Toward a practical handbook for choosing among causal inference methods in non-randomized studies with binary outcomes: A simulation study for applied researchers
Adri\'an Aurensanz-Crespo, Crist\'obal M Rodr\'iguez-Leal, Rosario Susi, Jorge Castillo-Mateo, Jes\'us As\'in, Jos\'e M Ram\'irez, Teresa P\'erez

TL;DR
This paper provides a simulation-based guide for applied researchers to select appropriate causal inference methods for binary outcomes in observational studies, considering various data and effect characteristics.
Contribution
It introduces a practical handbook comparing four popular causal inference techniques through extensive simulations and real-world data applications.
Findings
Propensity score matching performs well with balanced treatment groups.
Inverse probability weighting is sensitive to extreme weights and sample size.
G-computation and targeted maximum likelihood estimation show robustness across scenarios.
Abstract
Applied researchers in biomedicine and related fields are often interested in estimating the causal effect of a treatment or intervention. Although randomized clinical trials are considered the gold standard for establishing causal effects, they are not always feasible, and real-world data may represent the only available source of evidence. In such settings, causal effects must be estimated using statistical methods applied to observational data. Over the last few decades, modern causal inference methods based on the potential outcomes framework have emerged as useful tools in this field. However, many such techniques exist, and their performance depends on factors such as sample size, the proportion of treated patients, the proportion of patients experiencing the outcome, the magnitude of the treatment effect, the target estimand, and potential violations of the fundamental…
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