Tian Yuan, Zhou Hang-Yi, Liu Ming-Lin, Ruan Yi, Yan Zhao-Xian, Hu Xiao-Hua, Du Juan
Department of Chinese Medicine, Changhai Hospital, Naval Medical University, Shanghai 200433, China.
School of Traditional Chinese Medicine, Naval Medical University, Shanghai 200433, China.
World J Gastroenterol. 2025 Jul 21;31(27):108200. doi: 10.3748/wjg.v31.i27.108200.
Metabolic-associated fatty liver disease (MAFLD) is the most common cause of chronic liver disease and remains under-recognized within the health check-up population. Ultrasonography during physical examination fail to accurately identify at-risk patients as they involve multiple metabolic aspects.
To rapidly identify hepatic steatosis patients from high-metabolic-risk populations and reduce medical costs.
We analyzed all data from a prospective cohort study to identify potential predictors of MAFLD risk. The LASSO and recursive feature elimination were used to screen for feature selection. Four machine learning models were employed to construct the prediction model for hepatic steatosis.
We found that 86.2% of the 1011 individuals in the trial phase exhibited metabolic abnormalities, with 70.8% presenting with hepatic steatosis. After data cleaning, 711 participants (207 non-MAFLD patients 504 MAFLD patients) were included, and the prediction models were validated. After overlapping and reducing the feature set based on feature importance ranking, we developed an interpretable final XGBoost model with 10 features, achieving an area under the curve of 0.82.
We have introduced a valuable noninvasive tool for efficiently identifying hepatic steatosis patients in high-metabolic-risk populations. This tool may improve screening effectiveness and reduce medical costs.
代谢相关脂肪性肝病(MAFLD)是慢性肝病最常见的病因,在健康体检人群中仍未得到充分认识。体检时的超声检查无法准确识别高危患者,因为这些患者涉及多个代谢方面。
从高代谢风险人群中快速识别肝脂肪变性患者并降低医疗成本。
我们分析了一项前瞻性队列研究的所有数据,以确定MAFLD风险的潜在预测因素。使用LASSO和递归特征消除法进行特征选择筛选。采用四种机器学习模型构建肝脂肪变性预测模型。
我们发现,试验阶段的1011名个体中,86.2%存在代谢异常,70.8%有肝脂肪变性。数据清理后,纳入711名参与者(207名非MAFLD患者和504名MAFLD患者),并对预测模型进行了验证。根据特征重要性排名对特征集进行重叠和缩减后,我们开发了一个具有10个特征的可解释最终XGBoost模型,曲线下面积为0.82。
我们引入了一种有价值的非侵入性工具,可有效识别高代谢风险人群中的肝脂肪变性患者。该工具可能会提高筛查效率并降低医疗成本。