使用身体成分参数对肝脏脂肪变性进行机器学习预测:英国生物库研究

IF 4.1 Q2 GERIATRICS & GERONTOLOGY
Delbert Almerick T Boncan, Yan Yu, Miaoru Zhang, Jie Lian, Varut Vardhanabhuti
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引用次数: 0

摘要

非酒精性脂肪肝(NAFLD)已成为全球发病率最高的慢性肝病,但其检测仍主要基于代用血清生物标志物、弹性成像或活检。在这项研究中,我们利用英国生物库队列中的 2959 名参与者,建立了双能 X 射线吸收测定法(DXA)得出的身体成分参数的关联,并利用机器学习模型来预测非酒精性脂肪肝。肝脏脂肪变性参考值基于 MRI-PDFF,该参考值之前已得到广泛验证。我们发现,腹部肥胖(定义为腰臀比(OR = 2.50(男性),3.35(女性))、甲状腺-蝶骨比(OR = 3.35(男性),6.39(女性))和腰围(OR = 1.79(男性),3.80(女性))等传统测量指标与肝脂肪变性有几种明显的关联。同样,A 身体形态指数(定量 4 OR = 1.89(男性),5.81(女性))和脂肪质量指数,超重(OR = 6.93(男性),2.83(女性))和肥胖(OR = 14.12(男性),5.32(女性))类别同样与肝脏脂肪变性显著相关。DXA 参数显示,内脏脂肪组织质量(OR = 8.37(男性),19.03(女性))、躯干脂肪质量(OR = 8.64(男性),25.69(女性))和甲状腺脂肪质量(OR = 7.93(男性),21.77(女性))与非酒精性脂肪肝高度相关。我们使用传统的身体成分指数和 DXA 参数训练了逻辑回归机器学习分类器和两个基于直方图的梯度提升集合,用于预测肝脂肪变性,取得了合理的效果(AUC = 0.83-0.87)。根据 SHapley Additive exPlanations(SHAP)分析,对分类器贡献最大的 DXA 参数是与非酒精性脂肪肝有显著关联的预测特征。总之,这项研究强调了 DXA 作为一种实用的、潜在的肝脂肪变性筛查方法的潜在作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning prediction of hepatic steatosis using body composition parameters: A UK Biobank Study.

Machine learning prediction of hepatic steatosis using body composition parameters: A UK Biobank Study.

Non-alcoholic fatty liver disease (NAFLD) has emerged as the most prevalent chronic liver disease worldwide, yet detection has remained largely based on surrogate serum biomarkers, elastography or biopsy. In this study, we used a total of 2959 participants from the UK biobank cohort and established the association of dual-energy X-ray absorptiometry (DXA)-derived body composition parameters and leveraged machine learning models to predict NAFLD. Hepatic steatosis reference was based on MRI-PDFF which has been extensively validated previously. We found several significant associations with traditional measurements such as abdominal obesity, as defined by waist-to-hip ratio (OR = 2.50 (male), 3.35 (female)), android-gynoid ratio (OR = 3.35 (male), 6.39 (female)) and waist circumference (OR = 1.79 (male), 3.80 (female)) with hepatic steatosis. Similarly, A Body Shape Index (Quantile 4 OR = 1.89 (male), 5.81 (female)), and for fat mass index, both overweight (OR = 6.93 (male), 2.83 (female)) and obese (OR = 14.12 (male), 5.32 (female)) categories were likewise significantly associated with hepatic steatosis. DXA parameters were shown to be highly associated such as visceral adipose tissue mass (OR = 8.37 (male), 19.03 (female)), trunk fat mass (OR = 8.64 (male), 25.69 (female)) and android fat mass (OR = 7.93 (male), 21.77 (female)) with NAFLD. We trained machine learning classifiers with logistic regression and two histogram-based gradient boosting ensembles for the prediction of hepatic steatosis using traditional body composition indices and DXA parameters which achieved reasonable performance (AUC = 0.83-0.87). Based on SHapley Additive exPlanations (SHAP) analysis, DXA parameters that had the largest contribution to the classifiers were the features predicted with significant association with NAFLD. Overall, this study underscores the potential utility of DXA as a practical and potentially opportunistic method for the screening of hepatic steatosis.

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