Hepatic Involvement across the Metabolic Syndrome Spectrum: Non-Invasive Assessment and Risk Prediction Using Machine Learning

被引:3
|
作者
Solomon, Adelaida [1 ,2 ]
Cipaian, Calin Remus [1 ,2 ]
Negrea, Mihai Octavian [1 ,2 ]
Boicean, Adrian [1 ,2 ]
Mihaila, Romeo [1 ,2 ]
Beca, Corina [2 ]
Popa, Mirela Livia [1 ,2 ]
Grama, Sebastian Mihai [1 ]
Teodoru, Minodora [1 ,2 ]
Neamtu, Bogdan [1 ,3 ]
机构
[1] Lucian Blaga Univ, Fac Med, Sibiu 550024, Romania
[2] Cty Clin Emergency Hosp Sibiu, 2-4 Corneliu Coposu Str, Sibiu 550245, Romania
[3] Pediat Clin Hosp Sibiu, Dept Clin Res, Sibiu 550166, Romania
关键词
metabolic syndrome; non-alcoholic fatty liver disease; metabolic-associated fatty liver disease; non-invasive tests; transient elastography; liver stiffness measurement; cluster analysis; decision tree algorithms; FATTY LIVER-DISEASE; NONALCOHOLIC STEATOHEPATITIS; ASPARTATE-AMINOTRANSFERASE; ADVANCED FIBROSIS; DIAGNOSIS; EPIDEMIOLOGY; DEFINITIONS; MANAGEMENT; STEATOSIS; ALGORITHM;
D O I
10.3390/jcm12175657
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Metabolic-dysfunction-associated steatotic liver disease (MASLD) and metabolic syndrome (MetS) are inextricably linked conditions, both of which are experiencing an upward trend in prevalence, thereby exerting a substantial clinical and economic burden. The presence of MetS should prompt the search for metabolic-associated liver disease. Liver fibrosis is the main predictor of liver-related morbidity and mortality. Non-invasive tests (NIT) such as the Fibrosis-4 index (FIB4), aspartate aminotransferase-to-platelet ratio index (APRI), aspartate aminotransferase-to-alanine aminotransferase ratio (AAR), hepatic steatosis index (HIS), transient elastography (TE), and combined scores (AGILE3+, AGILE4) facilitate the detection of liver fibrosis or steatosis. Our study enrolled 217 patients with suspected MASLD, 109 of whom were diagnosed with MetS. We implemented clinical and biological evaluations complemented by transient elastography (TE) to discern the most robust predictors for liver disease manifestation patterns. Patients with MetS had significantly higher values of FIB4, APRI, HSI, liver stiffness, and steatosis parameters measured by TE, as well as AGILE3+ and AGILE4 scores. Machine-learning algorithms enhanced our evaluation. A two-step cluster algorithm yielded three clusters with reliable model quality. Cluster 1 contained patients without significant fibrosis or steatosis, while clusters 2 and 3 showed a higher prevalence of significant liver fibrosis or at least moderate steatosis as measured by TE. A decision tree algorithm identified age, BMI, liver enzyme levels, and metabolic syndrome characteristics as significant factors in predicting cluster membership with an overall accuracy of 89.4%. Combining NITs improves the accuracy of detecting patterns of liver involvement in patients with suspected MASLD.
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页数:21
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