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Analysis of longitudinal data from outcome‐dependent visit processes: Failure of proposed methods in realistic settings and potential improvements

机译:结果依赖访问过程的纵向数据分析:现实环境中提出方法的故障和潜在改进

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The timing and frequency of the measurement of longitudinal outcomes in databases may be associated with the value of the outcome. Such visit processes are termed outcome dependent, and previous work showed that conducting standard analyses that ignore outcome‐dependent visit times can produce highly biased estimates of the associations of covariates with outcomes. The literature contains several classes of approaches to analyze longitudinal data subject to outcome‐dependent visit times, and all of these are based on simplifying assumptions about the visit process. Based on extensive discussions with subject matter investigators, we identified common characteristics of outcome‐dependent visit processes that allowed us to evaluate the performance of existing methods in settings with more realistic visit processes than have been previously investigated. This paper uses the analysis of data from a study of kidney function, theory, and simulation studies to examine a range of settings that vary from those where all visits have a low degree of missingness and outcome dependence (which we call “regular” visits) to those where all visits have a high degree of missingness and outcome dependence (which we call “irregular” visits). Our results show that while all the approaches we studied can yield biased estimates of some covariate effects, other covariate effects can be estimated with little bias. In particular, mixed effects models fit by maximum likelihood yielded little bias in estimates of the effects of covariates not associated with the random effects and small bias in estimates of the effects of covariates associated with the random effects. Other approaches produced estimates with greater bias. Our results also show that the presence of some regular visits in the data set protects mixed model analyses from bias but not other methods.
机译:数据库中纵向结果测量的定时和频率可以与结果的值相关联。这种访问过程被称为依赖结果,之前的工作表明,进行忽视结果的访问时间的标准分析可以产生高度偏向的协变量与结果的估计。该文献包含几种方法,分析了依赖于结果的访问时间的纵向数据,所有这些方法都基于简化访问过程的假设。基于与主题调查员的广泛讨论,我们确定了依赖依赖访问进程的共同特征,使我们能够评估现有方法的性能,而不是先前调查的进程。本文采用了对肾功能,理论和仿真研究的研究的分析,以检查一系列不同的设置,所有访问都有低程度的失踪和结果依赖(我们称之为“常规”访问)对于那些所有访问具有高度遗失和结果依赖的人(我们称之为“不规则”访问)。我们的研究结果表明,虽然我们所研究的所有方法可以产生偏见的一些协变量的估计,但可以估计其他协变量效应很少。特别地,通过最大可能性适应的混合效应模型在与随机效应相关的协变量的效果的估计中,协变量与随机效应和小偏差相关的估计估计估计。其他方法产生了更大的偏差估计。我们的结果还表明,数据集中的某些经常访问的存在保护了偏见的混合模型分析,而不是其他方法。

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