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Missing Data in Clinical Studies: Issues and Methods

机译:临床研究中缺少的数据:问题和方法

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摘要

Missing data are a prevailing problem in any type of data analyses. A participant variable is considered missing if the value of the variable (outcome or covariate) for the participant is not observed. In this article, various issues in analyzing studies with missing data are discussed. Particularly, we focus on missing response and/or covariate data for studies with discrete, continuous, or time-to-event end points in which generalized linear models, models for longitudinal data such as generalized linear mixed effects models, or Cox regression models are used. We discuss various classifications of missing data that may arise in a study and demonstrate in several situations that the commonly used method of throwing out all participants with any missing data may lead to incorrect results and conclusions. The methods described are applied to data from an Eastern Cooperative Oncology Group phase II clinical trial of liver cancer and a phase III clinical trial of advanced non–small-cell lung cancer. Although the main area of application discussed here is cancer, the issues and methods we discuss apply to any type of study.
机译:在任何类型的数据分析中,数据丢失都是一个普遍存在的问题。如果未观察到参与者的变量值(结果或协变量),则认为参与者变量缺失。本文讨论了在分析缺少数据的研究中的各种问题。特别是,我们关注于离散,连续或事件发生时间终点的研究中缺少的响应和/或协变量数据,在这些研究中,存在广义线性模型,纵向数据模型(例如广义线性混合效应模型或Cox回归模型)用过的。我们讨论了一项研究中可能出现的各种缺失数据分类,并在几种情况下证明了将所有缺失数据都排除在参与者之外的常用方法可能会导致错误的结果和结论。所描述的方法适用于来自东方合作肿瘤小组肝癌II期临床试验和晚期非小细胞肺癌III期临床试验的数据。尽管此处讨论的主要应用领域是癌症,但我们讨论的问题和方法适用于任何类型的研究。

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