Interval-Censored Time-to-event Data

Interval-Censored Time-to-Event Data by Chen, published by CRC Press LLC on June 30, 2020, is a comprehensive resource spanning 434 pages. This book collects recent techniques, models, and computational tools specifically designed for interval-censored time-to-event data, featuring contributions from leading biostatisticians in academia, industry, and government. It provides an overview of interval-censored data modeling, covering essential topics such as nonparametric estimation, survival functions, and regression analysis.
Readers will find a detailed exploration of interval-censored methods applicable to current status data, including Bayesian semiparametric regression and causal effect estimation. The book also employs Monte Carlo simulation to evaluate biases in progression-free survival analysis and discusses adaptive decision-making methods for stroke treatment. Aimed at biomedical researchers, clinicians, and graduate students in biostatistics, this edition presents the latest advancements in statistical methods relevant to biopharmaceutical and public health applications.
Official synopsis Publisher
Interval-Censored Time-to-Event Data: Methods and Applications collects the most recent techniques, models, and computational tools for interval-censored time-to-event data. Top biostatisticians from academia, biopharmaceutical industries, and government agencies discuss how these advances are impacting clinical trials and biomedical research.
Divided into three parts, the book begins with an overview of interval-censored data modeling, including nonparametric estimation, survival functions, regression analysis, multivariate data analysis, competing risks analysis, and other models for interval-censored data. The next part presents interval-censored methods for current status data, Bayesian semiparametric regression analysis of interval-censored data with monotone splines, Bayesian inferential models for interval-censored data, an estimator for identifying causal effect of treatment, and consistent variance estimation for interval-censored data. In the final part, the contributors use Monte Carlo simulation to assess biases in progression-free survival analysis as well as correct bias in interval-censored time-to-event applications. They also present adaptive decision making methods to optimize the rapid treatment of stroke, explore practical issues in using weighted logrank tests, and describe how to use two R packages.
A practical guide for biomedical researchers, clinicians, biostatisticians, and graduate students in biostatistics, this volume covers the latest developments in the analysis and modeling of interval-censored time-to-event data. It shows how up-to-date statistical methods are used in biopharmaceutical and public health applications.
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