Publication: Morbid liver manifestations are intrinsically bound to metabolic syndrome and nutrient intake based on a machine-learning cluster analysis.
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Identifiers
Date
2022-07-26
Authors
Mico, Victor
San-Cristobal, Rodrigo
Martin, Roberto
Martinez-Gonzalez, Miguel Angel
Salas-Salvado, Jordi
Corella, Dolores
Fito, Montserrat
Alonso-Gomez, Angel M
Wärnberg, Julia
Vioque, Jesus
Advisors
Journal Title
Journal ISSN
Volume Title
Publisher
Frontiers Research Foundation
Abstract
Metabolic syndrome (MetS) is one of the most important medical problems around the world. Identification of patient´s singular characteristic could help to reduce the clinical impact and facilitate individualized management. This study aimed to categorize MetS patients using phenotypical and clinical variables habitually collected during health check-ups of individuals considered to have high cardiovascular risk. The selected markers to categorize MetS participants included anthropometric variables as well as clinical data, biochemical parameters and prescribed pharmacological treatment. An exploratory factor analysis was carried out with a subsequent hierarchical cluster analysis using the z-scores from factor analysis. The first step identified three different factors. The first was determined by hypercholesterolemia and associated treatments, the second factor exhibited glycemic disorders and accompanying treatments and the third factor was characterized by hepatic enzymes. Subsequently four clusters of patients were identified, where cluster 1 was characterized by glucose disorders and treatments, cluster 2 presented mild MetS, cluster 3 presented exacerbated levels of hepatic enzymes and cluster 4 highlighted cholesterol and its associated treatments Interestingly, the liver status related cluster was characterized by higher protein consumption and cluster 4 with low polyunsaturated fatty acid intake. This research emphasized the potential clinical relevance of hepatic impairments in addition to MetS traditional characterization for precision and personalized management of MetS patients.
Description
MeSH Terms
Blood glucose
Cholesterol
Cluster analysis
Dietary proteins
Eating
Fatty acids, unsaturated
Humans
Liver
Machine learning
Metabolic syndrome
Cholesterol
Cluster analysis
Dietary proteins
Eating
Fatty acids, unsaturated
Humans
Liver
Machine learning
Metabolic syndrome
DeCS Terms
Análisis por conglomerados
Aprendizaje automático
Colesterol
Glucemia
Hígado
Ingestión de alimentos
Proteínas en la dieta
Síndrome metabólico
Ácidos grasos insaturados
Aprendizaje automático
Colesterol
Glucemia
Hígado
Ingestión de alimentos
Proteínas en la dieta
Síndrome metabólico
Ácidos grasos insaturados
CIE Terms
Keywords
Biomarkers, Cluster, Dyslipidemia, Glucose disorders, Hepatic enzymes, Metabolic syndrome
Citation
Micó V, San-Cristobal R, Martín R, Martínez-González MÁ, Salas-Salvadó J, Corella D, et al. Morbid liver manifestations are intrinsically bound to metabolic syndrome and nutrient intake based on a machine-learning cluster analysis. Front Endocrinol (Lausanne). 2022 Sep 6;13:936956