1,989 results on '"AIC"'
Search Results
2. Future Forecasting of Rainfall Data by ARIMA Modelling
- Author
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Anant Kumar, Nagar, Sharma, Gunwant, di Prisco, Marco, Series Editor, Chen, Sheng-Hong, Series Editor, Vayas, Ioannis, Series Editor, Kumar Shukla, Sanjay, Series Editor, Sharma, Anuj, Series Editor, Kumar, Nagesh, Series Editor, Wang, Chien Ming, Series Editor, Cui, Zhen-Dong, Series Editor, Lu, Xinzheng, Series Editor, Pandey, Manish, editor, Umamahesh, N.V., editor, Das, Jew, editor, and Pu, Jaan H., editor
- Published
- 2025
- Full Text
- View/download PDF
3. An AIC-type information criterion evaluating theory-based hypotheses for contingency tables.
- Author
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Altinisik, Yasin, Hessels, Roy S., Van Lissa, Caspar J., and Kuiper, Rebecca M.
- Abstract
Researchers face inevitable difficulties when evaluating theory-based hypotheses in the context of contingency tables. Log-linear models are often insufficient to evaluate such hypotheses, as they do not provide enough information on complex relationships between cell probabilities in many real-life applications. These models are usually used to evaluate the relationships between variables using only equality restrictions between model parameters, while specifying theory-based hypotheses often also requires inequality restrictions. Moreover, high-dimensional contingency tables generally contain low cell counts and/or empty cells, complicating parameter estimation in log-linear models. The presence of many parameters in these models also causes difficulties in interpretation when evaluating the hypotheses of interest. This study proposes a method that simplifies evaluating theory-based hypotheses for high-dimensional contingency tables by simultaneously addressing each of the above problems. With this method, theory-based hypotheses, which are specified using equality and/or inequality constraints with respect to (functions of) cell probabilities, are evaluated using an AIC-type information criterion, GORICA. We conduct a simulation study to evaluate the performance of GORICA in the context of contingency tables. Two empirical examples illustrate the use of the method. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
4. EM estimation of the B-spline copula with penalized pseudo-likelihood functions: EM estimation of the B-spline...: X. Dou et al.
- Author
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Dou, Xiaoling, Kuriki, Satoshi, Lin, Gwo Dong, and Richards, Donald
- Abstract
The B-spline copula function is defined by a linear combination of elements of the normalized B-spline basis. We develop a modified EM algorithm, to maximize the penalized pseudo-likelihood function, wherein we use the smoothly clipped absolute deviation (SCAD) penalty function for the penalization term. We conduct simulation studies to demonstrate the stability of the proposed numerical procedure, show that penalization yields estimates with smaller mean-square errors when the true parameter matrix is sparse, and provide methods for determining tuning parameters and for model selection. We analyze as an example a data set consisting of birth and death rates from 237 countries, available at the website, “Our World in Data,” and we estimate the marginal density and distribution functions of those rates together with all parameters of our B-spline copula model. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
5. Forecasting Short- and Long-Term Wind Speed in Limpopo Province Using Machine Learning and Extreme Value Theory.
- Author
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Makubyane, Kgothatso and Maposa, Daniel
- Subjects
CONVOLUTIONAL neural networks ,LONG short-term memory ,DISTRIBUTION (Probability theory) ,EXTREME value theory ,WIND speed - Abstract
This study investigates wind speed prediction using advanced machine learning techniques, comparing the performance of Vanilla long short-term memory (LSTM) and convolutional neural network (CNN) models, alongside the application of extreme value theory (EVT) using the r-largest order generalised extreme value distribution ( G E V D r ). Over the past couple of decades, the academic literature has transitioned from conventional statistical time series models to embracing EVT and machine learning algorithms for the modelling of environmental variables. This study adds value to the literature and knowledge of modelling wind speed using both EVT and machine learning. The primary aim of this study is to forecast wind speed in the Limpopo province of South Africa to showcase the dependability and potential of wind power generation. The application of CNN showcased considerable predictive accuracy compared to the Vanilla LSTM, achieving 88.66% accuracy with monthly time steps. The CNN predictions for the next five years, in m/s, were 9.91 (2024), 7.64 (2025), 7.81 (2026), 7.13 (2027), and 9.59 (2028), slightly outperforming the Vanilla LSTM, which predicted 9.43 (2024), 7.75 (2025), 7.85 (2026), 6.87 (2027), and 9.43 (2028). This highlights CNN's superior ability to capture complex patterns in wind speed dynamics over time. Concurrently, the analysis of the G E V D r across various order statistics identified G E V D r = 2 as the optimal model, supported by its favourable evaluation metrics in terms of Akaike information criteria (AIC) and Bayesian information criteria (BIC). The 300-year return level for G E V D r = 2 was found to be 22.89 m/s, indicating a rare wind speed event. Seasonal wind speed analysis revealed distinct patterns, with winter emerging as the most efficient season for wind, featuring a median wind speed of 7.96 m/s. Future research could focus on enhancing prediction accuracy through hybrid algorithms and incorporating additional meteorological variables. To the best of our knowledge, this is the first study to successfully combine EVT and machine learning for short- and long-term wind speed forecasting, providing a novel framework for reliable wind energy planning. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
6. Multi-Frequency Aeroelastic ROM for Transonic Compressors.
- Author
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Casoni, Marco, Magrini, Andrea, and Benini, Ernesto
- Subjects
FREQUENCIES of oscillating systems ,AIRPLANE motors ,AEROELASTICITY ,COMPRESSORS ,OSCILLATIONS - Abstract
The accurate prediction of the aeroelastic behavior of turbomachinery for aircraft propulsion poses a difficult yet fundamental challenge, since modern aircraft engines tend to adopt increasingly slender blades to achieve a higher aerodynamic efficiency, incurring an increased aeroelastic interaction as a drawback. In the present work, we present a reduced order model for flutter prediction in axial compressors. The model exploits the aerodynamic influence coefficients technique with the adoption of a broadband frequency signal to compute the aerodynamic damping for multiple reduced frequencies using a single training simulation. The normalized aerodynamic work is computed for a single oscillation mode at three different vibration frequencies, comparing the outputs of aerodynamic input/output models trained with a chirp signal to those from single-frequency harmonic simulations. The results demonstrate the ability of the adopted model to accurately and efficiently reproduce the aerodynamic damping at multiple frequencies and arbitrary nodal diameters with a single simulation. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
7. Forecasting Short- and Long-Term Wind Speed in Limpopo Province Using Machine Learning and Extreme Value Theory
- Author
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Kgothatso Makubyane and Daniel Maposa
- Subjects
AIC ,BIC ,CNN ,EVT ,GEVDr ,Vanilla LSTM ,Science (General) ,Q1-390 ,Mathematics ,QA1-939 - Abstract
This study investigates wind speed prediction using advanced machine learning techniques, comparing the performance of Vanilla long short-term memory (LSTM) and convolutional neural network (CNN) models, alongside the application of extreme value theory (EVT) using the r-largest order generalised extreme value distribution (GEVDr). Over the past couple of decades, the academic literature has transitioned from conventional statistical time series models to embracing EVT and machine learning algorithms for the modelling of environmental variables. This study adds value to the literature and knowledge of modelling wind speed using both EVT and machine learning. The primary aim of this study is to forecast wind speed in the Limpopo province of South Africa to showcase the dependability and potential of wind power generation. The application of CNN showcased considerable predictive accuracy compared to the Vanilla LSTM, achieving 88.66% accuracy with monthly time steps. The CNN predictions for the next five years, in m/s, were 9.91 (2024), 7.64 (2025), 7.81 (2026), 7.13 (2027), and 9.59 (2028), slightly outperforming the Vanilla LSTM, which predicted 9.43 (2024), 7.75 (2025), 7.85 (2026), 6.87 (2027), and 9.43 (2028). This highlights CNN’s superior ability to capture complex patterns in wind speed dynamics over time. Concurrently, the analysis of the GEVDr across various order statistics identified GEVDr=2 as the optimal model, supported by its favourable evaluation metrics in terms of Akaike information criteria (AIC) and Bayesian information criteria (BIC). The 300-year return level for GEVDr=2 was found to be 22.89 m/s, indicating a rare wind speed event. Seasonal wind speed analysis revealed distinct patterns, with winter emerging as the most efficient season for wind, featuring a median wind speed of 7.96 m/s. Future research could focus on enhancing prediction accuracy through hybrid algorithms and incorporating additional meteorological variables. To the best of our knowledge, this is the first study to successfully combine EVT and machine learning for short- and long-term wind speed forecasting, providing a novel framework for reliable wind energy planning.
