanced [$\alpha$/Fe] values suggest that E-FRs and S0s are not SSPs, but relaxing this assumption is unlikely to change their inferred $M_*/L$ gradients significantly., Comment: 22 pages, 23 figures, accepted for publication in MNRAS
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- 2022
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4. Lessons Learned from the Two Largest Galaxy Morphological Classification Catalogues built by Convolutional Neural Networks
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Cheng, Ting-Yun, Sánchez, H. Domínguez, Vega-Ferrero, J., Conselice, C. J., Siudek, M., Aragón-Salamanca, A., Bernardi, M., Cooke, R., Ferreira, L., Huertas-Company, M., Krywult, J., Palmese, A., Pieres, A., Malagón, A. A. Plazas, Rosell, A. Carnero, Gruen, D., Thomas, D., Bacon, D., Brooks, D., James, D. J., Hollowood, D. L., Friedel, D., Suchyta, E., Sanchez, E., Menanteau, F., Paz-Chinchón, F., Gutierrez, G., Tarle, G., Sevilla-Noarbe, I., Ferrero, I., Annis, J., Frieman, J., García-Bellido, J., Mena-Fernández, J., Honscheid, K., Kuehn, K., da Costa, L. N., Gatti, M., Raveri, M., Pereira, M. E. S., Rodriguez-Monroy, M., Smith, M., Kind, M. Carrasco, Aguena, M., Swanson, M. E. C., Weaverdyck, N., Doel, P., Miquel, R., Ogando, R. L. C., Gruendl, R. A., Allam, S., Hinton, S. R., Dodelson, S., Bocquet, S., Desai, S., Everett, S., and Scarpine, V.
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Astrophysics - Astrophysics of Galaxies ,Physics - Data Analysis, Statistics and Probability - Abstract
We compare the two largest galaxy morphology catalogues, which separate early and late type galaxies at intermediate redshift. The two catalogues were built by applying supervised deep learning (convolutional neural networks, CNNs) to the Dark Energy Survey data down to a magnitude limit of $\sim$21 mag. The methodologies used for the construction of the catalogues include differences such as the cutout sizes, the labels used for training, and the input to the CNN - monochromatic images versus $gri$-band normalized images. In addition, one catalogue is trained using bright galaxies observed with DES ($i<18$), while the other is trained with bright galaxies ($r<17.5$) and `emulated' galaxies up to $r$-band magnitude $22.5$. Despite the different approaches, the agreement between the two catalogues is excellent up to $i<19$, demonstrating that CNN predictions are reliable for samples at least one magnitude fainter than the training sample limit. It also shows that morphological classifications based on monochromatic images are comparable to those based on $gri$-band images, at least in the bright regime. At fainter magnitudes, $i>19$, the overall agreement is good ($\sim$95\%), but is mostly driven by the large spiral fraction in the two catalogues. In contrast, the agreement within the elliptical population is not as good, especially at faint magnitudes. By studying the mismatched cases we are able to identify lenticular galaxies (at least up to $i<19$), which are difficult to distinguish using standard classification approaches. The synergy of both catalogues provides an unique opportunity to select a population of unusual galaxies., Comment: 17 pages, 14 figures (1 appendix for galaxy examples including 3 figures)
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- 2022
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5. Influence of the growth parameters on TiO2 thin films deposited using the MOCVD method
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Bernardi M. I. B., Lee E. J. H., Lisboa-Filho P. N., Leite E. R., Longo E., and Souza A. G.
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organometallic compounds ,thin films ,optical properties ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
In this work we report the synthesis of TiO2 thin films by the Organometallic Chemical Vapor Deposition (MOCVD) method. The influence of deposition parameters used during the growth in the obtained structural characteristics was studied. Different temperatures of the organometallic bath, deposition time, temperature and type of the substrate were combined. Using Scanning Electron Microscopy associated to Electron Dispersive X-Ray Spectroscopy, Atomic Force Microscopy and X-ray Diffraction, the strong influence of these parameters in the thin films final microstructure was verified.
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- 2002
6. Magnetization of Zn1-xCoxO nanoparticles: single-ion anisotropy and spin clustering
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Gratens, X., Silva, B. de Abreu, Bernardi, M. I. B., de Carvalho, H. B., Franco Jr, A., and Chitta, V. A.
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Condensed Matter - Materials Science - Abstract
The magnetization of Zn1-xCoxO (0.0055 < x < 0.073) nanoparticles has been measured as a function of temperature T (1.7 K < T , 10 K) and for magnetic field up to 65 kOe using a SQUID magnetometer. Samples were synthesized by three different growth methods: microwave-assisted hydrothermal, combustion reaction and sol-gel. For all studied samples, the magnetic properties derive from the antiferromagnetic (AF) spin clustering due to the Co2+ nearest neighbors. At T >= 6 K, the magnetization of the Co2+ ions has a Brillouin-type behavior, but below 6 K, it shows a notable deviation. We have shown that the observed deviation may be derived from single-ion anisotropy (SIA) with uniaxial symmetry. Results of fits show that the axial-SIA parameter D (typically D = 4.4 K) is slightly larger that the bulk value D = 3.97 K. No significant change of D has been observed as a function of the Co concentration or the growth process. For each sample, the SIA fit gave also the effective concentration (x) corresponding to the technical saturation value of the magnetization. Comparison of the concentration dependence of x with predictions based on cluster models shows an enhancement of the AF spin clustering independent of the growth method. This is ascribed to a clamped non-random distribution of the cobalt ions in the nanoparticles. The approach of the local concentration (xL) has been used to quantify the observed deviation from randomicity. Assuming a ZnO core/ Zn1-xCoxO shell nanoparticle, the thickness of the shell has been determined from the ratio xL/x.
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- 2022
7. Lessons learned from the two largest Galaxy morphological classification catalogues built by convolutional neural networks
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Cheng, T-Y, Sánchez, H Domínguez, Vega-Ferrero, J, Conselice, CJ, Siudek, M, Aragón-Salamanca, A, Bernardi, M, Cooke, R, Ferreira, L, Huertas-Company, M, Krywult, J, Palmese, A, Pieres, A, Malagón, AA Plazas, Rosell, A Carnero, Gruen, D, Thomas, D, Bacon, D, Brooks, D, James, DJ, Hollowood, DL, Friedel, D, Suchyta, E, Sanchez, E, Menanteau, F, Paz-Chinchón, F, Gutierrez, G, Tarle, G, Sevilla-Noarbe, I, Ferrero, I, Annis, J, Frieman, J, García-Bellido, J, Mena-Fernández, J, Honscheid, K, Kuehn, K, da Costa, LN, Gatti, M, Raveri, M, Pereira, MES, Rodriguez-Monroy, M, Smith, M, Kind, M Carrasco, Aguena, M, Swanson, MEC, Weaverdyck, N, Doel, P, Miquel, R, Ogando, RLC, Gruendl, RA, Allam, S, Hinton, SR, Dodelson, S, Bocquet, S, Desai, S, Everett, S, and Scarpine, V
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Space Sciences ,Particle and High Energy Physics ,Astronomical Sciences ,Physical Sciences ,methods: data analysis ,methods: statistical ,galaxies: structure ,Astronomical and Space Sciences ,Astronomy & Astrophysics ,Astronomical sciences ,Particle and high energy physics ,Space sciences - Abstract
We compare the two largest galaxy morphology catalogues, which separate early- and late-type galaxies at intermediate redshift. The two catalogues were built by applying supervised deep learning (convolutional neural networks, CNNs) to the Dark Energy Survey data down to a magnitude limit of ∼21 mag. The methodologies used for the construction of the catalogues include differences such as the cutout sizes, the labels used for training, and the input to the CNN - monochromatic images versus gri-band normalized images. In addition, one catalogue is trained using bright galaxies observed with DES (i < 18), while the other is trained with bright galaxies (r < 17.5) and 'emulated' galaxies up to r-band magnitude 22.5. Despite the different approaches, the agreement between the two catalogues is excellent up to i < 19, demonstrating that CNN predictions are reliable for samples at least one magnitude fainter than the training sample limit. It also shows that morphological classifications based on monochromatic images are comparable to those based on gri-band images, at least in the bright regime. At fainter magnitudes, i > 19, the overall agreement is good (∼95 per cent), but is mostly driven by the large spiral fraction in the two catalogues. In contrast, the agreement within the elliptical population is not as good, especially at faint magnitudes. By studying the mismatched cases, we are able to identify lenticular galaxies (at least up to i < 19), which are difficult to distinguish using standard classification approaches. The synergy of both catalogues provides an unique opportunity to select a population of unusual galaxies.
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- 2022
8. The half mass radius of MaNGA galaxies: Effect of IMF gradients
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Bernardi, M., Sheth, R. K., Sanchez, H. Dominguez, Margalef-Bentabol, B., Bizyaev, D., and Lane, R. R.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
Gradients in the stellar populations (SP) of galaxies -- e.g., in age, metallicity, stellar Initial Mass Function (IMF) -- can result in gradients in the stellar mass to light ratio, $M_*/L$. Such gradients imply that the distribution of the stellar mass and light are different. For old SPs, e.g., in early-type galaxies at $z\sim 0$, the $M_*/L$ gradients are weak if driven by variations in age and metallicity, but significantly larger if driven by the IMF. A gradient which has larger $M_*/L$ in the center increases the estimated total stellar mass ($M_*$) and reduces the scale which contains half this mass ($R_{e,*}$), compared to when the gradient is ignored. For the IMF gradients inferred from fitting MILES simple SP models to the H$_\beta$, $\langle$Fe$\rangle$, [MgFe] and TiO$_{\rm 2SDSS}$ absorption lines measured in spatially resolved spectra of early-type galaxies in the MaNGA survey, the fractional change in $R_{e,*}$ can be significantly larger than that in $M_*$, especially when the light is more centrally concentrated. The $R_{e,*}-M_*$ correlation which results is offset by 0.3 dex to smaller sizes compared to when these gradients are ignored. Comparisons with `quiescent' galaxies at higher-$z$ must account for evolution in SP gradients (especially age and IMF) and the light profile before drawing conclusions about how $R_{e,*}$ and $M_*$ evolve. The implied merging between higher-$z$ and the present is less contrived if $R_{e,*}/R_e$ at $z\sim 0$ is closer to our IMF-driven gradient calibration than to unity., Comment: 16 pages, 15 figures, accepted for publication in MNRAS
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- 2022
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9. SDSS-IV DR17: Final Release of MaNGA PyMorph Photometric and Deep Learning Morphological Catalogs
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Sánchez, H. Domínguez, Margalef, B., Bernardi, M., and Huertas-Company, M.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Instrumentation and Methods for Astrophysics - Abstract
We present the MaNGA PyMorph photometric Value Added Catalogue (MPP-VAC-DR17) and the MaNGA Deep Learning Morphological VAC (MDLM-VAC-DR17) for the final data release of the MaNGA survey, which is part of the SDSS Data Release 17 (DR17). The MPP-VAC-DR17 provides photometric parameters from S\`ersic and S\`ersic+Exponential fits to the 2D surface brightness profiles of the MaNGA DR17 galaxy sample in the $g$, $r$, and $i$ bands (e.g. total fluxes, half light radii, bulge-disk fractions, ellipticities, position angles, etc.). The MDLM-VAC-DR17 provides Deep Learning-based morphological classifications for the same galaxies. The MDLM-VAC-DR17 includes a number of morphological properties: e.g., a T-Type, a finer separation between elliptical and S0, as well as the identification of edge-on and barred galaxies. While the MPP-VAC-DR17 simply extends the MaNGA PyMorph photometric VAC published in the SDSS Data Release 15 (MPP-VAC-DR15) to now include galaxies which were added to make the final DR17, the MDLM-VAC-DR17 implements some changes and improvements compared to the previous release (MDLM-VAC-DR15): namely, the low-end of the T-Types are better recovered in this new version. The catalogue also includes a separation between Early- or Late-type Galaxies (ETG, LTG), which classifies the two populations in a complementary way to the T-Type, especially at the intermediate types (-1 < T-Type < 2), where the T-Type values show a large scatter. In addition, $k-$fold based uncertainties on the classifications are also provided. To ensure robustness and reliability, we have also visually inspected all the images. We describe the content of the catalogues and show some interesting ways in which they can be combined., Comment: Accepted for publication in MNRAS. Catalogues will be released with SDSS Data Release 17
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- 2021
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10. Technology challenges and integration of the plasma position reflectometer in RFX-mod2
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De Masi, G., Cavazzana, R., Ruffini, F., Marchiori, G., Moresco, M., Agnello, R., Cordaro, L., Bernardi, M., Girotto, E., Tiso, A., and Peruzzo, S.
