851 results on '"P. Thirion"'
Search Results
52. Long-term outcomes after severe acute kidney injury in critically ill patients: the SALTO study
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Chaïbi, Khalil, Ehooman, Franck, Pons, Bertrand, Martin-Lefevre, Laurent, Boulet, Eric, Boyer, Alexandre, Chevrel, Guillaume, Lerolle, Nicolas, Carpentier, Dorothée, de Prost, Nicolas, Lautrette, Alexandre, Bretagnol, Anne, Mayaux, Julien, Nseir, Saad, Megarbane, Bruno, Thirion, Marina, Forel, Jean-Marie, Maizel, Julien, Yonis, Hodane, Markowicz, Philippe, Thiery, Guillaume, Schortgen, Frédérique, Couchoud, Cécile, Dreyfuss, Didier, and Gaudry, Stephane
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- 2023
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53. The gut microbiota contributes to the pathogenesis of anorexia nervosa in humans and mice
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Fan, Yong, Støving, René Klinkby, Berreira Ibraim, Samar, Hyötyläinen, Tuulia, Thirion, Florence, Arora, Tulika, Lyu, Liwei, Stankevic, Evelina, Hansen, Tue Haldor, Déchelotte, Pierre, Sinioja, Tim, Ragnarsdottir, Oddny, Pons, Nicolas, Galleron, Nathalie, Quinquis, Benoît, Levenez, Florence, Roume, Hugo, Falony, Gwen, Vieira-Silva, Sara, Raes, Jeroen, Clausen, Loa, Telléus, Gry Kjaersdam, Bäckhed, Fredrik, Oresic, Matej, Ehrlich, S. Dusko, and Pedersen, Oluf
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- 2023
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54. LARS2 variants can present as premature ovarian insufficiency in the absence of overt hearing loss
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Neyroud, Anne Sophie, Rudinger-Thirion, Joëlle, Frugier, Magali, Riley, Lisa G., Bidet, Maud, Akloul, Linda, Simpson, Andrea, Gilot, David, Christodoulou, John, Ravel, Célia, Sinclair, Andrew H., Belaud-Rotureau, Marc-Antoine, Tucker, Elena J., and Jaillard, Sylvie
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- 2023
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55. Aggregation of Multiple Knockoffs
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Nguyen, Tuan-Binh, Chevalier, Jérôme-Alexis, Thirion, Bertrand, and Arlot, Sylvain
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Mathematics - Statistics Theory ,Statistics - Applications ,Statistics - Methodology ,Statistics - Machine Learning - Abstract
We develop an extension of the Knockoff Inference procedure, introduced by Barber and Candes (2015). This new method, called Aggregation of Multiple Knockoffs (AKO), addresses the instability inherent to the random nature of Knockoff-based inference. Specifically, AKO improves both the stability and power compared with the original Knockoff algorithm while still maintaining guarantees for False Discovery Rate control. We provide a new inference procedure, prove its core properties, and demonstrate its benefits in a set of experiments on synthetic and real datasets., Comment: Accepted to ICML 2020 (Thirty-seventh International Conference on Machine Learning). This version includes both the main text of the conference paper and supplementary materials (as appendices). 35 pages, 7 figures
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- 2020
56. NeuroQuery: comprehensive meta-analysis of human brain mapping
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Dockès, Jérôme, Poldrack, Russell, Primet, Romain, Gözükan, Hande, Yarkoni, Tal, Suchanek, Fabian, Thirion, Bertrand, and Varoquaux, Gaël
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Quantitative Biology - Quantitative Methods ,Statistics - Machine Learning - Abstract
Reaching a global view of brain organization requires assembling evidence on widely different mental processes and mechanisms. The variety of human neuroscience concepts and terminology poses a fundamental challenge to relating brain imaging results across the scientific literature. Existing meta-analysis methods perform statistical tests on sets of publications associated with a particular concept. Thus, large-scale meta-analyses only tackle single terms that occur frequently. We propose a new paradigm, focusing on prediction rather than inference. Our multivariate model predicts the spatial distribution of neurological observations, given text describing an experiment, cognitive process, or disease. This approach handles text of arbitrary length and terms that are too rare for standard meta-analysis. We capture the relationships and neural correlates of 7 547 neuroscience terms across 13 459 neuroimaging publications. The resulting meta-analytic tool, neuroquery.org, can ground hypothesis generation and data-analysis priors on a comprehensive view of published findings on the brain.
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- 2020
57. Multi-subject MEG/EEG source imaging with sparse multi-task regression
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Janati, Hicham, Bazeille, Thomas, Thirion, Bertrand, Cuturi, Marco, and Gramfort, Alexandre
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Statistics - Machine Learning ,Computer Science - Machine Learning ,Quantitative Biology - Neurons and Cognition - Abstract
Magnetoencephalography and electroencephalography (M/EEG) are non-invasive modalities that measure the weak electromagnetic fields generated by neural activity. Estimating the location and magnitude of the current sources that generated these electromagnetic fields is a challenging ill-posed regression problem known as \emph{source imaging}. When considering a group study, a common approach consists in carrying out the regression tasks independently for each subject. An alternative is to jointly localize sources for all subjects taken together, while enforcing some similarity between them. By pooling all measurements in a single multi-task regression, one makes the problem better posed, offering the ability to identify more sources and with greater precision. The Minimum Wasserstein Estimates (MWE) promotes focal activations that do not perfectly overlap for all subjects, thanks to a regularizer based on Optimal Transport (OT) metrics. MWE promotes spatial proximity on the cortical mantel while coping with the varying noise levels across subjects. On realistic simulations, MWE decreases the localization error by up to 4 mm per source compared to individual solutions. Experiments on the Cam-CAN dataset show a considerable improvement in spatial specificity in population imaging. Our analysis of a multimodal dataset shows how multi-subject source localization closes the gap between MEG and fMRI for brain mapping., Comment: version 2. arXiv admin note: text overlap with arXiv:1902.04812
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- 2019
58. Fast shared response model for fMRI data
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Richard, Hugo, Martin, Lucas, Pinho, Ana Luısa, Pillow, Jonathan, and Thirion, Bertrand
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning ,Electrical Engineering and Systems Science - Image and Video Processing ,Quantitative Biology - Neurons and Cognition - Abstract
The shared response model provides a simple but effective framework to analyse fMRI data of subjects exposed to naturalistic stimuli. However when the number of subjects or runs is large, fitting the model requires a large amount of memory and computational power, which limits its use in practice. In this work, we introduce the FastSRM algorithm that relies on an intermediate atlas-based representation. It provides considerable speed-up in time and memory usage, hence it allows easy and fast large-scale analysis of naturalistic-stimulus fMRI data. Using four different datasets, we show that our method matches the performance of the original SRM algorithm while being about 5x faster and 20x to 40x more memory efficient. Based on this contribution, we use FastSRM to predict age from movie watching data on the CamCAN sample. Besides delivering accurate predictions (mean absolute error of 7.5 years), FastSRM extracts topographic patterns that are predictive of age, demonstrating that brain activity during free perception reflects age.
