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A hybrid method in combining treatment effects from matched and unmatched studies

机译:结合来自匹配研究和不匹配研究的治疗效果的混合方法

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摘要

In the biomedical studies, the general data structures have been the matched (paired) and unmatched designs. Recently, many researchers are interested in Meta-Analysis to obtain a better understanding from several clinical data of a medical treatment. The hybrid design, which is combined two data structures, may create the fundamental question for statistical methods and the challenges for statistical inferences. The applied methods are depending on the underlying distribution. If the outcomes are normally distributed, we would use the classic paired and two independent sample T-tests on the matched and unmatched cases. If not, we can apply Wilcoxon signed rank and rank sum test on each case.;To assess an overall treatment effect on a hybrid design, we can apply the inverse variance weight method used in Meta-Analysis. On the nonparametric case, we can use a test statistic which is combined on two Wilcoxon test statistics. However, these two test statistics are not in same scale. We propose the Hybrid Test Statistic based on the Hodges-Lehmann estimates of the treatment effects, which are medians in the same scale.;To compare the proposed method, we use the classic meta-analysis T-test statistic on the combined the estimates of the treatment effects from two T-test statistics. Theoretically, the efficiency of two unbiased estimators of a parameter is the ratio of their variances. With the concept of Asymptotic Relative Efficiency (ARE) developed by Pitman, we show ARE of the hybrid test statistic relative to classic meta-analysis T-test statistic using the Hodges-Lemann estimators associated with two test statistics.;From several simulation studies, we calculate the empirical type I error rate and power of the test statistics. The proposed statistic would provide effective tool to evaluate and understand the treatment effect in various public health studies as well as clinical trials.
机译:在生物医学研究中,一般的数据结构是匹配的(配对的)和不匹配的设计。最近,许多研究人员对Meta分析感兴趣,以便从药物的几种临床数据中获得更好的理解。由两个数据结构组合而成的混合设计可能会给统计方法带来一个基本问题,并给统计推断带来挑战。应用的方法取决于基础分布。如果结果呈正态分布,我们将在匹配和不匹配的情况下使用经典的配对和两个独立的样本T检验。如果不是,我们可以对每种情况应用Wilcoxon签名秩和秩检验。;要评估混合设计的总体治疗效果,我们可以应用Meta分析中使用的逆方差加权方法。在非参数情况下,我们可以使用结合两个Wilcoxon检验统计量的检验统计量。但是,这两个测试统计数据的规模不同。我们基于治疗效果的Hodges-Lehmann估计值(均等规模的中位数)提出了混合检验统计量;为了比较所提出的方法,我们将经典的荟萃分析T检验统计量结合了来自两个T检验统计数据的治疗效果。从理论上讲,参数的两个无偏估计量的效率为其方差之比。借助皮特曼(Pitman)提出的渐进相对效率(ARE)的概念,我们使用与两个检验统计数据相关联的Hodges-Lemann估计量,显示了相对于经典荟萃分析T检验统计数据的混合检验统计数据的ARE。我们计算经验I型错误率和检验统计量的功效。拟议的统计数据将为评估和了解各种公共卫生研究和临床试验中的治疗效果提供有效的工具。

著录项

  • 作者

    Byun, Jinyoung.;

  • 作者单位

    The University of Texas School of Public Health.;

  • 授予单位 The University of Texas School of Public Health.;
  • 学科 Biostatistics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 104 p.
  • 总页数 104
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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