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Evaluation of Cox's model and logistic regression for matched case-control data with time-dependent covariates: a simulation study.

机译:对Cox模型的评估和对具有时间相关协变量的病例对照数据进行逻辑回归的仿真研究。

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Case-control studies are typically analysed using the conventional logistic model, which does not directly account for changes in the covariate values over time. Yet, many exposures may vary over time. The most natural alternative to handle such exposures would be to use the Cox model with time-dependent covariates. However, its application to case-control data opens the question of how to manipulate the risk sets. Through a simulation study, we investigate how the accuracy of the estimates of Cox's model depends on the operational definition of risk sets and/or on some aspects of the time-varying exposure. We also assess the estimates obtained from conventional logistic regression. The lifetime experience of a hypothetical population is first generated, and a matched case-control study is then simulated from this population. We control the frequency, the age at initiation, and the total duration of exposure, as well as the strengths of their effects. All models considered include a fixed-in-time covariate and one or two time-dependent covariate(s): the indicator of current exposure and/or the exposure duration. Simulation results show that none of the models always performs well. The discrepancies between the odds ratios yielded by logistic regression and the 'true' hazard ratio depend on both the type of the covariate and the strength of its effect. In addition, it seems that logistic regression has difficulty separating the effects of inter-correlated time-dependent covariates. By contrast, each of the two versions of Cox's model systematically induces either a serious under-estimation or a moderate over-estimation bias. The magnitude of the latter bias is proportional to the true effect, suggesting that an improved manipulation of the risk sets may eliminate, or at least reduce, the bias.
机译:病例对照研究通常使用常规逻辑模型进行分析,该模型不能直接说明随时间变化的协变量值。但是,许多风险可能会随着时间而变化。处理此类风险的最自然的选择是将Cox模型与时间相关的协变量一起使用。但是,将其应用于案例控制数据提出了如何操纵风险集的问题。通过模拟研究,我们调查了Cox模型估计的准确性如何取决于风险集的操作定义和/或时变暴露的某些方面。我们还评估了从常规逻辑回归获得的估计值。首先生成假设人口的终生经历,然后从该人口中模拟匹配的病例对照研究。我们控制频率,开始的年龄,暴露的总时间以及其影响的强度。所考虑的所有模型均包含一个固定时间的协变量和一个或两个时间相关的协变量:当前暴露和/或暴露持续时间的指标。仿真结果表明,这些模型都无法始终表现良好。通过逻辑回归得出的优势比与“真实”危险比之间的差异取决于协变量的类型及其影响的强度。此外,逻辑回归似乎难以分离相互关联的时间相关协变量的影响。相比之下,Cox模型的两个版本中的每个版本都会系统性地导致严重的低估或中等的高估偏差。后一种偏差的大小与真实效果成正比,表明对风险集的改进控制可以消除或至少减小偏差。

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