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- 2019
59. Domain wall pinning in a circular cross-section wire with modulated diameter
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De Riz, A., Trapp, B., Fernandez-Roldan, J. A., Thirion, Ch., Toussaint, J. -Ch., Fruchart, O., and Gusakova, D.
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Condensed Matter - Mesoscale and Nanoscale Physics - Abstract
Domain wall propagation in cylindrical nanowires with modulations of diameter is a key phenomenon to design physics-oriented devices, or a disruptive three-dimensional magnetic memory. This chapter presents a combination of analytical modelling and micromagnetic simulations, with the aim to present a comprehensive panorama of the physics of pinning of domain walls at modulations, when moved under the stimulus of a magnetic field or a spin-polarized current. For the sake of considering simple physics, we consider diameters of a few tens of nanometers at most, and accordingly domain walls of transverse type. Modeling with suitable approximations provides simple scaling laws, while simulations are more accurate, refining the results and defining the range of validity of the models. While pinning increases with the relative change of diameter, a key feature is the much larger efficiency of pinning at an increase of diameter upon considering current rather than field, due to the drastic decrease of current density related to the increase of diameter., Comment: 37 pages, 14 figures, overview chapter
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- 2019
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60. Fast domain walls governed by \OE rsted fields in cylindrical magnetic nanowires
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Schöbitz, M., De Riz, A., Martin, S., Bochmann, S., Thirion, C., Vogel, J., Foerster, M., Aballe, L., Menteş, T. O., Locatelli, A., Genuzio, F., Denmat, S. Le, Cagnon, L., Toussaint, J. C., Gusakova, D., Bachmann, J., and Fruchart, O.
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Condensed Matter - Mesoscale and Nanoscale Physics - Abstract
Since its proposal, the idea to vastly increase data storage density with a magnetic non-volatile 3D shift-register has sustained interest in current-induced domain wall (DW) motion. So far, experimental efforts have focused on flat nanostrips, which exhibit a wide range of noteworthy effects, yet suffer from intrinsic DW instabilities limiting their mobility. In contrast, ferromagnetic cylindrical nanowires (NWs) can host a novel type of magnetic DW, namely the Bloch-point wall (BPW), which due to its specific 3D topology should not experience the same fundamental issue. This could give rise to DW velocities over ~1000 m/s and fascinating new physics including coupling to magnetic spin waves, however, experimental evidence of DW dynamics in NWs is lacking until now. Here we report experimental results on current-induced DW motion in NWs with velocities >600 m/s, quantitatively consistent with predictions. Furthermore, our results indicate that although previously disregarded, the OErsted field induced by the current plays instead a crucial and valuable role in stabilising exclusively BPWs., Comment: 6 pages, 4 figures
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- 2019
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61. ECKO: Ensemble of Clustered Knockoffs for multivariate inference on fMRI data
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Nguyen, Tuan-Binh, Chevalier, Jérôme-Alexis, and Thirion, Bertrand
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Mathematics - Statistics Theory ,Statistics - Applications - Abstract
Continuous improvement in medical imaging techniques allows the acquisition of higher-resolution images. When these are used in a predictive setting, a greater number of explanatory variables are potentially related to the dependent variable (the response). Meanwhile, the number of acquisitions per experiment remains limited. In such high dimension/small sample size setting, it is desirable to find the explanatory variables that are truly related to the response while controlling the rate of false discoveries. To achieve this goal, novel multivariate inference procedures, such as knockoff inference, have been proposed recently. However, they require the feature covariance to be well-defined, which is impossible in high-dimensional settings. In this paper, we propose a new algorithm, called Ensemble of Clustered Knockoffs, that allows to select explanatory variables while controlling the false discovery rate (FDR), up to a prescribed spatial tolerance. The core idea is that knockoff-based inference can be applied on groups (clusters) of voxels, which drastically reduces the problem's dimension; an ensembling step then removes the dependence on a fixed clustering and stabilizes the results. We benchmark this algorithm and other FDR-controlling methods on brain imaging datasets and observe empirical gains in sensitivity, while the false discovery rate is controlled at the nominal level., Comment: Accepted to 26th International Conference on Information Processing in Medical Imaging (IPMI)
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- 2019
62. Efficacy and toxicity of primary re-irradiation for malignant spinal cord compression based on radiobiological modelling: a phase II clinical trial
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Wallace, Neil D., Dunne, Mary T., McArdle, Orla, Small, Cormac, Parker, Imelda, Shannon, Aoife M., Clayton-Lea, Angela, Parker, Michael, Collins, Conor D., Armstrong, John G., Gillham, Charles, Coffey, Jerome, Fitzpatrick, David, Salib, Osama, Moriarty, Michael, Stevenson, Michael R., Alvarez-Iglesias, Alberto, McCague, Michael, and Thirion, Pierre G.
