Data from both a randomized trial and an observational study are sometimes simultaneously available for evaluating the effect of an intervention. The randomized data typically allows for reliable estimation of average treatment effects but may be limited in sample size and patient heterogeneity for estimating conditional average treatment effects for a broad range of patients. Estimates from the observational study can potentially compensate for these limitations, but there may be concerns about whether confounding and treatment effect heterogeneity have been adequately addressed. We propose an approach for combining conditional treatment effect estimators from each source such that it aggressively weights toward the randomized estimator when bias in the observational estimator is detected. This allows the combination to be consistent for a conditional causal effect, regardless of whether assumptions required for consistent estimation in the observational study are satisfied. When the bias is negligible, the estimators from each source are combined for optimal efficiency. We show the problem can be formulated as a penalized least squares problem and consider its asymptotic properties. Simulations demonstrate the robustness and efficiency of the method in finite samples, in scenarios with bias or no bias in the observational estimator. We illustrate the method by estimating the effects of hormone replacement therapy on the risk of developing coronary heart disease in data from the Women's Health Initiative.
翻译:随机试验和观察研究的数据有时同时可用,以评估干预的效果。随机数据一般可以可靠地估计平均治疗效果,但抽样规模和病人的异质性可能有限,以估计广泛的病人的有条件平均治疗效果。观察研究的估计数可以弥补这些限制,但可能有人担心是否适当地解决了混杂和治疗影响的异质性。我们建议采用一种办法,将每个来源的有条件治疗效果估计者合并起来,以便在检测观察估计器的偏差时,对随机估计器进行积极的加权。这样,组合就能够对有条件的因果关系产生一致的影响,而不论观察研究中是否满足一致估计所需的假设。如果偏差是可忽略的,那么每种来源的估测器就会合起来,以达到最佳的效率。我们指出,问题可以被描述为受惩罚的最小的平方问题,并且考虑到其微量性特性。模拟表明,在检测到观察估测结果时,定点样品中的方法是稳健的,并且效率很高的,在观察估测测结果中,没有偏差性或没有偏差性。我们用估测测测测结果的方法来,用妇女对测测测测病的疗法的药。