Liu Yunfei, Wang Youxin, Xing Yunfei, Wolters Maike, Shi Di, Zhang Pingping, Dang Jiajia, Chen Ziyue, Cai Shan, Wang Yaqi, Liu Jieyu, Wang Xinxin, Zhou Haoyu, Xu Miao, Guo Lipo, Li Yuanyuan, Song Jieyun, Li Jing, Dong Yanhui, Cui Yanchun, Hu Peijin, Hebestreit Antje, Wang Hai-Jun, Li Li, Ma Jun, Yeo Yee Hui, Wang Hui, Song Yi
Institute of Child and Adolescent Health, School of Public Health, Peking University, National Health Commission Key Laboratory of Reproductive Health, Beijing, China.
Department of Maternal and Child Health, School of Public Health, Peking University Health Science Center, Beijing, China.
Lancet Reg Health West Pac. 2024 Jul 25;49:101150. doi: 10.1016/j.lanwpc.2024.101150. eCollection 2024 Aug.
The prevalence of metabolic-associated steatotic liver disease (MASLD) is rising precipitously among children, particularly in regions or countries burdened with high prevalence of obesity. However, identifying those at high risk remains a significant challenge, as the majority do not exhibit distinct symptoms of MASLD. There is an urgent need for a widely accepted non-invasive predictor to facilitate early disease diagnosis and management of the disease. Our study aims to 1) evaluate and compare existing predictors of MASLD, and 2) develop a practical screening strategy for children, tailored to local prevalence of obesity.
We utilized a school-based cross-sectional survey in Beijing as the training dataset to establish predictive models for screening MASLD in children. An independent school-based study in Ningbo was used to validate the models. We selected the optimal non-invasive MASLD predictor by comparing logistic regression model, random forest model, decision tree model, and support vector machine model using both the Beijing and Ningbo datasets. This was followed by serial testing using the best performance index we identified and indices from previous studies. Finally, we calculated the potential MASLD screening recommendation categories and corresponding profits based on national and subnational obesity prevalence, and applied those three categories to 200 countries according to their obesity prevalence from 1990 to 2022.
A total of 1018 children were included (N = 596, N = 422). The logistic regression model demonstrated the best performance, identifying the waist-to-height ratio (WHtR, cutoff value ≥0.48) as the optimal noninvasive index for predicting MASLD, with strong performance in both training and validation set. Additionally, the combination of WHtR and lipid accumulation product (LAP) was selected as an optimal serial test to improve the positive predictive value, with a LAP cutoff value of ≥668.22 cm × mg/dL. Based on the obesity prevalence among 30 provinces, three MASLD screening recommendations were proposed: 1) "Population-screening-recommended": For regions with an obesity prevalence ≥12.0%, where MASLD prevalence ranged from 5.0% to 21.5%; 2) "Resources-permitted": For regions with an obesity prevalence between 8.4% and 12.0%, where MASLD prevalence ranged from 2.3% to 4.4%; 3) "Population-screening-not-recommended": For regions with an obesity prevalence <8.4%, where MASLD prevalence is difficult to detect using our tool. Using our proposed cutoff for screening MASLD, the number of countries classified into the "Population-screening-recommended" and "Resources-permitted" categories increased from one and 11 in 1990 to 95 and 28 in 2022, respectively.
WHtR might serve as a practical and accessible index for predicting pediatric MASLD. A WHtR value ≥0.48 could facilitate early identification and management of MASLD in areas with obesity prevalence ≥12.0%. Furthermore, combining WHtR ≥0.48 with LAP ≥668.22 cm × mg/dL is recommended for individual MASLD screening. Moreover, linking these measures with population obesity prevalence not only helps estimate MASLD prevalence but also indicates potential screening profits in regions at varying levels of obesity risk.
This study was supported by grants from Capital's Funds for Health Improvement and Research (Grant No. 2022-1G-4251), National Natural Science Foundation of China (Grant No. 82273654), Major Science and Technology Projects for Health of Zhejiang Province (Grant No. WKJ-ZJ-2216), Cyrus Tang Foundation for Young Scholar 2022 (2022-B126) and Sino-German Mobility Programme (M-0015).
代谢相关脂肪性肝病(MASLD)在儿童中的患病率正在急剧上升,尤其是在肥胖患病率较高的地区或国家。然而,识别高危人群仍然是一项重大挑战,因为大多数人没有表现出MASLD的明显症状。迫切需要一种被广泛接受的非侵入性预测指标,以促进疾病的早期诊断和管理。我们的研究旨在:1)评估和比较现有的MASLD预测指标;2)针对当地肥胖患病率,为儿童制定实用的筛查策略。
我们利用在北京进行的一项基于学校的横断面调查作为训练数据集,建立用于筛查儿童MASLD的预测模型。在宁波进行的一项独立的基于学校的研究用于验证模型。我们使用北京和宁波的数据集,通过比较逻辑回归模型、随机森林模型、决策树模型和支持向量机模型,选择最佳的非侵入性MASLD预测指标。随后,使用我们确定的最佳性能指标和先前研究中的指标进行系列测试。最后,我们根据国家和地区的肥胖患病率计算潜在的MASLD筛查推荐类别和相应收益,并根据1990年至2022年200个国家的肥胖患病率将这三类应用于这些国家。
共纳入1018名儿童(N = 596,N = 422)。逻辑回归模型表现最佳,将腰高比(WHtR,临界值≥0.48)确定为预测MASLD的最佳非侵入性指标,在训练集和验证集上均表现出色。此外,选择WHtR和脂质蓄积产物(LAP)的组合作为最佳系列测试,以提高阳性预测值,LAP临界值为≥668.22 cm×mg/dL。根据30个省份的肥胖患病率,提出了三项MASLD筛查建议:1)“推荐人群筛查”:适用于肥胖患病率≥12.0%的地区,其中MASLD患病率在5.0%至21.5%之间;2)“资源允许”:适用于肥胖患病率在8.4%至12.0%之间的地区,其中MASLD患病率在2.3%至4.4%之间;3)“不推荐人群筛查”:适用于肥胖患病率<8.4%的地区,使用我们的工具难以检测到MASLD患病率。使用我们提出的MASLD筛查临界值,分类为“推荐人群筛查”和“资源允许”类别的国家数量分别从1990年的1个和11个增加到2022年的95个和28个。
WHtR可能是预测儿童MASLD的实用且可获取的指标。WHtR值≥0.48有助于在肥胖患病率≥12.0%的地区早期识别和管理MASLD。此外,建议将WHtR≥0.48与LAP≥668.22 cm×mg/dL结合用于个体MASLD筛查。此外,将这些措施与人群肥胖患病率联系起来,不仅有助于估计MASLD患病率,还能表明不同肥胖风险水平地区的潜在筛查收益。
本研究得到了首都健康改善与研究基金(项目编号:2022 - 1G - 4251)、国家自然科学基金(项目编号:82273654)、浙江省卫生重大科技项目(项目编号:WKJ - ZJ - 2216)、2022年赛勒斯·唐青年学者基金(2022 - B126)和中德交流项目(M - 0015)的资助。