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- 2023
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63. Hyperspectral Image Completion Via Tensor Factorization with a Bi-regularization Term
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EL Qate, Karima, El Rhabi, Mohammed, Hakim, Abdelilah, Moreau, Eric, and Thirion-Moreau, Nadège
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- 2022
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64. Group level MEG/EEG source imaging via optimal transport: minimum Wasserstein estimates
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Janati, Hicham, Bazeille, Thomas, Thirion, Bertrand, Cuturi, Marco, and Gramfort, Alexandre
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Statistics - Machine Learning ,Computer Science - Machine Learning - Abstract
Magnetoencephalography (MEG) and electroencephalogra-phy (EEG) are non-invasive modalities that measure the weak electromagnetic fields generated by neural activity. Inferring the location of the current sources that generated these magnetic fields is an ill-posed inverse problem known as source imaging. When considering a group study, a baseline approach consists in carrying out the estimation of these sources independently for each subject. The ill-posedness of each problem is typically addressed using sparsity promoting regularizations. A straightforward way to define a common pattern for these sources is then to average them. A more advanced alternative relies on a joint localization of sources for all subjects taken together, by enforcing some similarity across all estimated sources. An important advantage of this approach is that it consists in a single estimation in which all measurements are pooled together, making the inverse problem better posed. Such a joint estimation poses however a few challenges, notably the selection of a valid regularizer that can quantify such spatial similarities. We propose in this work a new procedure that can do so while taking into account the geometrical structure of the cortex. We call this procedure Minimum Wasserstein Estimates (MWE). The benefits of this model are twofold. First, joint inference allows to pool together the data of different brain geometries, accumulating more spatial information. Second, MWE are defined through Optimal Transport (OT) metrics which provide a tool to model spatial proximity between cortical sources of different subjects, hence not enforcing identical source location in the group. These benefits allow MWE to be more accurate than standard MEG source localization techniques. To support these claims, we perform source localization on realistic MEG simulations based on forward operators derived from MRI scans. On a visual task dataset, we demonstrate how MWE infer neural patterns similar to functional Magnetic Resonance Imaging (fMRI) maps.
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- 2019
65. From Fiduciary Duty to Impact Fidelity: Managerial Compensation in Impact Investing
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Thirion, Isaline, Reichert, Patrick, Xhauflair, Virginie, and De Jonck, Jonathan
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- 2022
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66. Approximate message-passing for convex optimization with non-separable penalties
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Manoel, Andre, Krzakala, Florent, Varoquaux, Gaël, Thirion, Bertrand, and Zdeborová, Lenka
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Statistics - Machine Learning ,Computer Science - Information Theory ,Computer Science - Machine Learning - Abstract
We introduce an iterative optimization scheme for convex objectives consisting of a linear loss and a non-separable penalty, based on the expectation-consistent approximation and the vector approximate message-passing (VAMP) algorithm. Specifically, the penalties we approach are convex on a linear transformation of the variable to be determined, a notable example being total variation (TV). We describe the connection between message-passing algorithms -- typically used for approximate inference -- and proximal methods for optimization, and show that our scheme is, as VAMP, similar in nature to the Peaceman-Rachford splitting, with the important difference that stepsizes are set adaptively. Finally, we benchmark the performance of our VAMP-like iteration in problems where TV penalties are useful, namely classification in task fMRI and reconstruction in tomography, and show faster convergence than that of state-of-the-art approaches such as FISTA and ADMM in most settings., Comment: 18 pages, 6 figures
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- 2018
67. Extracting representations of cognition across neuroimaging studies improves brain decoding
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Mensch, Arthur, Mairal, Julien, Thirion, Bertrand, and Varoquaux, Gaël
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Statistics - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning ,Quantitative Biology - Quantitative Methods - Abstract
Cognitive brain imaging is accumulating datasets about the neural substrate of many different mental processes. Yet, most studies are based on few subjects and have low statistical power. Analyzing data across studies could bring more statistical power; yet the current brain-imaging analytic framework cannot be used at scale as it requires casting all cognitive tasks in a unified theoretical framework. We introduce a new methodology to analyze brain responses across tasks without a joint model of the psychological processes. The method boosts statistical power in small studies with specific cognitive focus by analyzing them jointly with large studies that probe less focal mental processes. Our approach improves decoding performance for 80% of 35 widely-different functional-imaging studies. It finds commonalities across tasks in a data-driven way, via common brain representations that predict mental processes. These are brain networks tuned to psychological manipulations. They outline interpretable and plausible brain structures. The extracted networks have been made available; they can be readily reused in new neuro-imaging studies. We provide a multi-study decoding tool to adapt to new data.
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- 2018
68. Optimizing deep video representation to match brain activity
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Richard, Hugo, Pinho, Ana, Thirion, Bertrand, and Charpiat, Guillaume
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Computer Science - Neural and Evolutionary Computing ,Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning ,Quantitative Biology - Neurons and Cognition - Abstract
The comparison of observed brain activity with the statistics generated by artificial intelligence systems is useful to probe brain functional organization under ecological conditions. Here we study fMRI activity in ten subjects watching color natural movies and compute deep representations of these movies with an architecture that relies on optical flow and image content. The association of activity in visual areas with the different layers of the deep architecture displays complexity-related contrasts across visual areas and reveals a striking foveal/peripheral dichotomy.
