Evaluating and Learning Optimal Dynamic Treatment Regimes under Truncation by Death

Evaluating and Learning Optimal Dynamic Treatment Regimes under Truncation by Death










arXiv:2510.07501v1 Announce Type: new
Abstract: Truncation by death, a prevalent challenge in critical care, renders traditional dynamic treatment regime (DTR) evaluation inapplicable due to ill-defined potential outcomes. We introduce a principal stratification-based method, focusing on the always-survivor value function. We derive a semiparametrically efficient, multiply robust estimator for multi-stage DTRs, demonstrating its robustness and efficiency. Empirical validation and an application to electronic health records showcase its utility for personalized treatment optimization.






Sihyung Park (North Carolina State University), Wenbin Lu (North Carolina State University), Shu Yang (North Carolina State University)





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