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Enabling doctor-centric medical AI with LLMs through workflow-aligned tasks and benchmarks
0
Zitationen
11
Autoren
2025
Jahr
Abstract
Abstract The rise of large language models (LLMs) has transformed healthcare by offering clinical guidance, yet their direct deployment to patients poses safety risks due to limited domain expertise. To mitigate this, we propose repositioning LLMs as clinical assistants that collaborate with experienced physicians rather than interacting with patients directly. We conducted a two-stage inspiration–feedback survey to identify real-world needs in clinical workflows. Guided by this, we constructed DoctorFLAN, a large-scale Chinese medical dataset comprising 92,000 Q&A instances across 22 clinical tasks and 27 specialities. To evaluate model performance in doctor-facing applications, we introduced DoctorFLAN-test (550 single-turn Q&A items) and DotaBench (74 multi-turn conversations). Experimental results with over ten popular LLMs demonstrate that DoctorFLAN notably improves the performance of open-source LLMs in medical contexts, facilitating their alignment with physician workflows and complementing existing patient-oriented models. This work contributes a valuable resource and framework for advancing doctor-centered medical LLM development.
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