Park Jeayeon, Chung Goh Eun, Chang Yoosoo, Kim So Eun, Sohn Won, Ryu Seungho, Ko Yunmi, Park Youngsu, Hur Moon Haeng, Lee Yun Bin, Cho Eun Ju, Lee Jeong-Hoon, Yu Su Jong, Yoon Jung-Hwan, Kim Yoon Jun
Department of Internal Medicine and Liver Research Institute, Seoul National University Hospital, Seoul National University College of Medicine, Seoul, Korea.
Department of Internal Medicine, Seoul National University Hospital Healthcare System Gangnam Center, Seoul, Korea.
Gut Liver. 2025 Jan 15;19(1):126-135. doi: 10.5009/gnl240367. Epub 2025 Jan 8.
BACKGROUND/AIMS: The incidence of steatotic liver disease (SLD) is increasing across all age groups as the incidence of obesity increases worldwide. The existing noninvasive prediction models for SLD require laboratory tests or imaging and perform poorly in the early diagnosis of infrequently screened populations such as young adults and individuals with healthcare disparities. We developed a machine learning-based point-of-care prediction model for SLD that is readily available to the broader population with the aim of facilitating early detection and timely intervention and ultimately reducing the burden of SLD.
We retrospectively analyzed the clinical data of 28,506 adults who had routine health check-ups in South Korea from January to December 2022. A total of 229,162 individuals were included in the external validation study. Data were analyzed and predictions were made using a logistic regression model with machine learning algorithms.
A total of 20,094 individuals were categorized into SLD and non-SLD groups on the basis of the presence of fatty liver disease. We developed three prediction models: SLD model 1, which included age and body mass index (BMI); SLD model 2, which included BMI and body fat per muscle mass; and SLD model 3, which included BMI and visceral fat per muscle mass. In the derivation cohort, the area under the receiver operating characteristic curve (AUROC) was 0.817 for model 1, 0.821 for model 2, and 0.820 for model 3. In the internal validation cohort, 86.9% of individuals were correctly classified by the SLD models. The external validation study revealed an AUROC above 0.84 for all the models.
As our three novel SLD prediction models are cost-effective, noninvasive, and accessible, they could serve as validated clinical tools for mass screening of SLD.
背景/目的:随着全球肥胖发病率的上升,各年龄段脂肪性肝病(SLD)的发病率都在增加。现有的SLD非侵入性预测模型需要实验室检查或影像学检查,在对年轻人和医疗保健差距较大的人群等筛查频率较低的人群进行早期诊断时表现不佳。我们开发了一种基于机器学习的SLD即时护理预测模型,该模型可供更广泛的人群使用,旨在促进早期检测和及时干预,最终减轻SLD的负担。
我们回顾性分析了2022年1月至12月在韩国进行常规健康检查的28506名成年人的临床数据。外部验证研究共纳入229162人。使用带有机器学习算法的逻辑回归模型对数据进行分析和预测。
根据是否存在脂肪性肝病,共有20094人被分为SLD组和非SLD组。我们开发了三个预测模型:SLD模型1,包括年龄和体重指数(BMI);SLD模型2,包括BMI和每肌肉量的体脂肪;SLD模型3,包括BMI和每肌肉量的内脏脂肪。在推导队列中,模型1的受试者操作特征曲线下面积(AUROC)为0.817,模型2为0.821,模型3为0.820。在内部验证队列中,SLD模型正确分类了86.9%的个体。外部验证研究显示所有模型的AUROC均高于0.84。
由于我们的三个新型SLD预测模型具有成本效益、非侵入性且易于获得,它们可作为经过验证的临床工具用于SLD的大规模筛查。