E-Book, Englisch, 400 Seiten
Moyé / Moye Elementary Bayesian Biostatistics
1. Auflage 2007
ISBN: 978-1-58488-725-6
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
E-Book, Englisch, 400 Seiten
Reihe: Chapman & Hall/CRC Biostatistics Series
ISBN: 978-1-58488-725-6
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)
Bayesian analyses have made important inroads in modern clinical research due, in part, to the incorporation of the traditional tools of noninformative priors as well as the modern innovations of adaptive randomization and predictive power. Presenting an introductory perspective to modern Bayesian procedures, Elementary Bayesian Biostatistics explores Bayesian principles and illustrates their application to healthcare research.
Building on the basics of classic biostatistics and algebra, this easy-to-read book provides a clear overview of the subject. It focuses on the history and mathematical foundation of Bayesian procedures, before discussing their implementation in healthcare research from first principles. The author also elaborates on the current controversies between Bayesian and frequentist biostatisticians. The book concludes with recommendations for Bayesians to improve their standing in the clinical trials community. Calculus derivations are relegated to the appendices so as not to overly complicate the main text.
As Bayesian methods gain more acceptance in healthcare, it is necessary for clinical scientists to understand Bayesian principles. Applying Bayesian analyses to modern healthcare research issues, this lucid introduction helps readers make the correct choices in the development of clinical research programs.
Zielgruppe
Advanced undergraduate and graduate students and practitioners in biology and healthcare; biostatisticians and researchers in clinical trials.
Autoren/Hrsg.
Fachgebiete
Weitere Infos & Material
PREFACE
INTRODUCTION
PROLOGUE: OPENING SALVOS
BASIC PROBABILITY AND BAYES THEOREM
Probability's Role
Objective and Subjective Probability
Relative Frequency and Collections of Events
Counting and Combinatorics
Simple Rules in Probability
Law of Total Probability and Bayes Theroem
COMPOUNDING AND THE LAW OF TOTAL PROBABILITY
Introduction
The Law of Total Probability: Compounding
Proportions and the Binomial Distribution
Negative Binomial Distribution
The Poisson Process
The Uniform Distribution
Exponential Distribution
Problems
INTERMEDIATE COMPOUNDING AND PRIOR DISTRIBUTIONS
Compounding and Prior Distributions
The Force of Effect Size
Epidemiology 101
Computing Distributions of Deaths
The Gamma Distribution and ER Arrivals
The Normal Distribution
Problems
COMPLETING YOUR FIRST BAYESIAN COMPUTATIONS
Compounding and Bayes Procedures
Introduction to a Simple Bayes Procedure
Including a Continuous Conditional Distribution
Working with Continuous Conditional Distributions
Continuous Conditional and Prior Distributions
Problems
WHEN WORLDS COLLIDE
Introduction
DEVELOPING PRIOR PROBABILITY
Introduction
Prior Knowledge and Subjective Belief
The Counterintuitive Prior
Prior Information from Different Investigators
Meta Analysis and Prior Distributions
Priors and Clinical Trials
Conclusions
Problems
USING POSTERIOR DISTRIBUTIONS: LOSS AND RISK
Introduction
The Role of Loss and Risk
Decision Theory Dichotomous Loss
Generalized Discrete Loss Functions
Continuous Loss Functions
The Need for Realistic Loss Functions
Problems
PUTTING IT ALL TOGETHER
Introduction
Illustration 1: Stroke Treatment
Illustration 2: Adverse Event Rates
Conclusions
BAYESIAN SAMPLE SIZE
Introduction
The Real Purpose of Sample Size Discussions
Hybrid Bayesian-Frequentist Sample Sizes
Complete Bayesian Sample Size Computations
Conclusions
Problems
PREDICTIVE POWER AND ADAPTIVE PROCEDURES
Introduction
Predictive Power
Adaptive Bayes Procedures
Conclusions
IS MY PROBLEM A BAYES PROBLEM?
Introduction
Unidimensional versus Multidimensional Problems
Ovulation Timing
Building Community Intuition
CONCLUSIONS AND COMMENTARY
Validity of the Key Ingredients
Dark Clouds
Recommendations
APPENDICES
Compound Poisson Distribution
Evaluations Using the Uniform Distribution
Computations for the Binomial-Uniform Distribution
Binomial-Exponential Compound Distribution
Poisson-Gamma Processes
Gamma and Negative Binomial Distribution
Gamma Compounding with Gamma Distribution
Standard Normal Distribution
Compound and Conjugate Normal Distributions
Uniform Prior and Conditional Normal Distribution
Beta Distribution
Calculations for Chapter 8
Sample Size Primer
Predictive Power Computations
INDEX
References appear at the end of each chapter.