Organ-Agents: Virtual Human Physiology Simulator via LLMs
Rihao Chang, He Jiao, Weizhi Nie, Honglin Guo, Keliang Xie, Zhenhua Wu, Lina Zhao, Yunpeng Bai, Yongtao Ma, Lanjun Wang, Yuting Su, Xi Gao, Weijie Wang, Nicu Sebe, Bruno Lepri, Bingwei Sun

TL;DR
Organ-Agents introduces a multi-agent LLM-based framework that accurately simulates human physiology across multiple systems, enabling realistic, interpretable, and generalizable digital twins for critical care applications.
Contribution
This work presents a novel multi-agent LLM framework for physiologic simulation, integrating system-specific data and validation, advancing digital twin technology in healthcare.
Findings
High simulation accuracy with MSE <0.16 on held-out patients
Robust performance across severity levels and external validation
Effective counterfactual treatment simulations aligned with real data
Abstract
Recent advances in large language models (LLMs) have enabled new possibilities in simulating complex physiological systems. We introduce Organ-Agents, a multi-agent framework that simulates human physiology via LLM-driven agents. Each Simulator models a specific system (e.g., cardiovascular, renal, immune). Training consists of supervised fine-tuning on system-specific time-series data, followed by reinforcement-guided coordination using dynamic reference selection and error correction. We curated data from 7,134 sepsis patients and 7,895 controls, generating high-resolution trajectories across 9 systems and 125 variables. Organ-Agents achieved high simulation accuracy on 4,509 held-out patients, with per-system MSEs <0.16 and robustness across SOFA-based severity strata. External validation on 22,689 ICU patients from two hospitals showed moderate degradation under distribution shifts…
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Taxonomy
TopicsSimulation Techniques and Applications
