Establishment and Evaluation of a Noninvasive Metabolism-Related Fatty Liver Screening and Dynamic Monitoring Model: Cross-Sectional Study
Jiali Ni, Yong Huang, Qiangqiang Xiang, Qi Zheng, Xiang Xu, Zhiwen Qin, Guoping Sheng, Lanjuan Li

TL;DR
This study developed a noninvasive model for early detection and monitoring of fatty liver disease using easily measured body parameters at home.
Contribution
A new model called MAFLD Screening Index (MFSI) was developed for home-based early screening of MAFLD.
Findings
The MFSI model outperformed existing models with an AUC of 0.917 in the testing set.
Body fat mass, waist-height ratio, and total body water were key indicators in the MFSI model.
The model can be used with a body fat scale and mobile app for self-assessment.
Abstract
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…
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Taxonomy
TopicsLiver Disease Diagnosis and Treatment · Diet, Metabolism, and Disease · Metabolomics and Mass Spectrometry Studies