- Published
- 2024
- Full Text
- View/download PDF
8. SUPPORT DISTRIBUTION TO AGRIBUSINESSES IN KRASNOYARSK KRAI
- Author
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Sanat K. Seitov
- Subjects
state support ,aic ,concentration ratio ,revenue ,tax revenues ,Law ,Social Sciences - Abstract
The effectiveness of state support is affected not only by its structure by type, but also by its distribution among producers. In 2022, the 30 largest agribusinesses, receiving 46.3% of the total support, provide 58.3% of tax revenues in the AIC of Krasnoyarsk Krai, and their revenue is 28.6% of the volume of agricultural production in the region. The concentration ratio of support in Krasnoyarsk Krai is high: in 2022, it reaches 0.46, generally showing decrease in 2018-2022. The author calculates another indicator – Equal Distribution of Support Index: the higher it is, the greater the volume of revenue and tax revenues generated by recipients of budget funds. In Krasnoyarsk Krai, it shows positive dynamics, indicating both an increase in revenue and tax revenues among support recipients and expanded access of agribusinesses to support. Purpose. To highlight the main trends in the distribution of support in the agro-industrial complex of Krasnoyarsk Krai and their impact on the performance of the industry. Methodology. The article uses statistical analysis to study time series on support volumes, distribution among recipients, and their dynamics. Elements of financial statement analysis of companies receiving support are used. Results. Data were obtained characterizing the degree of concentration and uniformity of distribution of support among the subjects of the agro-industrial complex in Krasnoyarsk Krai. Practical implications. The results should be used by executive authorities when analyzing the distribution of support among entities of the agro-industrial complex in Krasnoyarsk Krai.
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- 2024
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9. Evaluating the Impact of Climate and Early Pandemic Policies on COVID-19 Transmission: A Case Study Approach
- Author
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Mohammad Meregan, Frazad Jafari, Majid Lotfi Ghahroud, Jalil Ghassemi Nejad, and Iman Janghorban Esfahani
- Subjects
COVID-19 ,government regulation ,global economy ,virus spread ,AIC ,BIC ,Specialties of internal medicine ,RC581-951 - Abstract
The COVID-19 pandemic has had profound impact, necessitating a deeper understanding of factors influencing virus transmission. The negative impacts have weakened the economy and changed billions of lives around the world. COVID-19 is a new virus, and a lot of studies have tried to investigate its effect on, for example, the economy or environment. This research reveals new approaches to recognizing and stopping the spread of this virus with its connection to weather conditions and relevant parameters. By analyzing how temperature and humidity affect COVID-19 spread, alongside evaluating the effectiveness of initial public policies, this study addresses the critical gap in research by investigating the interplay between climate conditions and government regulations during the early stages of the pandemic in South Korea. This dual approach provides a comprehensive framework for understanding how environmental and policy factors jointly influence pandemic dynamics, offering valuable lessons for future global health crises. Although it focuses only on the first phase of South Korea COVID-19 regulations, outcomes show that these regulations were notably effective against the COVID-19 pandemic. The outcomes prove that higher temperature and higher relative humidity lead to lower transmission. Hence, based on the results during winter, the number of infections would be expected to speed up again.
- Published
- 2024
- Full Text
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10. Evidential Analysis: An Alternative to Hypothesis Testing in Normal Linear Models.
- Author
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Dennis, Brian, Taper, Mark L., and Ponciano, José M.
- Subjects
- *
MULTIVARIATE analysis , *STATISTICAL hypothesis testing , *TWO-way analysis of variance , *MULTIPLE regression analysis , *NULL hypothesis - Abstract
Statistical hypothesis testing, as formalized by 20th century statisticians and taught in college statistics courses, has been a cornerstone of 100 years of scientific progress. Nevertheless, the methodology is increasingly questioned in many scientific disciplines. We demonstrate in this paper how many of the worrisome aspects of statistical hypothesis testing can be ameliorated with concepts and methods from evidential analysis. The model family we treat is the familiar normal linear model with fixed effects, embracing multiple regression and analysis of variance, a warhorse of everyday science in labs and field stations. Questions about study design, the applicability of the null hypothesis, the effect size, error probabilities, evidence strength, and model misspecification become more naturally housed in an evidential setting. We provide a completely worked example featuring a two-way analysis of variance. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
11. A Note on Equivalent and Nonequivalent Parametrizations of the Two-Parameter Logistic Item Response Model.
- Author
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Robitzsch, Alexander
- Subjects
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ITEM response theory , *MEMBERSHIP functions (Fuzzy logic) - Abstract
The two-parameter logistic (2PL) item response model is typically estimated using an unbounded distribution for the trait θ. In this article, alternative specifications of the 2PL models are investigated that consider a bounded or a positively valued θ distribution. It is highlighted that these 2PL specifications correspond to the partial membership mastery model and the Ramsay quotient model, respectively. A simulation study revealed that model selection regarding alternative ranges of the θ distribution can be successfully applied. Different 2PL specifications were additionally compared for six publicly available datasets. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
12. Regional Factors Affecting Smallmouth Bass and Largemouth Bass Recruitment in Midwestern USA Reservoirs.
- Author
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Radigan, William J., Whitten Harris, Andrya L., Miazga, James R., Newkirk, Braxton, Gebhard, Amy, Bailey, Paul, and Fopma, Seth
- Subjects
- *
LARGEMOUTH bass , *REGULATION of rivers , *FISH populations , *DATA management - Abstract
ABSTRACT Regional factors correlated with recruitment of black bass (largemouth bass; Micropterus nigricans and smallmouth bass; Micropterus dolomieu), two important fishes, are rarely studied, despite the importance of recruitment variation in influencing fish populations. We sought to identify factors that drove variation in age‐0 and age‐1 black bass abundance. Age‐0 or age‐1 black bass catch per unit effort (CPUE) in reservoirs in Kansas and Illinois, USA, was positively correlated with local short‐term (i.e., mean April precipitation) environmental variables. In contrast, age‐0 or age‐1 black bass CPUE was generally negatively correlated with long‐term environmental variables and river regulation metrics (i.e., reservoir elevation) in the Mississippi and Missouri river reservoirs. Our findings highlight that consideration of spatiotemporal scale is important when managing black bass populations. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
13. Estimation of the minimal detectable horizontal acceleration of GNSS CORS.
- Author
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Toledo Costa, Renan Rodrigues, Klein, Ivandro, De Jesus Junior, Eliel Jessé Morais, Amagua, Christian Gonzalo Pilapanta, and De Oliveira Junior, Paulo Sergio
- Subjects
- *
GLOBAL Positioning System , *ACCELERATION (Mechanics) , *SURFACE of the earth , *STATISTICAL hypothesis testing , *AKAIKE information criterion - Abstract
Earth's surface velocities are routinely extracted from Global Navigation Satellite System (GNSS) position time series. In addition to velocity estimates, acceleration may be a crucial parameter for modeling non-linear motion. Typically, a statistical hypothesis test is employed to evaluate the significance of the involved parameters and guide the selection of the appropriate model. In this contribution, we formulate a statistical test procedure from the generalized likelihood ratio test to analyze the significance of the acceleration in the model. The proposed procedure is compared with results obtained using the Akaike Information Criterion and Bayesian Information Criterion. Additionally, Minimal Detectable Horizontal Acceleration is provided as an indicator of the sensitivity of the acceleration detection. The GNSS time series of position estimates from the Nevada Geodetic Laboratory were used for this study. The experiments demonstrated a good agreement between the statistical test proposed and the information criteria approach. Therefore, the proposed statistical test may be another criterion to help the user in the important task of model selection. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
14. Evaluating the Impact of Climate and Early Pandemic Policies on COVID-19 Transmission: A Case Study Approach.
- Author
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Meregan, Mohammad, Jafari, Frazad, Lotfi Ghahroud, Majid, Ghassemi Nejad, Jalil, and Janghorban Esfahani, Iman
- Subjects
COVID-19 pandemic ,VIRAL transmission ,WEATHER ,EVIDENCE gaps ,HUMIDITY - Abstract
The COVID-19 pandemic has had profound impact, necessitating a deeper understanding of factors influencing virus transmission. The negative impacts have weakened the economy and changed billions of lives around the world. COVID-19 is a new virus, and a lot of studies have tried to investigate its effect on, for example, the economy or environment. This research reveals new approaches to recognizing and stopping the spread of this virus with its connection to weather conditions and relevant parameters. By analyzing how temperature and humidity affect COVID-19 spread, alongside evaluating the effectiveness of initial public policies, this study addresses the critical gap in research by investigating the interplay between climate conditions and government regulations during the early stages of the pandemic in South Korea. This dual approach provides a comprehensive framework for understanding how environmental and policy factors jointly influence pandemic dynamics, offering valuable lessons for future global health crises. Although it focuses only on the first phase of South Korea COVID-19 regulations, outcomes show that these regulations were notably effective against the COVID-19 pandemic. The outcomes prove that higher temperature and higher relative humidity lead to lower transmission. Hence, based on the results during winter, the number of infections would be expected to speed up again. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
15. استخدام نموذج Quasi-Poisson لتحليل بيانات مرضى الثلاسيميا.
