Reverse Physician-AI Relationship: Full-process Clinical Diagnosis Driven by a Large Language Model
Shicheng Xu, Xin Huang, Zihao Wei, Liang Pang, Huawei Shen, Xueqi Cheng

TL;DR
This paper introduces DxDirector-7B, a large language model that uniquely drives the entire clinical diagnosis process from ambiguous complaints, significantly improving accuracy and reducing physician workload.
Contribution
It proposes a novel paradigm where AI leads the diagnostic process, supported by a new model with advanced reasoning capabilities and an accountability framework.
Findings
Achieves superior diagnostic accuracy in complex cases
Reduces physician workload compared to existing models
Validated across multiple clinical departments and tasks
Abstract
Full-process clinical diagnosis in the real world encompasses the entire diagnostic workflow that begins with only an ambiguous chief complaint. While artificial intelligence (AI), particularly large language models (LLMs), is transforming clinical diagnosis, its role remains largely as an assistant to physicians. This AI-assisted working pattern makes AI can only answer specific medical questions at certain parts within the diagnostic process, but lack the ability to drive the entire diagnostic process starting from an ambiguous complaint, which still relies heavily on human physicians. This gap limits AI's ability to fully reduce physicians' workload and enhance diagnostic efficiency. To address this, we propose a paradigm shift that reverses the relationship between physicians and AI: repositioning AI as the primary director, with physicians serving as its assistants. So we present…
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