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Empirical Likelihood-Based Estimation of the Treatment Effect in a Pretest–Posttest Study

机译:基于经验似然性的前测后测研究中治疗效果的估计

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摘要

The pretest–posttest study design is commonly used in medical and social science research to assess the effect of a treatment or an intervention. Recently, interest has been rising in developing inference procedures that improve efficiency while relaxing assumptions used in the pretest–posttest data analysis, especially when the posttest measurement might be missing. In this article we propose a semiparametric estimation procedure based on empirical likelihood (EL) that incorporates the common baseline covariate information to improve efficiency. The proposed method also yields an asymptotically unbiased estimate of the response distribution. Thus functions of the response distribution, such as the median, can be estimated straightforwardly, and the EL method can provide a more appealing estimate of the treatment effect for skewed data. We show that, compared with existing methods, the proposed EL estimator has appealing theoretical properties, especially when the working model for the underlying relationship between the pretest and posttest measurements is misspecified. A series of simulation studies demonstrates that the EL-based estimator outperforms its competitors when the working model is misspecified and the data are missing at random. We illustrate the methods by analyzing data from an AIDS clinical trial (ACTG 175).
机译:前测-后测研究设计通常用于医学和社会科学研究,以评估治疗或干预措施的效果。最近,人们对开发推理程序的兴趣不断提高,这些程序可以提高效率,同时放宽测试前-测试后数据分析中使用的假设,尤其是在可能缺少测试后度量的情况下。在本文中,我们提出了一种基于经验似然(EL)的半参数估计程序,该程序结合了常见的基线协变量信息以提高效率。所提出的方法还产生了响应分布的渐近无偏估计。因此,可以直接估算响应分布的函数(例如中位数),并且EL方法可以为偏斜数据提供更具吸引力的处理效果估算。我们表明,与现有方法相比,拟议的EL估计器具有吸引人的理论特性,尤其是当未正确指定测试前和测试后测量之间的潜在关系的工作模型时。一系列仿真研究表明,当错误指定工作模型并且随机丢失数据时,基于EL的估计器的性能优于其竞争对手。我们通过分析来自AIDS临床试验(ACTG 175)的数据来说明这些方法。

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