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On adjustment for auxiliary covariates in additive hazard models for the analysis of randomized experiments

机译:关于加性危害模型中辅助协变量的调整,以用于随机实验分析

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We consider additive hazard models (Aalen, 1989) for the effect of a randomized treatment on a survival outcome, adjusting for auxiliary baseline covariates.We demonstrate that the Aalen least-squares estimator of the treatment effect parameter is asymptotically unbiased, even when the hazard's dependence on time or on the auxiliary covariates is misspecified, and even away from the null hypothesis of no treatment effect. We furthermore show that adjustment for auxiliary baseline covariates does not change the asymptotic variance of the estimator of the effect of a randomized treatment.We conclude that, in viewof its robustness againstmodel misspecification, Aalen least-squares estimation is attractive for evaluating treatment effects on a survival outcome in randomized experiments, and the primary reasons to consider baseline covariate adjustment in such settings could be interest in subgroup effects or the need to adjust for informative censoring or baseline imbalances. Our results also shed light on the robustness of Aalen least-squares estimators against model misspecification in observational studies.
机译:我们考虑累加危害模型(Aalen,1989),以评估随机治疗对生存结局的影响,并调整辅助基线协变量。我们证明,即使在危害的危险性达到最大的情况下,治疗效果参数的Aalen最小二乘估计也是渐近无偏的。对时间或辅助协变量的依赖被错误地指定,甚至偏离没有治疗效果的零假设。我们进一步表明,对辅助基线协变量的调整不会改变随机治疗效果估计量的渐近方差。我们得出结论,鉴于Aalen最小二乘估计对模型错误指定具有鲁棒性,因此对于评估治疗对模型的影响是有吸引力的随机实验的生存结局,以及在这种情况下考虑基线协变量调整的主要原因可能是对亚组效应的兴趣,或者需要针对信息审查或基线失衡进行调整。我们的结果还揭示了观测研究中Aalen最小二乘估计量对模型错误指定的鲁棒性。

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