Masked analysis for small-scale cluster randomized controlled trials

被引:0
作者
John M. Ferron
Diep Nguyen
Robert F. Dedrick
Shannon M. Suldo
Elizabeth Shaunessy-Dedrick
机构
[1] University of South Florida,Department of Educational and Psychological Studies
[2] University of South Florida,Department of Medical Education
[3] University of South Florida,Department of Educational and Psychological Studies
[4] University of South Florida,Department of Language, Literacy, Ed.D., Exceptional Education and Physical Education
来源
Behavior Research Methods | 2022年 / 54卷
关键词
Randomization; Masked graphs; Randomization test; Pilot study; Cluster RCT;
D O I
暂无
中图分类号
学科分类号
摘要
Researchers conducting small-scale cluster randomized controlled trials (RCTs) during the pilot testing of an intervention often look for evidence of promise to justify an efficacy trial. We developed a method to test for intervention effects that is adaptive (i.e., responsive to data exploration), requires few assumptions, and is statistically valid (i.e., controls the type I error rate), by adapting masked visual analysis techniques to cluster RCTs. We illustrate the creation of masked graphs and their analysis using data from a pilot study in which 15 high school programs were randomly assigned to either business as usual or an intervention developed to promote psychological and academic well-being in 9th grade students in accelerated coursework. We conclude that in small-scale cluster RCTs there can be benefits of testing for effects without a priori specification of a statistical model or test statistic.
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页码:1701 / 1714
页数:13
相关论文
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