中文English
ISSN 1001-5256 (Print)
ISSN 2097-3497 (Online)
CN 22-1108/R
Volume 36 Issue 12
Dec.  2020
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Article Contents

Application of artificial intelligence in various liver and pancreas diseases

DOI: 10.3969/j.issn.1001-5256.2020.12.048
  • Received Date: 2020-05-24
  • Published Date: 2020-12-20
  • A large amount of information,such as clinical hematological data and imaging images,can be extracted by artificial intelligence to form various quantifiable features,analyze the association between different features and problems concerned( such as diagnosis),and thus solve complex medical problems. This article elaborates on the efficiency of various artificial intelligence algorithms in the diagnosis of pancreatic cancer,hepatic fibrosis,and esophageal varices,so as to help clinicians with clearer understanding and better decision-making.

     

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