Cargando…

Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome

The key factors playing a role in the pathogenesis of metabolic alterations observed in many patients with obesity have not been fully characterized. Their identification is crucial, and it would represent a fundamental step towards better management of this urgent public health issue. This aim coul...

Descripción completa

Detalles Bibliográficos
Autores principales: Masi, Davide, Risi, Renata, Biagi, Filippo, Vasquez Barahona, Daniel, Watanabe, Mikiko, Zilich, Rita, Gabrielli, Gabriele, Santin, Pierluigi, Mariani, Stefania, Lubrano, Carla, Gnessi, Lucio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8779369/
https://www.ncbi.nlm.nih.gov/pubmed/35057554
http://dx.doi.org/10.3390/nu14020373
_version_ 1784637559021764608
author Masi, Davide
Risi, Renata
Biagi, Filippo
Vasquez Barahona, Daniel
Watanabe, Mikiko
Zilich, Rita
Gabrielli, Gabriele
Santin, Pierluigi
Mariani, Stefania
Lubrano, Carla
Gnessi, Lucio
author_facet Masi, Davide
Risi, Renata
Biagi, Filippo
Vasquez Barahona, Daniel
Watanabe, Mikiko
Zilich, Rita
Gabrielli, Gabriele
Santin, Pierluigi
Mariani, Stefania
Lubrano, Carla
Gnessi, Lucio
author_sort Masi, Davide
collection PubMed
description The key factors playing a role in the pathogenesis of metabolic alterations observed in many patients with obesity have not been fully characterized. Their identification is crucial, and it would represent a fundamental step towards better management of this urgent public health issue. This aim could be accomplished by exploiting the potential of machine learning (ML) technology. In a single-centre study (n = 2567), we used an ML analysis to cluster patients with metabolically healthy (MHO) or metabolically unhealthy (MUO) obesity, based on several clinical and biochemical variables. The first model provided by ML was able to predict the presence/absence of MHO with an accuracy of 66.67% and 72.15%, respectively, and included the following parameters: HOMA-IR, upper body fat/lower body fat, glycosylated haemoglobin, red blood cells, age, alanine aminotransferase, uric acid, white blood cells, insulin-like growth factor 1 (IGF-1) and gamma-glutamyl transferase. For each of these parameters, ML provided threshold values identifying either MUO or MHO. A second model including IGF-1 zSDS, a surrogate marker of IGF-1 normalized by age and sex, was even more accurate with a 71.84% and 72.3% precision, respectively. Our results demonstrated high IGF-1 levels in MHO patients, thus highlighting a possible role of IGF-1 as a novel metabolic health parameter to effectively predict the development of MUO using ML technology.
format Online
Article
Text
id pubmed-8779369
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-87793692022-01-22 Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome Masi, Davide Risi, Renata Biagi, Filippo Vasquez Barahona, Daniel Watanabe, Mikiko Zilich, Rita Gabrielli, Gabriele Santin, Pierluigi Mariani, Stefania Lubrano, Carla Gnessi, Lucio Nutrients Article The key factors playing a role in the pathogenesis of metabolic alterations observed in many patients with obesity have not been fully characterized. Their identification is crucial, and it would represent a fundamental step towards better management of this urgent public health issue. This aim could be accomplished by exploiting the potential of machine learning (ML) technology. In a single-centre study (n = 2567), we used an ML analysis to cluster patients with metabolically healthy (MHO) or metabolically unhealthy (MUO) obesity, based on several clinical and biochemical variables. The first model provided by ML was able to predict the presence/absence of MHO with an accuracy of 66.67% and 72.15%, respectively, and included the following parameters: HOMA-IR, upper body fat/lower body fat, glycosylated haemoglobin, red blood cells, age, alanine aminotransferase, uric acid, white blood cells, insulin-like growth factor 1 (IGF-1) and gamma-glutamyl transferase. For each of these parameters, ML provided threshold values identifying either MUO or MHO. A second model including IGF-1 zSDS, a surrogate marker of IGF-1 normalized by age and sex, was even more accurate with a 71.84% and 72.3% precision, respectively. Our results demonstrated high IGF-1 levels in MHO patients, thus highlighting a possible role of IGF-1 as a novel metabolic health parameter to effectively predict the development of MUO using ML technology. MDPI 2022-01-15 /pmc/articles/PMC8779369/ /pubmed/35057554 http://dx.doi.org/10.3390/nu14020373 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Masi, Davide
Risi, Renata
Biagi, Filippo
Vasquez Barahona, Daniel
Watanabe, Mikiko
Zilich, Rita
Gabrielli, Gabriele
Santin, Pierluigi
Mariani, Stefania
Lubrano, Carla
Gnessi, Lucio
Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome
title Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome
title_full Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome
title_fullStr Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome
title_full_unstemmed Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome
title_short Application of a Machine Learning Technology in the Definition of Metabolically Healthy and Unhealthy Status: A Retrospective Study of 2567 Subjects Suffering from Obesity with or without Metabolic Syndrome
title_sort application of a machine learning technology in the definition of metabolically healthy and unhealthy status: a retrospective study of 2567 subjects suffering from obesity with or without metabolic syndrome
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8779369/
https://www.ncbi.nlm.nih.gov/pubmed/35057554
http://dx.doi.org/10.3390/nu14020373
work_keys_str_mv AT masidavide applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT risirenata applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT biagifilippo applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT vasquezbarahonadaniel applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT watanabemikiko applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT zilichrita applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT gabrielligabriele applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT santinpierluigi applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT marianistefania applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT lubranocarla applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome
AT gnessilucio applicationofamachinelearningtechnologyinthedefinitionofmetabolicallyhealthyandunhealthystatusaretrospectivestudyof2567subjectssufferingfromobesitywithorwithoutmetabolicsyndrome