Journal of International Oncology ›› 2023, Vol. 50 ›› Issue (5): 310-314.doi: 10.3760/cma.j.cn371439-20230227-00062
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Received:
2023-02-27
Revised:
2023-04-01
Online:
2023-05-08
Published:
2023-06-27
Contact:
Zhang Wei
E-mail:zhang_wei_1980@163.com
Supported by:
Chen Fengyang, Zhang Wei. Application of machine learning in liver disease: improving diagnosis, treatment, and efficacy evaluation[J]. Journal of International Oncology, 2023, 50(5): 310-314.
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