English

Process-Supervised Multi-Agent Reinforcement Learning for Reliable Clinical Reasoning

Artificial Intelligence 2026-02-17 v1

Abstract

Clinical decision-making requires nuanced reasoning over heterogeneous evidence and traceable justifications. While recent LLM multi-agent systems (MAS) show promise, they largely optimise for outcome accuracy while overlooking process-grounded reasoning aligned with clinical standards. One critical real-world case of this is gene-disease validity curation, where experts must determine whether a gene is causally implicated in a disease by synthesising diverse biomedical evidence. We introduce an agent-as-tool reinforcement learning framework for this task with two objectives: (i) process-level supervision to ensure reasoning follows valid clinical pathways, and (ii) efficient coordination via a hierarchical multi-agent system. Our evaluation on the ClinGen dataset shows that with outcome-only rewards, MAS with a GRPO-trained Qwen3-4B supervisor agent substantially improves final outcome accuracy from 0.195 with a base model supervisor to 0.732, but results in poor process alignment (0.392 F1). Conversely, with process + outcome rewards, MAS with GRPO-trained supervisor achieves higher outcome accuracy (0.750) while significantly improving process fidelity to 0.520 F1. Our code is available at https://github.com/chaeeunlee-io/GeneDiseaseCurationAgents.

Keywords

Cite

@article{arxiv.2602.14160,
  title  = {Process-Supervised Multi-Agent Reinforcement Learning for Reliable Clinical Reasoning},
  author = {Chaeeun Lee and T. Michael Yates and Pasquale Minervini and T. Ian Simpson},
  journal= {arXiv preprint arXiv:2602.14160},
  year   = {2026}
}
R2 v1 2026-07-01T10:37:32.211Z