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- 2024
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11. Pushing automated morphological classifications to their limits with the Dark Energy Survey
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Vega-Ferrero, J., Sánchez, H. Domínguez, Bernardi, M., Huertas-Company, M., Morgan, R., Margalef, B., Aguena, M., Allam, S., Annis, J., Avila, S., Bacon, D., Bertin, E., Brooks, D., Rosell, A. Carnero, Kind, M. Carrasco, Carretero, J., Choi, A., Conselice, C., Costanzi, M., da Costa, L. N., Pereira, M. E. S., De Vicente, J., Desai, S., Ferrero, I., Fosalba, P., Frieman, J., García-Bellido, J., Gruen, D., Gruendl, R. A., Gschwend, J., Gutierrez, G., Hartley, W. G., Hinton, S. R., Hollowood, D. L., Honscheid, K., Hoyle, B., Jarvis, M., Kim, A. G., Kuehn, K., Kuropatkin, N., Lima, M., Maia, M. A. G., Menanteau, F., Miquel, R., Ogando, R. L. C., Palmese, A., Paz-Chinchón, F., Plazas, A. A., Romer, A. K., Sanchez, E., Scarpine, V., Schubnell, M., Serrano, S., Sevilla-Noarbe, I., Smith, M., Suchyta, E., Swanson, M. E. C., Tarle, G., Tarsitano, F., To, C., Tucker, D. L., Varga, T. N., and Wilkinson, R. D.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We present morphological classifications of $\sim$27 million galaxies from the Dark Energy Survey (DES) Data Release 1 (DR1) using a supervised deep learning algorithm. The classification scheme separates: (a) early-type galaxies (ETGs) from late-types (LTGs); and (b) face-on galaxies from edge-on. Our Convolutional Neural Networks (CNNs) are trained on a small subset of DES objects with previously known classifications. These typically have $\mathrm{m}_r \lesssim 17.7~\mathrm{mag}$; we model fainter objects to $\mathrm{m}_r < 21.5$ mag by simulating what the brighter objects with well determined classifications would look like if they were at higher redshifts. The CNNs reach 97\% accuracy to $\mathrm{m}_r<21.5$ on their training sets, suggesting that they are able to recover features more accurately than the human eye. We then used the trained CNNs to classify the vast majority of the other DES images. The final catalog comprises five independent CNN predictions for each classification scheme, helping to determine if the CNN predictions are robust or not. We obtain secure classifications for $\sim$ 87\% and 73\% of the catalog for the ETG vs. LTG and edge-on vs. face-on models, respectively. Combining the two classifications (a) and (b) helps to increase the purity of the ETG sample and to identify edge-on lenticular galaxies (as ETGs with high ellipticity). Where a comparison is possible, our classifications correlate very well with S\'ersic index (\textit{n}), ellipticity ($\epsilon$) and spectral type, even for the fainter galaxies. This is the largest multi-band catalog of automated galaxy morphologies to date., Comment: Accepted for publication in MNRAS (2021 February 22); 17 pages, 16 figures
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- 2020
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12. Galaxy properties as revealed by MaNGA. III. Kinematic profiles and stellar population gradients in S0s
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Sánchez, H. Domínguez, Bernardi, M., Nikakhtar, F., Margalef-Bentabol, B., and Sheth, R. K.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
This is the third paper of a series where we study the stellar population gradients (SP; ages, metallicities, $\alpha$-element abundance ratios and stellar initial mass functions) of early type galaxies (ETGs) at $z\le 0.08$ from the MaNGA-DR15 survey. In this work we focus on the S0 population and quantify how the SP varies across the population as well as with galactocentric distance. We do this by measuring Lick indices and comparing them to stellar population synthesis models. This requires spectra with high signal-to-noise which we achieve by stacking in bins of luminosity (L$_r$) and central velocity dispersion ($\sigma_0$). We find that: 1) There is a bimodality in the S0 population: S0s more massive than $3\times 10^{10}M_\odot$ show stronger velocity dispersion and age gradients (age and $\sigma_r$ decrease outwards) but little or no metallicity gradient, while the less massive ones present relatively flat age and velocity dispersion profiles, but a significant metallicity gradient (i.e. [M/H] decreases outwards). Above $2\times10^{11}M_\odot$ the number of S0s drops sharply. These two mass scales are also where global scaling relations of ETGs change slope. 2) S0s have steeper velocity dispersion profiles than fast rotating elliptical galaxies (E-FRs) of the same luminosity and velocity dispersion. The kinematic profiles and stellar population gradients of E-FRs are both more similar to those of slow rotating ellipticals (E-SRs) than to S0s, suggesting that E-FRs are not simply S0s viewed face-on. 3) At fixed $\sigma_0$, more luminous S0s and E-FRs are younger, more metal rich and less $\alpha$-enhanced. Evidently for these galaxies, the usual statement that 'massive galaxies are older' is not true if $\sigma_0$ is held fixed., Comment: Accepted for publication in MNRAS. 15 pages, 20 figures
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- 2020
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13. The Stellar Mass Fundamental Plane: The virial relation and a very thin plane for slow-rotators
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Bernardi, M., Sanchez, H. Domínguez, Margalef-Bentabol, B., Nikakhtar, F., and Sheth, R. K.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
Early-type galaxies -- slow and fast rotating ellipticals (E-SRs and E-FRs) and S0s/lenticulars -- define a Fundamental Plane (FP) in the space of half-light radius $R_e$, enclosed surface brightness $I_e$ and velocity dispersion $\sigma_e$. Since $I_e$ and $\sigma_e$ are distance-independent measurements, the thickness of the FP is often expressed in terms of the accuracy with which $I_e$ and $\sigma_e$ can be used to estimate sizes $R_e$. We show that: 1) The thickness of the FP depends strongly on morphology. If the sample only includes E-SRs, then the observed scatter in $R_e$ is $\sim 16\%$, of which only $\sim 9\%$ is intrinsic. Removing galaxies with $M_*<10^{11}M_\odot$ further reduces the observed scatter to $\sim 13\%$ ($\sim 4\%$ intrinsic). The observed scatter increases to the $\sim 25\%$ usually quoted in the literature if E-FRs and S0s are added. If the FP is defined using the eigenvectors of the covariance matrix of the observables, then the E-SRs again define an exceptionally thin FP, with intrinsic scatter of only $5\%$ orthogonal to the plane. 2) The structure within the FP is most easily understood as arising from the fact that $I_e$ and $\sigma_e$ are nearly independent, whereas the $R_e-I_e$ and $R_e-\sigma_e$ correlations are nearly equal and opposite. 3) If the coefficients of the FP differ from those associated with the virial theorem the plane is said to be `tilted'. If we multiply $I_e$ by the global stellar mass-to-light ratio $M_*/L$ and we account for non-homology across the population by using S\'ersic photometry, then the resulting stellar mass FP is less tilted. Accounting self-consistently for $M_*/L$ gradients will change the tilt. The tilt we currently see suggests that the efficiency of turning baryons into stars increases and/or the dark matter fraction decreases as stellar surface brightness increases., Comment: 13 pages, 9 figures, 3 tables, accepted for publication in MNRAS
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- 2020
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14. Galaxy properties as revealed by MaNGA. I. Constraints on Initial Mass Function and M$_{*}$/L gradients in ellipticals
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Sánchez, H. Domínguez, Bernardi, M., Brownstein, J. R., Drory, N., and Sheth, R. K.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We estimate ages, metallicities, $\alpha$-element abundance ratios and stellar initial mass functions of elliptical (E) and S0 galaxies from the MaNGA-DR15 survey. We stack spectra and use a variety of single stellar population synthesis models to interpret the absorption line strengths in these spectra. We quantify how these properties vary across the population, as well as with galactocentric distance. This paper is the first of a series and is based on a sample of pure elliptical galaxies at z $\le$ 0.08. We show that the properties of the inner regions of Es with the largest luminosity (L$_r$) and central velocity dispersion ($\sigma_0$) are consistent with those associated with the commonly used Salpeter IMF, whereas a Kroupa-like IMF is a better description at $\sim$ 0.8R/Re (assuming [Ti/Fe] variations are limited). For these galaxies the stellar mass-to-light ratio decreases at most by a factor of 2 from the central regions to Re. In contrast, for lower L$_r$ and $\sigma_0$ galaxies, the IMF is shallower and M$_{*}$/L$_r$ in the central regions is similar to the outskirts. Although a factor of 2 is smaller than previous reports based on a handful of galaxies, it is still large enough to matter for dynamical mass estimates. Accounting self-consistently for these gradients when estimating both M$_{*}$ and M$_{dyn}$ brings the two into good agreement: gradients reduce M$_{dyn}$ by $\sim$ 0.2 dex while only slightly increasing the M$_{*}$ inferred using a Kroupa IMF. This is a different resolution of the M$_{*}$-M$_{dyn}$ discrepancy than has been followed in the recent literature where M$_{*}$ of massive galaxies is increased by adopting a Salpeter IMF while leaving Mdyn unchanged. A companion paper discusses how stellar population differences are even more pronounced if one separates slow from fast rotators., Comment: 22 pages, 29 figures, accepted for publication in MNRAS
- Published
- 2019
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15. Galaxy properties as revealed by MaNGA II. Differences in stellar populations of slow and fast rotator ellipticals and dependence on environment
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Bernardi, M., Sánchez, H. Domínguez, Brownstein, J. R., Drory, N., and Sheth, R. K.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We present estimates of stellar population (SP) gradients from stacked spectra of slow (SR) and fast (FR) rotator elliptical galaxies from the MaNGA-DR15 survey. We find that: 1) FRs are $\sim 5$ Gyrs younger, more metal rich, less $\alpha$-enhanced and smaller than SRs of the same luminosity $L_r$ and central velocity dispersion $\sigma_0$. This explains why when one combines SRs and FRs, objects which are small for their $L_r$ and $\sigma_0$ tend to be younger. Their SP gradients are also different. 2) Ignoring the FR/SR dichotomy leads one to conclude that compact galaxies are older than their larger counterparts of the same mass, even though almost the opposite is true for FRs and SRs individually. 3) SRs with $\sigma_0\le 250$ km s$^{-1}$ are remarkably homogeneous within $\sim R_e$: they are old, $\alpha$-enhanced and only slightly super-solar in metallicity. These SRs show no gradients in age and $M_*/L_r$, negative gradients in metallicity, and slightly positive gradients in [$\alpha$/Fe] (the latter are model dependent). SRs with $\sigma_0\ge 250$ km $s^{-1}$ are slightly younger and more metal rich, contradicting previous work suggesting that age increases with $\sigma_0$. They also show larger $M_*/L_r$ gradients. 4) Self-consistently accounting for $M_*/L$ gradients yields $M_{\rm dyn}\approx M_*$ because gradients reduce $M_{\rm dyn}$ by $\sim 0.2$ dex while only slightly increasing the $M_*$ inferred using a Kroupa (not Salpeter) IMF. 5) The FR population all but disappears above $M_*\ge 3\times 10^{11}M_\odot$; this is the same scale at which the size-mass correlation and other scaling relations change. Our results support the finding that this is an important mass scale which correlates with the environment and above which mergers matter., Comment: 22 pages, 28 figures. Accepted for publication in MNRAS
- Published
- 2019
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16. The Hubble Sequence at $z\sim0$ in the IllustrisTNG simulation with deep learning
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Huertas-Company, M., Rodriguez-Gomez, V., Nelson, D., Pillepich, A., Bernardi, M., Domínguez-Sánchez, H., Genel, S., Pakmor, R., Snyder, G. F., and Vogelsberger, M.
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Astrophysics - Astrophysics of Galaxies - Abstract
We analyze the optical morphologies of galaxies in the IllustrisTNG simulation at $z\sim0$ with a Convolutional Neural Network trained on visual morphologies in the Sloan Digital Sky Survey. We generate mock SDSS images of a mass complete sample of $\sim12,000$ galaxies in the simulation using the radiative transfer code SKIRT and include PSF and noise to match the SDSS r-band properties. The images are then processed through the exact same neural network used to estimate SDSS morphologies to classify simulated galaxies in four morphological classes (E, S0/a, Sab, Scd). The CNN model finds that $\sim95\%$ of the simulated galaxies fall in one the four main classes with high confidence. The mass-size relations of the simulated galaxies divided by morphological type also reproduce well the slope and the normalization of observed relations which confirms the realism of optical morphologies in the TNG suite. However, the Stellar Mass Functions decomposed into different morphologies still show significant discrepancies with observations both at the low and high mass end. We find that the high mass end of the SMF is dominated in TNG by massive disk galaxies while early-type galaxies dominate in the observations according to the CNN classifications. The present work highlights the importance of detailed comparisons between observations and simulations in comparable conditions., Comment: submitted to MNRAS, comments welcome
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- 2019
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17. The 16th Data Release of the Sloan Digital Sky Surveys: First Release from the APOGEE-2 Southern Survey and Full Release of eBOSS Spectra
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Ahumada, R, Prieto, CA, Almeida, A, Anders, F, Anderson, SF, Andrews, BH, Anguiano, B, Arcodia, R, Armengaud, E, Aubert, M, Avila, S, Avila-Reese, V, Badenes, C, Balland, C, Barger, K, Barrera-Ballesteros, JK, Basu, S, Bautista, J, Beaton, RL, Beers, TC, Benavides, BIT, Bender, CF, Bernardi, M, Bershady, M, Beutler, F, Bidin, CM, Bird, J, Bizyaev, D, Blanc, GA, Blanton, MR, Boquien, M, Borissova, J, Bovy, J, Brandt, WN, Brinkmann, J, Brownstein, JR, Bundy, K, Bureau, M, Burgasser, A, Burtin, E, Cano-Díaz, M, Capasso, R, Cappellari, M, Carrera, R, Chabanier, S, Chaplin, W, Chapman, M, Cherinka, B, Chiappini, C, Doohyun Choi, P, Chojnowski, SD, Chung, H, Clerc, N, Coffey, D, Comerford, JM, Comparat, J, Da Costa, L, Cousinou, MC, Covey, K, Crane, JD, Cunha, K, Ilha, GDS, Dai, YS, Damsted, SB, Darling, J, Davidson, JW, Davies, R, Dawson, K, De, N, De La Macorra, A, De Lee, N, Queiroz, ABDA, Deconto Machado, A, De La Torre, S, Dell'Agli, F, Du Mas Des Bourboux, H, Diamond-Stanic, AM, Dillon, S, Donor, J, Drory, N, Duckworth, C, Dwelly, T, Ebelke, G, Eftekharzadeh, S, Davis Eigenbrot, A, Elsworth, YP, Eracleous, M, Erfanianfar, G, Escoffier, S, Fan, X, Farr, E, Fernández-Trincado, JG, Feuillet, D, Finoguenov, A, Fofie, P, Fraser-Mckelvie, A, Frinchaboy, PM, Fromenteau, S, Fu, H, and Galbany, L
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astro-ph.GA ,astro-ph.CO ,astro-ph.IM ,Astronomical and Space Sciences ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry ,Astronomy & Astrophysics ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) - Abstract
This paper documents the 16th data release (DR16) from the Sloan Digital Sky Surveys (SDSS), the fourth and penultimate from the fourth phase (SDSS-IV). This is the first release of data from the Southern Hemisphere survey of the Apache Point Observatory Galactic Evolution Experiment 2 (APOGEE-2); new data from APOGEE-2 North are also included. DR16 is also notable as the final data release for the main cosmological program of the Extended Baryon Oscillation Spectroscopic Survey (eBOSS), and all raw and reduced spectra from that project are released here. DR16 also includes all the data from the Time Domain Spectroscopic Survey and new data from the SPectroscopic IDentification of ERosita Survey programs, both of which were co-observed on eBOSS plates. DR16 has no new data from the Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey (or the MaNGA Stellar Library "MaStar"). We also preview future SDSS-V operations (due to start in 2020), and summarize plans for the final SDSS-IV data release (DR17).