- Author
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حسن سامي عريبي and محمد حسين نعمة
- Subjects
DEPENDENT variables ,RESEARCH personnel ,LIKELIHOOD ratio tests ,TWENTIETH century ,THALASSEMIA - Abstract
Copyright of Kufa Studies Center Journal is the property of Republic of Iraq Ministry of Higher Education & Scientific Research (MOHESR) and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
16. Assessing Variable Importance for Best Subset Selection.
- Author
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Seedorff, Jacob and Cavanaugh, Joseph E.
- Subjects
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SUBSET selection , *FEATURE selection , *STATISTICAL models , *REGRESSION analysis , *ALGORITHMS - Abstract
One of the primary issues that arises in statistical modeling pertains to the assessment of the relative importance of each variable in the model. A variety of techniques have been proposed to quantify variable importance for regression models. However, in the context of best subset selection, fewer satisfactory methods are available. With this motivation, we here develop a variable importance measure expressly for this setting. We investigate and illustrate the properties of this measure, introduce algorithms for the efficient computation of its values, and propose a procedure for calculating p-values based on its sampling distributions. We present multiple simulation studies to examine the properties of the proposed methods, along with an application to demonstrate their practical utility. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
17. Categorical data analysis using discretization of continuous variables to investigate associations in marine ecosystems.
- Author
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Solvang, Hiroko Kato, Imori, Shinpei, Biuw, Martin, Lindstrøm, Ulf, and Haug, Tore
- Subjects
EUPHAUSIA superba ,MINKE whale ,MARINE ecology ,ATLANTIC cod ,CONDITIONAL probability ,PREDATION - Abstract
Understanding and predicting interactions between predators and prey and their environment are fundamental for understanding food web structure, dynamics, and ecosystem function in both terrestrial and marine ecosystems. Thus, estimating the conditional associations between species and their environments is important for exploring connections or cooperative links in the ecosystem, which in turn can help to clarify such directional relationships. For this purpose, a relevant and practical statistical method is required to link presence/absence observations with biomass, abundance, and physical quantities obtained as continuous real values. These data are sometimes sparse in oceanic space and too short as time series data. To meet this challenge, we provide an approach based on applying categorical data analysis to present/absent observations and real‐number data. The real‐number data used as explanatory variables for the present/absent response variable are discretized based on the optimal detection of thresholds without any prior biological/ecological information. These discretized data express two different levels, such as large/small or high/low, which give experts a simple interpretation for investigating complicated associations in marine ecosystems. This approach is implemented in the previous statistical method called CATDAP developed by Sakamoto and Akaike in 1979. Our proposed approach consists of a two‐step procedure for categorical data analysis: (1) finding the appropriate threshold to discretize the real‐number data for applying an independent test; and (2) identifying the best conditional probability model to investigate the possible associations among the data based on a statistical information criterion. We perform a simulation study to validate our proposed approach and investigate whether the method's observation includes many zeros (zero‐inflated data), which can often occur in practical situations. Furthermore, the approach is applied to two datasets: (1) one collected during an international synoptic krill survey in the Scotia Sea west of the Antarctic Peninsula to investigate associations among krill, fin whale (Balaenoptera physalus), surface temperature, depth, slope in depth (flatter or steeper terrain), and temperature gradient (slope in temperature); (2) the other collected by ecosystem surveys conducted during August–September in 2014–2017 to investigate associations among common minke whales, the predatory fish Atlantic cod, and their main prey groups (zooplankton, 0‐group fish) in Arctic Ocean waters to the west and north of Svalbard, Norway. The R code summarizing our proposed numerical procedure is presented in S4S1. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
18. Applying the Akaike Information Criterion (AIC) in earthquake spatial forecasting: a case study on probabilistic seismic hazard function (PSHF) estimation in the Sumatra subduction zone
- Author
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Wahyu Triyoso
- Subjects
Earthquake catalog ,spatial-temporal analysis ,surface strain rate ,AIC ,PSHF ,Environmental technology. Sanitary engineering ,TD1-1066 ,Environmental sciences ,GE1-350 ,Risk in industry. Risk management ,HD61 - Abstract
This study uses complete earthquake catalog data and spatio-temporal analysis to construct a reliable model to forecast the potential seismogenic earthquake or earthquake fault zones. It integrates models developed based on different researchers’ methods and earthquake catalogs from different periods. It constructs and compares models - Model-1, Model-2, and Model-3 - from the complete shallow earthquake catalog between 1963-1999 and 1963-2006. The δAIC is used to evaluate the reliability of the models, with Model-3 emerging as the most reliable in all tests in this study. The model is constructed based on the product of the normalized model of the combined smooth seismicity model of a relatively small to moderate complete earthquake catalog data with a relatively uniform background model and weighted by the normalized seismic moment rate derived from the surface strain rate. It is suggested that a more extended observation period and using a complete, albeit relatively small-to-moderate, earthquake catalog leads to a more reliable and accurate model. Implementation of the Probabilistic Seismic Hazard Function (PSHF) window using the b-value of a 5-year window length with a 1-year sliding window prior to a significant seismic event proved successful, and the methodology demonstrates the importance of the temporal "b-value" in conjunction with the reliable seismicity rate and spatial probabilistic earthquake forecasting models in earthquake forecasting. The results showed large changes in the PSHF prior to giant and large earthquakes and the finding of a correlation between decreased b-value time window length and earthquake magnitude. The results have implications for the implementation of seismic mitigation measures.
- Published
- 2024
- Full Text
- View/download PDF
19. Anthracycline-induced hypertension in pediatric cancer survivors: unveiling the long-term cardiovascular risks
- Author
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Andia Taghdiri
- Subjects
Anthracycline ,Hypertension ,Anthracycline-induced hypertension ,Anthracycline-induced cardiotoxicity ,AIC ,Cardiotoxicity ,Diseases of the circulatory (Cardiovascular) system ,RC666-701 - Abstract
Abstract Background Long-term cardiovascular complications are common among pediatric cancer survivors, and anthracycline-induced hypertension has become an essential reason for concern. Compared to non-cancer controls, survivors have a higher prevalence of hypertension, and as they age, their incidence rises, offering significant dangers to cardiovascular health. Main body Research demonstrates that exposure to anthracyclines is a major factor in the development of hypertension in children who have survived cancer. Research emphasizes the frequency and risk factors of anthracycline-induced hypertension, highlighting the significance of routine measurement and management of blood pressure. Furthermore, cardiovascular toxicities, such as hypertension, after anthracycline-based therapy are a crucial be concerned, especially for young adults and adolescents. Childhood cancer survivors deal with a variety of cardiovascular diseases, such as coronary artery disease and cardiomyopathy, which are made worse by high blood pressure. In order to prevent long-term complications, it is essential to screen for and monitor for anthracycline-induced hypertension. Echocardiography and cardiac biomarkers serve as essential tools for early detection and treatment. In order to lower cardiovascular risks in pediatric cancer survivors, comprehensive management strategies must include lifestyle and medication interventions in addition to survivor-centered care programs. Short conclusion Proactive screening, monitoring, and management measures are necessary for juvenile cancer survivors due to the substantial issue of anthracycline-induced hypertension in their long-term care. To properly include these strategies into survivor-ship programs, oncologists, cardiologists, and primary care physicians need to collaborate together. The quality of life for pediatric cancer survivors can be enhanced by reducing the cardiovascular risks linked to anthracycline therapy and promoting survivor-centered care and research.
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- 2024
- Full Text
- View/download PDF
20. Feeding potential and foraging behaviour of cheilomenes sexmaculata (F.) on cotton whitefly, Bemisia tabaci (Gennadius).
