Stochastic Models Of Tumor Latency And Their Biostatistical Applications

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Stochastic Models of Tumor Latency and Their Biostatistical Applications

Stochastic Models of Tumor Latency and Their Biostatistical Applications
Author :
Publisher : OECD Publishing
Total Pages : 296
Release :
ISBN-10 : 9810218311
ISBN-13 : 9789810218317
Rating : 4/5 (317 Downloads)

Book Synopsis Stochastic Models of Tumor Latency and Their Biostatistical Applications by : Andrej Yu Yakovlev

Download or read book Stochastic Models of Tumor Latency and Their Biostatistical Applications written by Andrej Yu Yakovlev and published by OECD Publishing. This book was released on 1996 with total page 296 pages. Available in PDF, EPUB and Kindle. Book excerpt: This research monograph discusses newly developed mathematical models and methods that provide biologically meaningful inferences from data on cancer latency produced by follow-up and discrete surveillance studies. Methods for designing optimal strategies of cancer surveillance are systematically presented for the first time in this book. It offers new approaches to the stochastic description of tumor latency, employs biologically-based models for making statistical inference from data on tumor recurrence and also discusses methods of statistical analysis of data resulting from discrete surveillance strategies. It also offers insight into the role of prognostic factors based on the interpretation of their effects in terms of parameters endowed with biological meaning, as well as methods for designing optimal schedules of cancer screening and surveillance. Last but not least, it discusses survival models allowing for cure rates and the choice of optimal treatment based on covariate information, and presents numerous examples of real data analysis.


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