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- 2020
18. A Statistical Semi-Empirical Model: Satellite galaxies in Groups and Clusters
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Grylls, P. J., Shankar, F., Zanisi, L., and Bernardi, M.
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Astrophysics - Astrophysics of Galaxies - Abstract
We present STEEL a STatistical sEmi-Empirical modeL designed to probe the distribution of satellite galaxies in groups and clusters. Our fast statistical methodology relies on tracing the abundances of central and satellite haloes via their mass functions at all cosmic epochs with virtually no limitation on cosmic volume and mass resolution. From mean halo accretion histories and subhalo mass functions the satellite mass function is progressively built in time via abundance matching techniques constrained by number densities of centrals in the local Universe. By enforcing dynamical merging timescales as predicted by high-resolution N-body simulations, we obtain satellite distributions as a function of stellar mass and halo mass consistent with current data. We show that stellar stripping, star formation, and quenching play all a secondary role in setting the number densities of massive satellites above $M_*\gtrsim 3\times 10^{10}\, M_{\odot}$. We further show that observed star formation rates used in our empirical model over predict low-mass satellites below $M_*\lesssim 3\times 10^{10}\, M_{\odot}$, whereas, star formation rates derived from a continuity equation approach yield the correct abundances similar to previous results for centrals., Comment: 21 pages, 17 Figures. MNRAS, in press
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- 2018
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19. SDSS-IV MaNGA PyMorph Photometric and Deep Learning Morphological Catalogs and implications for bulge properties and stellar angular momentum
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Fischer, J. -L., Sánchez, H. Domínguez, and Bernardi, M.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We describe the SDSS-IV MaNGA PyMorph Photometric (MPP-VAC) and MaNGA Deep Learning Morphology (MDLM-VAC) Value Added Catalogs. The MPP-VAC provides photometric parameters from S\'ersic and S\'ersic+Exponential fits to the 2D surface brightness profiles of the MaNGA DR15 galaxy sample. Compared to previous PyMorph analyses of SDSS imaging, our analysis of the MaNGA DR15 incorporates three improvements: the most recent SDSS images; modified criteria for determining bulge-to-disk decompositions; and the fits in MPP-VAC have been eye-balled, and re-fit if necessary, for additional reliability. A companion catalog, the MDLM-VAC, provides Deep Learning-based morphological classifications for the same galaxies. The MDLM-VAC includes a number of morphological properties (e.g., a TType, and a finer separation between elliptical and S0 galaxies). Combining the MPP- and MDLM-VACs allows to show that the MDLM morphological classifications are more reliable than previous work. It also shows that single-S\'ersic fits to late- and early-type galaxies are likely to return S\'ersic indices of $n \le 2$ and $\ge 4$, respectively, and this correlation between $n$ and morphology extends to the bulge component as well. While the former is well-known, the latter contradicts some recent work suggesting little correlation between $n$-bulge and morphology. Combining both VACs with MaNGA's spatially resolved spectroscopy allows us to study how the stellar angular momentum depends on morphological type. We find correlations between stellar kinematics, photometric properties, and morphological type even though the spectroscopic data played no role in the construction of the MPP- and MDLM-VACs., Comment: 22 pages, 30 figures and 4 tables. Accepted for publication in MNRAS. The MPP-VAC and MDLM-VAC are available online at https://www.sdss.org/dr15/data_access/value-added-catalogs/manga-pymorph-dr15-photometric-catalog and https://www.sdss.org/dr15/data_access/value-added-catalogs/manga-morphology-deep-learning-dr15-catalog
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- 2018
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20. Transfer learning for galaxy morphology from one survey to another
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Sánchez, H. Domínguez, Huertas-Company, M., Bernardi, M., Kaviraj, S., Fischer, J. L., Abbott, T. M. C., Abdalla, F. B., Annis, J., Avila, S., Brooks, D., Buckley-Geer, E., Rosell, A. Carnero, Kind, M. Carrasco, Carretero, J., Cunha, C. E., D'Andrea, C. B., da Costa, L. N., Davis, C., De Vicente, J., Doel, P., Evrard, A. E., Fosalba, P., Frieman, J., García-Bellido, J., Gaztanaga, E., Gerdes, D. W., Gruen, D., Gruendl, R. A., Gschwend, J., Gutierrez, G., Hartley, W. G., Hollowood, D. L., Honscheid, K., Hoyle, B., James, D. J., Kuehn, K., Kuropatkin, N., Lahav, O., Maia, M. A. G., March, M., Melchior, P., Menanteau, F., Miquel, R., Nord, B., Plazas, A. A., Sanchez, E., Scarpine, V., Schindler, R., Schubnell, M., Smith, M., Smith, R. C., Soares-Santos, M., Sobreira, F., Suchyta, E., Swanson, M. E. C., Tarle, G., Thomas, D., Walker, A. R., and Zuntz, J.
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Astrophysics - Astrophysics of Galaxies - Abstract
Deep Learning (DL) algorithms for morphological classification of galaxies have proven very successful, mimicking (or even improving) visual classifications. However, these algorithms rely on large training samples of labelled galaxies (typically thousands of them). A key question for using DL classifications in future Big Data surveys is how much of the knowledge acquired from an existing survey can be exported to a new dataset, i.e. if the features learned by the machines are meaningful for different data. We test the performance of DL models, trained with Sloan Digital Sky Survey (SDSS) data, on Dark Energy survey (DES) using images for a sample of $\sim$5000 galaxies with a similar redshift distribution to SDSS. Applying the models directly to DES data provides a reasonable global accuracy ($\sim$ 90%), but small completeness and purity values. A fast domain adaptation step, consisting in a further training with a small DES sample of galaxies ($\sim$500-300), is enough for obtaining an accuracy > 95% and a significant improvement in the completeness and purity values. This demonstrates that, once trained with a particular dataset, machines can quickly adapt to new instrument characteristics (e.g., PSF, seeing, depth), reducing by almost one order of magnitude the necessary training sample for morphological classification. Redshift evolution effects or significant depth differences are not taken into account in this study., Comment: Accepted for publication in MNRAS
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- 2018
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21. Deep Learning Identifies High-z Galaxies in a Central Blue Nugget Phase in a Characteristic Mass Range
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Huertas-Company, M., Primack, J. R., Dekel, A., Koo, D. C., Lapiner, S., Ceverino, D., Simons, R. C., Snyder, G. F., Bernardi, M., Chen, Z., Domínguez-Sánchez, H., Lee, C. T., Margalef-Bentabol, B., and Tuccillo, D.
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Astrophysics - Astrophysics of Galaxies - Abstract
We use machine learning to identify in color images of high-redshift galaxies an astrophysical phenomenon predicted by cosmological simulations. This phenomenon, called the blue nugget (BN) phase, is the compact star-forming phase in the central regions of many growing galaxies that follows an earlier phase of gas compaction and is followed by a central quenching phase. We train a Convolutional Neural Network (CNN) with mock "observed" images of simulated galaxies at three phases of evolution: pre-BN, BN and post-BN, and demonstrate that the CNN successfully retrieves the three phases in other simulated galaxies. We show that BNs are identified by the CNN within a time window of $\sim0.15$ Hubble times. When the trained CNN is applied to observed galaxies from the CANDELS survey at $z=1-3$, it successfully identifies galaxies at the three phases. We find that the observed BNs are preferentially found in galaxies at a characteristic stellar mass range, $10^{9.2-10.3} M_\odot$ at all redshifts. This is consistent with the characteristic galaxy mass for BNs as detected in the simulations, and is meaningful because it is revealed in the observations when the direct information concerning the total galaxy luminosity has been eliminated from the training set. This technique can be applied to the classification of other astrophysical phenomena for improved comparison of theory and observations in the era of large imaging surveys and cosmological simulations., Comment: Accepted for publication in ApJ
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- 2018
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22. $M_*/L$ gradients driven by IMF variation: Large impact on dynamical stellar mass estimates
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Bernardi, M., Sheth, R. K., Dominguez-Sanchez, H., Fischer, J. -L., Chae, K. -H., Huertas-Company, M., and Shankar, F.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
Within a galaxy the stellar mass-to-light ratio $\Upsilon_*$ is not constant. Spatially resolved kinematics of nearby early-type galaxies suggest that allowing for a variable initial mass function (IMF) returns significantly larger $\Upsilon_*$ gradients than if the IMF is held fixed. If $\Upsilon_*$ is greater in the central regions, then ignoring the IMF-driven gradient can overestimate $M_*^{\rm dyn}$ by as much as a factor of two for the most massive galaxies, though stellar population estimates $M_*^{\rm SP}$ are also affected. Large $\Upsilon_*$-gradients have four main consequences: First, $M_*^{\rm dyn}$ cannot be estimated independently of stellar population synthesis models. Second, if there is a lower limit to $\Upsilon_*$ and gradients are unknown, then requiring $M_*^{\rm dyn}=M_*^{\rm SP}$ constrains them. Third, if gradients are stronger in more massive galaxies, then $M_*^{\rm dyn}$ and $M_*^{\rm SP}$ can be brought into agreement, not by shifting $M_*^{\rm SP}$ upwards by invoking constant bottom-heavy IMFs, as advocated by a number of recent studies, but by revising $M_*^{\rm dyn}$ estimates in the literature downwards. Fourth, accounting for $\Upsilon_*$ gradients changes the high-mass slope of the stellar mass function $\phi(M_*^{\rm dyn})$, and reduces the associated stellar mass density. These conclusions potentially impact estimates of the need for feedback and adiabatic contraction, so our results highlight the importance of measuring $\Upsilon_*$ gradients in larger samples., Comment: 13 pages, 7 figures, MNRAS in press
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- 2017
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23. Full-scale tests of industrial steel storage pallet racks
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Baldassino, N., primary, Bernardi, M., additional, Zandonini, R., additional, and di Gioia, A., additional
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- 2022
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24. The Fifteenth Data Release of the Sloan Digital Sky Surveys: First Release of MaNGA-derived Quantities, Data Visualization Tools, and Stellar Library
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Aguado, DS, Ahumada, R, Almeida, A, Anderson, SF, Andrews, BH, Anguiano, B, Ortiz, EA, Aragón-Salamanca, A, Argudo-Fernández, M, Aubert, M, Avila-Reese, V, Badenes, C, Barboza Rembold, S, Barger, K, Barrera-Ballesteros, J, Bates, D, Bautista, J, Beaton, RL, Beers, TC, Belfiore, F, Bernardi, M, Bershady, M, Beutler, F, Bird, J, Bizyaev, D, Blanc, GA, Blanton, MR, Blomqvist, M, Bolton, AS, Boquien, M, Borissova, J, Bovy, J, Nielsen Brandt, W, Brinkmann, J, Brownstein, JR, Bundy, K, Burgasser, A, Byler, N, Cano Diaz, M, Cappellari, M, Carrera, R, Cervantes Sodi, B, Chen, Y, Cherinka, B, Doohyun Choi, P, Chung, H, Coffey, D, Comerford, JM, Comparat, J, Covey, K, Da Silva Ilha, G, Da Costa, L, Sophia Dai, Y, Damke, G, Darling, J, Davies, R, Dawson, K, De Sainte Agathe, V, Deconto Machado, A, Del Moro, A, De Lee, N, Diamond-Stanic, AM, Dominguez Sánchez, H, Donor, J, Drory, N, Du Mas Des Bourboux, H, Duckworth, C, Dwelly, T, Ebelke, G, Emsellem, E, Escoffier, S, Fernández-Trincado, JG, Feuillet, D, Fischer, JL, Fleming, SW, Fraser-Mckelvie, A, Freischlad, G, Frinchaboy, PM, Fu, H, Galbany, L, Garcia-Dias, R, Garcia-Hernández, DA, Alberto Garma Oehmichen, L, Antonio Geimba Maia, M, Gil-Marin, H, Grabowski, K, Gu, M, Guo, H, Ha, J, Harrington, E, Hasselquist, S, Hayes, CR, Hearty, F, Hernandez Toledo, H, Hicks, H, Hogg, DW, Holley-Bockelmann, K, Holtzman, JA, Hsieh, BC, and Hunt, JAS
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atlases ,catalogs ,surveys ,astro-ph.IM ,Astronomy & Astrophysics ,Astronomical and Space Sciences ,Organic Chemistry ,Physical Chemistry ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) - Abstract
Twenty years have passed since first light for the Sloan Digital Sky Survey (SDSS). Here, we release data taken by the fourth phase of SDSS (SDSS-IV) across its first three years of operation (2014 July-2017 July). This is the third data release for SDSS-IV, and the 15th from SDSS (Data Release Fifteen; DR15). New data come from MaNGA - we release 4824 data cubes, as well as the first stellar spectra in the MaNGA Stellar Library (MaStar), the first set of survey-supported analysis products (e.g., stellar and gas kinematics, emission-line and other maps) from the MaNGA Data Analysis Pipeline, and a new data visualization and access tool we call "Marvin." The next data release, DR16, will include new data from both APOGEE-2 and eBOSS; those surveys release no new data here, but we document updates and corrections to their data processing pipelines. The release is cumulative; it also includes the most recent reductions and calibrations of all data taken by SDSS since first light. In this paper, we describe the location and format of the data and tools and cite technical references describing how it was obtained and processed. The SDSS website (www.sdss.org) has also been updated, providing links to data downloads, tutorials, and examples of data use. Although SDSS-IV will continue to collect astronomical data until 2020, and will be followed by SDSS-V (2020-2025), we end this paper by describing plans to ensure the sustainability of the SDSS data archive for many years beyond the collection of data.
