医学
机器学习
代谢综合征
疾病
脂肪性肝炎
肝病
人工智能
脂肪肝
生物信息学
重症监护医学
风险评估
肥胖
临床实习
公共卫生
风险分析(工程)
风险因素
计算机科学
代谢性疾病
动脉粥样硬化性心血管疾病
复杂疾病
血脂异常
疾病预防
作者
Fan Yang,Xueyue Sun,Kui Jiang,Mengya Zhang,Chao Sun
摘要
Metabolic Dysfunction-associated Steatotic Liver Disease (MASLD) is a prevalent liver disease worldwide, with its prevalence rising alongside the increase in metabolic syndrome (MetS), obesity and ageing. Machine learning (ML), as a powerful analysis tool to handle and analyse massive data/information, has been employed to enhance and refine the diagnosis, risk assessment, non-invasive screening, and treatment options against MASLD. This review thoroughly explores the application of ML in identifying MASLD-related genes and lipidomic biomarkers, non-invasive screening technologies such as ultrasound and imaging, and predicting the risk of disease progression to metabolic dysfunction-associated steatohepatitis (MASH) or more advanced stages, such as cirrhosis. Additionally, ML models have shown potential and definitive performance in accurately predicting and effectively managing the risk of comorbidities in relation to MASLD. By integrating clinical data, biochemical markers, imaging techniques, and an individual's biochemical metrics, ML offers a personalised medical approach that improves therapeutic strategies and holds promise for significant contributions to public health in the future.
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