论文标题

强大的权重,最佳地平衡混杂因子来估计边缘危险比

Robust weights that optimally balance confounders for estimating marginal hazard ratios

论文作者

Santacatterina, Michele

论文摘要

协变量平衡对于在观察性研究中获得无偏见的治疗效果估计至关重要。基于反概率权重的方法已广泛用于通过观察数据估算治疗效果。已经提出了机器学习技术来估计倾向得分。但是,这些技术目标准确性而不是协变量平衡。靶向协变量平衡的方法已成功提出,并在很大程度上应用于估计对连续结果的治疗作用。但是,在许多医学和流行病学应用中,兴趣在于估计治疗对事件时间结果的影响。有了这种类型的数据,最常见的感兴趣的估计之一是Cox比例危害模型的边缘危险比。在本文中,我们首先提出强大的正交权重(行),这是通过求解二次约束优化问题获得的一组权重,该问题可最大程度地提高精度,同时约束协方差平衡,定义为混合物和处理之间的样本相关性。通过这样做,行可以最佳地处理二进制和连续治疗。然后,我们在仿真研究中评估了拟议权重估计二元和连续处理的边际危害比的性能。我们最终将行应用于评估激素治疗对冠状动脉疾病的时间的影响,以及对参加该女性健康倡议观察性研究的绝经后妇女的24,069名绝经后妇女对结肠癌的时间对结肠癌的影响。

Covariate balance is crucial in obtaining unbiased estimates of treatment effects in observational studies. Methods based on inverse probability weights have been widely used to estimate treatment effects with observational data. Machine learning techniques have been proposed to estimate propensity scores. These techniques however target accuracy instead of covariate balance. Methods that target covariate balance have been successfully proposed and largely applied to estimate treatment effects on continuous outcomes. However, in many medical and epidemiological applications, the interest lies in estimating treatment effects on time-to-event outcomes. With this type of data, one of the most common estimands of interest is the marginal hazard ratio of the Cox proportional hazard model. In this paper, we start by presenting robust orthogonality weights (ROW), a set of weights obtained by solving a quadratic constrained optimization problem that maximizes precision while constraining covariate balance defined as the sample correlation between confounders and treatment. By doing so, ROW optimally deal with both binary and continuous treatments. We then evaluate the performance of the proposed weights in estimating marginal hazard ratios of binary and continuous treatments with time-to-event outcomes in a simulation study. We finally apply ROW on the evaluation of the effect of hormone therapy on time to coronary heart disease and on the effect of red meat consumption on time to colon cancer among 24,069 postmenopausal women enrolled in the Women's Health Initiative observational study.

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