Daniel J. Tan, Qianyi Xu, Kay Choong See, Dilruk Perera, Mengling Feng
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Advancing Multi-Organ Disease Care: A Hierarchical Multi-Agent Reinforcement Learning Framework
Multi-organ diseases present significant challenges due to their simultaneous
impact on multiple organ systems, necessitating complex and adaptive treatment
strategies. Despite recent advancements in AI-powered healthcare decision
support systems, existing solutions are limited to individual organ systems.
They often ignore the intricate dependencies between organ system and thereby
fails to provide holistic treatment recommendations that are useful in
practice. We propose a novel hierarchical multi-agent reinforcement learning
(HMARL) framework to address these challenges. This framework uses dedicated
agents for each organ system, and model dynamic through explicit inter-agent
communication channels, enabling coordinated treatment strategies across
organs. Furthermore, we introduce a dual-layer state representation technique
to contextualize patient conditions at various hierarchical levels, enhancing
the treatment accuracy and relevance. Through extensive qualitative and
quantitative evaluations in managing sepsis (a complex multi-organ disease),
our approach demonstrates its ability to learn effective treatment policies
that significantly improve patient survival rates. This framework marks a
substantial advancement in clinical decision support systems, pioneering a
comprehensive approach for multi-organ treatment recommendations.