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模型通过预训练和指令微调实现深层中医知识与多模态推理能力。评估使用近年全国中医执业资格考试真题,并构建了药品识别和视觉诊断的视觉基准测试。实验表明,ShizhenGPT在同等规模模型中表现最优,可媲美更大规模的闭源模型。在多模态大语言模型的中药视觉理解领域,它处于领先地位。
ShizhenGPT展现出对声音、脉诊、气味、视觉等模态的统一感知能力,为中医整体多模态感知与诊断奠定了基础。所有数据集、模型和代码均已公开,旨在推动该领域的进一步探索。
Despite the success of large language models (LLMs) in various domains, their potential in Traditional Chinese Medicine (TCM) remains largely underexplored due to two critical barriers: (1) the scarcity of high-quality TCM data and (2) the inherently multimodal nature of TCM diagnostics, which involve looking, listening, smelling, and pulse-taking. These sensory-rich modalities are beyond the scope of conventional LLMs. To address these challenges, we present ShizhenGPT, the first multimodal LLM tailored for TCM. To overcome data scarcity, we curate the largest TCM dataset to date, comprising 100GB+ of text and 200GB+ of multimodal data, including 1.2M images, 200 hours of audio, and physiological signals. ShizhenGPT is pretrained and instruction-tuned to achieve deep TCM knowledge and multimodal reasoning. For evaluation, we collect recent national TCM qualification exams and build a visual benchmark for Medicinal Recognition and Visual Diagnosis. Experiments demonstrate that ShizhenGPT outperforms comparable-scale LLMs and competes with larger proprietary models. Moreover, it leads in TCM visual understanding among existing multimodal LLMs and demonstrates unified perception across modalities like sound, pulse, smell, and vision, paving the way toward holistic multimodal perception and diagnosis in TCM. Datasets, models, and code are publicly available. We hope this work will inspire further exploration in this field.
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