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- 2019
25. The relationship between executive functions and motor coordination : longitudinal impact on academic achievement and language
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Bernardi, M.
- Subjects
618.92 ,R Medicine (General) - Abstract
The reciprocal interactions between the motor and cognitive systems are critical during development. The thesis investigates this relationship by exploring Executive Functions (EFs) in children with typical and atypical motor coordination, and the effect of this association on academic and language outcomes. Study 1: EFs are higher-order cognitive processes needed for goal-directed behaviour. They involve flexibility of thinking, inhibition of unhelpful responses, strategy development and manipulation of diverse information simultaneously. Children with poor motor skills or Developmental Coordination Disorder (DCD) have demonstrated problems with EFs. However, no studies have explored the development of EFs in DCD longitudinally. Study 1 investigated changes in EFs in children with poor motor skills over two years. Children aged 7-11 years were assessed twice, two years apart, on verbal and nonverbal measures of EFs: executive-loaded working memory; fluency; response inhibition; planning; and cognitive flexibility. Typically developing children (TD: n=17) were compared to those with a clinical diagnosis of DCD (n=17) and those with identified motor difficulties (MD: n=17), but no formal diagnosis. Developmental gains in EFs were similar between groups, although a gap between children with poor motor skills and TD children on nonverbal EFs persisted. Specifically, children with DCD performed significantly more poorly than TD children on all nonverbal EF tasks and verbal fluency tasks at both time points; and children with MD but no diagnosis showed persistent EF difficulties in nonverbal tasks of working memory and fluency. Both groups demonstrated EF difficulties over two years, which may impact on activities of daily living and academic achievement, in addition to their motor deficit. Study 2: Academic underachievement has been identified in children with DCD. However, it is unclear whether it extends to all academic domains and whether it is explained by EF abilities, which play an important role in educational attainment and are poorer in DCD. Study 2 examined academic achievement performance in children with and without motor coordination impairments, taking into account the contribution of EF skills. Children with DCD (n=17) and children with MD (n=32) were compared to TD children (n=41) in measures of reading, spelling and mathematics. Two composite scores of verbal and nonverbal EF respectively were included in the analyses. There was no evidence of academic difficulties in children with MD. Children with DCD demonstrated poorer mathematical ability compared to their TD peers, but performed as accurately on all other academic tasks. These differences in mathematics in the DCD group were still evident after EF was controlled for in the analyses. Nonverbal EF did not predict performance in any of the academic achievement tasks, whereas verbal EF was a significant predictor of mathematical ability. Study 3: Motor coordination is fundamentally interrelated with both EF and language, which in turn are related to each other. Recent investigations on the relationship between EF and language have failed to understand the direction and nature of this association, suggesting a third factor may be involved. Study 3 explored the role of motor coordination in the relationship between EF and language. Measures of verbal EF, nonverbal EF, expressive and receptive language were administered to children with DCD (n=23), MD (n=57) and TD (n=71). A moderation model was tested using Group as the moderating variable, and, next, using motor coordination as a continuous moderating variable (i.e., across groups). Both directions of the association between EF and language were investigated. The relationship between EF and language was not different between groups in any domains, hence Group was not a significant moderator. When using continuous motor skills data, motor coordination was a significant moderator when EF was the predictor of language outcomes, but not when language was the predictor of EF outcomes. Specifically, the interaction between motor coordination and EF had significant effects on language, as the association between EF and language was positive and significant at low and moderate levels of motor skills, but not at high levels of motor skills. In conclusion, in this thesis interactions between EF and motor coordination produced complex effects on academic and language outcomes.
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- 2018
26. Improving galaxy morphologies for SDSS with Deep Learning
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Sánchez, H. Domínguez, Huertas-Company, M., Bernardi, M., Tuccillo, D., and Fischer, J. L.
- Subjects
Astrophysics - Astrophysics of Galaxies - Abstract
We present a morphological catalogue for $\sim$ 670,000 galaxies in the Sloan Digital Sky Survey in two flavours: T-Type, related to the Hubble sequence, and Galaxy Zoo 2 (GZ2 hereafter) classification scheme. By combining accurate existing visual classification catalogues with machine learning, we provide the largest and most accurate morphological catalogue up to date. The classifications are obtained with Deep Learning algorithms using Convolutional Neural Networks (CNNs). We use two visual classification catalogues, GZ2 and Nair & Abraham (2010), for training CNNs with colour images in order to obtain T-Types and a series of GZ2 type questions (disk/features, edge-on galaxies, bar signature, bulge prominence, roundness and mergers). We also provide an additional probability enabling a separation between pure elliptical (E) from S0, where the T-Type model is not so efficient. For the T-Type, our results show smaller offset and scatter than previous models trained with support vector machines. For the GZ2 type questions, our models have large accuracy (> 97\%), precision and recall values (> 90\%) when applied to a test sample with the same characteristics as the one used for training. The catalogue is publicly released with the paper., Comment: 18 pages, 21 figures; Accepted for publication in MNRAS
- Published
- 2017
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27. Stellar mass functions and implications for a variable IMF
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Bernardi, M., Sheth, R. K., Fischer, J. -L., Meert, A., Chae, K. -H., Dominguez-Sanchez, H., Huertas-Company, M., Shankar, F., and Vikram, V.
- Subjects
Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
Spatially resolved kinematics of nearby galaxies has shown that the ratio of dynamical- to stellar population-based estimates of the mass of a galaxy ($M_*^{\rm JAM}/M_*$) correlates with $\sigma_e$, if $M_*$ is estimated using the same IMF for all galaxies and the stellar M/L ratio within each galaxy is constant. This correlation may indicate that, in fact, the IMF is more dwarf-rich for galaxies with large $\sigma$. We use this correlation to estimate a dynamical or IMF-corrected stellar mass, $M_*^{\rm \alpha_{JAM}}$, from $M_{*}$ and $\sigma_e$ for a sample of $6 \times 10^5$ SDSS galaxies for which spatially resolved kinematics is not available. We also compute the `virial' mass estimate $k(n,R)\,R_e\,\sigma_R^2/G$, where $n$ is the Sersic index, in the SDSS and ATLAS$^{\rm 3D}$ samples. We show that an $n$-dependent correction must be applied to the $k(n,R)$ values provided by Prugniel & Simien (1997). Our analysis also shows that the shape of the velocity dispersion profile in the ATLAS$^{\rm 3D}$ sample varies weakly with $n$: $(\sigma_R/\sigma_e) = (R/R_e)^{-\gamma(n)}$. The resulting stellar mass functions, based on $M_*^{\rm \alpha_{JAM}}$ and the recalibrated virial mass, are in good agreement. If the $M_*^{\rm \alpha_{JAM}}/M_* - \sigma_e$ correlation is indeed due to the IMF, and stellar M/L gradients can be ignored, then our $\phi(M_*^{\rm \alpha_{JAM}})$ is an estimate of the stellar mass function in which $\sigma_e$-dependent variations in the IMF across the population have been accounted for. Using a Fundamental Plane based observational proxy for $\sigma_e$ produces comparable results. By demonstrating that cheaper proxies are sufficiently accurate, our analysis should enable a more reliable census of the mass in stars for large galaxy samples, at a fraction of the cost. Our results are provided in tabular form., Comment: 17 pages, 19 figures, 4 tables. Accepted for publication by MNRAS. Tables 1, C1 and C2 are provided as ancillary files
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- 2017
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28. Comparing PyMorph and SDSS photometry. I. Background sky and model fitting effects
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Fischer, J. -L., Bernardi, M., and Meert, A.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
A number of recent estimates of the total luminosities of galaxies in the SDSS are significantly larger than those reported by the SDSS pipeline. This is because of a combination of three effects: one is simply a matter of defining the scale out to which one integrates the fit when defining the total luminosity, and amounts on average to < 0.1 mags even for the most luminous galaxies. The other two are less trivial and tend to be larger; they are due to differences in how the background sky is estimated and what model is fit to the surface brightness profile. We show that PyMorph sky estimates are fainter than those of the SDSS DR7 or DR9 pipelines, but are in excellent agreement with the estimates of Blanton et al. (2011). Using the SDSS sky biases luminosities by more than a few tenths of a magnitude for objects with half-light radii > 7 arcseconds. In the SDSS main galaxy sample these are typically luminous galaxies, so they are not necessarily nearby. This bias becomes worse when allowing the model more freedom to fit the surface brightness profile. When PyMorph sky values are used, then two component Sersic-Exponential fits to E+S0s return more light than single component deVaucouleurs fits (up to ~0.2 mag), but less light than single Sersic fits (0.1 mag). Finally, we show that PyMorph fits of Meert et al. (2015) to DR7 data remain valid for DR9 images. Our findings show that, especially at large luminosities, these PyMorph estimates should be preferred to the SDSS pipeline values., Comment: 12 pages, 17 figures, accepted for publication in MNRAS
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- 2017
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29. Comparing PyMorph and SDSS photometry. II. The differences are more than semantics and are not dominated by intracluster light
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Bernardi, M., Fischer, J. -L., Sheth, R. K., Meert, A., Huertas-Company, M., Shankar, F., and Vikram, V.
- Subjects
Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
The Sloan Digital Sky Survey pipeline photometry underestimates the brightnesses of the most luminous galaxies. This is mainly because (i) the SDSS overestimates the sky background and (ii) single or two-component Sersic-based models better fit the surface brightness profile of galaxies, especially at high luminosities, than does the de Vaucouleurs model used by the SDSS pipeline. We use the PyMorph photometric reductions to isolate effect (ii) and show that it is the same in the full sample as in small group environments, and for satellites in the most massive clusters as well. None of these are expected to be significantly affected by intracluster light (ICL). We only see an additional effect for centrals in the most massive halos, but we argue that even this is not dominated by ICL. Hence, for the vast majority of galaxies, the differences between PyMorph and SDSS pipeline photometry cannot be ascribed to the semantics of whether or not one includes the ICL when describing the stellar mass of massive galaxies. Rather, they likely reflect differences in star formation or assembly histories. Failure to account for the SDSS underestimate has significantly biased most previous estimates of the SDSS luminosity and stellar mass functions, and therefore Halo Model estimates of the z ~ 0.1 relation between the mass of a halo and that of the galaxy at its center. We also show that when one studies correlations, at fixed group mass, with a quantity which was not used to define the groups, then selection effects appear. We show why such effects arise, and should not be mistaken for physical effects., Comment: 15 pages, 17 figures, accepted for publication in MNRAS. The PyMorph luminosities and stellar masses are available at https://www.physics.upenn.edu/~ameert/SDSS_PhotDec/
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- 2017
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30. Ni2+ removal by ion exchange resins and activated carbon: a benchtop NMR study.
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Bernardi, M., Hantson, A.-L., Caulier, G., Eyley, S., Thielemans, W., De Weireld, G., and Gossuin, Y.
- Abstract
Heavy metal pollution in water is a critical environmental concern, demanding effective remediation techniques. Traditional methods, including ion exchange and adsorption, often rely on inductively coupled plasma (ICP) atomic emission spectroscopy/mass spectrometry (AES/MS) for the indirect and time-consuming measurement of residual metal concentrations. In contrast, this study employs innovative direct monitoring of nickel removal by benchtop NMR relaxometry using the paramagnetic properties of Ni
2+ . To prove the feasibility of the NMR follow-up of Ni2+ uptake, batch experiments were performed with Amberlite IR120, Amberlite IRC748, Dowex Marathon MSC, and activated carbon (AC), which were previously characterized by various techniques. The effect of contact time, pH, and Ni2+ concentration on removal efficiency were studied. Pseudo-first and pseudo-second order kinetic models were used. The Langmuir model effectively described the equilibrium isotherms. The longitudinal and transverse relaxation curves of the loaded resins were biexponential. For sulfonic resins, a strong correlation was observed between the relaxation rates of the fast-relaxing fraction and the Ni2+ content determined by ICP-AES/MS. For IRC748, the effect of Ni2+ loading on the relaxation rates was weaker because of Ni2+ complexation. The relaxation curves of loaded AC revealed multiple fractions. Centrifugation was employed to eliminate the contribution of intergranular water. The remaining intragranular water contribution was biexponential. For high Ni2+ loadings, the relaxation rates of the slow relaxing fraction increased with the AC Ni2+ content. These results mark the initial stage in developing a column experiment to monitor, in real-time, adsorbent loading by NMR relaxometry. [ABSTRACT FROM AUTHOR]- Published
- 2024
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31. Physiological profile comparison between high intensity functional training, endurance and power athletes
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Adami, P. E., Rocchi, J. E., Melke, N., De Vito, G., Bernardi, M., and Macaluso, A.