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- 2018
69. Feature Grouping as a Stochastic Regularizer for High-Dimensional Structured Data
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Aydore, Sergul, Thirion, Bertrand, and Varoquaux, Gael
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Computer Science - Machine Learning ,Statistics - Machine Learning - Abstract
In many applications where collecting data is expensive, for example neuroscience or medical imaging, the sample size is typically small compared to the feature dimension. It is challenging in this setting to train expressive, non-linear models without overfitting. These datasets call for intelligent regularization that exploits known structure, such as correlations between the features arising from the measurement device. However, existing structured regularizers need specially crafted solvers, which are difficult to apply to complex models. We propose a new regularizer specifically designed to leverage structure in the data in a way that can be applied efficiently to complex models. Our approach relies on feature grouping, using a fast clustering algorithm inside a stochastic gradient descent loop: given a family of feature groupings that capture feature covariations, we randomly select these groups at each iteration. We show that this approach amounts to enforcing a denoising regularizer on the solution. The method is easy to implement in many model architectures, such as fully connected neural networks, and has a linear computational cost. We apply this regularizer to a real-world fMRI dataset and the Olivetti Faces datasets. Experiments on both datasets demonstrate that the proposed approach produces models that generalize better than those trained with conventional regularizers, and also improves convergence speed., Comment: 12 pages, 14 figures
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- 2018
70. Modeling magnetic-field-induced domain wall propagation in modulated-diameter cylindrical nanowires
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Fernandez-Roldan, J. A., De Riz, A., Trapp, B., Thirion, C., Toussaint, J. -C., Fruchart, O., and Gusakova, D.
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Condensed Matter - Mesoscale and Nanoscale Physics - Abstract
Domain wall propagation in modulated-diameter cylindrical nanowires is a key phenomenon to be studied with a view to designing three-dimensional magnetic memory devices. This paper presents a theoretical study of transverse domain wall behavior under the influence of a magnetic field within a cylindrical nanowire with diameter modulations. In particular, domain wall pinning close to the diameter modulation was quantified, both numerically, using finite element micromagnetic simulations, and analytically. Qualitative analytical model for gently sloping modulations resulted in a simple scaling law which may be useful to guide nanowire design when analyzing experiments. It shows that the domain wall depinning field value is proportional to the modulation slope., Comment: 9 figures. Regular manuscript
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- 2018
71. Bloch-point-mediated topological transformations of magnetic domain walls in cylindrical nanowires
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Fruchart, Olivier, Wartelle, A, Trapp, B, Staňo, M, Thirion, Christophe, Bochmann, S, Bachmann, J, Foerster, M, Aballe, L, Menteş, O., Locatelli, A, Sala, A, Cagnon, L, and Toussaint, J. -C
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Condensed Matter - Mesoscale and Nanoscale Physics ,Condensed Matter - Materials Science - Abstract
Cylindrical nanowires made of soft magnetic materials, in contrast to thin strips, may host domain walls of two distinct topologies. Unexpectedly, we evidence experimentally the dynamic transformation of topology upon wall motion above a field threshold. Micromagnetic simulations highlight the underlying precessional dynamics for one way of the transformation, involving the nucleation of a Bloch-point singularity, however, fail to reproduce the reverse process. This rare discrepancy between micromagnetic simulations and experiments raises fascinating questions in material and computer science.
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- 2018
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72. Statistical Inference with Ensemble of Clustered Desparsified Lasso
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Chevalier, Jérôme-Alexis, Salmon, Joseph, and Thirion, Bertrand
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Statistics - Applications - Abstract
Medical imaging involves high-dimensional data, yet their acquisition is obtained for limited samples. Multivariate predictive models have become popular in the last decades to fit some external variables from imaging data, and standard algorithms yield point estimates of the model parameters. It is however challenging to attribute confidence to these parameter estimates, which makes solutions hardly trustworthy. In this paper we present a new algorithm that assesses parameters statistical significance and that can scale even when the number of predictors p $\ge$ 10^5 is much higher than the number of samples n $\le$ 10^3 , by lever-aging structure among features. Our algorithm combines three main ingredients: a powerful inference procedure for linear models --the so-called Desparsified Lasso-- feature clustering and an ensembling step. We first establish that Desparsified Lasso alone cannot handle n p regimes; then we demonstrate that the combination of clustering and ensembling provides an accurate solution, whose specificity is controlled. We also demonstrate stability improvements on two neuroimaging datasets.
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- 2018
73. Text to brain: predicting the spatial distribution of neuroimaging observations from text reports
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Dockès, Jérôme, Wassermann, Demian, Poldrack, Russell, Suchanek, Fabian, Thirion, Bertrand, and Varoquaux, Gaël
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Statistics - Methodology ,Computer Science - Information Retrieval ,Computer Science - Machine Learning - Abstract
Despite the digital nature of magnetic resonance imaging, the resulting observations are most frequently reported and stored in text documents. There is a trove of information untapped in medical health records, case reports, and medical publications. In this paper, we propose to mine brain medical publications to learn the spatial distribution associated with anatomical terms. The problem is formulated in terms of minimization of a risk on distributions which leads to a least-deviation cost function. An efficient algorithm in the dual then learns the mapping from documents to brain structures. Empirical results using coordinates extracted from the brain-imaging literature show that i) models must adapt to semantic variation in the terms used to describe a given anatomical structure, ii) voxel-wise parameterization leads to higher likelihood of locations reported in unseen documents, iii) least-deviation cost outperforms least-square. As a proof of concept for our method, we use our model of spatial distributions to predict the distribution of specific neurological conditions from text-only reports.
