NoteChat: A Dataset of Synthetic Doctor-Patient Conversations Conditioned on Clinical Notes (2310.15959v3)
Abstract: We introduce NoteChat, a novel cooperative multi-agent framework leveraging LLMs to generate patient-physician dialogues. NoteChat embodies the principle that an ensemble of role-specific LLMs, through structured role-play and strategic prompting, can perform their assigned roles more effectively. The synergy among these role-playing LLMs results in a cohesive and efficient dialogue generation. Evaluation on MTS-dialogue, a benchmark dataset for patient-physician dialogues-note pairs, shows that models trained with the augmented synthetic patient-physician dialogues by NoteChat outperforms other state-of-the-art models for generating clinical notes. Our comprehensive automatic and human evaluation demonstrates that NoteChat substantially surpasses state-of-the-art models like ChatGPT and GPT-4 up to 22.78% by domain experts in generating superior synthetic patient-physician dialogues based on clinical notes. NoteChat has the potential to engage patients directly and help clinical documentation, a leading cause of physician burnout.
- Junda Wang (16 papers)
- Zonghai Yao (33 papers)
- Zhichao Yang (37 papers)
- Huixue Zhou (14 papers)
- Rumeng Li (6 papers)
- Xun Wang (96 papers)
- Yucheng Xu (13 papers)
- Hong Yu (114 papers)