TECM*: A Data-Driven Assessment to Reinforcement Learning Methods and Application to Heparin Treatment Strategy for Surgical Sepsis
Jiang Liu, Yujie Li, Chan Zhou, Yihao Xie, Qilong Sun, Xin Shu, Peiwei Li, Chunyong Yang, Yiziting Zhu, Jiaqi Zhu, Yuwen Chen, Bo An, Hao Wu, Bin Yi

TL;DR
This paper introduces TECM*, a data-driven reinforcement learning framework utilizing continuous scoring and a novel evaluation matrix to optimize heparin treatment in surgical sepsis, significantly improving patient outcomes.
Contribution
It presents a new RL-based framework with continuous reward functions and TECM for treatment evaluation, enhancing personalized sepsis therapy.
Findings
cxSOFA-CQL model reduced mortality to 0.74%
Hospital stay decreased from 11.11 to 9.42 days
TECM demonstrated robustness across models
Abstract
Objective: Sepsis is a life-threatening condition caused by severe infection leading to acute organ dysfunction. This study proposes a data-driven metric and a continuous reward function to optimize personalized heparin therapy in surgical sepsis patients. Methods: Data from the MIMIC-IV v1.0 and eICU v2.0 databases were used for model development and evaluation. The training cohort consisted of abdominal surgery patients receiving unfractionated heparin (UFH) after postoperative sepsis onset. We introduce a new RL-based framework: converting the discrete SOFA score to a continuous cxSOFA for more nuanced state and reward functions; Second, defining "good" or "bad" strategies based on cxSOFA by a stepwise manner; Third, proposing a Treatment Effect Comparison Matrix (TECM), analogous to a confusion matrix for classification tasks, to evaluate the treatment strategies. We applied…
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Taxonomy
TopicsSepsis Diagnosis and Treatment · Machine Learning in Healthcare · Artificial Intelligence in Healthcare and Education
