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Journal Article ADT2R: Adaptive Decision Transformer for Dynamic Treatment Regimes in Sepsis
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Authors
Eunjin Jeon, Jae-Hun Choi, Heung-Il Suk
Issue Date
2025-05
Citation
IEEE Transactions on Neural Networks and Learning Systems, v.36, no.5
ISSN
2162-237X
Publisher
IEEE
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1109/TNNLS.2024.3442243
Abstract
Dynamic treatment regimes (DTRs), which comprise a series of decisions taken to select adequate treatments, have attracted considerable attention in the clinical domain, especially from sepsis researchers. Existing sepsis DTR learning studies are mainly based on offline reinforcement learning (RL) approaches working on electronic healthcare records data. However, a trained policy may choose a treatment different from a human clinician’s prescription. Furthermore, most of them do not consider: 1) heterogeneity in sepsis; 2) short-term transitions; and 3) the relationship between a patient’s health state and the prescription. We propose a novel framework, an adaptive decision transformer for DTR (ADT2R), which recommends an optimal treatment action for each time step depending on the heterogeneity of the sepsis and a patient’s evolving health states. Specifically, we devise a trajectory-optimization-based module to be trained with supervision for treatments and adaptively aggregate the multihead self-attentions by deliberating on various inherent time-varying patterns among sepsis patients. Furthermore, we estimate the patient’s health state by adopting an actor-critic (AC) algorithm and inform the treatment recommendation by learning about its short-term changes. We validated the effectiveness of the proposed framework on the Medical Information Mart for Intensive Care III (MIMIC-III) dataset, an extensive intensive care database, by demonstrating performance comparable to the state-of-the-art methods.
KSP Keywords
Actor-Critic, Adaptive Decision, Dynamic treatment, Electronic healthcare records, Intensive Care, Optimization-based, Reinforcement learning(RL), Time step, Treatment recommendation, health state, medical information