AI Agents 相关度: 9/10

Emulating Clinician Cognition via Self-Evolving Deep Clinical Research

Ruiyang Ren, Yuhao Wang, Yunsen Liang, Lan Luo, Jing Liu, Haifeng Wang, Cong Feng, Yinan Zhang, Chunyan Miao, Ji-Rong Wen, Wayne Xin Zhao
arXiv: 2603.10677v1 发布: 2026-03-11 更新: 2026-03-11

AI 摘要

DxEvolve通过交互式深度临床研究,实现自进化诊断,提升诊断准确性并形成可治理的学习资产。

主要贡献

  • 开发了自进化诊断agent DxEvolve
  • 实现了交互式深度临床研究工作流程
  • 在基准测试和外部队列上验证了诊断准确性的提升

方法论

利用深度学习,DxEvolve自主请求检查,并将临床经验转化为诊断认知基元,持续提升诊断能力。

原文摘要

Clinical diagnosis is a complex cognitive process, grounded in dynamic cue acquisition and continuous expertise accumulation. Yet most current artificial intelligence (AI) systems are misaligned with this reality, treating diagnosis as single-pass retrospective prediction while lacking auditable mechanisms for governed improvement. We developed DxEvolve, a self-evolving diagnostic agent that bridges these gaps through an interactive deep clinical research workflow. The framework autonomously requisitions examinations and continually externalizes clinical experience from increasing encounter exposure as diagnostic cognition primitives. On the MIMIC-CDM benchmark, DxEvolve improved diagnostic accuracy by 11.2% on average over backbone models and reached 90.4% on a reader-study subset, comparable to the clinician reference (88.8%). DxEvolve improved accuracy on an independent external cohort by 10.2% (categories covered by the source cohort) and 17.1% (uncovered categories) compared to the competitive method. By transforming experience into a governable learning asset, DxEvolve supports an accountable pathway for the continual evolution of clinical AI.

标签

临床诊断 自进化学习 深度学习 AI agent

arXiv 分类

cs.AI cs.CL