Jahn-Eimermacher Antje, Ingel Katharina, Preussler Stella, Bayes-Genis Antoni, Binder Harald
Institute of Medical Biostatistics, Epidemiology and Informatics, University Medical Center Johannes Gutenberg-University Mainz, Obere Zahlbacher Str. 69, Mainz, 55131, Germany.
Heart Failure Clinic, Cardiology Service, CIBERCV, Department of Medicine, UAB, Hospital Universitari Germans Trias i Pujol, Carretera del Canyet, Badalona, Barcelona, 08916, Spain.
BMC Med Res Methodol. 2017 Jul 4;17(1):92. doi: 10.1186/s12874-017-0366-9.
Composite endpoints comprising hospital admissions and death are the primary outcome in many cardiovascular clinical trials. For statistical analysis, a Cox proportional hazards model for the time to first event is commonly applied. There is an ongoing debate on whether multiple episodes per individual should be incorporated into the primary analysis. While the advantages in terms of power are readily apparent, potential biases have been mostly overlooked so far.
Motivated by a randomized controlled clinical trial in heart failure patients, we use directed acyclic graphs (DAG) to investigate potential sources of bias in treatment effect estimates, depending on whether only the first or multiple episodes are considered. The biases first are explained in simplified examples and then more thoroughly investigated in simulation studies that mimic realistic patterns.
Particularly the Cox model is prone to potentially severe selection bias and direct effect bias, resulting in underestimation when restricting the analysis to first events. We find that both kinds of bias can simultaneously be reduced by adequately incorporating recurrent events into the analysis model. Correspondingly, we point out appropriate proportional hazards-based multi-state models for decreasing bias and increasing power when analyzing multiple-episode composite endpoints in randomized clinical trials.
Incorporating multiple episodes per individual into the primary analysis can reduce the bias of a treatment's total effect estimate. Our findings will help to move beyond the paradigm of considering first events only for approaches that use more information from the trial and augment interpretability, as has been called for in cardiovascular research.
包含住院和死亡的复合终点是许多心血管临床试验的主要结局。在统计分析中,通常应用针对首次事件发生时间的Cox比例风险模型。对于个体的多次发作是否应纳入主要分析,目前仍存在争议。虽然在检验效能方面的优势显而易见,但潜在偏倚在很大程度上至今仍被忽视。
受一项针对心力衰竭患者的随机对照临床试验的启发,我们使用有向无环图(DAG)来研究治疗效果估计中潜在的偏倚来源,这取决于仅考虑首次发作还是多次发作。首先在简化示例中解释偏倚,然后在模拟现实模式的模拟研究中进行更深入的调查。
特别是Cox模型容易出现潜在的严重选择偏倚和直接效应偏倚,当将分析限制在首次事件时会导致低估。我们发现,通过将复发事件充分纳入分析模型,可以同时减少这两种偏倚。相应地,我们指出了在随机临床试验中分析多发作复合终点时,基于比例风险的适当多状态模型,以减少偏倚并提高检验效能。
将个体的多次发作纳入主要分析可以减少治疗总体效果估计的偏倚。我们的研究结果将有助于超越仅考虑首次事件的模式,采用从试验中获取更多信息的方法,并增强可解释性,这也是心血管研究中所呼吁的。