Schemper Michael, Wakounig Samo, Heinze Georg
Section of Clinical Biometrics, Department for Medical Statistics and Informatics, Medical University of Vienna, Spitalgasse 23, A-1090 Vienna, Austria.
Stat Med. 2009 Aug 30;28(19):2473-89. doi: 10.1002/sim.3623.
Often the effect of at least one of the prognostic factors in a Cox regression model changes over time, which violates the proportional hazards assumption of this model. As a consequence, the average hazard ratio for such a prognostic factor is under- or overestimated. While there are several methods to appropriately cope with non-proportional hazards, in particular by including parameters for time-dependent effects, weighted estimation in Cox regression is a parsimonious alternative without additional parameters. The methodology, which extends the weighted k-sample logrank tests of the Tarone-Ware scheme to models with multiple, binary and continuous covariates, has been introduced in the nineties of the last century and is further developed and re-evaluated in this contribution. The notion of an average hazard ratio is defined and its connection to the effect size measure P(X<Y) is emphasized. The suggested approach accomplishes estimation of intuitively interpretable average hazard ratios and provides tools for inference. A Monte Carlo study confirms the satisfactory performance. Advantages of the approach are exemplified by comparing standard and weighted analyses of an international lung cancer study. SAS and R programs facilitate application.
在Cox回归模型中,通常至少有一个预后因素的效应会随时间变化,这违反了该模型的比例风险假设。因此,此类预后因素的平均风险比会被低估或高估。虽然有几种方法可以适当地处理非比例风险,特别是通过纳入时间依赖效应的参数,但Cox回归中的加权估计是一种无需额外参数的简约替代方法。该方法将Tarone-Ware方案的加权k样本对数秩检验扩展到具有多个二元和连续协变量的模型,于上世纪九十年代被引入,并在本文中得到进一步发展和重新评估。定义了平均风险比的概念,并强调了它与效应量度量P(X<Y)的联系。所建议的方法实现了对直观可解释的平均风险比的估计,并提供了推断工具。一项蒙特卡罗研究证实了其令人满意的性能。通过比较一项国际肺癌研究的标准分析和加权分析,例证了该方法的优势。SAS和R程序便于应用。