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Deep learning-assisted diagnosis model of depression based on TCM facial inspection
Clinical Research | 更新时间:2026-03-11
    • Deep learning-assisted diagnosis model of depression based on TCM facial inspection

    • The research progress in the field of traditional Chinese medicine diagnosis was introduced, and relevant experts used deep learning technology to construct a facial diagnosis model for depression, opening up new directions for early recognition of depression.
    • Modern Chinese Clinical Medicine   Vol. 33, Issue 1, Pages: 27-32(2026)
    • DOI:10.3969/j.issn.2095-6606.2026.01.005    

      CLC: R259;R241.2;R311
    • Received:10 February 2025

      Published:30 January 2026

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  • LI Hongpei, HAN Zhenyun, HU Wenyue, et al. Deep learning-assisted diagnosis model of depression based on TCM facial inspection[J]. Modern Chinese Clinical Medicine, 2026, 33(1): 27-32. DOI: 10.3969/j.issn.2095-6606.2026.01.005.

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