Strobel Alexandra, Wienke Andreas, Gummert Jan, Bleiziffer Sabine, Kuss Oliver
Institute of Medical Epidemiology, Biostatistics, and Informatics, Interdisciplinary Center for Health Sciences, Medical Faculty, Martin-Luther-University Halle Wittenberg, Halle, Germany.
Heart and Diabetes Center North Rhine-Westphalia, Ruhr-University Bochum, Bad Oeynhausen, Germany.
BMC Med Res Methodol. 2024 Dec 21;24(1):316. doi: 10.1186/s12874-024-02444-7.
Propensity score matching has become a popular method for estimating causal treatment effects in non-randomized studies. However, for time-to-event outcomes, the estimation of hazard ratios based on propensity scores can be challenging if omitted or unobserved covariates are present. Not accounting for such covariates could lead to treatment estimates, differing from the estimate of interest. However, researchers often do not know whether (and, if so, which) covariates will cause this divergence.
To address this issue, we extended a previously described method, Dynamic Landmarking, which was originally developed for randomized trials. The method is based on successively deletion of sorted observations and gradually fitting univariable Cox models. In addition, the balance of observed, but omitted covariates can be measured by the sum of squared z-differences.
By simulation we show, that Dynamic Landmarking provides a good visual tool for detecting and distinguishing treatment effect estimates underlying built-in selection or confounding bias. We illustrate the approach with a data set from cardiac surgery and provide some recommendations on how to use and interpret Dynamic Landmarking in propensity score matched studies.
Dynamic Landmarking is a useful post-hoc diagnosis tool for visualizing whether an estimated hazard ratio could be distorted by confounding or built-in selection bias.
倾向评分匹配已成为非随机研究中估计因果治疗效果的常用方法。然而,对于事件发生时间结局,如果存在遗漏或未观察到的协变量,基于倾向评分估计风险比可能具有挑战性。不考虑此类协变量可能导致治疗估计值与感兴趣的估计值不同。然而,研究人员通常不知道哪些协变量(以及是否存在协变量)会导致这种差异。
为解决此问题,我们扩展了一种先前描述的方法——动态地标法,该方法最初是为随机试验开发的。该方法基于依次删除排序后的观察值并逐步拟合单变量Cox模型。此外,观察到但被遗漏的协变量的平衡可以通过z差异平方和来衡量。
通过模拟我们表明,动态地标法为检测和区分潜在的内置选择或混杂偏倚下的治疗效果估计提供了一个很好的可视化工具。我们用心脏手术的数据集说明了该方法,并就如何在倾向评分匹配研究中使用和解释动态地标法提供了一些建议。
动态地标法是一种有用的事后诊断工具,可用于可视化估计的风险比是否可能因混杂或内置选择偏倚而失真。