Conditional average treatment effect estimation with marginally constrained models

IF 1.7 4区 医学 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Causal Inference Pub Date : 2022-04-29 DOI:10.1515/jci-2022-0027
W. A. van Amsterdam, R. Ranganath
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Abstract

Abstract Treatment effect estimates are often available from randomized controlled trials as a single average treatment effect for a certain patient population. Estimates of the conditional average treatment effect (CATE) are more useful for individualized treatment decision-making, but randomized trials are often too small to estimate the CATE. Examples in medical literature make use of the relative treatment effect (e.g. an odds ratio) reported by randomized trials to estimate the CATE using large observational datasets. One approach to estimating these CATE models is by using the relative treatment effect as an offset, while estimating the covariate-specific untreated risk. We observe that the odds ratios reported in randomized controlled trials are not the odds ratios that are needed in offset models because trials often report the marginal odds ratio. We introduce a constraint or a regularizer to better use marginal odds ratios from randomized controlled trials and find that under the standard observational causal inference assumptions, this approach provides a consistent estimate of the CATE. Next, we show that the offset approach is not valid for CATE estimation in the presence of unobserved confounding. We study if the offset assumption and the marginal constraint lead to better approximations of the CATE relative to the alternative of using the average treatment effect estimate from the randomized trial. We empirically show that when the underlying CATE has sufficient variation, the constraint and offset approaches lead to closer approximations to the CATE.
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基于边际约束模型的条件平均治疗效果估计
治疗效果估计通常来自随机对照试验,作为特定患者群体的单一平均治疗效果。条件平均治疗效果(CATE)的估计对个性化治疗决策更有用,但随机试验往往太小而无法估计CATE。医学文献中的例子利用随机试验报告的相对治疗效果(如优势比),利用大型观察数据集估计CATE。估计这些CATE模型的一种方法是使用相对治疗效果作为抵消,同时估计协变量特异性未经治疗的风险。我们观察到随机对照试验中报告的比值比并不是偏移模型中需要的比值比,因为试验通常报告的是边际比值比。我们引入了一个约束或正则化器来更好地利用随机对照试验的边际优势比,并发现在标准观察性因果推理假设下,该方法提供了一致的CATE估计。接下来,我们证明了在存在未观察到的混淆的情况下,偏移方法对CATE估计无效。我们研究了相对于使用随机试验的平均治疗效果估计的替代方案,偏移假设和边际约束是否能更好地近似CATE。我们的经验表明,当潜在的CATE有足够的变化时,约束和偏移方法导致更接近CATE的近似。
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来源期刊
Journal of Causal Inference
Journal of Causal Inference Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.90
自引率
14.30%
发文量
15
审稿时长
86 weeks
期刊介绍: Journal of Causal Inference (JCI) publishes papers on theoretical and applied causal research across the range of academic disciplines that use quantitative tools to study causality.
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