Department of Biostatisics, The State University of New York, Buffalo, NY, 14214, USA.
Stat Med. 2012 Jul 30;31(17):1821-37. doi: 10.1002/sim.4467. Epub 2012 Jun 20.
It is a common practice to conduct medical trials to compare a new therapy with a standard-of-care based on paired data consisted of pre- and post-treatment measurements. In such cases, a great interest often lies in identifying treatment effects within each therapy group and detecting a between-group difference. In this article, we propose exact nonparametric tests for composite hypotheses related to treatment effects to provide efficient tools that compare study groups utilizing paired data. When correctly specified, parametric likelihood ratios can be applied, in an optimal manner, to detect a difference in distributions of two samples based on paired data. The recent statistical literature introduces density-based empirical likelihood methods to derive efficient nonparametric tests that approximate most powerful Neyman-Pearson decision rules. We adapt and extend these methods to deal with various testing scenarios involved in the two-sample comparisons based on paired data. We show that the proposed procedures outperform classical approaches. An extensive Monte Carlo study confirms that the proposed approach is powerful and can be easily applied to a variety of testing problems in practice. The proposed technique is applied for comparing two therapy strategies to treat children's attention deficit/hyperactivity disorder and severe mood dysregulation.
在医学临床试验中,常采用配对数据(包含治疗前后的测量值)比较新疗法和标准治疗。在这种情况下,人们通常对识别每个治疗组内的治疗效果以及检测组间差异很感兴趣。本文提出了与治疗效果相关的复合假设的精确非参数检验,为利用配对数据比较研究组提供了高效的工具。在正确指定的情况下,参数似然比可以以最优的方式应用于基于配对数据的两个样本分布差异的检测。最近的统计文献引入了基于密度的经验似然方法,以推导出有效的非参数检验,这些检验近似于最强大的 Neyman-Pearson 决策规则。我们对这些方法进行了调整和扩展,以处理基于配对数据的两样本比较中涉及的各种检验情况。我们表明,所提出的程序优于经典方法。广泛的蒙特卡罗研究证实,所提出的方法具有强大的功效,并且可以很容易地应用于实际中的各种检验问题。所提出的技术用于比较两种治疗策略治疗儿童注意缺陷/多动障碍和严重情绪失调。