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- 2022
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32. The fourteenth data release of the sloan digital sky survey: First spectroscopic data from the extended baryon oscillation spectroscopic survey and from the second phase of the apache point observatory galactic evolution experiment
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Abolfathi, B, Aguado, DS, Aguilar, G, Prieto, CA, Almeida, A, Ananna, TT, Anders, F, Anderson, SF, Andrews, BH, Anguiano, B, Aragón-Salamanca, A, Argudo-Fernández, M, Armengaud, E, Ata, M, Aubourg, E, Avila-Reese, V, Badenes, C, Bailey, S, Balland, C, Barger, KA, Barrera-Ballesteros, J, Bartosz, C, Bastien, F, Bates, D, Baumgarten, F, Bautista, J, Beaton, R, Beers, TC, Belfiore, F, Bender, CF, Bernardi, M, Bershady, MA, Beutler, F, Bird, JC, Bizyaev, D, Blanc, GA, Blanton, MR, Blomqvist, M, Bolton, AS, Boquien, M, Borissova, J, Bovy, J, Bradna Diaz, CA, Nielsen Brandt, W, Brinkmann, J, Brownstein, JR, Bundy, K, Burgasser, AJ, Burtin, E, Busca, NG, Canãs, CI, Cano-Diáz, M, Cappellari, M, Carrera, R, Casey, AR, Sodi, BC, Chen, Y, Cherinka, B, Chiappini, C, Choi, PD, Chojnowski, D, Chuang, CH, Chung, H, Clerc, N, Cohen, RE, Comerford, JM, Comparat, J, Do Nascimento, JC, Da Costa, L, Cousinou, MC, Covey, K, Crane, JD, Cruz-Gonzalez, I, Cunha, K, Ilha, GDS, Damke, GJ, Darling, J, Davidson, JW, Dawson, K, De Icaza Lizaola, MAC, MacOrra, ADL, De La Torre, S, De Lee, N, Sainte Agathe, VD, Deconto MacHado, A, Dell'Agli, F, Delubac, T, Diamond-Stanic, AM, Donor, J, Downes, JJ, Drory, N, Mas Des Bourboux, HD, Duckworth, CJ, Dwelly, T, Dyer, J, Ebelke, G, Eigenbrot, AD, Eisenstein, DJ, Elsworth, YP, and Emsellem, E
- Subjects
atlases ,catalogs ,surveys ,astro-ph.GA ,astro-ph.IM ,Astronomy & Astrophysics ,Astronomical and Space Sciences ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry ,Atomic ,Molecular ,Nuclear ,Particle and Plasma Physics ,Physical Chemistry (incl. Structural) - Abstract
The fourth generation of the Sloan Digital Sky Survey (SDSS-IV) has been in operation since 2014 July. This paper describes the second data release from this phase, and the 14th from SDSS overall (making this Data Release Fourteen or DR14). This release makes the data taken by SDSS-IV in its first two years of operation (2014-2016 July) public. Like all previous SDSS releases, DR14 is cumulative, including the most recent reductions and calibrations of all data taken by SDSS since the first phase began operations in 2000. New in DR14 is the first public release of data from the extended Baryon Oscillation Spectroscopic Survey; the first data from the second phase of the Apache Point Observatory (APO) Galactic Evolution Experiment (APOGEE-2), including stellar parameter estimates from an innovative data-driven machine-learning algorithm known as "The Cannon"; and almost twice as many data cubes from the Mapping Nearby Galaxies at APO (MaNGA) survey as were in the previous release (N = 2812 in total). This paper describes the location and format of the publicly available data from the SDSS-IV surveys. We provide references to the important technical papers describing how these data have been taken (both targeting and observation details) and processed for scientific use. The SDSS web site (www.sdss.org) has been updated for this release and provides links to data downloads, as well as tutorials and examples of data use. SDSS-IV is planning to continue to collect astronomical data until 2020 and will be followed by SDSS-V.
- Published
- 2018
33. Mass assembly and morphological transformations since $z\sim3$ from CANDELS
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Huertas-Company, M., Bernardi, M., Pérez-González, P. G., Ashby, M. L. N., Barro, G., Conselice, C., Daddi, E., Dekel, A., Dimauro, P., Faber, S. M., Grogin, N. A., Kartaltepe, J. S., Kocevski, D. D., Koekemoer, A. M., Koo, D. C., Mei, S., and Shankar, F.
- Subjects
Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
[abridged] We quantify the evolution of the stellar mass functions of star-forming and quiescent galaxies as a function of morphology from $z\sim 3$ to the present. Our sample consists of ~50,000 galaxies in the CANDELS fields ($\sim880$ $arcmin^2$), which we divide into four main morphological types, i.e. pure bulge dominated systems, pure spiral disk dominated, intermediate 2-component bulge+disk systems and irregular disturbed galaxies. Our main results are: Star-formation: At $z\sim 2$, 80\% of the stellar mass density of star-forming galaxies is in irregular systems. However, by $z\sim 0.5$, irregular objects only dominate at stellar masses below $10^9M\odot$. A majority of the star-forming irregulars present at $z\sim 2$ undergo a gradual transformation from disturbed to normal spiral disk morphologies by $z\sim 1$ without significant interruption to their star-formation. Rejuvenation after a quenching event does not seem to be common except perhaps for the most massive objects. Quenching: We confirm that galaxies reaching a stellar mass of $M_*\sim10^{10.8}M_\odot$ ($M^*$) tend to quench. Also, quenching implies the presence of a bulge: the abundance of massive red disks is negligible at all redshifts over 2~dex in stellar mass. However the dominant quenching mechanism evolves. At $z>2$, the SMF of quiescent galaxies above $M^*$ is dominated by compact spheroids. Quenching at this early epoch destroys the disk and produces a compact remnant unless the star-forming progenitors at even higher redshifts are significantly more dense. At $1
- Published
- 2016
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34. The high mass end of the stellar mass function: Dependence on stellar population models and agreement between fits to the light profile
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Bernardi, M., Meert, A., Sheth, R. K., Fischer, J. -L., Huertas-Company, M., Maraston, C., Shankar, F., and Vikram, V.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We quantify the systematic effects on the stellar mass function which arise from assumptions about the stellar population, as well as how one fits the light profiles of the most luminous galaxies at z ~ 0.1. When comparing results from the literature, we are careful to separate out these effects. Our analysis shows that while systematics in the estimated comoving number density which arise from different treatments of the stellar population remain of order < 0.5 dex, systematics in photometry are now about 0.1 dex, despite recent claims in the literature. Compared to these more recent analyses, previous work based on Sloan Digital Sky Survey (SDSS) pipeline photometry leads to underestimates of rho_*(> M_*) by factors of 3-10 in the mass range 10^11 - 10^11.6 M_Sun, but up to a factor of 100 at higher stellar masses. This impacts studies which match massive galaxies to dark matter halos. Although systematics which arise from different treatments of the stellar population remain of order < 0.5 dex, our finding that systematics in photometry now amount to only about 0.1 dex in the stellar mass density is a significant improvement with respect to a decade ago. Our results highlight the importance of using the same stellar population and photometric models whenever low and high redshift samples are compared., Comment: 18 pages, 17 figures, accepted for publication in MNRAS. The PyMorph luminosities and stellar masses are available at https://www.physics.upenn.edu/~ameert/SDSS_PhotDec/
- Published
- 2016
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35. Selection bias in dynamically-measured super-massive black hole samples: consequences for pulsar timing arrays
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Sesana, A., Shankar, F., Bernardi, M., and Sheth, R. K.
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Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
Supermassive black hole -- host galaxy relations are key to the computation of the expected gravitational wave background (GWB) in the pulsar timing array (PTA) frequency band. It has been recently pointed out that standard relations adopted in GWB computations are in fact biased-high. We show that when this selection bias is taken into account, the expected GWB in the PTA band is a factor of about three smaller than previously estimated. Compared to other scaling relations recently published in the literature, the median amplitude of the signal at $f=1$yr$^{-1}$ drops from $1.3\times10^{-15}$ to $4\times10^{-16}$. Although this solves any potential tension between theoretical predictions and recent PTA limits without invoking other dynamical effects (such as stalling, eccentricity or strong coupling with the galactic environment), it also makes the GWB detection more challenging., Comment: 6 pages 4 figures, submitted to MNRAS letters
- Published
- 2016
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36. Design of the new supporting structure for the passive stabilizing shell assembly of RFX-mod2
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Berton, G., Bernardi, M., Dalla Palma, M., Marcuzzi, D., Pavei, M., and Peruzzo, S.
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- 2021
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37. Sloan Digital Sky Survey IV: Mapping the Milky Way, Nearby Galaxies, and the Distant Universe
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Blanton, MR, Bershady, MA, Abolfathi, B, Albareti, FD, Prieto, CA, Almeida, A, Alonso-García, J, Anders, F, Anderson, SF, Andrews, B, Aquino-Ortíz, E, Aragón-Salamanca, A, Argudo-Fernández, M, Armengaud, E, Aubourg, E, Avila-Reese, V, Badenes, C, Bailey, S, Barger, KA, Barrera-Ballesteros, J, Bartosz, C, Bates, D, Baumgarten, F, Bautista, J, Beaton, R, Beers, TC, Belfiore, F, Bender, CF, Berlind, AA, Bernardi, M, Beutler, F, Bird, JC, Bizyaev, D, Blanc, GA, Blomqvist, M, Bolton, AS, Boquien, M, Borissova, J, Bosch, RVD, Bovy, J, Brandt, WN, Brinkmann, J, Brownstein, JR, Bundy, K, Burgasser, AJ, Burtin, E, Busca, NG, Cappellari, M, Carigi, MLD, Carlberg, JK, Rosell, AC, Carrera, R, Chanover, NJ, Cherinka, B, Cheung, E, Chew, YGM, Chiappini, C, Choi, PD, Chojnowski, D, Chuang, CH, Chung, H, Cirolini, RF, Clerc, N, Cohen, RE, Comparat, J, Costa, LD, Cousinou, MC, Covey, K, Crane, JD, Croft, RAC, Cruz-Gonzalez, I, Cuadra, DG, Cunha, K, Damke, GJ, Darling, J, Davies, R, Dawson, K, Macorra, ADL, Dell'Agli, F, Lee, ND, Delubac, T, Mille, FD, Diamond-Stanic, A, Cano-Díaz, M, Donor, J, Downes, JJ, Drory, N, Bourboux, HDMD, Duckworth, CJ, Dwelly, T, Dyer, J, Ebelke, G, Eigenbrot, AD, Eisenstein, DJ, Emsellem, E, Eracleous, M, Escoffier, S, Evans, ML, Fan, X, and Fernández-Alvar, E
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cosmology: observations ,galaxies: general ,Galaxy: general ,instrumentation: spectrographs ,stars: general ,surveys ,astro-ph.GA ,Astronomy & Astrophysics ,Astronomical and Space Sciences - Abstract
We describe the Sloan Digital Sky Survey IV (SDSS-IV), a project encompassing three major spectroscopic programs. The Apache Point Observatory Galactic Evolution Experiment 2 (APOGEE-2) is observing hundreds of thousands of Milky Way stars at high resolution and high signal-to-noise ratios in the near-infrared. The Mapping Nearby Galaxies at Apache Point Observatory (MaNGA) survey is obtaining spatially resolved spectroscopy for thousands of nearby galaxies (median z ∼ 0.03). The extended Baryon Oscillation Spectroscopic Survey (eBOSS) is mapping the galaxy, quasar, and neutral gas distributions between z ~ 0.6 and 3.5 to constrain cosmology using baryon acoustic oscillations, redshift space distortions, and the shape of the power spectrum. Within eBOSS, we are conducting two major subprograms: the SPectroscopic IDentification of eROSITA Sources (SPIDERS), investigating X-ray AGNs and galaxies in X-ray clusters, and the Time Domain Spectroscopic Survey (TDSS), obtaining spectra of variable sources. All programs use the 2.5 m Sloan Foundation Telescope at the Apache Point Observatory; observations there began in Summer 2014. APOGEE-2 also operates a second near-infrared spectrograph at the 2.5 m du Pont Telescope at Las Campanas Observatory, with observations beginning in early 2017. Observations at both facilities are scheduled to continue through 2020. In keeping with previous SDSS policy, SDSS-IV provides regularly scheduled public data releases; the first one, Data Release 13, was made available in 2016 July.
