Relative Efficiency of Unequal Versus Equal Cluster Sizes for the Nonparametric Weighted Sign Test Estimators in Clustered Binary Data.

Chul Ahn, Fan Hu, Seung-Chun Lee
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引用次数: 1

Abstract

We consider analysis of clustered binary data from multiple observations for each subject in which any two observations from a subject are assumed to have a common correlation coefficient. In the weighted sign test on proportion in clustered binary data, three weighting schemes are considered: equal weights to observations, equal weights to clusters and the optimal weights that minimize the variance of the estimator. Since the distribution of cluster sizes may not be exactly specified before the trial starts, the sample size is usually determined using an average cluster size without taking into account any potential imbalance in cluster size even though cluster size usually varies among clusters. In this paper we investigate the relative efficiency (RE) of unequal versus equal cluster sizes for clustered binary data using the weighted sign test estimators. The REs are computed as a function of correlation among observations within each subject and the various cluster size distributions. The required sample size for unequal cluster sizes will not exceed the sample size for an equal cluster size multiplied by the maximum RE. It is concluded that the maximum RE for various cluster size distributions considered here does not exceed 1.50, 1.61 and 1.12 for equal weights to observations, equal weights to clusters and optimal weights, respectively. It suggests sampling 50%, 61% and 12% more clusters depending on the weighting schemes than the number of clusters computed using an average cluster size.

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非参数加权符号检验估计在聚类二值数据中的相对效率。
我们考虑对来自每个受试者的多个观测值的聚类二进制数据进行分析,其中假设来自一个受试者的任意两个观测值具有共同的相关系数。在聚类二值数据比例的加权符号检验中,考虑了三种加权方案:观测值等权、聚类等权和使估计量方差最小的最优权。由于在试验开始之前,簇大小的分布可能无法精确指定,因此通常使用平均簇大小来确定样本大小,而不考虑簇大小中任何潜在的不平衡,尽管簇大小通常在簇之间变化。本文利用加权符号检验估计量研究了不等簇大小与等簇大小对聚类二值数据的相对效率。REs是作为每个主题内的观测值与各种群集大小分布之间的相关性的函数来计算的。不等簇大小所需的样本量不会超过相等簇大小的样本量乘以最大RE。得出结论,本文所考虑的各种簇大小分布的最大RE分别不超过1.50,1.61和1.12,分别为相等的观测权,相等的簇权和最优权。它建议根据加权方案,比使用平均簇大小计算的簇数多抽样50%、61%和12%。
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来源期刊
Drug Information Journal
Drug Information Journal 医学-卫生保健
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审稿时长
6-12 weeks
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Relative Efficiency of Unequal Versus Equal Cluster Sizes for the Nonparametric Weighted Sign Test Estimators in Clustered Binary Data. A Patient Focused Solution for Enrolling Clinical Trials in Rare and Selective Cancer Indications: A Landscape of Haystacks and Needles. Testing in a Prespecified Subgroup and the Intent-to-Treat Population. The Correction of Product Information in Drug References and Medical Textbooks Evaluation of Data Entry Errors and Data Changes to an Electronic Data Capture Clinical Trial Database.
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