Amatya Anup, Bhaumik Dulal K
Department of Public Health Sciences, New Mexico State University, 1335 International Mall, RM 102, Las Cruces, New Mexico 88011, U.S.A.
Division of Epidemiology and Biostatistics, Department of Psychiatry, University of Illinois at Chicago, Chicago, Illinois 60612, U.S.A.
Biometrics. 2018 Jun;74(2):673-684. doi: 10.1111/biom.12764. Epub 2017 Sep 12.
A unified statistical methodology of sample size determination is developed for hierarchical designs that are frequently used in many areas, particularly in medical and health research studies. The solid foundation of the proposed methodology opens a new horizon for power analysis in presence of various conditions. Important features such as joint significance testing, unequal allocations of clusters across intervention groups, and differential attrition rates over follow up time points are integrated to address some useful questions that investigators often encounter while conducting such studies. Proposed methodology is shown to perform well in terms of maintaining type I error rates and achieving the target power under various conditions. Proposed method is also shown to be robust with respect to violation of distributional assumptions of random-effects.
针对分层设计开发了一种统一的样本量确定统计方法,这种设计在许多领域经常使用,特别是在医学和健康研究中。所提出方法的坚实基础为在各种条件下的功效分析开辟了新视野。联合显著性检验、干预组间聚类的不均衡分配以及随访时间点上不同的损耗率等重要特征被整合起来,以解决研究人员在进行此类研究时经常遇到的一些有用问题。所提出的方法在维持第一类错误率以及在各种条件下实现目标功效方面表现良好。所提出的方法在违反随机效应分布假设方面也表现出稳健性。