- Published
- 2017
38. Adapting the Fitness Criteria for Non-Intensive Treatments in Older Patients with Acute Myeloid Leukemia to the Use of Venetoclax-Hypomethylating Agents Combination.—Practical Considerations from the Real-Life Experience of the Hematologists of the Rete Ematologica Lombarda
- Author
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Rossi, G, Borlenghi, E, Zappasodi, P, Lussana, F, Bernardi, M, Basilico, C, Molteni, A, Lotesoriere, I, Turrini, M, Frigeni, M, Fumagalli, M, Cozzi, P, Gigli, F, Cattaneo, C, Fracchiolla, N, Riva, M, Martini, G, Mancini, V, Cairoli, R, Todisco, E, Rossi, Giuseppe, Borlenghi, Erika, Zappasodi, Patrizia, Lussana, Federico, Bernardi, Massimo, Basilico, Claudia, Molteni, Alfredo, Lotesoriere, Ivana, Turrini, Mauro, Frigeni, Marco, Fumagalli, Monica, Cozzi, Paola, Gigli, Federica, Cattaneo, Chiara, Fracchiolla, Nicola Stefano, Riva, Marta, Martini, Gianluca, Mancini, Valentina, Cairoli, Roberto, Todisco, Elisabetta, Rossi, G, Borlenghi, E, Zappasodi, P, Lussana, F, Bernardi, M, Basilico, C, Molteni, A, Lotesoriere, I, Turrini, M, Frigeni, M, Fumagalli, M, Cozzi, P, Gigli, F, Cattaneo, C, Fracchiolla, N, Riva, M, Martini, G, Mancini, V, Cairoli, R, Todisco, E, Rossi, Giuseppe, Borlenghi, Erika, Zappasodi, Patrizia, Lussana, Federico, Bernardi, Massimo, Basilico, Claudia, Molteni, Alfredo, Lotesoriere, Ivana, Turrini, Mauro, Frigeni, Marco, Fumagalli, Monica, Cozzi, Paola, Gigli, Federica, Cattaneo, Chiara, Fracchiolla, Nicola Stefano, Riva, Marta, Martini, Gianluca, Mancini, Valentina, Cairoli, Roberto, and Todisco, Elisabetta
- Abstract
A retrospective survey was conducted in hematologic centres of the Rete Ematologica Lombarda (REL) on 529 older AML patients seen between 2020–2022. Compared to 2008–2016, the use of intensive chemotherapy (ICT) decreased from 40% to 18.1% and of hypomethylating agents (HMAs) from 19.5% to 13%, whereas the combination of Venetoclax/HMA, initially not available, increased from 0% to 36.7%. Objective treatment-specific fitness criteria proposed by SIE/SIES/GITMO in 2013 allow an appropriate choice between ICT and HMAs by balancing their efficacy and toxicity. Venetoclax/HMA, registered for patients unfit to ICT, has a unique toxicity profile because of prolonged granulocytopenia and increased infectious risk. Aiming at defining specific fitness criteria for the safe use of Venetoclax/HMA, a preliminary investigation was conducted among expert REL hematologists, asking for modifications of SIE/SIES/GITMO criteria they used to select candidates for Venetoclax/HMA. While opinions among experts varied, a general consensus emerged on restricting SIE/SIES/GITMO criteria for ICT-unfit patients to an age limit of 80–85, cardiac function > 40%, and absence of recurrent lung infections, bronchiectasis, or exacerbating COPD. Also, the presence of an adequate caregiver was considered mandatory. Such expert opinions may be clinically useful and may be considered when treatment-specific fitness criteria are updated to include Venetoclax/HMA.
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- 2024
39. From Fordism to Tourism: Genoa, Turin, and Milan
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Scott, N, Guerreiro, M, Pinto, P, Bernardi, M, Marra, E, Scott, N, Guerreiro, M, Pinto, P, Bernardi, M, and Marra, E
- Abstract
This chapter examines three Italian cities that have experienced a transition from “Fordism to tourism”: Genoa, Turin, and Milan. After an industrial crisis, they have invested in culture and tourism as alternative ways of development. This transition is examined using the theoretical framework of urban regimes highlighting five development trends: the city as a growth machine, the Fordist city, the creative city, the city as entertainment machine, and the blue-green city. By adopting this theoretical framework, the evidence shows how academic institutions, tour operators, and public authorities may or may not work together for the tourism development of their cities
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- 2024
40. The unbearable lightness of greenwashing. Changing narratives in post smart cities – the case of Milan
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Bernardi, M, Marra, E, Monica Bernardi, Ezio Marra, Bernardi, M, Marra, E, Monica Bernardi, and Ezio Marra
- Published
- 2024
41. The massive end of the luminosity and stellar mass functions and clustering from CMASS to SDSS: Evidence for and against passive evolution
- Author
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Bernardi, M., Meert, A., Sheth, R. K., Huertas-Company, M., Maraston, C., Shankar, F., and Vikram, V.
- Subjects
Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We describe the luminosity function, based on Sersic fits to the light profiles, of CMASS galaxies at z ~ 0.55. Compared to previous estimates, our Sersic-based reductions imply more luminous, massive galaxies, consistent with the effects of Sersic- rather than Petrosian or de Vaucouleur-based photometry on the Sloan Digital Sky Survey (SDSS) main galaxy sample at z ~ 0.1. This implies a significant revision of the high mass end of the correlation between stellar and halo mass. Inferences about the evolution of the luminosity and stellar mass functions depend strongly on the assumed, and uncertain, k+e corrections. In turn, these depend on the assumed age of the population. Applying k+e corrections taken from fitting the models of Maraston et al. (2009) to the colors of both SDSS and CMASS galaxies, the evolution of the luminosity and stellar mass functions appears impressively passive, provided that the fits are required to return old ages. However, when matched in comoving number- or luminosity-density, the SDSS galaxies are less strongly clustered compared to their counterparts in CMASS. This rules out the passive evolution scenario, and, indeed, any minor merger scenarios which preserve the rank ordering in stellar mass of the population. Potential incompletenesses in the CMASS sample would further enhance this mismatch. Our analysis highlights the virtue of combining clustering measurements with number counts., Comment: Accepted for publication in MNRAS, 15 pages, 12 figures
- Published
- 2015
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42. A catalog of visual-like morphologies in the 5 CANDELS fields using deep-learning
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Huertas-Company, M., Gravet, R., Cabrera-Vives, G., Pérez-González, P. G., Kartaltepe, J. S., Barro, G., Bernardi, M., Mei, S., Shankar, F., Dimauro, P., Bell, E. F., Kocevski, D., Koo, D. C., Faber, S. M., and Mcintosh, D. H.
- Subjects
Astrophysics - Astrophysics of Galaxies ,Astrophysics - Cosmology and Nongalactic Astrophysics - Abstract
We present a catalog of visual like H-band morphologies of $\sim50.000$ galaxies ($H_{f160w}<24.5$) in the 5 CANDELS fields (GOODS-N, GOODS-S, UDS, EGS and COSMOS). Morphologies are estimated with Convolutional Neural Networks (ConvNets). The median redshift of the sample is $
\sim1.25$. The algorithm is trained on GOODS-S for which visual classifications are publicly available and then applied to the other 4 fields. Following the CANDELS main morphology classification scheme, our model retrieves the probabilities for each galaxy of having a spheroid, a disk, presenting an irregularity, being compact or point source and being unclassifiable. ConvNets are able to predict the fractions of votes given a galaxy image with zero bias and $\sim10\%$ scatter. The fraction of miss-classifications is less than $1\%$. Our classification scheme represents a major improvement with respect to CAS (Concentration-Asymmetry-Smoothness)-based methods, which hit a $20-30\%$ contamination limit at high z. The catalog is released with the present paper via the $\href{http://rainbowx.fis.ucm.es/Rainbow_navigator_public}{Rainbow\,database}$, Comment: Accepted for publication in ApjS. Figure 10 summarizes the excellent agreement between our classification and a pure visual one. Table 3 shows the content of the catalogs. The catalogs are available from the Rainbow database (http://rainbowx.fis.ucm.es/Rainbow_navigator_public) based on the selections from the CANDELS team and cross-matched with 3D-HST v4.1 catalogs - Published
- 2015
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43. Comparison between the 10- and the 30-s-long Wingate Anaerobic Test in summer Paralympic athletes with a lower limb impairment
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Cavedon, Valentina, Rosponi, A., Alviti, F., De Angelis, M., Guerra, E., Rodio, A., Di Giacinto, B., Milanese, C., and Bernardi, M.
- Published
- 2021
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44. Association épidémiologique entre pollution et altérations oncogéniques dans le cancer du poumon
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Leblanc, S., primary, Genin, M., additional, Occelli, F., additional, Dauchet, L., additional, Leblanc, V., additional, Hominal, S., additional, Bizieux-Thaminy, A., additional, Thomassin, S., additional, Bernardi, M., additional, Briens, E., additional, Belmont, L., additional, Lefoll, C., additional, Renault, D., additional, Paysse, M., additional, Tierce, A., additional, Wasielewski, E., additional, Hamroun, A., additional, Debieuvre, D., additional, and Cortot, A., additional
- Published
- 2024
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45. Efficacité du Pembrolizumab chez des octogénaires traités en première ligne pour un cancer du poumon non à petites cellules, métastatique, PD-L1 ≥ 50%, (étude ESCKEYP–GFPC 05-2018)
- Author
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Corre, R., primary, Decroisette, C., additional, Auliac, J.B., additional, Falchero, L., additional, Curcio, H., additional, Amrane, K., additional, Perol, M., additional, Hominal, S., additional, Vieillot, S., additional, Huchot, E., additional, Fournel, P., additional, Bernardi, M., additional, Veillon, R., additional, Doubre, H., additional, Bota, S., additional, Le Garff, G., additional, Justeau, G., additional, Bylicki, O., additional, Roa, M., additional, Greillier, L., additional, and Descourt, R., additional
- Published
- 2024
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46. Cold-formed perforated uprights: Experimental evaluation of M-N domains
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Baldassino, N., primary, Bernardi, M., additional, and Zandonini, R., additional
- Published
- 2021
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47. Interconnected risk contributions: an heavy-tail approach to analyse US financial sectors
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Bernardi, M. and Petrella, L.
- Subjects
Quantitative Finance - Risk Management - Abstract
In this paper we consider a multivariate model-based approach to measure the dynamic evolution of tail risk interdependence among US banks, financial services and insurance sectors. To deeply investigate the risk contribution of insurers we consider separately life and non-life companies. To achieve this goal we apply the multivariate student-t Markov Switching model and the Multiple-CoVaR (CoES) risk measures introduced in Bernardi et. al. (2013b) to account for both the known stylised characteristics of the data and the contemporaneous joint distress events affecting financial sectors. Our empirical investigation finds that banks appear to be the major source of risk for all the remaining sectors, followed by the financial services and the insurance sectors, showing that insurance sector significantly contributes as well to the overall risk. Moreover, we find that the role of each sector in contributing to other sectors distress evolves over time accordingly to the current predominant financial condition, implying different interconnection strength., Comment: arXiv admin note: text overlap with arXiv:1312.6407
- Published
- 2014
48. Albumin Administration is Efficacious in the Management of Patients with Cirrhosis: A Systematic Review of the Literature
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Zaccherini G, Tufoni M, and Bernardi M
- Subjects
albumin ,ascites ,hepatorenal syndrome ,liver cirrhosis ,paracentesis ,peritonitis. ,Diseases of the digestive system. Gastroenterology ,RC799-869 - Abstract
Giacomo Zaccherini, Manuel Tufoni, Mauro Bernardi Department of Medical and Surgical Sciences, Alma Mater Studiorum - University of Bologna, Bologna 40138, ItalyCorrespondence: Mauro Bernardi Email mauro.bernardi@unibo.itAbstract: The use of albumin in patients with cirrhosis has been extensively discussed over recent years. Current treatment approaches depend on targeting related complications, aiming to treat and/or prevent circulatory dysfunction, bacterial infections and multi-organ failure. Albumin has been shown to prolong survival and reduce complications in patients with cirrhosis. This review aims to ascertain whether the use of albumin is justified in patients with cirrhosis. A systematic review of randomized controlled trials (RCTs) and meta-analyses evaluating albumin use in patients with cirrhosis published between 1985 and February 2020 was conducted; the quality and risk of bias of the included studies were assessed. In total, 45 RCTs and 10 meta-analyses were included. Based on the included evidence, albumin is superior at preventing and controlling the incidence of cirrhosis complications vs other plasma expanders. Recent studies reported that long-term albumin administration to patients with decompensated cirrhosis improves survival with a 38% reduction in the mortality hazard ratio compared with standard medical treatment alone. Albumin infusions are justified for routine use in patients with cirrhosis, and the use of albumin either alone or in combination with other treatments leads to clinical benefits. Long-term administration of albumin should be considered in some patients.Keywords: albumin, ascites, hepatorenal syndrome, liver cirrhosis, paracentesis, peritonitis
- Published
- 2020
49. Impact of housing nursery pigs according to body weight on the onset of feed intake, aggressive behavior, and growth performance
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Faccin, J. E. G., Laskoski, F., Quirino, M., Gonçalves, M. A. D., Mallmann, A. L., Orlando, U. A. D., Mellagi, A. P. G., Bernardi, M. L., Ulguim, R. R., and Bortolozzo, F. P.
