Advancing Multi-Organ Disease Care: A Hierarchical Multi-Agent Reinforcement Learning Framework
Daniel J. Tan, Qianyi Xu, Kay Choong See, Dilruk Perera, Mengling Feng

TL;DR
This paper introduces a hierarchical multi-agent reinforcement learning framework designed to improve treatment recommendations for multi-organ diseases like sepsis by modeling inter-organ interactions and patient context.
Contribution
It presents the first RL-based framework explicitly tailored for multi-organ disease management, incorporating inter-agent communication and dual-layer patient state representations.
Findings
Improved treatment policies for sepsis with higher patient survival rates.
Effective inter-agent communication enhances decision coordination.
Outperforms single-organ focused models in clinical relevance.
Abstract
In healthcare, multi-organ system diseases pose unique and significant challenges as they impact multiple physiological systems concurrently, demanding complex and coordinated treatment strategies. Despite recent advancements in the AI based clinical decision support systems, these solutions only focus on individual organ systems, failing to account for complex interdependencies between them. This narrow focus greatly hinders their effectiveness in recommending holistic and clinically actionable treatments in the real world setting. To address this critical gap, we propose a novel Hierarchical Multi-Agent Reinforcement Learning (HMARL) framework. Our architecture deploys specialized and dedicated agents for each organ system and facilitates inter-agent communication to enable synergistic decision-making across organ systems. Furthermore, we introduce a dual-layer state representation…
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Taxonomy
TopicsHealth Systems, Economic Evaluations, Quality of Life