- Author
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Kumar, Rakesh, Suroshe, Sachin S., Venkanna, Y., Keerthi, M. C., Kumar, Anoop, and Chander, Subhash
- Subjects
- *
SWEETPOTATO whitefly , *FORAGING behavior , *BEETLES , *LADYBUGS , *HEMIPTERA , *ALEYRODIDAE - Abstract
Feeding potential and foraging behavior are complimentary to determine the efficiency of a predator. The predatory potential of both grub and adult stages of Cheilomenes sexmaculata (F.) (Coleoptera: Coccinellidae) was investigated against different developmental stages of cotton whitefly, Bemisia tabaci Gennadius (Aleyrodidae: Hemiptera), under laboratory conditions (27 ± 2 °C; 70 ± 5% RH; 14 h L: 10 h D). Fourth instar grub of C. sexmaculata exhibited the highest feeding potential against the whitefly stages (41.74 adults, 33.41 pupae and 31.33 nymphs), whereas first instar grub exhibited the lowest feeding potential (10.15 adults, 9.15 pupae and 7.00 whitefly nymphs). The female beetle consumed the highest number of prey (1445.29 adults, 1364.88 pupae, and 1374.35 whitefly nymphs) followed by male beetle (1390.12 adults, 1308.18 pupae and 1325.35 whitefly nymphs). Both Roger's and Holling's models indicated a type II functional response curve for all the grub and adult stages of C. sexmaculata. Cheilomenes sexmaculata female showed the highest attack rate (4.65 h-1), and the maximum rate of predation 37.5 insects/day, whereas the male beetle recorded the lowest handling time (0.02 h). The fourth instar grub showed the highest attack rate (1.30 h-1) against the B. tabaci pupae, whereas the female beetle showed the maximum rate of predation 38.18 insects/day, with the lowest handling time (0.04 h). Female beetle showed the highest attack rate (6.87 h-1), whereas the fourth instar grub showed the maximum rate of predation 41.7 insects/day with the lowest handling time (0.01 h). Hence, it is advocated to release the fourth instar grubs and adult females of C. sexmaculata collectively for the augmentative biological control of B. tabaci in the IPM program. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
21. Factors affecting walleye and sauger recruitment in Lewis and Clark Lake, South Dakota, 2001–2022.
- Author
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Radigan, William J., Chvala, Phil, Longhenry, Christopher, and Pegg, Mark
- Subjects
- *
LAKES , *ADULTS - Abstract
Abundance of adult walleye (Sander vitreus) and sauger (Sander canadensis), two important sport fishes, decreased significantly during 2001–2022 in Lewis and Clark Lake, a border water between Nebraska and South Dakota, despite walleye fingerling stocking and stable age‐0 abundance of both species. We sought to identify factors that drove variation in age‐0 abundance from 2001 to 2022 using an information theoretic approach. Age‐0 walleye catch per unit effort (CPUE) was correlated to mean monthly outflow, mean annual precipitation, and mean April gauge height in a delta. Age‐0 sauger CPUE was correlated to adult conspecific CPUE, mean April Heating Degree Days, and mean annual precipitation. Our findings suggest that both biotic and abiotic factors were important for explaining variation in age‐0 CPUE of sauger, but mainly abiotic factors for walleye. As such, manipulation of abiotic factors (i.e., outflow) by installing entrainment barriers may be more effective than manipulation of biotic factors (i.e., stocking). [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
22. Logistic Regression Analysis of Key Drivers in Mergers and Acquisitions.
- Author
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Shravani and V., Jeelan Basha
- Subjects
MERGERS & acquisitions ,RECEIVER operating characteristic curves ,INVESTORS ,REGRESSION analysis ,RESEARCH & development ,LOGISTIC regression analysis - Abstract
The current study evaluates the predictive factors for mergers and acquisitions (M&A) using a logistic regression model, focusing on key financial variables such as Face Value (FV), Advertisement Expenses (AE), and Research & Development (RD). Model 1, with an AIC of 112.67 and an accuracy of 84.17%, performs best overall, providing strong predictive capability for M&A activity. The model reveals that companies with lower face value, higher advertisement expenses, and increased RD spending are more likely to engage in M&A. The ROC curve analysis indicates a robust model with an AUC of 0.9311, suggesting high classification accuracy. Despite its effectiveness, non-random residual patterns highlight areas for improvement, indicating potential non-linearity and outliers. Future improvements could involve refining the model through larger datasets, adding interaction terms, or exploring industry-specific models. These findings provide valuable insights for corporate strategists and investors in identifying potential M&A candidates. [ABSTRACT FROM AUTHOR]
- Published
- 2024
23. A Bimodal Extension of the Tanh Skew Normal Distribution: Properties and Applications.
- Author
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Das, Jondeep, Hazarika, Partha Jyoti, Chakraborty, Subrata, Pathak, Dimpal, Hamedani, G. G., and Karamikabir, Hamid
- Subjects
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SKEWNESS (Probability theory) , *AKAIKE information criterion , *MAXIMUM likelihood statistics , *CHARACTERISTIC functions , *GAUSSIAN distribution - Abstract
This article introduces a novel family of skew distributions namely bimodal Tanh skew normal (BTSN) distributions, which incorporates a new skew function with the help of hyperbolic tangent function. This new distribution is designed to accommodate data sets with two modes. Besides, the article presents various essential mathematical properties, such as moments, moment generating function, characteristic function, mean deviation, characterizations and the method for maximum likelihood estimation of this distribution. A simulation study is also conducted using Metropolis-Hastings algorithm to examine the behavior of the obtained parameters. Furthermore, the practical utility of this new distribution is demonstrated through a real life application involving a specific data set. To assess the suitability of the BTSN distribution, the article employs Akaike information criterion (AIC) and Bayesian information criterion (BIC). Finally, a likelihood ratio test is conducted to distinguish between the new model and the existing competing models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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24. Anthracycline-induced hypertension in pediatric cancer survivors: unveiling the long-term cardiovascular risks.
- Author
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Taghdiri, Andia
- Abstract
Background: Long-term cardiovascular complications are common among pediatric cancer survivors, and anthracycline-induced hypertension has become an essential reason for concern. Compared to non-cancer controls, survivors have a higher prevalence of hypertension, and as they age, their incidence rises, offering significant dangers to cardiovascular health. Main body: Research demonstrates that exposure to anthracyclines is a major factor in the development of hypertension in children who have survived cancer. Research emphasizes the frequency and risk factors of anthracycline-induced hypertension, highlighting the significance of routine measurement and management of blood pressure. Furthermore, cardiovascular toxicities, such as hypertension, after anthracycline-based therapy are a crucial be concerned, especially for young adults and adolescents. Childhood cancer survivors deal with a variety of cardiovascular diseases, such as coronary artery disease and cardiomyopathy, which are made worse by high blood pressure. In order to prevent long-term complications, it is essential to screen for and monitor for anthracycline-induced hypertension. Echocardiography and cardiac biomarkers serve as essential tools for early detection and treatment. In order to lower cardiovascular risks in pediatric cancer survivors, comprehensive management strategies must include lifestyle and medication interventions in addition to survivor-centered care programs. Short conclusion: Proactive screening, monitoring, and management measures are necessary for juvenile cancer survivors due to the substantial issue of anthracycline-induced hypertension in their long-term care. To properly include these strategies into survivor-ship programs, oncologists, cardiologists, and primary care physicians need to collaborate together. The quality of life for pediatric cancer survivors can be enhanced by reducing the cardiovascular risks linked to anthracycline therapy and promoting survivor-centered care and research. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
25. Local factors and bionomic characteristics determining the occurrence of semiaquatic bugs in streams of Central Amazonia.
- Author
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Godoy, Bruno Spacek, Cunha, Erlane José, and Hamada, Neusa
- Subjects
- *
AQUATIC biodiversity , *AQUATIC insects , *RIPARIAN forests , *INSECT communities , *BIODIVERSITY conservation , *PREDICTION models - Abstract
Individual responses to changes in the environment by different species drive a better understanding of the dynamics of diversity and habitat filtering. Hypotheses based on functional and morphometric characteristics of the species are especially useful for accounting for different interpretations of biological responses.This study aimed to determine the responses of semiaquatic species of insects to habitat changes from the elaboration of hypotheses based on the importance of species traits facing environmental variations. We tested these hypotheses with maximum likelihood models to explain the occurrence of the species in streams of the central Amazon region.In a total of 17 collected Gerromorpha species, we used 14 to develop five predictive models of occurrence considering the bionomic characteristics of each species and their possible relationships with habitat changes in 33 streams in the central Amazon region. We used maximum likelihood models to assess the fit of the models to the observed occurrence, with environmental characteristics as covariates affecting the occurrence probability, and sampling effort affecting the detection probability.A total of five species exhibited changes in the probability of occurrence in streams related to an environmental condition (riparian forest disturbance, flow heterogeneity, and surface habitat heterogeneity). The probability of occurrence tended to reduce for four of the five species and increase for one with increase of environmental impacts. Furthermore, the sampling effort covariate did not affect the probability of detection in most species, indicating that the group showed a high detection.The use of functional characteristics of Gerromorpha species to develop ecological hypotheses proved relevant and indicated unexpected relationships, expanding our knowledge of this community of aquatic insects. Therefore, including the individual responses of organisms to environmental variations helps in studies on aquatic biodiversity, both for basic ecology and for conservation and bioassessment. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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26. Statistical Models for High-Risk Intestinal Metaplasia with DNA Methylation Profiling.
