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Statistical Causal Inferences and Their Applications in Public Health Research, 1st ed. 2016 ICSA Book Series in Statistics Series

Langue : Anglais
Couverture de l’ouvrage Statistical Causal Inferences and Their Applications in Public Health Research

This book compiles and presents new developments in statistical causal inference. The accompanying data and computer programs are publicly available so readers may replicate the model development and data analysis presented in each chapter. In this way, methodology is taught so that readers may implement it directly. The book brings together experts engaged in causal inference research to present and discuss recent issues in causal inference methodological development. This is also a timely look at causal inference applied to scenarios that range from clinical trials to mediation and public health research more broadly. In an academic setting, this book will serve as a reference and guide to a course in causal inference at the graduate level (Master's or Doctorate). It is particularly relevant for students pursuing degrees in statistics, biostatistics, and computational biology. Researchers and data analysts in public health and biomedical research will also find this book to be an important reference. 


Part I. Overview.- 1. Causal Inference – A Statistical Paradigm for Inferring Causality.- Part II. Propensity Score Method for Causal Inference.- 2. Overview of Propensity Score Methods.- 3. Sufficient Covariate, Propensity Variable and Doubly Robust Estimation.- 4. A Robustness Index of Propensity Score Estimation to Uncontrolled Confounders.- 5. Missing Confounder Data in Propensity Score Methods for Causal Inference.- 6. Propensity Score Modeling & Evaluation.- 7. Overcoming the Computing Barriers in Statistical Causal Inference.- Part III. Causal Inference in Randomized Clinical Studies.- 8. Semiparametric Theory and Empirical Processes in Causal Inference.- 9. Structural Nested Models for Cluster-Randomized Trials.- 10. Causal Models for Randomized Trials with Continuous Compliance.- 11. Causal Ensembles for Evaluating the Effect of Delayed Switch to Second-line Antiretroviral Regimens.- 12. Structural Functional Response Models for Complex Intervention Trials.- Part IV. Structural Equation Models for Mediation Analysis.- 13.Identification of Causal Mediation Models with An Unobserved Pre-treatment Confounder.- 14. A Comparison of Potential Outcome Approaches for Assessing Causal Mediation.- 15. Causal Mediation Analysis Using Structure Equation Models. 

Hua He, Ph.D., is an Associate Professor in Biostatistics at the Department of Epidemiology at Tulane University School of Public Health and Tropical Medicine. Dr. He received her Ph.D in Statistics in 2007 from the Department of Biostatistics and Computational Biology at the University of Rochester, where she then worked as a faculty member until she moved to Tulane University in 2015. Dr. He has been focusing on methodological and collaborative research with investigators in the areas of behavioral and social sciences both within and outside of academic institutes. She is a highly experienced biostatistician with expertise in longitudinal data analysis, structural equation models, potential outcome based causal inference, distribution-free models, ROC analysis and their applications to observational studies, and randomized controlled trials across a range of disciplines, especially in the behavioral and social sciences. She has published a series of publications in peer-reviewed journals and has contributed several chapters to books. She also co-authored a graduate-level textbook, Applied Categorical and Count Data Analysis (Chapman & Hall/CRC). She is the recipient of an R01 study entitled “Moving beyond description: statistical and causal inference for social media data” and has served as a co-investigator for multiple studies funded by NIH, NIMH, NHLBI, etc.

Pan Wu, Ph.D., is a senior research biostatistician in the Value Institute at the Christiana Care Health System and a Research Assistant Professor in the Department of Medicine, the Sidney Kimmel Medical School at the Thomas Jefferson University. His research focuses on causal inference, mediation analysis, longitudinal data analysis with missing data, survival analysis, medical diagnosis, and high-dimensional variable selection and their applications in psychosocial, biomedical, and epidemiological studies. Dr. Wu has collaborated with a wide range of investigators on multiple resea

Includes software and data sets so readers may replicate analyses

Contains much needed coverage of recent developments in causal inference

Begins with an introduction to the concept of potential outcomes as applicable to causal inference concepts, models, and assumptions

Includes supplementary material: sn.pub/extras

Date de parution :

Ouvrage de 321 p.

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105,49 €

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Date de parution :

Ouvrage de 321 p.

15.5x23.5 cm

Disponible chez l'éditeur (délai d'approvisionnement : 15 jours).

147,69 €

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