首页> 外文期刊>Psycho-Oncology: Journal of the Psychological Social and Behavioral Dimensions of Cancer >Using generalized estimating equations and extensions in randomized trials with missing longitudinal patient reported outcome data
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Using generalized estimating equations and extensions in randomized trials with missing longitudinal patient reported outcome data

机译:使用缺少纵向患者报告的结果数据随机试验中的广义估计方程和延伸

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摘要

Abstract Objective Patient reported outcomes (PROs) are important in oncology research; however, missing data can pose a threat to the validity of results. Psycho‐oncology researchers should be aware of the statistical options for handling missing data robustly. One rarely used set of methods, which includes extensions for handling missing data, is generalized estimating equations (GEEs). Our objective was to demonstrate use of GEEs to analyze PROs with missing data in randomized trials with assessments at fixed time points. Methods We introduce GEEs and show, with a worked example, how to use GEEs that account for missing data: inverse probability weighted GEEs and multiple imputation with GEE. We use data from an RCT evaluating a web‐based brain training for cancer survivors reporting cognitive symptoms after chemotherapy treatment. The primary outcome for this demonstration is the binary outcome of cognitive impairment. Several methods are used, and results are compared. Results We demonstrate that estimates can vary depending on the choice of analytical approach, with odds ratios for no cognitive impairment ranging from 2.04 to 5.74. While most of these estimates were statistically significant ( P ??0.05), a few were not. Conclusions Researchers using PROs should use statistical methods that handle missing data in a way as to result in unbiased estimates. GEE extensions are analytic options for handling dropouts in longitudinal RCTs, particularly if the outcome is not continuous.
机译:摘要目的患者报告的结果(专利)在肿瘤学研究中是重要的;但是,缺少的数据可能会对结果的有效性构成威胁。心理肿瘤学研究人员应该了解统计选择,用于处理缺失数据。一种很少使用一组方法,包括用于处理缺失数据的扩展,是广义估计方程(GEE)。我们的目标是展示GEE的使用,分析随机试验中缺失的数据,在固定时间点评估。方法我们介绍了GEES和Show,其中包含一个有效的示例,如何使用GEES丢失数据的GEE:逆概率加权GEE和GEE的多重归责。我们使用来自RCT的数据评估癌症幸存者的基于网络的脑培训,所述癌症幸存者报告化疗治疗后的认知症状。该示范的主要结果是认知障碍的二元结果。使用几种方法,比较结果。结果我们证明估计可以根据分析方法的选择而变化,没有考验障碍的可能性范围为2.04至5.74。虽然大多数这些估计均有统计学意义(p?&?0.05),但几个不是。结论使用专业人员的研究人员应该使用以导致无偏估计的方式处理缺失数据的统计方法。 GEE扩展是用于处理纵向RCT的丢失的分析选项,特别是如果结果不连续。

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