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- 2020
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50. Antihypertensive treatment changes and related clinical outcomes in older hospitalized patients
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Cicco, S, D'Abbondanza, M, Proietti, M, Zaccone, V, Pes, C, Caradio, F, Mattioli, M, Piano, S, Marra, A, Nobili, A, Mannucci, P, Pietrangelo, A, Sesti, G, Buzzetti, E, Salzano, A, Cimellaro, A, Perticone, F, Violi, F, Corazza, G, Corrao, S, Marengoni, A, Salerno, F, Cesari, M, Tettamanti, M, Pasina, L, Franchi, C, Novella, A, Miglio, G, Galbussera, A, Ardoino, I, Prisco, D, Silvestri, E, Emmi, G, Bettiol, A, Mattioli, I, Biolo, G, Zanetti, M, Bartelloni, G, Zaccari, M, Chiuch, M, Vanoli, M, Grignani, G, Pulixi, E, Pirro, M, Lupattelli, G, Bianconi, V, Alcidi, R, Giotta, A, Mannarino, M, Girelli, D, Busti, F, Marchi, G, Barbagallo, M, Dominguez, L, Beneduce, V, Cacioppo, F, Natoli, G, Mularo, S, Raspanti, M, Argano, C, Cavallaro, F, Zoli, M, Matacena, M, Orio, G, Magnolfi, E, Serafini, G, Simili, A, Brunori, M, Lazzari, I, Cappellini, M, Fabio, G, De Amicis, M, De Luca, G, Scaramellini, N, Di Stefano, V, Leoni, S, Seghezzi, S, Di Mauro, A, Maira, D, Mancarella, M, Lucchi, T, Rossi, P, Clerici, M, Bonini, G, Conti, F, Prolo, S, Fabrizi, M, Martelengo, M, Vigani, G, Di Sabatino, A, Miceli, E, Lenti, M, Pisati, M, Pitotti, L, Padula, D, Antoci, V, Cambie, G, Pontremoli, R, Beccati, V, Nobili, G, Leoncini, G, Alberto, J, Cattaneo, F, Anastasio, L, Sofia, L, Carbone, M, Cipollone, F, Guagnano, M, Rossi, I, Valeriani, E, D'Ardes, D, Esposito, L, Sestili, S, Angelucci, E, Mancuso, G, Calipari, D, Bartone, M, Delitala, G, Berria, M, Delitala, A, Muscaritoli, M, Molfino, A, Petrillo, E, Giorgi, A, Gracin, C, Imbimbo, G, Zuccala, G, D'Aurizio, G, Romanelli, G, Volpini, A, Lucente, D, Manzoni, F, Pirozzi, A, Zucchelli, A, Picardi, A, Gentilucci, U, Gallo, P, Dell'Unto, C, Bellelli, G, Corsi, M, Antonucci, C, Sidoli, C, Principato, G, Bonfanti, A, Szabo, H, Mazzola, P, Piazzoli, A, Arturi, F, Succurro, E, Tassone, B, Giofre, F, Serra, M, Bleve, M, Brucato, A, De Falco, T, Negro, E, Brenna, M, Trotta, L, Squintani, G, Randi, M, Fabris, F, Bertozzi, I, Bogoni, G, Rabuini, M, Prandini, T, Ratti, F, Zurlo, C, Cerruti, L, Cosi, E, Manfredini, R, Fabbian, F, Boari, B, De Giorgi, A, Tiseo, R, Paolisso, G, Rizzo, M, Catalano, C, Di Meo, I, Borghi, C, Strocchi, E, Ianniello, E, Soldati, M, Schiavone, S, Bragagni, A, Leoni, F, De Sando, V, Scarduelli, S, Cammarosano, M, Pareo, I, Sabba, C, Vella, F, Suppressa, P, De Vincenzo, G, Comitangelo, A, Amoruso, E, Custodero, C, Re, G, Schilardi, A, Loparco, F, Fenoglio, L, Falcetta, A, Giraudo, A, D'Aniano, S, Fracanzani, A, Tiraboschi, S, Cespiati, A, Oberti, G, Sigon, G, Cinque, F, Peyvandi, F, Rossio, R, Colombo, G, Agosti, P, Pagliaro, E, Semproni, E, Ciro, C, Monzani, V, Savojardo, V, Ceriani, G, Folli, C, Pallini, G, Montecucco, F, Ottonello, L, Caserza, L, Vischi, G, Kassem, S, Liberale, L, Liberato, N, Tognin, T, Purrello, F, Di Pino, A, Piro, S, Rozzini, R, Falanga, L, Pisciotta, M, Bellucci, F, Buffelli, S, Ferrandina, C, Mazzeo, F, Spazzini, E, Cono, G, Cesaroni, G, Montrucchio, G, Peasso, P, Favale, E, Poletto, C, Margaria, C, Sanino, M, Perri, L, Guasti, L, Rotunno, F, Castiglioni, L, Maresca, A, Squizzato, A, Campiotti, L, Grossi, A, Diprizio, R, Dentali, F, Bertolotti, M, Mussi, C, Lancellotti, G, Libbra, M, Galassi, M, Grassi, Y, Greco, A, Bigi, E, Pellegrini, E, Orlandi, L, Dondi, G, Carulli, L, Sciacqua, A, Perticone, M, Battaglia, R, Maio, R, Scozzafava, A, Condoleo, V, Falbo, T, Colangelo, L, Filice, M, Clausi, E, Stanghellini, V, Ruggeri, E, del Vecchio, S, Benzoni, I, Salvi, A, Leonardi, R, Damiani, G, Moroncini, G, Capeci, W, Martino, G, Biondi, L, Pettinari, P, Ormas, M, Filippini, E, Benfaremo, D, Romiti, R, Ghio, R, Col, A, Minisola, S, Cilli, M, Labbadia, G, Afeltra, A, Marigliano, B, Pipita, M, Castellino, P, Zanoli, L, Gennaro, A, Gaudio, A, Pignataro, S, Mete, F, Gino, M, Moreo, G, Pina, G, Ballestrero, A, Ferrando, F, Gonella, R, Cerminara, D, Setti, P, Traversa, C, Scarsi, C, Graziella, B, Baldassarre, S, Fragapani, S, Gruden, G, Berti, F, Famularo, G, Tarsitani, P, Castello, R, Pasino, M, Maggio, M, Ceda, G, Morganti, S, Artoni, A, Grossi, M, Del Giacco, S, Firinu, D, Costanzo, G, Argiolas, G, Paoletti, G, Losa, F, Montalto, G, Licata, A, Montalto, F, Corica, F, Basile, G, Catalano, A, Bellone, F, Principato, C, Malatino, L, Stancanelli, B, Terranova, V, Di Marca, S, Di Quattro, R, La Malfa, L, Caruso, R, Mecocci, P, Ruggiero, C, Boccardi, V, Meschi, T, Ticinesi, A, Nouvenne, A, Minuz, P, Fondrieschi, L, Imperiale, G, Morellini, S, Pirisi, M, Fra, G, Sola, D, Bellan, M, Quadri, R, Larovere, E, Novelli, M, Simeone, E, Scurti, R, Tolloso, F, Tarquini, R, Valoriani, A, Dolenti, S, Vannini, G, Volpi, R, Bocchi, P, Vignali, A, Harari, S, Lonati, C, Napoli, F, Aiello, I, Salvatore, T, Monaco, L, Ricozzi, C, Pilotto, A, Indiano, I, Gandolfo, F, Pasini, F, Capecchi, P, Nuti, R, Valenti, R, Ruvio, M, Cappelli, S, Palazzuoli, A, Bernardi, M, Bassi, S, Santi, L, Zaccherini, G, Durante, V, Tirotta, D, Eusebi, G, Cattaneo, M, Amoruso, M, Fracasso, P, Fasolino, C, Tresoldi, M, Bozzolo, E, Damanti, S, Porta, M, Armentaro, G, Arnone, M, Barone, M, Bertolino, L, Bianco, S, Binello, N, Brancati, S, Buonauro, A, Cordeddu, W, Curcio, R, Dalbeni, A, D'Agnano, S, De Feo, M, Donnarumma, E, Fei, M, Gambino, C, Giorgini, P, Lombardi, R, Miceli, G, Naccarato, P, Noviello, S, Olivieri, G, Parente, R, Pignataro, F, Poma, S, Porceddu, E, Pucci, G, Ricchio, M, Sabena, A, Salice, M, Santarossa, C, Savona, A, Savrie, C, Scicali, R, Stabile, M, Talerico, G, Talia, M, Tassone, E, Teatini, T, Tombolini, E, Traversa, M, Vettore, E, Vignal, A, Vilardi, L, Villani, R, Vitale, F, Cicco S., D'Abbondanza M., Proietti M., Zaccone V., Pes C., Caradio F., Mattioli M., Piano S., Marra A. M., Nobili A., Mannucci P. M., Pietrangelo A., Sesti G., Buzzetti E., Salzano A., Cimellaro A., Perticone F., Violi F., Corazza G. R., Corrao S., Marengoni A., Salerno F., Cesari M., Tettamanti M., Pasina L., Franchi C., Novella A., Miglio G., Galbussera A. A., Ardoino I., Prisco D., Silvestri E., Emmi G., Bettiol A., Mattioli I., Biolo G., Zanetti M., Bartelloni G., Zaccari M., Chiuch M., Vanoli M., Grignani G., Pulixi E. A., Pirro M., Lupattelli G., Bianconi V., Alcidi R., Giotta A., Mannarino M. R., Girelli D., Busti F., Marchi G., Barbagallo M., Dominguez L., Beneduce V., Cacioppo F., Natoli G., Mularo S., Raspanti M., Argano C., Cavallaro F., Zoli M., Matacena M. L., Orio G., Magnolfi E., Serafini G., Simili A., Brunori M., Lazzari I., Cappellini M. D., Fabio G., De Amicis M. M., De Luca G., Scaramellini N., Di Stefano V., Leoni S., Seghezzi S., Di Mauro A. D., Maira D., Mancarella M., Lucchi T., Rossi P. D., Clerici M., Bonini G., Conti F., Prolo S., Fabrizi M., Martelengo M., Vigani G., Di Sabatino A., Miceli E., Lenti M. V., Pisati M., Pitotti L., Padula D., Antoci V., Cambie G., Pontremoli R., Beccati V., Nobili G., Leoncini G., Alberto J., Cattaneo F., Anastasio L., Sofia L., Carbone M., Cipollone F., Guagnano M. T., Rossi I., Valeriani E., D'Ardes D., Esposito L., Sestili S., Angelucci E., Mancuso G., Calipari D., Bartone M., Delitala G., Berria M., Delitala A., Muscaritoli M., Molfino A., Petrillo E., Giorgi A., Gracin C., Imbimbo G., Zuccala G., D'Aurizio G., Romanelli G., Volpini A., Lucente D., Manzoni F., Pirozzi A., Zucchelli A., Picardi A., Gentilucci U. V., Gallo P., Dell'Unto C., Bellelli G., Corsi M., Antonucci C., Sidoli C., Principato G., Bonfanti A., Szabo H., Mazzola P., Piazzoli A., Arturi F., Succurro E., Tassone B., Giofre F., Serra M. G., Bleve M. A., Brucato A., De Falco T., Negro E., Brenna M., Trotta L., Squintani G. L., Randi M. L., Fabris F., Bertozzi I., Bogoni G., Rabuini M. V., Prandini T., Ratti F., Zurlo C., Cerruti L., Cosi E., Manfredini R., Fabbian F., Boari B., De Giorgi A., Tiseo R., Paolisso G., Rizzo M. R., Catalano C., Di Meo I., Borghi C., Strocchi E., Ianniello E., Soldati M., Schiavone S., Bragagni A., Leoni F. G., De Sando V., Scarduelli S., Cammarosano M., Pareo I., Sabba C., Vella F. S., Suppressa P., De Vincenzo G. M., Comitangelo A., Amoruso E., Custodero C., Re G., Schilardi A., Loparco F., Fenoglio L., Falcetta A., Giraudo A. V., D'Aniano S., Fracanzani A. L., Tiraboschi S., Cespiati A., Oberti G., Sigon G., Cinque F., Peyvandi F., Rossio R., Colombo G., Agosti P., Pagliaro E., Semproni E., Ciro C., Monzani V., Savojardo V., Ceriani G., Folli C., Pallini G., Montecucco F., Ottonello L., Caserza L., Vischi G., Kassem S., Liberale L., Liberato N. L., Tognin T., Purrello F., Di Pino A., Piro S., Rozzini R., Falanga L., Pisciotta M. S., Bellucci F. B., Buffelli S., Ferrandina C., Mazzeo F., Spazzini E., Cono G., Cesaroni G., Montrucchio G., Peasso P., Favale E., Poletto C., Margaria C., Sanino M., Perri L., Guasti L., Rotunno F., Castiglioni L., Maresca A., Squizzato A., Campiotti L., Grossi A., Diprizio R. D., Dentali F., Bertolotti M., Mussi C., Lancellotti G., Libbra M. V., Galassi M., Grassi Y., Greco A., Bigi E., Pellegrini E., Orlandi L., Dondi G., Carulli L., Sciacqua A., Perticone M., Battaglia R., Maio R., Scozzafava A., Condoleo V., Falbo T., Colangelo L., Filice M., Clausi E., Stanghellini V., Ruggeri E., del Vecchio S., Benzoni I., Salvi A., Leonardi R., Damiani G., Moroncini G., Capeci W., Martino G. P., Biondi L., Pettinari P., Ormas M., Filippini E., Benfaremo D., Romiti R., Ghio R., Col A. D., Minisola S., Cilli M., Labbadia G., Afeltra A., Marigliano B., Pipita M. E., Castellino P., Zanoli L., Gennaro A., Gaudio A., Pignataro S., Mete F., Gino M., Moreo G., Pina G., Ballestrero A., Ferrando F., Gonella R., Cerminara D., Setti P., Traversa C., Scarsi C., Graziella B., Baldassarre S., Fragapani S., Gruden G., Berti F., Famularo G., Tarsitani P., Castello R., Pasino M., Maggio M. G., Ceda G. P., Morganti S., Artoni A., Grossi M., Del Giacco S., Firinu D., Costanzo G., Argiolas G., Paoletti G., Losa F., Montalto G., Licata A., Montalto F. A., Corica F., Basile G., Catalano A., Bellone F., Principato C., Malatino L., Stancanelli B., Terranova V., Di Marca S., Di Quattro R., La Malfa