- Author
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Wang, Tianmeng, Huang, Yifei, and Yang, Jie
- Subjects
DNA methylation ,STATISTICAL models ,METAPLASIA ,INTESTINES ,CELL division - Abstract
We consider the newly developed multinomial mixed-link models for a high-risk intestinal metaplasia (IM) study with DNA methylation data. Different from the traditional multinomial logistic models commonly used for categorical responses, the mixed-link models allow us to select the most appropriate link function for each category. We show that the selected multinomial mixed-link model (Model 1) using the total number of stem cell divisions (TNSC) based on DNA methylation data outperforms the traditional logistic models in terms of cross-entropy loss from ten-fold cross-validations with significant p-values 8.12 × 10 − 4 and 6.94 × 10 − 5 . Based on our selected model, the significance of TNSC's effect in predicting the risk of IM is justified with a p-value less than 10 − 6 . We also select the most appropriate mixed-link models (Models 2 and 3) when an additional covariate, the status of gastric atrophy, is available. When the status is negative, mild, or moderate, we recommend Model 2; otherwise, we prefer Model 3. Both Models 2 and 3 can predict the risk of IM significantly better than Model 1, which justifies that the status of gastric atrophy is informative in predicting the risk of IM. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
27. Generation of Image Caption for Visually Challenged People
- Author
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Ravi Teja, K., Sriman, Y., Aneeta Joseph, A., Deepa, R., Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Bhateja, Vikrant, editor, Tang, Jinshan, editor, Sharma, Dilip Kumar, editor, Polkowski, Zdzislaw, editor, and Ahmad, Afaq, editor
- Published
- 2024
- Full Text
- View/download PDF
28. Training of New-Format Specialists for the Agro-Industrial Complex as a Determinant of Sustainable Rural Development
- Author
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Dukhina, T., Tarasova, S., Drozhzhina, N., Taranova, E., Chudnova, O., Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Samoylenko, Irina, editor, and Rajabov, Toshpulot, editor
- Published
- 2024
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29. Algorithm for Boycotting Behavior for Fake Goods
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Khoi, Bui Huy, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Abraham, Ajith, editor, Bajaj, Anu, editor, Hanne, Thomas, editor, Siarry, Patrick, editor, and Ma, Kun, editor
- Published
- 2024
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30. Application of GLM and GAMLSS Models in Predictive Analysis of Motor Bodily Injury Claims
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Brati, Esmeralda, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Alareeni, Bahaaeddin, editor, and Hamdan, Allam, editor
- Published
- 2024
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31. Heterogeneous Mixture Model for Software Reliability Prediction
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Kumar, Sarvesh, Jain, Madhu, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Pant, Millie, editor, Deep, Kusum, editor, and Nagar, Atulya, editor
- Published
- 2024
- Full Text
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32. Risk Factor Analysis and Sustainability Assessment of AIC Development under Sanctions
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E. Chatkina and N. A. Kazakova
- Subjects
sustainable development ,risk factor approach ,aic ,sanctions ,credit rating ,competitiveness ,efficiency ,operating, financial, investment activities ,Finance ,HG1-9999 - Abstract
The sustainable development of the agro-industrial complex is a priority task and a factor in ensuring food security in Russia. The relevance of the study is due to the lack of transparency and limited existing ratings of agribusiness companies, the lack of consideration of the impact of sanctions, their consequences and the ability of companies to promptly reconfigure their business models. In this regard, the purpose of the study was to form a methodology for assessing the sustainability of the development of agribusiness companies in modern conditions. The presented methodology is based on the principles of prioritizing the impact of sustainable development criteria on competitive opportunities; availability of accessible information, its regularity and understandability for users; using the risk factor approach as a navigator for assessing competitive positions. The research methodology is based on an industry approach, followed by an assessment of the impact of identified risk factors on trends in production indicators, market share dynamics, efficiency of operating, financial and investment activities, and business development rates. To visualize the results, the method of constructing competitiveness polygons was used, which provides a clear assessment of the competitive advantages and management abilities of companies to quickly adapt to changing market conditions. The scientific novelty of the study lies in the development of a situational approach to assessing the sustainability of the development of agribusiness companies, based on the impact of identified industry risk factors on business performance. Approbation of the methodology was carried out on the companies, which are participants in the credit ratings for the agro-industrial complex sector of national rating agencies accredited by the Bank of Russia. The theoretical significance of the study lies in the development and adaptation of the methodology of sectoral analysis to the specifics and needs of the agro-industrial complex for the purpose of its sustainable development. The practical results are of value to the Ministry of Agriculture and private investors interested in an independent assessment of companies in order to minimize the risks of investing in sustainable development projects.
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- 2024
- Full Text
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33. Reflective equilibrium in practice and model selection: a methodological proposal from a survey experiment on the theories of distributive justice.
- Author
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Inoue, Akira, Shimizu, Kazumi, Udagawa, Daisuke, and Wakamatsu, Yoshiki
- Abstract
In political philosophy, reflective equilibrium is a standard method used to systematically reconcile intuitive judgments with theoretical principles. In this paper, we propose that survey experiments and a model selection method—i.e., the Akaike Information Criterion (AIC)-based model selection method—can be viewed together as a methodological means of satisfying the epistemic desiderata implicit in reflective equilibrium. To show this, we conduct a survey experiment on two theories of distributive justice, prioritarianism and sufficientarianism. Our experimental test case and AIC-based model selection method demonstrate that the refined sufficientarian principle, a widely accepted principle of distributive justice, is no more plausible than the prioritarian principle. This tells us that some changes of certain intuitions revolving around sufficientarianism should be examined (separately) based on the findings of the survey experiment and AIC model selection. This shows the potential of our approach—both practically and methodologically—as a novel way of applying reflective equilibrium in political philosophy. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
34. Airborne Infection Control measures among Government and Private Health Facilities in a hilly district of North India.
- Author
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Kumar, Mohinder, Vohra, Jai Gopal, Pathania, Abhishek, and Singh, Gurmeet
- Subjects
- *
CROSS infection prevention , *PREVENTION of infectious disease transmission , *MEDICAL protocols , *PUBLIC hospitals , *CROSS-sectional method , *INFECTION control , *HUMAN services programs , *PROPRIETARY hospitals , *AIR microbiology , *EVALUATION of human services programs , *HEALTH policy , *DESCRIPTIVE statistics , *CHI-squared test , *RESEARCH , *HEALTH facilities , *DATA analysis software - Abstract
Introduction: Guidelines for Airborne Infection Control in Health Care Settings were published in the 2010 to reduce Airborne Infections in health service providers and visitors to health facilities. Objectives: To evaluate healthcare facilities regarding implementation of Guidelines for Airborne Infection Control in Health Care Settings. Methods: An analytic, cross- sectional, health care facility-based study in the district Solan of Himachal Pradesh. A total 53 health care facilities from both public and private sectors were assessed and compared. Results: The implementation of these guidelines was unsatisfactory. Government health care facilities were better implementing the guidelines, compared to the private sector. Conclusion: The guidelines are over a decade old and implementation is not optimal. Efforts and emphasis are required to be put into implementation of these guidelines in health care facilities. An update of policy with stringent penalties are advocated for better compliance in the private sector. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
35. Times Series Forecasting of Monthly Rainfall using Seasonal Auto Regressive Integrated Moving Average with EXogenous Variables (SARIMAX) Model.
- Author
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Mulla, Shahenaz, Pande, Chaitanya B., and Singh, Sudhir K.
- Subjects
MOVING average process ,TIME series analysis ,STANDARD deviations ,FORECASTING ,BOX-Jenkins forecasting ,RAINFALL ,CLIMATE change - Abstract
In this study, the monthly rainfall time series forecasting was investigated based on the effectiveness of the Seasonal Auto Regressive Integrated Moving Average with EXogenous variables (SARIMAX) model in the coastal area of Phaltan, taluka. Rainfall forecasting is so much helpful to crops and disaster planning and development during monsoon season. The performance of model was assessed using various statistical metrics such as coefficient of determination (R
2 ), and root mean squared error (RMSE). In this study, we have used multi-dimensional components as inputs in the SARIMAX model for prediction of monthly rainfall. In this work, we have tested two models such as first SARIMAX model orders are (1, 0, 1) and (0, 1, 0, 12), while the second model had orders of (1, 1, 1) and (1, 1, 1, 12). The results of two models have been compared and the performance of model show that the first model outperformed on the rainfall forecasting. The RMSE and R2 performance are 54.54 and 0.91 of first model, respectively, while the second model accuracy is RMSE of 71.12 and an R2 of 0.81. Hence best SARIMAX model has been used for forecasting of monthly time series rainfall from 2020 to 2025 for study area. The results of rainfall data analysis of climatic data are valuable for understanding the variations in global climate change. [ABSTRACT FROM AUTHOR]- Published
- 2024
- Full Text
- View/download PDF
36. Riverscape genetics of the orangethroat darter complex.
- Author
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Belcik, John T. and Ashley, Mary V.
