Ni Jiali, Huang Yong, Xiang Qiangqiang, Zheng Qi, Xu Xiang, Qin Zhiwen, Sheng Guoping, Li Lanjuan
The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China.
Shulan (Hangzhou) Hospital Affiliated to Zhejiang Shuren University, Shulan International Medical College, Hangzhou, China.
Interact J Med Res. 2024 Aug 22;13:e56035. doi: 10.2196/56035.
Metabolically associated fatty liver disease (MAFLD) insidiously affects people's health, and many models have been proposed for the evaluation of liver fibrosis. However, there is still a lack of noninvasive and sensitive models to screen MAFLD in high-risk populations.
The purpose of this study was to explore a new method for early screening of the public and establish a home-based tool for regular self-assessment and monitoring of MAFLD.
In this cross-sectional study, there were 1758 eligible participants in the training set and 200 eligible participants in the testing set. Routine blood, blood biochemistry, and FibroScan tests were performed, and body composition was analyzed using a body composition instrument. Additionally, we recorded multiple factors including disease-related risk factors, the Forns index score, the hepatic steatosis index (HSI), the triglyceride glucose index, total body water (TBW), body fat mass (BFM), visceral fat area, waist-height ratio (WHtR), and basal metabolic rate. Binary logistic regression analysis was performed to explore the potential anthropometric indicators that have a predictive ability to screen for MAFLD. A new model, named the MAFLD Screening Index (MFSI), was established using binary logistic regression analysis, and BFM, WHtR, and TBW were included. A simple rating table, named the MAFLD Rating Table (MRT), was also established using these indicators.
The performance of the HSI (area under the curve [AUC]=0.873, specificity=76.8%, sensitivity=81.4%), WHtR (AUC=0.866, specificity=79.8%, sensitivity=80.8%), and BFM (AUC=0.842, specificity=76.9%, sensitivity=76.2%) in discriminating between the MAFLD group and non-fatty liver group was evaluated (P<.001). The AUC of the combined model including WHtR, HSI, and BFM values was 0.900 (specificity=81.8%, sensitivity=85.6%; P<.001). The MFSI was established based on better performance at screening MAFLD patients in the training set (AUC=0.896, specificity=83.8%, sensitivity=82.1%) and was confirmed in the testing set (AUC=0.917, specificity=89.8%, sensitivity=84.4%; P<.001).
The novel MFSI model was built using WHtR, BFM, and TBW to screen for early MAFLD. These body parameters can be easily obtained using a body fat scale at home, and the mobile device software can record specific values and perform calculations. MFSI had better performance than other models for early MAFLD screening. The new model showed strong power and stability and shows promise in the area of MAFLD detection and self-assessment. The MRT was a practical tool to assess disease alterations in real time.
代谢相关脂肪性肝病(MAFLD)对人们的健康有潜在影响,目前已提出多种模型用于评估肝纤维化。然而,在高危人群中仍缺乏无创且敏感的模型来筛查MAFLD。
本研究旨在探索一种针对公众的早期筛查新方法,并建立一种基于家庭的工具,用于MAFLD的定期自我评估和监测。
在这项横断面研究中,训练集有1758名符合条件的参与者,测试集有200名符合条件的参与者。进行了常规血液、血液生化和FibroScan检测,并使用身体成分分析仪分析身体成分。此外,我们记录了多个因素,包括疾病相关危险因素、Forns指数评分、肝脂肪变性指数(HSI)、甘油三酯葡萄糖指数、总体水(TBW)、体脂肪量(BFM)、内脏脂肪面积、腰高比(WHtR)和基础代谢率。进行二元逻辑回归分析,以探索具有筛查MAFLD预测能力的潜在人体测量指标。使用二元逻辑回归分析建立了一个名为MAFLD筛查指数(MFSI)的新模型,该模型纳入了BFM、WHtR和TBW。还使用这些指标建立了一个名为MAFLD评分表(MRT)的简单评分表。
评估了HSI(曲线下面积[AUC]=0.873,特异性=76.8%,敏感性=81.4%)、WHtR(AUC=0.866,特异性=79.8%,敏感性=80.8%)和BFM(AUC=0.842,特异性=76.9%,敏感性=76.2%)在区分MAFLD组和非脂肪肝组方面的性能(P<0.001)。包括WHtR、HSI和BFM值的联合模型的AUC为0.900(特异性=81.8%,敏感性=85.6%;P<0.001)。MFSI基于在训练集中筛查MAFLD患者的更好性能而建立(AUC=0.896,特异性=83.8%,敏感性=82.1%),并在测试集中得到证实(AUC=0.917,特异性=89.8%,敏感性=84.4%;P<0.001)。
新型MFSI模型利用WHtR、BFM和TBW构建,用于早期MAFLD的筛查。这些身体参数可以通过在家中使用体脂秤轻松获得,移动设备软件可以记录具体值并进行计算。MFSI在早期MAFLD筛查方面比其他模型表现更好。新模型显示出强大的能力和稳定性,在MAFLD检测和自我评估领域具有前景。MRT是实时评估疾病变化的实用工具。