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- 2018
74. High-throughput experiment for the rapid screening of organic phase change materials
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Mailhé, Clément, Gorsse, Stéphane, Thirion, Boèce, Palomo, Elena, and Duquesne, Marie
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- 2022
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75. A Primal-Dual algorithm for nonnegative N-th order CP tensor decomposition: application to fluorescence spectroscopy data analysis
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EL Qate, Karima, El Rhabi, Mohammed, Hakim, Abdelilah, Moreau, Eric, and Thirion-Moreau, Nadège
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- 2022
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76. Learning Neural Representations of Human Cognition across Many fMRI Studies
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Mensch, Arthur, Mairal, Julien, Bzdok, Danilo, Thirion, Bertrand, and Varoquaux, Gaël
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Statistics - Machine Learning ,Computer Science - Machine Learning ,Quantitative Biology - Neurons and Cognition - Abstract
Cognitive neuroscience is enjoying rapid increase in extensive public brain-imaging datasets. It opens the door to large-scale statistical models. Finding a unified perspective for all available data calls for scalable and automated solutions to an old challenge: how to aggregate heterogeneous information on brain function into a universal cognitive system that relates mental operations/cognitive processes/psychological tasks to brain networks? We cast this challenge in a machine-learning approach to predict conditions from statistical brain maps across different studies. For this, we leverage multi-task learning and multi-scale dimension reduction to learn low-dimensional representations of brain images that carry cognitive information and can be robustly associated with psychological stimuli. Our multi-dataset classification model achieves the best prediction performance on several large reference datasets, compared to models without cognitive-aware low-dimension representations, it brings a substantial performance boost to the analysis of small datasets, and can be introspected to identify universal template cognitive concepts., Comment: Advances in Neural Information Processing Systems, Dec 2017, Long Beach, United States. 2017
- Published
- 2017
77. The effects of repeated brain MRI on chromosomal damage
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Herate, Cecile, Brochard, Patricia, De Vathaire, Florent, Ricoul, Michelle, Martins, Bernadette, Laurier, Laurence, Deverre, Jean-Robert, Thirion, Bertrand, Hertz-Pannier, Lucie, and Sabatier, Laure
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- 2022
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78. Comprehensive decoding mental processes from Web repositories of functional brain images
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Menuet, Romuald, Meudec, Raphael, Dockès, Jérôme, Varoquaux, Gael, and Thirion, Bertrand
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- 2022
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79. Empirical facts from search for replicable associations between cortical thickness and psychometric variables in healthy adults
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Kharabian Masouleh, Shahrzad, Eickhoff, Simon B., Maleki Balajoo, Somayeh, Nicolaisen-Sobesky, Eliana, Thirion, Bertrand, and Genon, Sarah
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- 2022
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80. Long-term diosmectite use does not alter the gut microbiota in adults with chronic diarrhea
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Da Silva, Kévin, Guilly, Susie, Thirion, Florence, Le Chatelier, Emmanuelle, Pons, Nicolas, Roume, Hugo, Quinquis, Benoît, Ehrlich, Stanislav D., Bekkat, Nassima, Mathiex-Fortunet, Hélène, Sokol, Harry, and Doré, Joël
- Published
- 2022
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81. The SARS-CoV-2 Alpha variant exhibits comparable fitness to the D614G strain in a Syrian hamster model
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Cochin, Maxime, Luciani, Léa, Touret, Franck, Driouich, Jean-Sélim, Petit, Paul-Rémi, Moureau, Grégory, Baronti, Cécile, Laprie, Caroline, Thirion, Laurence, Maes, Piet, Boudewijns, Robbert, Neyts, Johan, de Lamballerie, Xavier, and Nougairède, Antoine
- Published
- 2022
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82. Update of the fractions of cardiovascular diseases and mental disorders attributable to psychosocial work factors in Europe
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Niedhammer, Isabelle, Sultan-Taïeb, Hélène, Parent-Thirion, Agnès, and Chastang, Jean-François
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- 2022
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83. Transmission XMCD-PEEM imaging of an engineered vertical FEBID cobalt nanowire with a domain wall
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Wartelle, Alexis, Pablo-Navarro, Javier, Staňo, Michal, Bochmann, Sebastian, Pairis, Sébastien, Rioult, Maxime, Thirion, Christophe, Belkhou, Rachid, de Teresa, José María, Magén, César, and Fruchart, Olivier
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Condensed Matter - Mesoscale and Nanoscale Physics ,Condensed Matter - Materials Science - Abstract
Using focused electron-beam-induced deposition (FEBID), we fabricate vertical, platinum-coated cobalt nanowires with a controlled three-dimensional structure. The latter is engineered to feature bends along the height: these are used as pinning sites for domain walls, the presence of which we investigate using X-ray Magnetic Circular Dichroism (XMCD) coupled to PhotoEmission Electron Microscopy (PEEM). The vertical geometry of our sample combined with the low incidence of the X-ray beam produce an extended wire shadow which we use to recover the wire's magnetic configuration. In this transmission configuration, the whole sample volume is probed, thus circumventing the limitation of PEEM to surfaces. This article reports on the first study of magnetic nanostructures standing perpendicular to the substrate with XMCD-PEEM. The use of this technique in shadow mode enabled us to confirm the presence of a domain wall (DW) without direct imaging of the nanowire., Comment: 5 figures with colour, 9 pages
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- 2017
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84. Stochastic Subsampling for Factorizing Huge Matrices
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Mensch, Arthur, Mairal, Julien, Thirion, Bertrand, and Varoquaux, Gael
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Statistics - Machine Learning ,Computer Science - Learning ,Mathematics - Optimization and Control ,Quantitative Biology - Neurons and Cognition - Abstract
We present a matrix-factorization algorithm that scales to input matrices with both huge number of rows and columns. Learned factors may be sparse or dense and/or non-negative, which makes our algorithm suitable for dictionary learning, sparse component analysis, and non-negative matrix factorization. Our algorithm streams matrix columns while subsampling them to iteratively learn the matrix factors. At each iteration, the row dimension of a new sample is reduced by subsampling, resulting in lower time complexity compared to a simple streaming algorithm. Our method comes with convergence guarantees to reach a stationary point of the matrix-factorization problem. We demonstrate its efficiency on massive functional Magnetic Resonance Imaging data (2 TB), and on patches extracted from hyperspectral images (103 GB). For both problems, which involve different penalties on rows and columns, we obtain significant speed-ups compared to state-of-the-art algorithms., Comment: IEEE Transactions on Signal Processing, Institute of Electrical and Electronics Engineers, A Para\^itre
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- 2017
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85. Correction: Update of the fractions of cardiovascular diseases and mental disorders attributable to psychosocial work factors in Europe
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Niedhammer, Isabelle, Sultan-Taïeb, Hélène, Parent-Thirion, Agnès, and Chastang, Jean-François
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- 2023
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86. Subsampled online matrix factorization with convergence guarantees
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Mensch, Arthur, Mairal, Julien, Varoquaux, Gaël, and Thirion, Bertrand
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Mathematics - Optimization and Control ,Computer Science - Learning ,Statistics - Machine Learning - Abstract
We present a matrix factorization algorithm that scales to input matrices that are large in both dimensions (i.e., that contains morethan 1TB of data). The algorithm streams the matrix columns while subsampling them, resulting in low complexity per iteration andreasonable memory footprint. In contrast to previous online matrix factorization methods, our approach relies on low-dimensional statistics from past iterates to control the extra variance introduced by subsampling. We present a convergence analysis that guarantees us to reach a stationary point of the problem. Large speed-ups can be obtained compared to previous online algorithms that do not perform subsampling, thanks to the feature redundancy that often exists in high-dimensional settings.