L., Caruso R., Mecocci P., Ruggiero C., Boccardi V., Meschi T., Ticinesi A., Nouvenne A., Minuz P., Fondrieschi L., Imperiale G. N., Morellini S., Pirisi M., Fra G. P., Sola D., Bellan M., Quadri R., Larovere E., Novelli M., Simeone E., Scurti R., Tolloso F., Tarquini R., Valoriani A., Dolenti S., Vannini G., Volpi R., Bocchi P., Vignali A., Harari S., Lonati C., Napoli F., Aiello I., Salvatore T., Monaco L., Ricozzi C., Pilotto A., Indiano I., Gandolfo F., Pasini F. L., Capecchi P. L., Nuti R., Valenti R., Ruvio M., Cappelli S., Palazzuoli A., Bernardi M., Bassi S. L., Santi L., Zaccherini G., Durante V., Tirotta D., Eusebi G., Cattaneo M., Amoruso M. V., Fracasso P., Fasolino C., Tresoldi M., Bozzolo E., Damanti S., Porta M., Armentaro G., Arnone M. I., Barone M., Bertolino L., Bianco S., Binello N., Brancati S., Buonauro A., Cordeddu W., Curcio R., Dalbeni A., D'Agnano S., De Feo M., Donnarumma E., Fei M., Gambino C. G., Giorgini P., Lombardi R., Miceli G., Naccarato P., Noviello S., Olivieri G., Parente R., Pignataro F. S., Poma S., Porceddu E., Pucci G., Ricchio M., Sabena A., Salice M., Santarossa C., Savona A., Savrie C., Scicali R., Stabile M., Talerico G., Talia M., Tassone E. J., Teatini T., Tombolini E., Traversa M., Vettore E., Vignal A., Vilardi L., Villani R., Vitale F., Cicco, S, D'Abbondanza, M, Proietti, M, Zaccone, V, Pes, C, Caradio, F, Mattioli, M, Piano, S, Marra, A, Nobili, A, Mannucci, P, Pietrangelo, A, Sesti, G, Buzzetti, E, Salzano, A, Cimellaro, A, Perticone, F, Violi, F, Corazza, G, Corrao, S, Marengoni, A, Salerno, F, Cesari, M, Tettamanti, M, Pasina, L, Franchi, C, Novella, A, Miglio, G, Galbussera, A, Ardoino, I, Prisco, D, Silvestri, E, Emmi, G, Bettiol, A, Mattioli, I, Biolo, G, Zanetti, M, Bartelloni, G, Zaccari, M, Chiuch, M, Vanoli, M, Grignani, G, Pulixi, E, Pirro, M, Lupattelli, G, Bianconi, V, Alcidi, R, Giotta, A, Mannarino, M, Girelli, D, Busti, F, Marchi, G, Barbagallo, M, Dominguez, L, Beneduce, V, Cacioppo, F, Natoli, G, Mularo, S, Raspanti, M, Argano, C, Cavallaro, F, Zoli, M, Matacena, M, Orio, G, Magnolfi, E, Serafini, G, Simili, A, Brunori, M, Lazzari, I, Cappellini, M, Fabio, G, De Amicis, M, De Luca, G, Scaramellini, N, Di Stefano, V, Leoni, S, Seghezzi, S, Di Mauro, A, Maira, D, Mancarella, M, Lucchi, T, Rossi, P, Clerici, M, Bonini, G, Conti, F, Prolo, S, Fabrizi, M, Martelengo, M, Vigani, G, Di Sabatino, A, Miceli, E, Lenti, M, Pisati, M, Pitotti, L, Padula, D, Antoci, V, Cambie, G, Pontremoli, R, Beccati, V, Nobili, G, Leoncini, G, Alberto, J, Cattaneo, F, Anastasio, L, Sofia, L, Carbone, M, Cipollone, F, Guagnano, M, Rossi, I, Valeriani, E, D'Ardes, D, Esposito, L, Sestili, S, Angelucci, E, Mancuso, G, Calipari, D, Bartone, M, Delitala, G, Berria, M, Delitala, A, Muscaritoli, M, Molfino, A, Petrillo, E, Giorgi, A, Gracin, C, Imbimbo, G, Zuccala, G, D'Aurizio, G, Romanelli, G, Volpini, A, Lucente, D, Manzoni, F, Pirozzi, A, Zucchelli, A, Picardi, A, Gentilucci, U, Gallo, P, Dell'Unto, C, Bellelli, G, Corsi, M, Antonucci, C, Sidoli, C, Principato, G, Bonfanti, A, Szabo, H, Mazzola, P, Piazzoli, A, Arturi, F, Succurro, E, Tassone, B, Giofre, F, Serra, M, Bleve, M, Brucato, A, De Falco, T, Negro, E, Brenna, M, Trotta, L, Squintani, G, Randi, M, Fabris, F, Bertozzi, I, Bogoni, G, Rabuini, M, Prandini, T, Ratti, F, Zurlo, C, Cerruti, L, Cosi, E, Manfredini, R, Fabbian, F, Boari, B, De Giorgi, A, Tiseo, R, Paolisso, G, Rizzo, M, Catalano, C, Di Meo, I, Borghi, C, Strocchi, E, Ianniello, E, Soldati, M, Schiavone, S, Bragagni, A, Leoni, F, De Sando, V, Scarduelli, S, Cammarosano, M, Pareo, I, Sabba, C, Vella, F, Suppressa, P, De Vincenzo, G, Comitangelo, A, Amoruso, E, Custodero, C, Re, G, Schilardi, A, Loparco, F, Fenoglio, L, Falcetta, A, Giraudo, A, D'Aniano, S, Fracanzani, A, Tiraboschi, S, Cespiati, A, Oberti, G, Sigon, G, Cinque, F, Peyvandi, F, Rossio, R, Colombo, G, Agosti, P, Pagliaro, E, Semproni, E, Ciro, C, Monzani, V, Savojardo, V, Ceriani, G, Folli, C, Pallini, G, Montecucco, F, Ottonello, L, Caserza, L, Vischi, G, Kassem, S, Liberale, L, Liberato, N, Tognin, T, Purrello, F, Di Pino, A, Piro, S, Rozzini, R, Falanga, L, Pisciotta, M, Bellucci, F, Buffelli, S, Ferrandina, C, Mazzeo, F, Spazzini, E, Cono, G, Cesaroni, G, Montrucchio, G, Peasso, P, Favale, E, Poletto, C, Margaria, C, Sanino, M, Perri, L, Guasti, L, Rotunno, F, Castiglioni, L, Maresca, A, Squizzato, A, Campiotti, L, Grossi, A, Diprizio, R, Dentali, F, Bertolotti, M, Mussi, C, Lancellotti, G, Libbra, M, Galassi, M, Grassi, Y, Greco, A, Bigi, E, Pellegrini, E, Orlandi, L, Dondi, G, Carulli, L, Sciacqua, A, Perticone, M, Battaglia, R, Maio, R, Scozzafava, A, Condoleo, V, Falbo, T, Colangelo, L, Filice, M, Clausi, E, Stanghellini, V, Ruggeri, E, del Vecchio, S, Benzoni, I, Salvi, A, Leonardi, R, Damiani, G, Moroncini, G, Capeci, W, Martino, G, Biondi, L, Pettinari, P, Ormas, M, Filippini, E, Benfaremo, D, Romiti, R, Ghio, R, Col, A, Minisola, S, Cilli, M, Labbadia, G, Afeltra, A, Marigliano, B, Pipita, M, Castellino, P, Zanoli, L, Gennaro, A, Gaudio, A, Pignataro, S, Mete, F, Gino, M, Moreo, G, Pina, G, Ballestrero, A, Ferrando, F, Gonella, R, Cerminara, D, Setti, P, Traversa, C, Scarsi, C, Graziella, B, Baldassarre, S, Fragapani, S, Gruden, G, Berti, F, Famularo, G, Tarsitani, P, Castello, R, Pasino, M, Maggio, M, Ceda, G, Morganti, S, Artoni, A, Grossi, M, Del Giacco, S, Firinu, D, Costanzo, G, Argiolas, G, Paoletti, G, Losa, F, Montalto, G, Licata, A, Montalto, F, Corica, F, Basile, G, Catalano, A, Bellone, F, Principato, C, Malatino, L, Stancanelli, B, Terranova, V, Di Marca, S, Di Quattro, R, La Malfa, L, Caruso, R, Mecocci, P, Ruggiero, C, Boccardi, V, Meschi, T, Ticinesi, A, Nouvenne, A, Minuz, P, Fondrieschi, L, Imperiale, G, Morellini, S, Pirisi, M, Fra, G, Sola, D, Bellan, M, Quadri, R, Larovere, E, Novelli, M, Simeone, E, Scurti, R, Tolloso, F, Tarquini, R, Valoriani, A, Dolenti, S, Vannini, G, Volpi, R, Bocchi, P, Vignali, A, Harari, S, Lonati, C, Napoli, F, Aiello, I, Salvatore, T, Monaco, L, Ricozzi, C, Pilotto, A, Indiano, I, Gandolfo, F, Pasini, F, Capecchi, P, Nuti, R, Valenti, R, Ruvio, M, Cappelli, S, Palazzuoli, A, Bernardi, M, Bassi, S, Santi, L, Zaccherini, G, Durante, V, Tirotta, D, Eusebi, G, Cattaneo, M, Amoruso, M, Fracasso, P, Fasolino, C, Tresoldi, M, Bozzolo, E, Damanti, S, Porta, M, Armentaro, G, Arnone, M, Barone, M, Bertolino, L, Bianco, S, Binello, N, Brancati, S, Buonauro, A, Cordeddu, W, Curcio, R, Dalbeni, A, D'Agnano, S, De Feo, M, Donnarumma, E, Fei, M, Gambino, C, Giorgini, P, Lombardi, R, Miceli, G, Naccarato, P, Noviello, S, Olivieri, G, Parente, R, Pignataro, F, Poma, S, Porceddu, E, Pucci, G, Ricchio, M, Sabena, A, Salice, M, Santarossa, C, Savona, A, Savrie, C, Scicali, R, Stabile, M, Talerico, G, Talia, M, Tassone, E, Teatini, T, Tombolini, E, Traversa, M, Vettore, E, Vignal, A, Vilardi, L, Villani, R, Vitale, F, Cicco S., D'Abbondanza M., Proietti M., Zaccone V., Pes C., Caradio F., Mattioli M., Piano S., Marra A. M., Nobili A., Mannucci P. M., Pietrangelo A., Sesti G., Buzzetti E., Salzano A., Cimellaro A., Perticone F., Violi F., Corazza G. R., Corrao S., Marengoni A., Salerno F., Cesari M., Tettamanti M., Pasina L., Franchi C., Novella A., Miglio G., Galbussera A. A., Ardoino I., Prisco D., Silvestri E., Emmi G., Bettiol A., Mattioli I., Biolo G., Zanetti M., Bartelloni G., Zaccari M., Chiuch M., Vanoli M., Grignani G., Pulixi E. A., Pirro M., Lupattelli G., Bianconi V., Alcidi R., Giotta A., Mannarino M. R., Girelli D., Busti F., Marchi G., Barbagallo M., Dominguez L., Beneduce V., Cacioppo F., Natoli G., Mularo S., Raspanti M., Argano C., Cavallaro F., Zoli M., Matacena M. L., Orio G., Magnolfi E., Serafini G., Simili A., Brunori M., Lazzari I., Cappellini M. D., Fabio G., De Amicis M. M., De Luca G., Scaramellini N., Di Stefano V., Leoni S., Seghezzi S., Di Mauro A. D., Maira D., Mancarella M., Lucchi T., Rossi P. 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S., Poma S., Porceddu E., Pucci G., Ricchio M., Sabena A., Salice M., Santarossa C., Savona A., Savrie C., Scicali R., Stabile M., Talerico G., Talia M., Tassone E. J., Teatini T., Tombolini E., Traversa M., Vettore E., Vignal A., Vilardi L., Villani R., and Vitale F.
- Abstract
Background: Hypertension management in older patients represents a challenge, particularly when hospitalized. Objective: The objective of this study is to investigate the determinants and related outcomes of antihypertensive drug prescription in a cohort of older hospitalized patients. Methods: A total of 5671 patients from REPOSI (a prospective multicentre observational register of older Italian in-patients from internal medicine or geriatric wards) were considered; 4377 (77.2%) were hypertensive. Minimum treatment (MT) for hypertension was defined according to the 2018 ESC guidelines [an angiotensin-converting-enzyme-inhibitor (ACE-I) or an angiotensin-receptor-blocker (ARB) with a calcium-channel-blocker (CCB) and/or a thiazide diuretic; if >80 years old, an ACE-I or ARB or CCB or thiazide diuretic]. Determinants of MT discontinuation at discharge were assessed. Study outcomes were any cause rehospitalization/all cause death, all-cause death, cardiovascular (CV) hospitalization/death, CV death, non-CV death, evaluated according to the presence of MT at discharge. Results: Hypertensive patients were older than normotensives, with a more impaired functional status, higher burden of comorbidity and polypharmacy. A total of 2233 patients were on MT at admission, 1766 were on MT at discharge. Discontinuation of MT was associated with the presence of comorbidities (lower odds for diabetes, higher odds for chronic kidney disease and dementia). An adjusted multivariable logistic regression analysis showed that MT for hypertension at discharge was associated with lower risk of all-cause death, all-cause death/hospitalization, CV death, CV death/hospitalization and non-CV death. Conclusions: Guidelines-suggested MT for hypertension at discharge is associated with a lower risk of adverse clinical outcomes. Nevertheless, changes in antihypertensive treatment still occur in a significant proportion of older hospitalized patients.
- Published
- 2023
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