- Subjects
- *
GENETICS , *GENETIC variation , *GENE flow , *WATERSHEDS , *INTROGRESSION (Genetics) , *SPECIES diversity - Abstract
Freshwater darters belonging to the orangethroat darter species complex, or Ceasia, are widely distributed in the Central and Southern United States, with ranges that span both glaciated and unglaciated regions. Up to 15 species have been recognized in the complex, with one, Etheostoma spectabile, having a widespread northern distribution and another, Etheostoma pulchellum, having a sizeable southern distribution. The other species in the complex have much more restricted distributions in unglaciated regions of the Central Highlands. We sampled 384 darters from 52 sites covering much of the range of Ceasia and evaluated patterns of genetic diversity, genetic structure, and pre‐ and post‐glacial patterns of range contraction and expansion. We anticipated finding much stronger signals of genetic differentiation and diversification in unglaciated regions, given the higher species diversity and levels of endemism reported there. Surprisingly, microsatellite genotyping revealed two well‐differentiated genetic clusters of E. spectabile in samples from glaciated regions, one confined to the Illinois River basin and another found in the Wabash drainage and Great Lakes tributaries. This suggests that there was expansion from two isolated glacial refugia, with little subsequent post‐glacial gene flow. Fish collected from throughout the unglaciated region were less genetically differentiated. Fish assigned to Etheostoma burri and Etheostoma uniporum based on collection sites and morphological characters were not genetically differentiated from E. spectabile samples from the region. Hybridization and introgression occurring in the Central Highlands may confound genetic delineation of species in this region of high endemism and diversity. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
37. IMPLEMENTASI GEOGRAPHICALLY WEIGHTED LOGISTIC REGRESSION PADA LAJU PERTUMBUHAN PENDUDUK DI BOJONEGORO
- Author
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Nur Mahmudah and Nuraini Khoiriyah
- Subjects
laju pertumbuhan penduduk ,population growth rate ,fixed gaussian kernels ,gwlr ,aic ,Mathematics ,QA1-939 - Abstract
Population Growth Rate is the rate at which influencing factors increase and decrease population size. The development of large populations in regional governments causes uncontrolled population growth rates. The population growth rate in Bojonegoro Regency from 2019 to 2020 experienced a significant increase of 0.96%. The increase in population has an impact on the emergence of various problems in the economic and social fields. This problem requires effective and comprehensive spatial modeling, namely Geographically Weighted Logistic Regression (GWLR) with Fixed Gaussian and Adaptive Gaussian weighting. GWLR modeling aims to determine the implementation of knowledge and insight into the factors that influence the rate of population growth in each area of Bojonegoro District. based on the results of GWLR modeling with the Akaike Index Criteria (AIC) on the Fixed Gaussian kernel function of 33.91. This value identifies that the population growth rate modeling in each sub-district has different values. This difference can be seen from 6 sub-districts which are significantly influenced by the number of births and 5 sub-districts are significantly influenced by the number of couples of childbearing age who participate in family planning. The results of modeling predictions (GWLR) in Bojonegoro Regency show that 11 sub-districts have low growth rate categories while 17 sub-districts have high population growth rate values
- Published
- 2023
- Full Text
- View/download PDF
38. Invasive risk assessment and expansion of the realized niche of the Oriental Garden Lizard Calotes versicolor species complex (Daudin, 1802)
- Author
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Ginal, Philipp, Tan, Wei Cheng, and Rödder, Dennis
- Subjects
SDM ,Maxent ,hypervolumes ,agamid lizard ,global invader ,AIC - Abstract
Correlative species distribution modelling (SDM) can be a useful tool to quantify a species’ realized niche and to predict its potential distribution for non-native ranges. The agamid lizard Calotes versicolor s.l. belongs to the most widely distributed reptile taxa worldwide. In the past, C. versicolor s.l. has been introduced to several countries, including regions in the Oriental, the Neotropical and the Afrotropical realms, where strong negative impact on the local fauna is assumed. Due to the complicated taxonomy and the existence of several cryptic species, which are covered by this taxon, we used C. versicolor sensu lato and its four subtaxa (C. versicolor sensu stricto, C. irawadi, C. vultuosus, C. farooqi) as target species to (1) compute correlative SDMs for C. versicolor s.l. and its subtaxa and project them across the globe to highlight climatically suitable areas of risk for future invasion and (2) based on the ecological niche concept, we investigate if the species complex expanded its realized climatic niche during the invasion process. We use two different SDM approaches, namely n-dimensional hypervolumes and Maxent. N-dimensional hypervolumes are a non-hierarchically ranked approach, which is a useful tool to investigate the expansion in the realized niche, while Maxent, a hierarchically ranked model, is used to focus on potentially suitable areas for future invasion. We calculated two final models for C. versicolor s.l., one based on records from the native range and one based on records from the native and invaded range, as well as one model for each subtaxon. Our results show a geographic expansion into novel climatic conditions as well as an expansion in the realized niche. Our results reveal that C. versicolor s.l. is currently inhabiting 13% of its potential range but could find suitable climatic conditions on a global surface area between 14,025,100 km2 and 53,142,600 km2. Our predictions reveal large areas of highly suitable climatic conditions for the Oriental, Australian, Afrotropical and Neotropical realms, whereas only small regions of the Palearctic and Nearctic realms provide moderately suitable conditions. Further, some localities, especially those with a high amount of human traffic like ports or airports, might act as multiplicators and might therefore be a stepping stone into further areas.
- Published
- 2022
39. Modeling the interplay between albumin-globulin metabolism and HIV infection
- Author
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Vivek Sreejithkumar, Kia Ghods, Tharusha Bandara, Maia Martcheva, and Necibe Tuncr
- Subjects
hiv ,albumin and globulin ,within-host hiv model ,model selection ,aic ,structural identifiability ,practical identifiability ,monte carlo simulations ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
Human immunodeficiency virus (HIV) infection is a major public health concern with 1.2 million people living with HIV in the United States. The role of nutrition in general, and albumin/globulin in particular in HIV progression has long been recognized. However, no mathematical models exist to describe the interplay between HIV and albumin/globulin. In this paper, we present a family of models of HIV and the two protein components albumin and globulin. We use albumin, globulin, viral load and target cell data from simian immunodeficiency virus (SIV)-infected monkeys to perform model selection on the family of models. We discover that the simplest model accurately and uniquely describes the data. The selection of the simplest model leads to the observation that albumin and globulin do not impact the infection rate of target cells by the virus and the clearance of the infected target cells by the immune system. Moreover, the recruitment of target cells and immune cells are modeled independently of globulin in the selected model. Mathematical analysis of the selected model reveals that the model has an infection-free equilibrium and a unique infected equilibrium when the immunological reproduction number is above one. The infection-free equilibrium is locally stable when the immunological reproduction number is below one, and unstable when the immunological reproduction number is greater than one. The infection equilibrium is locally stable whenever it exists. To determine the parameters of the best fitted model we perform structural and practical identifiability analysis. The structural identifiability analysis reveals that the model is identifiable when the immune cell infection rate is fixed at a value obtained from the literature. Practical identifiability reveals that only seven of the sixteen parameters are practically identifiable with the given data. Practical identifiability of parameters performed with synthetic data sampled a lot more frequently reveals that only two parameters are practically unidentifiable. We conclude that experiments that will improve the quality of the data can help improve the parameter estimates and lead to better understanding of the interplay of HIV and albumin-globulin metabolism.