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- 2016
87. Deriving reproducible biomarkers from multi-site resting-state data: An Autism-based example
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Abraham, Alexandre, Milham, Michael, Di Martino, Adriana, Craddock, R. Cameron, Samaras, Dimitris, Thirion, Bertrand, and Varoquaux, Gaël
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Statistics - Machine Learning ,Quantitative Biology - Neurons and Cognition - Abstract
Resting-state functional Magnetic Resonance Imaging (R-fMRI) holds the promise to reveal functional biomarkers of neuropsychiatric disorders. However, extracting such biomarkers is challenging for complex multi-faceted neuropatholo-gies, such as autism spectrum disorders. Large multi-site datasets increase sample sizes to compensate for this complexity, at the cost of uncontrolled heterogeneity. This heterogeneity raises new challenges, akin to those face in realistic diagnostic applications. Here, we demonstrate the feasibility of inter-site classification of neuropsychiatric status, with an application to the Autism Brain Imaging Data Exchange (ABIDE) database, a large (N=871) multi-site autism dataset. For this purpose, we investigate pipelines that extract the most predictive biomarkers from the data. These R-fMRI pipelines build participant-specific connectomes from functionally-defined brain areas. Connectomes are then compared across participants to learn patterns of connectivity that differentiate typical controls from individuals with autism. We predict this neuropsychiatric status for participants from the same acquisition sites or different, unseen, ones. Good choices of methods for the various steps of the pipeline lead to 67% prediction accuracy on the full ABIDE data, which is significantly better than previously reported results. We perform extensive validation on multiple subsets of the data defined by different inclusion criteria. These enables detailed analysis of the factors contributing to successful connectome-based prediction. First, prediction accuracy improves as we include more subjects, up to the maximum amount of subjects available. Second, the definition of functional brain areas is of paramount importance for biomarker discovery: brain areas extracted from large R-fMRI datasets outperform reference atlases in the classification tasks., Comment: in NeuroImage, Elsevier, 2016
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- 2016
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88. Recursive nearest agglomeration (ReNA): fast clustering for approximation of structured signals
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Hoyos-Idrobo, Andrés, Varoquaux, Gaël, Kahn, Jonas, and Thirion, Bertrand
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Statistics - Machine Learning ,Computer Science - Learning - Abstract
In this work, we revisit fast dimension reduction approaches, as with random projections and random sampling. Our goal is to summarize the data to decrease computational costs and memory footprint of subsequent analysis. Such dimension reduction can be very efficient when the signals of interest have a strong structure, such as with images. We focus on this setting and investigate feature clustering schemes for data reductions that capture this structure. An impediment to fast dimension reduction is that good clustering comes with large algorithmic costs. We address it by contributing a linear-time agglomerative clustering scheme, Recursive Nearest Agglomeration (ReNA). Unlike existing fast agglomerative schemes, it avoids the creation of giant clusters. We empirically validate that it approximates the data as well as traditional variance-minimizing clustering schemes that have a quadratic complexity. In addition, we analyze signal approximation with feature clustering and show that it can remove noise, improving subsequent analysis steps. As a consequence, data reduction by clustering features with ReNA yields very fast and accurate models, enabling to process large datasets on budget. Our theoretical analysis is backed by extensive experiments on publicly-available data that illustrate the computation efficiency and the denoising properties of the resulting dimension reduction scheme., Comment: IEEE Transactions on Pattern Analysis and Machine Intelligence, Institute of Electrical and Electronics Engineers, In press
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- 2016
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89. Social-sparsity brain decoders: faster spatial sparsity
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Varoquaux, Gaël, Kowalski, Matthieu, and Thirion, Bertrand
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Statistics - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition ,Quantitative Biology - Neurons and Cognition - Abstract
Spatially-sparse predictors are good models for brain decoding: they give accurate predictions and their weight maps are interpretable as they focus on a small number of regions. However, the state of the art, based on total variation or graph-net, is computationally costly. Here we introduce sparsity in the local neighborhood of each voxel with social-sparsity, a structured shrinkage operator. We find that, on brain imaging classification problems, social-sparsity performs almost as well as total-variation models and better than graph-net, for a fraction of the computational cost. It also very clearly outlines predictive regions. We give details of the model and the algorithm., Comment: in Pattern Recognition in NeuroImaging, Jun 2016, Trento, Italy. 2016
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- 2016
90. Assessing and tuning brain decoders: cross-validation, caveats, and guidelines
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Varoquaux, Gaël, Raamana, Pradeep Reddy, Engemann, Denis, Hoyos-Idrobo, Andrés, Schwartz, Yannick, and Thirion, Bertrand
