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Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health

BACKGROUND: Obesity is associated with electrophysiological remodeling, which manifests as detectable changes on the surface electrocardiogram (ECG). OBJECTIVE: To develop neural networks (NN) to predict body mass index (BMI) from ECGs and test the hypothesis that discrepancies between NN-predicted...

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Autores principales: Li, Xinyang, Patel, Kiran Haresh Kumar, Sun, Lin, Peters, Nicholas S., Ng, Fu Siong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8669785/
https://www.ncbi.nlm.nih.gov/pubmed/34957430
http://dx.doi.org/10.1016/j.cvdhj.2021.10.003
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author Li, Xinyang
Patel, Kiran Haresh Kumar
Sun, Lin
Peters, Nicholas S.
Ng, Fu Siong
author_facet Li, Xinyang
Patel, Kiran Haresh Kumar
Sun, Lin
Peters, Nicholas S.
Ng, Fu Siong
author_sort Li, Xinyang
collection PubMed
description BACKGROUND: Obesity is associated with electrophysiological remodeling, which manifests as detectable changes on the surface electrocardiogram (ECG). OBJECTIVE: To develop neural networks (NN) to predict body mass index (BMI) from ECGs and test the hypothesis that discrepancies between NN-predicted BMI and measured BMI are indicative of underlying adiposity and/or concurrent cardiometabolic ill-health. METHODS: NN models were developed using 36,856 12-lead resting ECGs from the UK Biobank. Two architectures were developed for continuous and categorical BMI estimation (normal weight [BMI <25 kg/m(2)] vs overweight/obese [BMI ≥25 kg/m(2)]). Models for male and female participants were trained and tested separately. For each sex, data were randomly divided into 4 folds, and models were evaluated in a leave-1-fold-out manner. RESULTS: ECGs were available for 17,807 male and 19,049 female participants (mean ages: 61 ± 7 and 63 ± 8 years; mean BMI 26 ± 5 kg/m(2) and 27 ± 4 kg/m(2), respectively). NN models detected overweight/obese individuals with average accuracies of 75% and 73% for male and female subjects, respectively. The magnitudes of difference between NN-predicted BMI and actual BMI were significantly correlated with visceral adipose tissue volumes. Concurrent hypertension, diabetes, dyslipidemia, and/or coronary heart disease explained false-positive classifications (ie, calculated BMI <25 kg/m(2) misclassified as ≥25 kg/m(2) by NN model, P < .001). CONCLUSION: NN models applied to 12-lead ECGs predict BMI with a reasonable degree of accuracy. Discrepancies between NN-predicted and calculated BMI may be indicative of underlying visceral adiposity and concomitant cardiometabolic perturbation, which could be used to identify individuals at risk of cardiometabolic disease.
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spelling pubmed-86697852021-12-22 Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health Li, Xinyang Patel, Kiran Haresh Kumar Sun, Lin Peters, Nicholas S. Ng, Fu Siong Cardiovasc Digit Health J Original Article BACKGROUND: Obesity is associated with electrophysiological remodeling, which manifests as detectable changes on the surface electrocardiogram (ECG). OBJECTIVE: To develop neural networks (NN) to predict body mass index (BMI) from ECGs and test the hypothesis that discrepancies between NN-predicted BMI and measured BMI are indicative of underlying adiposity and/or concurrent cardiometabolic ill-health. METHODS: NN models were developed using 36,856 12-lead resting ECGs from the UK Biobank. Two architectures were developed for continuous and categorical BMI estimation (normal weight [BMI <25 kg/m(2)] vs overweight/obese [BMI ≥25 kg/m(2)]). Models for male and female participants were trained and tested separately. For each sex, data were randomly divided into 4 folds, and models were evaluated in a leave-1-fold-out manner. RESULTS: ECGs were available for 17,807 male and 19,049 female participants (mean ages: 61 ± 7 and 63 ± 8 years; mean BMI 26 ± 5 kg/m(2) and 27 ± 4 kg/m(2), respectively). NN models detected overweight/obese individuals with average accuracies of 75% and 73% for male and female subjects, respectively. The magnitudes of difference between NN-predicted BMI and actual BMI were significantly correlated with visceral adipose tissue volumes. Concurrent hypertension, diabetes, dyslipidemia, and/or coronary heart disease explained false-positive classifications (ie, calculated BMI <25 kg/m(2) misclassified as ≥25 kg/m(2) by NN model, P < .001). CONCLUSION: NN models applied to 12-lead ECGs predict BMI with a reasonable degree of accuracy. Discrepancies between NN-predicted and calculated BMI may be indicative of underlying visceral adiposity and concomitant cardiometabolic perturbation, which could be used to identify individuals at risk of cardiometabolic disease. Elsevier 2021-10-13 /pmc/articles/PMC8669785/ /pubmed/34957430 http://dx.doi.org/10.1016/j.cvdhj.2021.10.003 Text en © 2021 Heart Rhythm Society. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Article
Li, Xinyang
Patel, Kiran Haresh Kumar
Sun, Lin
Peters, Nicholas S.
Ng, Fu Siong
Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
title Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
title_full Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
title_fullStr Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
title_full_unstemmed Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
title_short Neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
title_sort neural networks applied to 12-lead electrocardiograms predict body mass index, visceral adiposity and concurrent cardiometabolic ill-health
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8669785/
https://www.ncbi.nlm.nih.gov/pubmed/34957430
http://dx.doi.org/10.1016/j.cvdhj.2021.10.003
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