Recent research on machine learning in the diagnosis and treatment of necrotizing enterocolitis in neonates
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    Abstract:

    Abstract:Necrotizing enterocolitis (NEC), with the main manifestations of bloody stool, abdominal distension, and vomiting, is one of the leading causes of death in neonates, and early identification and diagnosis are crucial for the prognosis of NEC. The emergence and development of machine learning has provided the potential for early, rapid, and accurate identification of this disease. This article summarizes the algorithms of machine learning recently used in NEC, analyzes the high-risk predictive factors revealed by these algorithms, evaluates the ability and characteristics of machine learning in the etiology, definition, and diagnosis of NEC, and discusses the challenges and prospects for the future application of machine learning in NEC.

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崔承, 陈飞龙, 李禄全.机器学习在新生儿坏死性小肠结肠炎诊疗中的研究进展[J].中国当代儿科杂志英文版,2023,(7):767-773

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  • Received:February 27,2023
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  • Online: August 15,2023
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