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Statistics - Machine Learning - Abstract
Decoding, ie prediction from brain images or signals, calls for empirical evaluation of its predictive power. Such evaluation is achieved via cross-validation, a method also used to tune decoders' hyper-parameters. This paper is a review on cross-validation procedures for decoding in neuroimaging. It includes a didactic overview of the relevant theoretical considerations. Practical aspects are highlighted with an extensive empirical study of the common decoders in within-and across-subject predictions, on multiple datasets --anatomical and functional MRI and MEG-- and simulations. Theory and experiments outline that the popular " leave-one-out " strategy leads to unstable and biased estimates, and a repeated random splits method should be preferred. Experiments outline the large error bars of cross-validation in neuroimaging settings: typical confidence intervals of 10%. Nested cross-validation can tune decoders' parameters while avoiding circularity bias. However we find that it can be more favorable to use sane defaults, in particular for non-sparse decoders., Comment: NeuroImage, Elsevier, 2016
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- 2016
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91. Dictionary Learning for Massive Matrix Factorization
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Mensch, Arthur, Mairal, Julien, Thirion, Bertrand, and Varoquaux, Gaël
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Statistics - Machine Learning ,Computer Science - Learning ,Quantitative Biology - Quantitative Methods - Abstract
Sparse matrix factorization is a popular tool to obtain interpretable data decompositions, which are also effective to perform data completion or denoising. Its applicability to large datasets has been addressed with online and randomized methods, that reduce the complexity in one of the matrix dimension, but not in both of them. In this paper, we tackle very large matrices in both dimensions. We propose a new factoriza-tion method that scales gracefully to terabyte-scale datasets, that could not be processed by previous algorithms in a reasonable amount of time. We demonstrate the efficiency of our approach on massive functional Magnetic Resonance Imaging (fMRI) data, and on matrix completion problems for recommender systems, where we obtain significant speed-ups compared to state-of-the art coordinate descent methods.
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- 2016
92. Spatially relaxed inference on high-dimensional linear models
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Chevalier, Jérôme-Alexis, Nguyen, Tuan-Binh, Thirion, Bertrand, and Salmon, Joseph
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- 2022
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93. Efficacy of a Ready-to-Drink Gelled Water and of a Thickening Powder in Patients with Oropharyngeal Dysphagia: a Crossover Randomized Study
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Salle, Jean-Yves, Tchalla, Achille, Thirion, Remy, Offret, Annick, Dussaulx, Laurence, Trivin, Florence, Gayot, Caroline, Fayemendy, Philippe, Jésus, Pierre, Bonhomme, Cécile, Hazart, Etienne, Baudry, Charlotte, and Desport, Jean-Claude
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- 2021
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94. Compressed Online Dictionary Learning for Fast fMRI Decomposition
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Mensch, Arthur, Varoquaux, Gaël, and Thirion, Bertrand
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Statistics - Machine Learning ,Computer Science - Machine Learning - Abstract
We present a method for fast resting-state fMRI spatial decomposi-tions of very large datasets, based on the reduction of the temporal dimension before applying dictionary learning on concatenated individual records from groups of subjects. Introducing a measure of correspondence between spatial decompositions of rest fMRI, we demonstrates that time-reduced dictionary learning produces result as reliable as non-reduced decompositions. We also show that this reduction significantly improves computational scalability.
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- 2016
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95. FAASTA: A fast solver for total-variation regularization of ill-conditioned problems with application to brain imaging
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Varoquaux, Gaël, Eickenberg, Michael, Dohmatob, Elvis, and Thirion, Bertand
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Quantitative Biology - Neurons and Cognition ,Computer Science - Learning ,Statistics - Computation ,Statistics - Machine Learning - Abstract
The total variation (TV) penalty, as many other analysis-sparsity problems, does not lead to separable factors or a proximal operatorwith a closed-form expression, such as soft thresholding for the $\ell\_1$ penalty. As a result, in a variational formulation of an inverse problem or statisticallearning estimation, it leads to challenging non-smooth optimization problemsthat are often solved with elaborate single-step first-order methods. When thedata-fit term arises from empirical measurements, as in brain imaging, it isoften very ill-conditioned and without simple structure. In this situation, in proximal splitting methods, the computation cost of thegradient step can easily dominate each iteration. Thus it is beneficialto minimize the number of gradient steps.We present fAASTA, a variant of FISTA, that relies on an internal solver forthe TV proximal operator, and refines its tolerance to balance computationalcost of the gradient and the proximal steps. We give benchmarks andillustrations on "brain decoding": recovering brain maps from noisymeasurements to predict observed behavior. The algorithm as well as theempirical study of convergence speed are valuable for any non-exact proximaloperator, in particular analysis-sparsity problems.
