Learning optimal treatment strategies for intraoperative hypotension using deep reinforcement learning
Esra Adiyeke, Tianqi Liu, Venkata Sai Dheeraj Naganaboina, Han Li, Tyler J. Loftus, Yuanfang Ren, Benjamin Shickel, Matthew M. Ruppert, Karandeep Singh, Ruogu Fang, Parisa Rashidi, Azra Bihorac, Tezcan Ozrazgat-Baslanti

TL;DR
This study developed a deep reinforcement learning model to recommend optimal intraoperative treatment strategies for preventing hypotension and postoperative AKI, demonstrating potential to improve surgical outcomes.
Contribution
The paper introduces a novel deep RL model for intraoperative treatment decision-making, outperforming physicians' decisions and reducing postoperative AKI risk.
Findings
Model replicated 69% of physicians' vasopressor decisions.
Recommendations aligned with actual doses in 41% of IV fluid cases.
Lower AKI prevalence observed with model-guided treatments.
Abstract
Traditional methods of surgical decision making heavily rely on human experience and prompt actions, which are variable. A data-driven system generating treatment recommendations based on patient states can be a substantial asset in perioperative decision-making, as in cases of intraoperative hypotension, for which suboptimal management is associated with acute kidney injury (AKI), a common and morbid postoperative complication. We developed a Reinforcement Learning (RL) model to recommend optimum dose of intravenous (IV) fluid and vasopressors during surgery to avoid intraoperative hypotension and postoperative AKI. We retrospectively analyzed 50,021 surgeries from 42,547 adult patients who underwent major surgery at a quaternary care hospital between June 2014 and September 2020. Of these, 34,186 surgeries were used for model training and 15,835 surgeries were reserved for testing. We…
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