Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison, Madison, WI, USA.
Pharmacoepidemiol Drug Saf. 2012 May;21 Suppl 2:60-8. doi: 10.1002/pds.3235.
The purpose of this study was to evaluate a statistical method, prior event rate ratio (PERR) adjustment, and an alternative, PERR-ALT, both of which have the potential to overcome "unmeasured confounding," both analytically and via simulation.
Formulae were derived for the target estimates of both PERR methods, which were compared with results from simulations to ensure their validity. In addition to the theoretical insights gained, relative biases of both PERR methods for estimating exposure effects were also investigated via simulation studies and compared empirically with electronic medical record database study results.
Theoretical derivations closely matched simulated results. In simulation studies, both PERR methods significantly reduce bias from unmeasured confounding compared with the standard Cox model. When there is no interaction between unmeasured confounders and time intervals, the estimate from PERR-ALT is unbiased, whereas the estimate from PERR has well-controlled relative bias. When interactions exist, relative biases tend to increase but not greatly, especially when the exposure effect is relatively large in comparison with the interaction effects. When the event rate is low and the sample size is limited, PERR is more computationally stable than PERR-ALT. In empiric study comparisons with randomized controlled trials, both PERR methods show potential to reduce bias from the standard Cox model similarly when unmeasured confounding is present.
Extensive simulation studies and theoretical derivation show that PERR-based methods may reduce bias from unmeasured confounders when the exposure effect is relatively large in comparison with confounder-exposure interaction. The rare study event situation warrants further investigation.
本研究旨在评估一种统计方法,即前期事件率比(PERR)调整法及其替代方法 PERR-ALT,这两种方法都有可能通过分析和模拟来克服“未测量的混杂”。
推导出了这两种 PERR 方法的目标估计公式,并通过模拟结果进行了验证,以确保其有效性。除了获得理论上的见解外,还通过模拟研究调查了这两种 PERR 方法对暴露效应估计的相对偏差,并与电子病历数据库研究结果进行了实证比较。
理论推导与模拟结果非常吻合。在模拟研究中,与标准 Cox 模型相比,这两种 PERR 方法都显著降低了未测量混杂的偏差。当未测量混杂因素与时间间隔之间没有交互作用时,PERR-ALT 的估计是无偏的,而 PERR 的估计具有良好控制的相对偏差。当存在交互作用时,相对偏差往往会增加,但不会太大,尤其是当暴露效应与交互效应相比相对较大时。当事件率较低且样本量有限时,PERR 比 PERR-ALT 在计算上更稳定。在与随机对照试验的实证研究比较中,当存在未测量混杂时,这两种 PERR 方法都显示出有潜力降低标准 Cox 模型的偏差。
广泛的模拟研究和理论推导表明,当暴露效应与混杂因素-暴露交互作用相比相对较大时,基于 PERR 的方法可能会降低未测量混杂的偏差。罕见的研究事件情况需要进一步调查。