AI Article Synopsis

  • The article discusses the importance of the ignorability assumption in causal inference related to treatment effects, noting that violating this assumption can lead to biased results.
  • It highlights the lack of sensitivity analysis methods specifically for cases involving multiple treatments and binary outcomes, and introduces a new Monte Carlo sensitivity analysis approach designed for these scenarios.
  • The proposed methods incorporate techniques like nested multiple imputation and Bayesian Additive Regression Trees, and are validated through simulations and a practical example using SEER-Medicare data for lung cancer treatments, with the tools available in the R package SAMTx.

Article Abstract

In the absence of a randomized experiment, a key assumption for drawing causal inference about treatment effects is the ignorable treatment assignment. Violations of the ignorability assumption may lead to biased treatment effect estimates. Sensitivity analysis helps gauge how causal conclusions will be altered in response to the potential magnitude of departure from the ignorability assumption. However, sensitivity analysis approaches for unmeasured confounding in the context of multiple treatments and binary outcomes are scarce. We propose a flexible Monte Carlo sensitivity analysis approach for causal inference in such settings. We first derive the general form of the bias introduced by unmeasured confounding, with emphasis on theoretical properties uniquely relevant to multiple treatments. We then propose methods to encode the impact of unmeasured confounding on potential outcomes and adjust the estimates of causal effects in which the presumed unmeasured confounding is removed. Our proposed methods embed nested multiple imputation within the Bayesian framework, which allow for seamless integration of the uncertainty about the values of the sensitivity parameters and the sampling variability, as well as use of the Bayesian Additive Regression Trees for modeling flexibility. Expansive simulations validate our methods and gain insight into sensitivity analysis with multiple treatments. We use the SEER-Medicare data to demonstrate sensitivity analysis using three treatments for early stage non-small cell lung cancer. The methods developed in this work are readily available in the R package SAMTx.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9835106PMC
http://dx.doi.org/10.1214/21-aoas1530DOI Listing

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