The R.O.A.D. to clinical trial emulation
Dimitris Bertsimas, Angelos G. Koulouras, Hiroshi Nagata, Carol Gao,, Junki Mizusawa, Yukihide Kanemitsu, Georgios Antonios Margonis

TL;DR
This paper introduces a novel framework for emulating randomized controlled trials using observational data, effectively addressing confounding biases and enabling the identification of patient subgroups with heterogeneous treatment effects.
Contribution
The framework uniquely combines cohort correction, unmeasured confounding adjustment, and subgroup analysis, advancing causal inference and precision medicine from observational studies.
Findings
Successfully addresses both observed and unobserved confounding.
Validates treatment recommendations against original trial outcomes.
Identifies patient subgroups with differential treatment benefits.
Abstract
Observational studies provide the only evidence on the effectiveness of interventions when randomized controlled trials (RCTs) are impractical due to cost, ethical concerns, or time constraints. While many methodologies aim to draw causal inferences from observational data, there is a growing trend to model observational study designs after RCTs, a strategy known as "target trial emulation." Despite its potential, causal inference through target trial emulation cannot fully address the confounding bias in real-world data due to the lack of randomization. In this work, we present a novel framework for target trial emulation that aims to overcome several key limitations, including confounding bias. The framework proceeds as follows: First, we apply the eligibility criteria of a specific trial to an observational cohort. We then "correct" this cohort by extracting a subset that matches…
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Taxonomy
TopicsHealth Systems, Economic Evaluations, Quality of Life
