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Assessing potentially time-dependent treatment effect from clinical trials and observational studies for survival data, with applications to the Women's Health Initiative combined hormone therapy trial

机译:从临床试验和观察性研究中评估生存时间的潜在时间依赖性治疗效果,并将其应用于妇女健康计划联合激素治疗试验

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摘要

For risk and benefit assessment in clinical trials and observational studies with time-to-event data, the Cox model has usually been the model of choice. When the hazards are possibly non-proportional, a piece-wise Cox model over a partition of the time axis may be considered. Here, we propose to analyze clinical trials or observational studies with time-to-event data using a certain semiparametric model. The model allows for a time-dependent treatment effect. It includes the important proportional hazards model as a sub-model and can accommodate various patterns of time-dependence of the hazard ratio. After estimation of the model parameters using a pseudo-likelihood approach, simultaneous confidence intervals for the hazard ratio function are established using a Monte Carlo method to assess the time-varying pattern of the treatment effect. To assess the overall treatment effect, estimated average hazard ratio and its confidence intervals are also obtained. The proposed methods are applied to data from the Women's Health Initiative. To compare the Women's Health Initiative clinical trial and observational study, we use the propensity score in building the regression model. Compared with the piece-wise Cox model, the proposed model yields a better model fit and does not require partitioning of the time axis. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:对于具有事件发生时间数据的临床试验和观察性研究中的风险和收益评估,通常选择Cox模型。当危害可能不成比例时,可以考虑在时间轴分区上的分段Cox模型。在这里,我们建议使用某种半参数模型来分析具有事件发生时间数据的临床试验或观察性研究。该模型允许随时间变化的治疗效果。它包括重要的比例风险模型作为子模型,并且可以适应风险比率随时间变化的各种模式。在使用伪似然法对模型参数进行估计之后,使用蒙特卡洛方法建立危害比函数的同时置信区间,以评估治疗效果的时变模式。为了评估总体治疗效果,还可以获得估计的平均危险比及其置信区间。提议的方法适用于来自妇女健康倡议的数据。为了比较妇女健康倡议的临床试验和观察性研究,我们在建立回归模型时使用了倾向得分。与分段Cox模型相比,所提出的模型产生了更好的模型拟合,并且不需要划分时间轴。版权所有(c)2015 John Wiley&Sons,Ltd.

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