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From Observational Data to Clinical Recommendations: A Causal Framework for Estimating Patient-level Treatment Effects and Learning Policies

From Observational Data to Clinical Recommendations: A Causal Framework for Estimating Patient-level Treatment Effects and Learning Policies

来源:Arxiv_logoArxiv
英文摘要

We propose a framework for building patient-specific treatment recommendation models, building on the large recent literature on learning patient-level causal models and inspired by the target trial paradigm of Hernan and Robins. We focus on safety and validity, including the crucial issue of causal identification when using observational data. We do not provide a specific model, but rather a way to integrate existing methods and know-how into a practical pipeline. We further provide a real world use-case of treatment optimization for patients with heart failure who develop acute kidney injury during hospitalization. The results suggest our pipeline can improve patient outcomes over the current treatment regime.

Rom Gutman、Shimon Sheiba、Omer Noy Klein、Naama Dekel Bird、Amit Gruber、Doron Aronson、Oren Caspi、Uri Shalit

医学研究方法临床医学

Rom Gutman,Shimon Sheiba,Omer Noy Klein,Naama Dekel Bird,Amit Gruber,Doron Aronson,Oren Caspi,Uri Shalit.From Observational Data to Clinical Recommendations: A Causal Framework for Estimating Patient-level Treatment Effects and Learning Policies[EB/OL].(2025-07-16)[2025-08-02].https://arxiv.org/abs/2507.11381.点此复制

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