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Investigation of one‐stage meta‐analysis methods for joint longitudinal and time‐to‐event data through simulation and real data application

机译:通过仿真和实际数据应用研究联合纵向和事件时间数据的一级荟萃分析方法

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摘要

>Background: Joint modeling of longitudinal and time‐to‐event data is often advantageous over separate longitudinal or time‐to‐event analyses as it can account for study dropout, error in longitudinally measured covariates, and correlation between longitudinal and time‐to‐event outcomes. The current literature on joint modeling focuses mainly on the analysis of single studies with a lack of methods available for the meta‐analysis of joint data from multiple studies. >Methods: We investigate a variety of one‐stage methods for the meta‐analysis of joint longitudinal and time‐to‐event outcome data. These methods are applied to the INDANA dataset to investigate longitudinally measured systolic blood pressure, with each of time to death, time to myocardial infarction, and time to stroke. Results are compared to separate longitudinal or time‐to‐event meta‐analyses. A simulation study is conducted to contrast separate versus joint analyses over a range of scenarios. >Results: The performance of the examined one‐stage joint meta‐analytic models varied. Models that accounted for between study heterogeneity performed better than models that ignored it. Of the examined methods to account for between study heterogeneity, under the examined association structure, fixed effect approaches appeared preferable, whereas methods involving a baseline hazard stratified by study were least time intensive. >Conclusions: One‐stage joint meta‐analytic models that accounted for between study heterogeneity using a mix of fixed effects or a stratified baseline hazard were reliable; however, models examined that included study level random effects in the association structure were less reliable.
机译:>背景:纵向和事件时间数据的联合建模通常比单独的纵向或事件时间分析更具优势,因为它可以解决研究缺失,纵向测量的协变量误差以及两者之间的相关性。纵向事件发生时间。当前关于联合建模的文献主要集中在单一研究的分析上,而缺乏可用于对来自多个研究的联合数据进行荟萃分析的方法。 >方法:我们研究了多种用于联合纵向和事件发生时间结局数据的荟萃分析的单阶段方法。这些方法应用于INDANA数据集,以调查纵向测量的收缩压,包括死亡时间,心肌梗死时间和中风时间。将结果与单独的纵向或事件时间荟萃分析进行比较。进行了仿真研究,以对比各种场景下的单独分析和联合分析。 >结果:所检查的一级联合荟萃分析模型的性能各不相同。考虑研究异质性的模型比忽略它的模型表现更好。在考虑到研究异质性的已检验方法中,在已检验的关联结构下,固定效应方法似乎更可取,而涉及通过研究分层的基线危害的方法则耗时最少。 >结论:采用混合固定效应或分层基线风险来解释研究异质性之间的一级联合荟萃分析模型是可靠的;然而,在研究中将研究水平的随机效应包括在关联结构中的模型不太可靠。

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