论文标题
分析具有非属性危害的生存数据:倾向得分加权方法的比较
Analysis of survival data with non-proportional hazards: A comparison of propensity score weighted methods
论文作者
论文摘要
当存在混淆时,研究人员比较跨处理的生存结果的最常见方式之一是使用Cox回归。该模型受到比例危害的基本假设的限制;在某些情况下,可能会发生重大违规行为。在这里,我们介绍并比较试图解决此问题的方法,包括具有时变危险比的COX模型;参数加速故障时间模型; Kaplan-Meier曲线;和伪观察。为了调整治疗组之间的差异,我们根据倾向评分使用治疗加权的逆概率。我们检查了可以在每种方法中进行计算和直接比较的临床有意义的结果指标,即时间t的存活概率,中位生存期和限制的平均存活率。我们在各种情况下进行仿真研究,并确定每种方法平均治疗效果的偏见,覆盖范围和标准误差。然后,我们将这些方法应用于两项已发表的癌症治疗后生存的观察性研究。第一个检查了肉瘤的化学疗法,最初生存非常相似,但是两年后,化学疗法组显示出有益的好处。另一项研究是对肾癌的手术技术的比较,肾癌的生存差异随着时间的流逝而减弱。
One of the most common ways researchers compare survival outcomes across treatments when confounding is present is using Cox regression. This model is limited by its underlying assumption of proportional hazards; in some cases, substantial violations may occur. Here we present and compare approaches which attempt to address this issue, including Cox models with time-varying hazard ratios; parametric accelerated failure time models; Kaplan-Meier curves; and pseudo-observations. To adjust for differences between treatment groups, we use Inverse Probability of Treatment Weighting based on the propensity score. We examine clinically meaningful outcome measures that can be computed and directly compared across each method, namely, survival probability at time T, median survival, and restricted mean survival. We conduct simulation studies under a range of scenarios, and determine the biases, coverages, and standard errors of the Average Treatment Effects for each method. We then apply these approaches to two published observational studies of survival after cancer treatment. The first examines chemotherapy in sarcoma, where survival is very similar initially, but after two years the chemotherapy group shows a benefit. The other study is a comparison of surgical techniques for kidney cancer, where survival differences are attenuated over time.