ABSTRACT

The concepts of estimands, analyses (estimators), and sensitivity are interrelated. Therefore, great need exists for an integrated approach to these topics. This book acts as a practical guide to developing and implementing statistical analysis plans by explaining fundamental concepts using accessible language, providing technical details, real-world examples, and SAS and R code to implement analyses. The updated ICH guideline raises new analytic and cross-functional challenges for statisticians. Gaps between different communities have come to surface, such as between causal inference and clinical trialists, as well as among clinicians, statisticians, and regulators when it comes to communicating decision-making objectives, assumptions, and interpretations of evidence.

This book lays out a path toward bridging some of these gaps. It offers

 A common language and unifying framework along with the technical details and practical guidance to help statisticians meet the challenges

 A thorough treatment of intercurrent events (ICEs), i.e., postrandomization events that confound interpretation of outcomes and five strategies for ICEs in ICH E9 (R1)

 Details on how estimands, integrated into a principled study development process, lay a foundation for coherent specification of trial design, conduct, and analysis needed to overcome the issues caused by ICEs:

 A perspective on the role of the intention-to-treat principle

 Examples and case studies from various areas

 Example code in SAS and R

 A connection with causal inference

 Implications and methods for analysis of longitudinal trials with missing data

Together, the authors have offered the readers their ample expertise in clinical trial design and analysis, from an industrial and academic perspective.

section Section I|14 pages

Setting the Stage

chapter 1|6 pages

Introduction

chapter 2|6 pages

Why Are Estimands Important?

section Section II|79 pages

Estimands

section Section III|56 pages

Estimators and Sensitivity

section Section IV|120 pages

Technical Details on Selected Analyses

chapter 17|7 pages

Example Data

chapter 18|10 pages

Direct Maximum Likelihood

chapter 19|29 pages

Multiple Imputation

chapter 21|13 pages

Doubly Robust Methods

chapter 22|20 pages

Reference-Based Imputation

chapter 23|6 pages

Delta Adjustment

chapter 24|16 pages

Overview of Principal Stratification Methods

section Section V|28 pages

Case Studies