- Published
- 2023
- Full Text
- View/download PDF
40. Opening Pandora's box: caveats with using toolbox-based approaches in mathematical modeling in biology.
- Author
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Ganusov, Vitaly V. and Coronel, Anibal
- Subjects
BIOLOGICAL mathematical modeling ,SYSTEMS biology ,MATHEMATICAL models ,SENSITIVITY analysis ,PHENOMENOLOGICAL biology ,MATHEMATICAL analysis - Abstract
Mathematical modeling is a powerful method to understand how biological systems work. By creating a mathematical model of a given phenomenon one can investigate which model assumptions are needed to explain the phenomenon and which assumptions can be omitted. Creating an appropriate mathematical model (or a set of models) for a given biological system is an art, and classical textbooks on mathematical modeling in biology go into great detail in discussing how mathematical models can be understood via analytical and numerical analyses. In the last few decades mathematical modeling in biology has grown in size and complexity, and along with this growth new tools for the analysis of mathematical models and/or comparing models to data have been proposed. Examples of tools include methods of sensitivity analyses, methods for comparing alternative models to data based on AIC/BIC/etc.), and mixed-effect-based fitting of models to data. I argue that the use of many of these "toolbox" approaches for the analysis of mathematical models has negatively impacted the basic philosophical principle of the modeling--to understand what the model does and why it does what it does. I provide several examples of limitations of these toolbox-based approaches and how they hamper generation of insights about the system in question. I also argue that while we should learn new ways to automate mathematical modeling-based analyses of biological phenomena, we should aim beyond a mechanical use of such methods and bring back intuitive insights into model functioning, by remembering that after all, modeling is an art and not simply engineering. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
41. Gaussian quasi-information criteria for ergodic Lévy driven SDE.
- Author
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Eguchi, Shoichi and Masuda, Hiroki
- Subjects
- *
GAUSSIAN function , *PARAMETRIC modeling , *QUASI-Newton methods , *STATISTICS - Abstract
We consider relative model comparison for the parametric coefficients of an ergodic Lévy driven model observed at high-frequency. Our asymptotics is based on the fully explicit two-stage Gaussian quasi-likelihood function (GQLF) of the Euler-approximation type. For selections of the scale and drift coefficients, we propose explicit Gaussian quasi-AIC and Gaussian quasi-BIC statistics through the stepwise inference procedure, and prove their asymptotic properties. In particular, we show that the mixed-rates structure of the joint GQLF, which does not emerge in the case of diffusions, gives rise to the non-standard forms of the regularization terms in the selection of the scale coefficient, quantitatively clarifying the relation between estimation precision and sampling frequency. Also shown is that the stepwise strategies are essential for both the tractable forms of the regularization terms and the derivation of the asymptotic properties of the Gaussian quasi-information criteria. Numerical experiments are given to illustrate our theoretical findings. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
42. Latent class analysis of multigroup heterogeneity in propensity for academic dishonesty.
- Author
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Kumar, Sunil, Dabgotra, Apurba, and Mukherjee, Diganta
- Subjects
- *
ACADEMIC fraud , *LATENT variables , *SELF-evaluation , *HETEROGENEITY , *COLLEGE students - Abstract
Latent class analysis (LCA) is a cross-sectional latent variable mixture modeling (LVMM) approach. Like all LVMM approaches, LCA aims to find heterogeneity within the population by identifying homogenous subgroups of individuals, with each subgroup (called latent class) possessing a unique set of characteristics that differentiate it from other subgroups. LCA can be carried out with categorical latent and indicator variables. But, LCA is unable to examine the association between respective items and the latent variable among categories of individuals. Multiple-group LCA, in particular, is a useful extension of LCA which enables the testing of homogeneity of the class patterns between groups of the individual through a series of constraints. In this paper, we have performed a multi-group latent class analysis for measuring self reported academic dishonesty among the students of University of Jammu. From the analysis, three general behaviors of academic cheaters are identified as rare, frequent, and instant cheaters. Further, from the multi-group LCA, it is envisaged that female students of University of Jammu are more instantaneous cheaters than male students. Students who are self-reported cheaters from sciences and humanities of the University of Jammu are persistent in cheating whereas from professional courses they are more occasional. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
43. A Generalized Autoregressive Model Fusing Both Linearity and Nonlinearity and Its Application.
- Author
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Fei Hao, Chengchong Gao, Ying Dong, Ruwen Chen, and Tianqi Zhang
- Subjects
- *
AUTOREGRESSIVE models , *LEAST squares , *TIME series analysis , *MATHEMATICAL models , *PARAMETER estimation , *OUTLIER detection - Abstract
A generalized autoregressive (GNAR) model fusing both linearity and nonlinearity is proposed to solve the complex nonlinear time series modeling problem. First, the mathematical model of the GNAR model is established while the mathematical mechanism and physical meaning of the GNAR model are both expounded from the two aspects of Weierstrass theory and Volterra theory. Then, an improved least squares parameter estimation method, namely robust Residuals Adjusted Least Squares (RALS) method, is introduced and its process is successionally proposed to improve the anti-outlier performance of the GNAR model. Next, the mathematical model of the computational complexity for the GNAR model is established and the complexity model is introduced into the AIC to propose an improved AIC (iAIC). Finally, a dataset containing 23 records is established and experiments are carried out. The results show that the GNAR model with RALS estimator has high fitting accuracy. The Mean Square Error (MSE) of the series predicted by the GNAR model with Least Squares (LS) estimator is 325.3% higher than that of the series predicted by the GNAR model with RALS estimator at most. The effectiveness of order determination method reaches 82.61%. Therefore, the GNAR model together with its parameter estimation method and order determination method proposed in this paper are effective. [ABSTRACT FROM AUTHOR]
- Published
- 2024
44. Forecasting road accidental deaths in India: an explicit comparison between ARIMA and exponential smoothing method.
- Author
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Swain, Prafulla Kumar, Tripathy, Manas Ranjan, and Agrawal, Khushi
- Subjects
- *
TRAFFIC fatalities , *STATISTICAL smoothing , *BOX-Jenkins forecasting , *TIME series analysis , *FORECASTING - Abstract
The number of deaths due to road accident is increasing day by day and has become an alarming global problem over the decades. India, with her rising motorization is no stranger to this global catastrophe. In this paper two relatively simple yet powerful and versatile techniques for forecasting time series data, autoregressive integrated moving average method (ARIMA) and exponential smoothing method are used to forecast the number of deaths due to road accidents in India from the year 2022-- 2031. The results based on the two methods are compared and it is found that they are in sync with each other and pre-existing literature. Furthermore, this is a unique attempt to use two time series analysis techniques on the same data and carry out a comparative analysis. The data was collected from the annual report of Ministry of Road Transport and Highways, India (2020) and Accidental Deaths & Suicides in India (ADSI) Report of National Crime Record Bureau (2021). After examining all the probable models, it is observed that ARIMA (2, 2, 2) model and exponential smoothing (M, A, N) model are suitable for the given data. Amongst the two, ARIMA (2, 2, 2) model has a lower AIC and BIC value. Thus, this comes out to be the best model as per our model selection criterion. Further, the study also reveals an upward trend of number of road accidental deaths for the upcoming 10 years in India. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
45. New penalty in information criteria for the ARCH sequence with structural changes.
- Author
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Ozaki, Ryoto and Ninomiya, Yoshiyuki
- Subjects
- *
ARCHES , *ARCH model (Econometrics) , *AKAIKE information criterion - Abstract
For change point models and autoregressive conditional heteroscedasticity (ARCH) models, which have long been important especially in econometrics, we develop information criteria that work well even when considering a combination of these models. Since the change point model does not satisfy the conventional statistical asymptotics, a formal Akaike information criterion (AIC) with twice the number of parameters as the penalty term would clearly result in overfitting. Therefore, we derive an AIC‐type information criterion from its original definition using asymptotics peculiar to the change point model. Specifically, we suppose time series data treated in econometrics and derive Takeuchi information criterion (TIC) as the main information criterion allowing for model misspecification. It is confirmed that the penalty for the change point parameter is almost three times larger than the penalty for the regular parameter. We also derive the AIC in this setting from the TIC by removing the consideration of the model misspecification. In numerical experiments, the derived TIC and AIC are compared with the formal AIC and Bayesian information criterion (BIC). It is shown that the derived information criteria clearly outperform the others in light of the original purpose of AIC, which is to give an estimate close to the true structure. We also ensure that the TIC seems to be superior to the AIC in the presence of model misspecification. [ABSTRACT FROM AUTHOR]
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- 2023
- Full Text
- View/download PDF
46. FORECASTING OF POPULATION AND ECONOMIC CHARACTERISTICS WITH ARIMA MODELS IN INDIA.
- Author
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Megeri, M. N. and Bheemanna
- Abstract
The Auto-regressive Integrated Moving Averages (ARIMA) and Holt-Winters Exponential Smoothing Models are discussed in this article. We also used the AIC and BIC to find the best-fitting ARIMA model for the data and provide population and economic forecasts for future years. For forecasting, we also apply the Holt-Winters Exponential Smoothing Model. The ARIMA (0, 2, 5), (0, 2, 5), (0, 2, 4), (1, 2, 2) and (0, 2, 2) models were also found to be the best-fitting models for India's Total, Urban and Rural population, GDP and Age Dependency Ratio. The ARIMA model is the best-fitted model compared to the Holt-Winters model for the forecasting. The ARIMA model underestimates the total population, whereas the Holt-Winters model overestimates it. Both models overestimate for urban populations and GDP. Rural population and the Age Dependency Ratio are underestimated by both models. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
