1 Department of Biostatistics, The State University of New York at Buffalo, Buffalo, NY, USA.
2 Department of Statistics and Actuarial Science, The University of Hong Kong, Hong Kong, P. R. China.
Stat Methods Med Res. 2019 Aug;28(8):2418-2438. doi: 10.1177/0962280218781988. Epub 2018 Jun 19.
Bilateral correlated data are often encountered in medical researches such as ophthalmologic (or otolaryngologic) studies, in which each unit contributes information from paired organs to the data analysis, and the measurements from such paired organs are generally highly correlated. Various statistical methods have been developed to tackle intra-class correlation on bilateral correlated data analysis. In practice, it is very important to adjust the effect of confounder on statistical inferences, since either ignoring the intra-class correlation or confounding effect may lead to biased results. In this article, we propose three approaches for testing common risk difference for stratified bilateral correlated data under the assumption of equal correlation. Five confidence intervals of common difference of two proportions are derived. The performance of the proposed test methods and confidence interval estimations is evaluated by Monte Carlo simulations. The simulation results show that the score test statistic outperforms other statistics in the sense that the former has robust type error rates with high powers. The score confidence interval induced from the score test statistic performs satisfactorily in terms of coverage probabilities with reasonable interval widths. A real data set from an otolaryngologic study is used to illustrate the proposed methodologies.
双边相关数据在医学研究中经常遇到,例如眼科(或耳鼻喉科)研究,其中每个单位从配对器官提供信息给数据分析,并且来自这种配对器官的测量通常高度相关。已经开发了各种统计方法来处理双边相关数据分析中的组内相关性。在实践中,调整混杂因素对统计推断的影响非常重要,因为忽略组内相关性或混杂效应可能会导致有偏的结果。在本文中,我们提出了三种方法来检验假设相关相等时分层双边相关数据的常见风险差。推导出了两个比例差的五个置信区间。通过蒙特卡罗模拟评估了所提出的检验方法和置信区间估计的性能。模拟结果表明,评分检验统计量在意义上优于其他统计量,因为前者具有稳健的类型误差率和高功效。基于评分检验统计量诱导的评分置信区间在覆盖概率方面表现良好,且区间宽度合理。一个来自耳鼻喉科研究的真实数据集用于说明所提出的方法。