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Large-Scale Automated Phenotyping of Cardiac Arrest and Withdrawal of Life-Sustaining Therapy Using Electronic Health Record Data

Revista

Resuscitation

Fecha de publicación

10 de diciembre de 2025

Resuscitation. 2025 Dec 8:110919. doi: 10.1016/j.resuscitation.2025.110919. Online ahead of print.

AIMS: of the Study: Anoxic brain injury following cardiac arrest is a leading cause of death in the United States. Withdrawal of life-sustaining therapy (WLST) is a common end-of-life decision in these patients, but its contributing factors and outcomes remain poorly understood. We developed machine learning models to enable large-scale, automated phenotyping to identify patients who died following WLST.

METHODS: We used structured and unstructured EHR (Electronic Health Record) data from two major hospitals to train models that identify (1) patients with cardiac arrest and coma, and (2) patients who died after WLST. Performance was evaluated using the area under the receiver operating characteristic (AUROC) and precision-recall (AUPRC) curves, as well as other precision metrics.

RESULTS: On holdout (internal) testing the models achieved AUROC/AUPRC values of 0.984/0.968 (cardiac arrest) and 0.992/0.991 (WLST). Cross-hospital evaluation showed strong performance for the cardiac arrest phenotype but variable generalizability for the WLST phenotype, with sensitivity depending on the training site.. Population-level error rates were low (<0.5%) for the cardiac arrest phenotype; estimates for WLST varied by hospital.

CONCLUSION: These models establish a reproducible framework for automated cohort identification. Nearly half of comatose post-arrest patients died following WLST, with 42% of these deaths occurring within 72 hours, highlighting the impact of early prognostication decisions. The models enable rapid cohort identification for research on neuroprognostication, including how WLST decisions may perpetuate self-fulfilling prophecies. Broader validation across health systems and larger cohorts will improve generalizability and inform evidence-based end-of-life decision-making. Institutional review board approval: Mass General Brigham IRB BIDMC: 2022P000481; MGB: 2013P001024. All procedures complied with institutional and national ethical standards; informed consent was waived for use of de-identified data.

PubMed:41371332 | DOI:10.1016/j.resuscitation.2025.110919

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El idioma original es este artículo es el inglés. Mediante el sistema de traducción automático de la IA de emergencing, el contenido se ha traducido al español. Esta es una traducción no supervisada por lo que puede que alguna parte del contenido no refleje con exactitud la publicación original del autor/autores.