The purpose of this work is to improve the efficiency in estimating the average causal effect (ACE) on the survival scale where right-censoring exists and high-dimensional covariate information is available. We propose new estimators using regularized survival regression and survival random forests (SRF) to make the adjustment for the high dimensional covariates to improve efficiency. We study the behavior of the adjusted estimator under mild assumptions and show theoretical guarantees that the proposed estimators are more efficient than the unadjusted ones asymptotically when using SRF for adjustment. In addition, these adjusted estimators are $\sqrt{n}$- consistent and asymptotically normally distributed. The finite sample behavior of our methods are studied by simulation, and the results are in agreement with the theoretical results. We also illustrate our methods by analyzing the real data from transplant research to identify the relative effectiveness of identical sibling donors compared to unrelated donors with the adjustment of cytogenetic abnormalities.
翻译:这项工作的目的是提高估计存在右检查和高维共变信息的生存率平均因果效应(ACE)的效率,我们提议使用正常生存回归和生存随机森林(SRF)进行新的估计,以调整高维共变情况,提高效率;我们根据温和假设研究经调整的估计值的行为,并显示理论保证,在使用SRF进行调整时,拟议的估计值比未经调整的估算值效率更高;此外,这些经调整的估计值是美元=sqrt{n}和无源共振正常分布的。我们的方法的有限抽样行为是通过模拟研究的,结果与理论结果一致。我们还通过分析移植研究的实际数据来说明我们的方法,以便确定与细胞畸形异常调整无关的捐助者相比,同样的硅捐助者与不相配的捐助者的相对效力。