LLM Reasoning 相关度: 8/10

EHRWorld: A Patient-Centric Medical World Model for Long-Horizon Clinical Trajectories

Linjie Mu, Zhongzhen Huang, Yannian Gu, Shengqian Qin, Shaoting Zhang, Xiaofan Zhang
arXiv: 2602.03569v1 发布: 2026-02-03 更新: 2026-02-03

AI 摘要

EHRWorld模型通过在临床数据上训练,显著提升了LLM在长期医疗模拟中的稳定性和准确性。

主要贡献

  • 提出了EHRWorld模型,用于模拟长期临床轨迹。
  • 构建了大规模纵向临床数据集EHRWorld-110K。
  • 证明了在因果和时序临床数据上训练对于可靠的医疗世界建模至关重要。

方法论

使用因果序贯范式,在大规模电子病历数据集上训练患者中心的医学世界模型EHRWorld。

原文摘要

World models offer a principled framework for simulating future states under interventions, but realizing such models in complex, high-stakes domains like medicine remains challenging. Recent large language models (LLMs) have achieved strong performance on static medical reasoning tasks, raising the question of whether they can function as dynamic medical world models capable of simulating disease progression and treatment outcomes over time. In this work, we show that LLMs only incorporating medical knowledge struggle to maintain consistent patient states under sequential interventions, leading to error accumulation in long-horizon clinical simulation. To address this limitation, we introduce EHRWorld, a patient-centric medical world model trained under a causal sequential paradigm, together with EHRWorld-110K, a large-scale longitudinal clinical dataset derived from real-world electronic health records. Extensive evaluations demonstrate that EHRWorld significantly outperforms naive LLM-based baselines, achieving more stable long-horizon simulation, improved modeling of clinically sensitive events, and favorable reasoning efficiency, highlighting the necessity of training on causally grounded, temporally evolving clinical data for reliable and robust medical world modeling.

标签

医疗AI 世界模型 电子病历 因果推理 LLM

arXiv 分类

cs.AI cs.LG