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Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity

Aging well is directly associated to a healthy lifestyle. The focus of this paper is to relate individual wellness with medical image features. Non-linear trimodal regression analysis (NTRA) is a novel method that models the radiodensitometric distributions of x-ray computed tomography (CT) cross-se...

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Autores principales: Recenti, Marco, Ricciardi, Carlo, Edmunds, Kyle, Jacob, Deborah, Gambacorta, Monica, Gargiulo, Paolo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PAGEPress Publications, Pavia, Italy 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8495362/
https://www.ncbi.nlm.nih.gov/pubmed/34251162
http://dx.doi.org/10.4081/ejtm.2021.9929
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author Recenti, Marco
Ricciardi, Carlo
Edmunds, Kyle
Jacob, Deborah
Gambacorta, Monica
Gargiulo, Paolo
author_facet Recenti, Marco
Ricciardi, Carlo
Edmunds, Kyle
Jacob, Deborah
Gambacorta, Monica
Gargiulo, Paolo
author_sort Recenti, Marco
collection PubMed
description Aging well is directly associated to a healthy lifestyle. The focus of this paper is to relate individual wellness with medical image features. Non-linear trimodal regression analysis (NTRA) is a novel method that models the radiodensitometric distributions of x-ray computed tomography (CT) cross-sections. It generates 11 patient-specific parameters that describe the quality and quantity of muscle, fat, and connective tissues. In this research, the relationship of these 11 NTRA parameters with age, physical activity, and lifestyle is investigated in the 3,157 elderly volunteers AGES-I dataset. First, univariate statistical analyses were performed, and subjects were grouped by age and self-reported past (youth–midlife) and present (within 12 months of the survey) physical activity to ascertain which parameters were the most influential. Then, machine learning (ML) analyses were conducted to classify patients using NTRA parameters as input features for three ML algorithms. ML is also used to classify a Lifestyle index using the age groups. This classification analysis yielded robust results with the lifestyle index underlying the relevant differences of the soft tissues between age groups, especially in fat and connective tissue. Univariate statistical models suggested that NTRA parameters may be susceptible to age and differences between past and present physical activity levels. Moreover, for both age and physical activity, lean muscle parameters expressed more significant variation than fat and connective tissues.
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spelling pubmed-84953622021-10-25 Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity Recenti, Marco Ricciardi, Carlo Edmunds, Kyle Jacob, Deborah Gambacorta, Monica Gargiulo, Paolo Eur J Transl Myol Article Aging well is directly associated to a healthy lifestyle. The focus of this paper is to relate individual wellness with medical image features. Non-linear trimodal regression analysis (NTRA) is a novel method that models the radiodensitometric distributions of x-ray computed tomography (CT) cross-sections. It generates 11 patient-specific parameters that describe the quality and quantity of muscle, fat, and connective tissues. In this research, the relationship of these 11 NTRA parameters with age, physical activity, and lifestyle is investigated in the 3,157 elderly volunteers AGES-I dataset. First, univariate statistical analyses were performed, and subjects were grouped by age and self-reported past (youth–midlife) and present (within 12 months of the survey) physical activity to ascertain which parameters were the most influential. Then, machine learning (ML) analyses were conducted to classify patients using NTRA parameters as input features for three ML algorithms. ML is also used to classify a Lifestyle index using the age groups. This classification analysis yielded robust results with the lifestyle index underlying the relevant differences of the soft tissues between age groups, especially in fat and connective tissue. Univariate statistical models suggested that NTRA parameters may be susceptible to age and differences between past and present physical activity levels. Moreover, for both age and physical activity, lean muscle parameters expressed more significant variation than fat and connective tissues. PAGEPress Publications, Pavia, Italy 2021-07-12 /pmc/articles/PMC8495362/ /pubmed/34251162 http://dx.doi.org/10.4081/ejtm.2021.9929 Text en https://creativecommons.org/licenses/by-nc/4.0/This article is distributed under the terms of the Creative Commons Attribution Noncommercial License (by-nc 4.0) which permits any noncommercial use, distribution, and reproduction in any medium, provided the original author(s) and source are credited.
spellingShingle Article
Recenti, Marco
Ricciardi, Carlo
Edmunds, Kyle
Jacob, Deborah
Gambacorta, Monica
Gargiulo, Paolo
Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
title Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
title_full Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
title_fullStr Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
title_full_unstemmed Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
title_short Testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
title_sort testing soft tissue radiodensity parameters interplay with age and self-reported physical activity
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8495362/
https://www.ncbi.nlm.nih.gov/pubmed/34251162
http://dx.doi.org/10.4081/ejtm.2021.9929
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