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ISSN 1001-5256 (Print)
ISSN 2097-3497 (Online)
CN 22-1108/R
Volume 39 Issue 12
Dec.  2023
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Article Contents

Research advances in machine learning models for acute pancreatitis

DOI: 10.3969/j.issn.1001-5256.2023.12.034
Research funding:

National Natural Science Foundation of China (82000540);

Science and Technology Plan of Suzhou City (SKY2021038)

More Information
  • Corresponding author: XU Chunfang, xcf601@163.com (ORCID: 0000-0001-5648-3003)
  • Received Date: 2023-04-02
  • Accepted Date: 2023-05-06
  • Published Date: 2023-12-12
  • Acute pancreatitis (AP) is a gastrointestinal disease that requires early intervention, and when it progresses to moderate-severe AP (MSAP) or severe AP (SAP), there will be a significant increase in the mortality rate of patients. Machine learning (ML) has achieved great success in the early prediction of AP using clinical data with the help of its powerful computational and learning capabilities. This article reviews the research advances in ML in predicting the severity, complications, and death of AP, so as to provide a theoretical basis and new insights for clinical diagnosis and treatment of AP through artificial intelligence.

     

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