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E-grāmata: Cluster Randomization Trials: Statistical Design and Analysis

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This books covers all three types of trials resulting in clustered data. For outcome variables of binary, continuous, and time to event types. The methods are discussed in terms of clinical trials, but can be used to design and analyze any types of experiments involving clustered data.



Oftentimes, small groups (called clusters) of individuals (called subunits) are randomized between treatment arms. Typically, clusters are families, classes, communities, surgeons operating patients, and so on. Such trials are called cluster randomization trials (CRTs). The subunits in each cluster share common frailties so that their outcomes tend to be positively correlated. Since clusters are independent, the data in two arms are independent in CRTs.

In a clinical trial, multiple sites (such as teeth or ears) from each subject may be randomized between different treatment arms. In this case, the sites (subunits) of each subject (cluster) share common genetic, physiological, or environmental characteristics so that their observations tend to be positively correlated. This kind of trials are called subunit randomization trials (SRTs). In SRTs, dependency exists both within and between treatment arms.

Individually randomized group treatment (IRGT) trials are composite of traditional independent subject randomization and CRTs. In an IRGT trial, the control arm is to treat patients individually, whereas the experimental arm is to treat patients using a group training, education, or treatment to increase the treatment effect by close interactions among patients. As a result, the outcome data of the control arm are independent as in traditional trials, but those in the experimental arm are correlated within each group (cluster) as in CRTs. Hence, two arms in IRGT trials have different dependency structures. Unlike standard CRTs, clusters of IRGT trials are usually organized after randomization. But statistically, they have identical statistical issues between the two types of trials, i.e., accounting for the dependency within each cluster.

Although this book is entitled Cluster Randomization Trials, it covers all three types of trials (i.e., CRTs, SRTs, and IRGT trials) resulting in clustered data. For outcome variables of binary, continuous, and time-to-event types, we investigate generalized estimating equation type statistical tests and their sample size formulas. Also presented are random number generation algorithms for different types of outcome variables and randomization methods. The methods are discussed in terms of clinical trials, but can be used to design and analyze any types of experiments involving clustered data. This book also discusses statistical methods for various types of biomarker studies, including ROC methods, with clustered data.

Key Features:

  • Includes extensive statistical tests and their sample size formulas for various types of clinical trials resulting in clustered data.
  • Handles different variable types of endpoints separately.
  • Discusses algorithms to generate clustered binary and survival data that are useful for simulations.
  • Covers statistical tests and sample size formulas for medical tests with clustered data.
Preface
1. Introduction
2. One-Sample Binary Data
3. Chi-Square Test for
2-Sample Clustered Binary Data (I): Donners Adjustment
4. Chi-Square Test
for 2-Sample Clustered Binary Data (II): GEE Adjustment
5. Subunit
Randomization Trials: GEE-Type Test for 2-Sample Clustered Binary Data
6.
Random Number Generation of Clustered Binary Data
7. "Tests for R×C
Contingency Tables with Clustered Categorical Data"
8. Clustered Continuous
Data
9. Inference of Medians for Paired Survival Data
10. "Rank Tests for
Matched Survival Data and Sample Size Calculation"
11. "Rank Tests for
Clustered Survival Data and Sample Size Calculation under Cluster
Randomization"
12. "Rank Tests for Clustered Survival Data and Sample Size
Calculation under Subunit Randomization"
13. "Group Sequential Testing for
Cluster Randomized Trials with Time-to-Event Endpoint"
14. "Random Number
Generation of Clustered Survival Data"
15. Coxs Regression for Clustered
Survival Data
16. Design and Analysis of Individually Randomized
Group-Treatment Trials
17. "Analysis of Medical Tests I: Comparison of
Concordance Rates with Clustered Data"
18. Comparison of Binary Medical Tests
and ROC Curves with Clustered Data
Sin Ho-Jung is a Professor in the Department of Biostatistics and Bioinformatics at Duke University.