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- 2015
96. Fast clustering for scalable statistical analysis on structured images
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Thirion, Bertrand, Hoyos-Idrobo, Andrés, Kahn, Jonas, and Varoquaux, Gael
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Statistics - Machine Learning ,Computer Science - Computer Vision and Pattern Recognition - Abstract
The use of brain images as markers for diseases or behavioral differences is challenged by the small effects size and the ensuing lack of power, an issue that has incited researchers to rely more systematically on large cohorts. Coupled with resolution increases, this leads to very large datasets. A striking example in the case of brain imaging is that of the Human Connectome Project: 20 Terabytes of data and growing. The resulting data deluge poses severe challenges regarding the tractability of some processing steps (discriminant analysis, multivariate models) due to the memory demands posed by these data. In this work, we revisit dimension reduction approaches, such as random projections, with the aim of replacing costly function evaluations by cheaper ones while decreasing the memory requirements. Specifically, we investigate the use of alternate schemes, based on fast clustering, that are well suited for signals exhibiting a strong spatial structure, such as anatomical and functional brain images. Our contribution is twofold: i) we propose a linear-time clustering scheme that bypasses the percolation issues inherent in these algorithms and thus provides compressions nearly as good as traditional quadratic-complexity variance-minimizing clustering schemes, ii) we show that cluster-based compression can have the virtuous effect of removing high-frequency noise, actually improving subsequent estimations steps. As a consequence, the proposed approach yields very accurate models on several large-scale problems yet with impressive gains in computational efficiency, making it possible to analyze large datasets., Comment: ICML Workshop on Statistics, Machine Learning and Neuroscience (Stamlins 2015), Jul 2015, Lille, France
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- 2015
97. Broadband Setup for Magnetic-Field-Induced Domain Wall Motion in Cylindrical Nanowires
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Wartelle, Alexis, Thirion, Christophe, Afid, Raja, Jamet, Segolene, Da Col, Sandrine, Cagnon, Laurent, Toussaint, Jean-Christophe, Bachmann, Julien, Bochmann, Sebastian, Locatelli, Andrea, Mentes, Tevfik Onur, and Fruchart, Olivier
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Condensed Matter - Materials Science - Abstract
In order to improve the precision of domain wall dynamics measurements, we develop a coplanar waveguide-based setup where the domain wall motion should be triggered by pulses of magnetic field. The latter are produced by the Oersted field of the waveguide as a current pulse travels toward its termination, where it is dissipated. Our objective is to eliminate a source of bias in domain wall speed estimation while optimizing the field amplitude. Here, we present implementations of this concept for magnetic force microscopy (MFM) and synchrotron-based investigation.
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- 2015
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98. Machine Learning for Neuroimaging with Scikit-Learn
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Abraham, Alexandre, Pedregosa, Fabian, Eickenberg, Michael, Gervais, Philippe, Muller, Andreas, Kossaifi, Jean, Gramfort, Alexandre, Thirion, Bertrand, and Varoquaux, Gäel
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Computer Science - Learning ,Computer Science - Computer Vision and Pattern Recognition ,Statistics - Machine Learning - Abstract
Statistical machine learning methods are increasingly used for neuroimaging data analysis. Their main virtue is their ability to model high-dimensional datasets, e.g. multivariate analysis of activation images or resting-state time series. Supervised learning is typically used in decoding or encoding settings to relate brain images to behavioral or clinical observations, while unsupervised learning can uncover hidden structures in sets of images (e.g. resting state functional MRI) or find sub-populations in large cohorts. By considering different functional neuroimaging applications, we illustrate how scikit-learn, a Python machine learning library, can be used to perform some key analysis steps. Scikit-learn contains a very large set of statistical learning algorithms, both supervised and unsupervised, and its application to neuroimaging data provides a versatile tool to study the brain., Comment: Frontiers in neuroscience, Frontiers Research Foundation, 2013, pp.15
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- 2014
99. Region segmentation for sparse decompositions: better brain parcellations from rest fMRI
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Abraham, Alexandre, Dohmatob, Elvis, Thirion, Bertrand, Samaras, Dimitris, and Varoquaux, Gael
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Quantitative Biology - Neurons and Cognition ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Functional Magnetic Resonance Images acquired during resting-state provide information about the functional organization of the brain through measuring correlations between brain areas. Independent components analysis is the reference approach to estimate spatial components from weakly structured data such as brain signal time courses; each of these components may be referred to as a brain network and the whole set of components can be conceptualized as a brain functional atlas. Recently, new methods using a sparsity prior have emerged to deal with low signal-to-noise ratio data. However, even when using sophisticated priors, the results may not be very sparse and most often do not separate the spatial components into brain regions. This work presents post-processing techniques that automatically sparsify brain maps and separate regions properly using geometric operations, and compares these techniques according to faithfulness to data and stability metrics. In particular, among threshold-based approaches, hysteresis thresholding and random walker segmentation, the latter improves significantly the stability of both dense and sparse models.
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- 2014
100. Data-driven HRF estimation for encoding and decoding models
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Pedregosa, Fabian, Eickenberg, Michael, Ciuciu, Philippe, Thirion, Bertrand, and Gramfort, Alexandre
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Computer Science - Computational Engineering, Finance, and Science ,Computer Science - Learning - Abstract
Despite the common usage of a canonical, data-independent, hemodynamic response function (HRF), it is known that the shape of the HRF varies across brain regions and subjects. This suggests that a data-driven estimation of this function could lead to more statistical power when modeling BOLD fMRI data. However, unconstrained estimation of the HRF can yield highly unstable results when the number of free parameters is large. We develop a method for the joint estimation of activation and HRF using a rank constraint causing the estimated HRF to be equal across events/conditions, yet permitting it to be different across voxels. Model estimation leads to an optimization problem that we propose to solve with an efficient quasi-Newton method exploiting fast gradient computations. This model, called GLM with Rank-1 constraint (R1-GLM), can be extended to the setting of GLM with separate designs which has been shown to improve decoding accuracy in brain activity decoding experiments. We compare 10 different HRF modeling methods in terms of encoding and decoding score in two different datasets. Our results show that the R1-GLM model significantly outperforms competing methods in both encoding and decoding settings, positioning it as an attractive method both from the points of view of accuracy and computational efficiency., Comment: appears in NeuroImage (2015)
- Published
- 2014
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