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多重插补程序用于估计多处理下的因果效应,并应用于医疗保健提供者的比较。

Multiple imputation procedures for estimating causal effects with multiple treatments with application to the comparison of healthcare providers.

机构信息

Department of Biostatistics, Brown University, Providence, Rhode Island, USA.

出版信息

Stat Med. 2022 Jan 15;41(1):208-226. doi: 10.1002/sim.9231. Epub 2021 Nov 2.

Abstract

Choosing between multiple healthcare providers requires us to simultaneously compare the expected outcomes under each provider. This comparison is complex because the composition of patients treated by each provider may differ. Similar issues arise when simultaneously comparing the adverse effects of interventions using non-randomized data. To simultaneously estimate the effects of multiple providers/interventions we propose procedures that explicitly impute the set of potential outcomes for each subject. The procedures are based on different specifications of the generalized additive models (GAM) and the Bayesian additive regression trees (BART). We compare the performance of the proposed procedures to previously proposed matching and weighting procedures using an extensive simulation study for continuous outcomes. Our simulations show that when the distributions of the covariates across treatment groups have adequate overlap, the multiple imputation procedures based on separate BART or GAM models in each treatment group are generally superior to weighting based methods and have similar and sometimes better performance than matching on the logit of the generalized propensity score. Another advantage of these multiple imputation procedures is the ability to provide point and interval estimates to a wide range of causal effect estimands. We apply the proposed procedures to comparing multiple nursing homes in Massachusetts for readmission outcomes. The proposed approach can be applied to other causal effects applications with multiple treatments.

摘要

在多个医疗服务提供者之间进行选择需要我们同时比较每个提供者的预期结果。这种比较很复杂,因为每个提供者所治疗的患者组成可能不同。当使用非随机数据同时比较干预措施的不良影响时,也会出现类似的问题。为了同时估计多个提供者/干预措施的效果,我们提出了一些程序,这些程序明确地为每个对象推断出潜在结果的集合。这些程序基于广义加性模型(GAM)和贝叶斯加性回归树(BART)的不同规范。我们使用连续结果的广泛模拟研究来比较所提出的程序与先前提出的匹配和加权程序的性能。我们的模拟表明,当协变量在治疗组之间的分布有足够的重叠时,基于每个治疗组中的单独 BART 或 GAM 模型的多重插补程序通常优于基于加权的方法,并且在广义倾向得分的对数上与匹配的性能相似,有时甚至更好。这些多重插补程序的另一个优点是能够为广泛的因果效应估计值提供点估计值和区间估计值。我们将所提出的程序应用于比较马萨诸塞州的多个疗养院的再入院结果。所提出的方法可应用于具有多种治疗方法的其他因果效应应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0c3d/8716426/3f6e55c02b49/nihms-1747956-f0002.jpg

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