DiReCT: Diagnostic Reasoning for Clinical Notes via Large Language Models
- URL: http://arxiv.org/abs/2408.01933v2
- Date: Tue, 6 Aug 2024 04:28:01 GMT
- Title: DiReCT: Diagnostic Reasoning for Clinical Notes via Large Language Models
- Authors: Bowen Wang, Jiuyang Chang, Yiming Qian, Guoxin Chen, Junhao Chen, Zhouqiang Jiang, Jiahao Zhang, Yuta Nakashima, Hajime Nagahara,
- Abstract summary: We aim at evaluating the reasoning ability and interpretability of large language models (LLMs) compared to human doctors.
The diagnostic reasoning dataset for clinical notes (DiReCT) contains 511 clinical notes, each meticulously annotated by physicians.
- Score: 32.85606857702375
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Large language models (LLMs) have recently showcased remarkable capabilities, spanning a wide range of tasks and applications, including those in the medical domain. Models like GPT-4 excel in medical question answering but may face challenges in the lack of interpretability when handling complex tasks in real clinical settings. We thus introduce the diagnostic reasoning dataset for clinical notes (DiReCT), aiming at evaluating the reasoning ability and interpretability of LLMs compared to human doctors. It contains 511 clinical notes, each meticulously annotated by physicians, detailing the diagnostic reasoning process from observations in a clinical note to the final diagnosis. Additionally, a diagnostic knowledge graph is provided to offer essential knowledge for reasoning, which may not be covered in the training data of existing LLMs. Evaluations of leading LLMs on DiReCT bring out a significant gap between their reasoning ability and that of human doctors, highlighting the critical need for models that can reason effectively in real-world clinical scenarios.
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