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Author(s):
Xin Huang, Tao Zhu, Shumin Li, Teng Liu, Shibo Lin, Hui Liang, Mingwei Zhong, Xitai Sun, Liyong Chen, Hao Bai, Zehua Zhao, Shujuan Lin, Xuehui Chu, Zhiyong Dong, Guangyong Zhang, Shaozhuang Liu
Publish date:
13 November 2025
Journal:
Hepatology
PubMed ID:
41231578

Abstract

BACKGROUND AND AIMS: At-risk metabolic dysfunction-associated steatohepatitis (MASH) elevates risks of liver-related and all-cause morbidity and mortality. We developed and validated a noninvasive score using routine clinical indicators to identify at-risk MASH in obesity.

APPROACH AND RESULTS: Using data from 1961 individuals across 5 independent bariatric cohorts with liver biopsy, we developed the predictive score in 1 derivation cohort (n=1095), performed internal validation (bootstrapping), and conducted external validation using the remaining 4 biopsy-confirmed cohorts (n=866). The score was also validated in the international overweight/obese cohorts from the UK Biobank (n=15,745) and NHANES database (n=1573). Predictive value for severe liver-related outcomes (SLROs, including cirrhosis, hepatocellular carcinoma, etc) was assessed in a UK Biobank subcohort (n=1955; median 13.7-year follow-up). Head-to-head comparisons with existing indices were performed. The predictive model, designated as FMO (Fibrotic/at-risk MASH in Obesity), incorporated aspartate aminotransferase, alanine aminotransferase, triglyceride, and high-density lipoprotein cholesterol. The FMO model demonstrated robust discrimination in derivation (AUROC=0.874, 95% CI 0.844-0.905) and nationwide external validation cohorts (AUROCs=0.803-0.874), and in global validation in both NHANES and UK Biobank (AUROCs=0.866 and 0.753, respectively). Longitudinal analysis confirmed SLRO’s prediction (the Harrell C-index=0.703). In the derivation cohort, the FMO model demonstrated optimal rule-out [cutoff 0.05, sensitivity ≥0.90, negative predictive value (NPV) 0.976] and rule-in [cutoff 0.22, specificity ≥0.90, positive predictive value (PPV) 0.481] performance. External validation showed NPVs of 0.907-1.00 and PPVs of 0.333-0.630. Comparative analyses revealed superior diagnostic performance of the FMO model versus some existing models.

CONCLUSIONS: The FMO is an accurate and cost-effective noninvasive score for at-risk MASH identification in populations with obesity.

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Summary Gastrointestinal diseases, such as irritable bowel syndrome, inflammatory bowel disease, oesophageal adenocarcinoma, gastric cancer and colorectal cancer, poses an enormous disease burden globally.

Institution:
Putian University, China

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