47. Kinetic modelling: Regression and validation stages, a compulsory tandem for kinetic model assessment.
- Author
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Leveneur, Sébastien
- Subjects
REGRESSION analysis ,MODEL validation ,CHEMICAL systems ,CHEMICAL models ,CHEMICAL engineering ,CHEMICAL processes - Abstract
The development of robust and reliable kinetic models is vital to build safe, eco‐friendly, and cost‐competitive chemical processes. Establishing kinetic models for complex chemical systems such as biomass valorization is cumbersome because the kinetic modeller must test different models and fit several experimental observables (or concentrations). Usually, in chemical reaction engineering, kinetic model assessment is based solely on the regression stage outputs. The implementation of a validation stage can aid in choosing the most reliable kinetic models, essentially in the case of complex chemical systems. We studied the solvolysis of 5‐hydroxymethylfurfural (5‐HMF) to butyl levulinate (BL) as a model reaction constituting several consecutive and parallel reaction steps. From an existing kinetic model, we created 60 synthetic runs in batch conditions. In the first part, we tested four different models with 5 degrees of noise, and we carried out the modelling on the 60 synthetic runs. In the second part, two types of holdout methods were evaluated. In the last part, cross‐validation, namely the k‐fold method, was used. We found that the 10‐fold method allowed more efficient selection results even when the noise level was high. Besides, k‐fold allows for not scarifying experimental runs and selecting the most reliable model. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
48. TIME SERIES MODEL ON FEMALE BIRTH RECORDS AND THE PROPENSITY OF FEMALE BIRTHS IN ABAK LOCAL GOVERNMENT: A STUDY OF GENERAL HOSPITAL, UKPOM ABAK.
- Author
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Essien, Eduma and Udoh, Grace
- Subjects
VITAL records (Births, deaths, etc.) ,TIME series analysis ,LOCAL government ,CHILDBEARING age ,STAKEHOLDERS - Abstract
This research study utilizes the Time Series Model analytical approach to investigate and predict the monthly records of female births at the General Hospital in Ukpom Abak, estimating the expected pattern of female births in the Abak Metropolis. Currently, there is a significant neglect of the documentation of female births, leading to a need for more reliable statistics on female births. This lack of data adversely affects the accuracy of predicting the number of daughters born to a female as she progresses through her reproductive age. Furthermore, with rapid population growth, government planners require assistance planning for various aspects such as workforce, education, healthcare facilities, and other essential amenities. Despite the efforts of government agencies such as the Bureau of Statistics to ensure proper birth records, parents have shown reluctance to provide the necessary information. The researcher suggests using time series analysis, which involves collecting well-defined data items obtained through repeated measurements over time, to gain reliable insights into the trends and patterns of female births. The analysis's findings could prove invaluable to governmental planners and other stakeholders managing the population. [ABSTRACT FROM AUTHOR]
- Published
- 2023
49. Cardiovascular damage phenotypes and all-cause and CVD mortality in older adults
- Author
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Miller, Lindsay M, Wu, Chenkai, Hirsch, Calvin H, Lopez, Oscar L, Cushman, Mary, and Odden, Michelle C
- Subjects
Epidemiology ,Biomedical and Clinical Sciences ,Clinical Sciences ,Health Sciences ,Heart Disease ,Prevention ,Aging ,Clinical Research ,Cardiovascular ,Genetics ,2.1 Biological and endogenous factors ,Aetiology ,Good Health and Well Being ,Aged ,Biomarkers ,C-Reactive Protein ,Cardiovascular Diseases ,Humans ,Phenotype ,Risk Factors ,Risk factors ,Cardiovascular disease ,Latent Class Analysis ,AAI ,ankle arm index ,ADL ,Activities of Daily Living ,AIC ,Akaike Information Criterion ,APOE ,Apolipoprotein e4 ,BIC ,Bayesian Information Criterion ,CHS ,Cardiovascular Health Study ,CRP ,C-reactive protein ,ECG ,major echocardiogram abnormalities ,GOF ,Goodness of Fit ,Gal3 ,galectin-3 ,HR ,Hazard Ratio ,IL-6 ,interleukin-6 ,IMT ,internal intima-media thickness ,LCA ,Latent Class Analysis ,LDLcholesterol ,Low-density Lipoprotein Cholesterol ,NTproBNP ,N-terminal probrain natriuretic peptide ,Risk factors ,Cardiovascular disease ,Latent Class Analysis. Abbreviations: CVD ,Cardiovascular Disease ,SCVD ,Subclinical Cardiovascular Disease ,WMG ,white matter grade ,Medical and Health Sciences ,Biomedical and clinical sciences ,Health sciences - Abstract
PurposeThe association between CVD risk factors and mortality is well established, however, current tools for addressing subgroups have focused on the overall burden of disease. The identification of risky combinations of characteristics may lead to a better understanding of physiologic pathways that underlie morbidity and mortality in older adults.MethodsParticipants included 5067 older adults from the Cardiovascular Health Study, followed for up to 6 years. Using latent class analysis (LCA), we created CV damage phenotypes based on probabilities of abnormal brain infarctions, major echocardiogram abnormalities, N-terminal probrain natriuretic peptide, troponin T, interleukin-6, c reactive-protein, galectin-3, cystatin C. We assigned class descriptions based on the probability of having an abnormality among risk factors, such that a healthy phenotype would have low probabilities in all risk factors. Participants were assigned to phenotypes based on the maximum probability of membership. We used Cox-proportional hazards regression to evaluate the association between the categorical CV damage phenotype and all-cause and CVD-mortality.ResultsThe analysis yielded 5 CV damage phenotypes consistent with the following descriptions: healthy (59%), cardio-renal (11%), cardiac (15%), multisystem morbidity (6%), and inflammatory (9%). All four phenotypes were statistically associated with a greater risk of all-cause mortality when compared with the healthy phenotype. The multisystem morbidity phenotype had the greatest risk of all-cause death (HR: 4.02; 95% CI: 3.44, 4.70), and CVD-mortality (HR: 4.90, 95% CI: 3.95, 6.06).ConclusionsFive CV damage phenotypes emerged from CVD risk factor measures. CV damage across multiple systems confers a greater mortality risk compared to damage in any single domain.
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- 2021
50. Mitochondria-Rich Extracellular Vesicles Rescue Patient-Specific Cardiomyocytes From Doxorubicin Injury Insights Into the SENECA Trial
- Author
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O’Brien, Connor G, Ozen, Mehmet Ozgun, Ikeda, Gentaro, Vaskova, Evgeniya, Jung, Ji Hye, Bayardo, Nathan, Santoso, Michelle Rai, Shi, Liye, Wahlquist, Christine, Jiang, Zewen, Jung, Yunshin, Zeng, Yitian, Egan, Elizabeth, Sinclair, Robert, Gee, Adrian, Witteles, Ronald, Mercola, Mark, Svensson, Katrin J, Demirci, Utkan, and Yang, Phillip C
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Medical Biotechnology ,Biomedical and Clinical Sciences ,Cardiovascular ,Regenerative Medicine ,Clinical Research ,Heart Disease ,Stem Cell Research ,Development of treatments and therapeutic interventions ,5.2 Cellular and gene therapies ,anthracycline ,cardiomyopathy ,heart failure ,AIC ,anthracycline induced cardiomyopathy ,DOX ,doxorubicin ,DZR ,dexrazoxane ,EV ,extracellular vesicle ,L-EV ,large extracellular vesicle ,MPP+ ,1-methyl-4-phenylpyrindinium ,MSC ,mesenchymal stem cell ,MSC-EV ,mesenchymal stem cell derived extracellular vesicle ,MTDR ,MitoTracker Deep Red ,MTG ,MitoTracker Green ,RBC ,red blood cell ,ROS ,reactive oxygen species ,S-EV ,small extracellular vesicle ,iCM ,induced cardiomyocyte ,Cardiovascular medicine and haematology ,Oncology and carcinogenesis - Abstract
BackgroundAnthracycline-induced cardiomyopathy (AIC) is a significant source of morbidity and mortality in cancer survivors. The role of mesenchymal stem cells (MSCs) in treating AIC was evaluated in the SENECA trial, a Phase 1 National Heart, Lung, and Blood Institute-sponsored study, but the mechanisms underpinning efficacy in human tissue need clarification.ObjectivesThe purpose of this study was to perform an in vitro clinical trial evaluating the efficacy and putative mechanisms of SENECA trial-specific MSCs in treating doxorubicin (DOX) injury, using patient-specific induced pluripotent stem cell-derived cardiomyocytes (iCMs) generated from SENECA patients.MethodsPatient-specific iCMs were injured with 1 μmol/L DOX for 24 hours, treated with extracellular vesicles (EVs) from MSCs by either coculture or direct incubation and then assessed for viability and markers of improved cellular physiology. MSC-derived EVs were separated into large extracellular vesicles (L-EVs) (>200 nm) and small EVs (
- Published
- 2021
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