Journal of Practical Hepatology ›› 2023, Vol. 26 ›› Issue (2): 293-296.doi: 10.3969/j.issn.1672-5069.2023.02.036
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Wu Peng, Gao Liucun, Tang Shanhong
Received:
2021-10-12
Online:
2023-03-10
Published:
2023-03-21
Wu Peng, Gao Liucun, Tang Shanhong. Artificial intelligence in the diagnosis and treatment of patients with liver diseases[J]. Journal of Practical Hepatology, 2023, 26(2): 293-296.
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