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Individualized decision making in on-scene resuscitation time for out-of-hospital cardiac arrest using reinforcement learning. | LitMetric

AI Article Synopsis

  • - The study developed reinforcement learning models to determine the best on-scene resuscitation times for adult patients experiencing out-of-hospital cardiac arrest (OHCA) using data from Korea (totaling 73,905 cases).
  • - The models focused on maximizing patient survival by employing techniques like conservative Q-learning and Random Survival Forest to improve predicted outcomes.
  • - Results showed that optimal resuscitation times increased survival rates to hospital discharge from 9.6% to 12.5% and good neurological recovery from 5.4% to 7.5%, with recommendations tailored to various patient and emergency service characteristics.

Article Abstract

On-scene resuscitation time is associated with out-of-hospital cardiac arrest (OHCA) outcomes. We developed and validated reinforcement learning models for individualized on-scene resuscitation times, leveraging nationwide Korean data. Adult OHCA patients with a medical cause of arrest were included (N = 73,905). The optimal policy was derived from conservative Q-learning to maximize survival. The on-scene return of spontaneous circulation hazard rates estimated from the Random Survival Forest were used as intermediate rewards to handle sparse rewards, while patients' historical survival was reflected in the terminal rewards. The optimal policy increased the survival to hospital discharge rate from 9.6% to 12.5% (95% CI: 12.2-12.8) and the good neurological recovery rate from 5.4% to 7.5% (95% CI: 7.3-7.7). The recommended maximum on-scene resuscitation times for patients demonstrated a bimodal distribution, varying with patient, emergency medical services, and OHCA characteristics. Our survival analysis-based approach generates explainable rewards, reducing subjectivity in reinforcement learning.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11464506PMC
http://dx.doi.org/10.1038/s41746-024-01278-3DOI Listing

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