AI Agents 相关度: 8/10

Proactive Knowledge Inquiry in Doctor-Patient Dialogue: Stateful Extraction, Belief Updating, and Path-Aware Action Planning

Zhenhai Pan, Yan Liu, Jia You
arXiv: 2603.17425v1 发布: 2026-03-18 更新: 2026-03-18

AI 摘要

提出了一种主动知识询问的医患对话框架,用于增强EMR的自动化流程。

主要贡献

  • 构建了基于对话的主动知识询问框架
  • 结合了状态提取、信念更新、知识检索和POMDP规划
  • 进行了初步的控制实验,验证了框架的有效性

方法论

构建了状态化的医患对话模型,通过序列信念更新、知识检索和POMDP规划来主动获取信息。

原文摘要

Most automated electronic medical record (EMR) pipelines remain output-oriented: they transcribe, extract, and summarize after the consultation, but they do not explicitly model what is already known, what is still missing, which uncertainty matters most, or what question or recommendation should come next. We formulate doctor-patient dialogue as a proactive knowledge-inquiry problem under partial observability. The proposed framework combines stateful extraction, sequential belief updating, gap-aware state modeling, hybrid retrieval over objectified medical knowledge, and a POMDP-lite action planner. Instead of treating the EMR as the only target artifact, the framework treats documentation as the structured projection of an ongoing inquiry loop. To make the formulation concrete, we report a controlled pilot evaluation on ten standardized multi-turn dialogues together with a 300-query retrieval benchmark aggregated across dialogues. On this pilot protocol, the full framework reaches 83.3% coverage, 80.0% risk recall, 81.4% structural completeness, and lower redundancy than the chunk-only and template-heavy interactive baselines. These pilot results do not establish clinical generalization; rather, they suggest that proactive inquiry may be methodologically interesting under tightly controlled conditions and can be viewed as a conceptually appealing formulation worth further investigation for dialogue-based EMR generation. This work should be read as a pilot concept demonstration under a controlled simulated setting rather than as evidence of clinical deployment readiness. No implication of clinical deployment readiness, clinical safety, or real-world clinical utility should be inferred from this pilot protocol.

标签

EMR 对话系统 知识询问 POMDP 医疗AI

arXiv 分类

cs.AI