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Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery

The ECG remains the most widely used diagnostic test for characterization of cardiac structure and electrical activity. We hypothesized that parallel advances in computing power, machine learning algorithms, and availability of large-scale data could substantially expand the clinical inferences deri...

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Autores principales: Tison, Geoffrey H., Zhang, Jeffrey, Delling, Francesca N., Deo, Rahul C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Lippincott Williams & Wilkins 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6951431/
https://www.ncbi.nlm.nih.gov/pubmed/31525078
http://dx.doi.org/10.1161/CIRCOUTCOMES.118.005289
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author Tison, Geoffrey H.
Zhang, Jeffrey
Delling, Francesca N.
Deo, Rahul C.
author_facet Tison, Geoffrey H.
Zhang, Jeffrey
Delling, Francesca N.
Deo, Rahul C.
author_sort Tison, Geoffrey H.
collection PubMed
description The ECG remains the most widely used diagnostic test for characterization of cardiac structure and electrical activity. We hypothesized that parallel advances in computing power, machine learning algorithms, and availability of large-scale data could substantially expand the clinical inferences derived from the ECG while at the same time preserving interpretability for medical decision-making. METHODS AND RESULTS: We identified 36 186 ECGs from the University of California, San Francisco database that would enable training of models for estimation of cardiac structure or function or detection of disease. We segmented the ECG into standard component waveforms and intervals using a novel combination of convolutional neural networks and hidden Markov models and evaluated this segmentation by comparing resulting electrical intervals against 141 864 measurements produced during the clinical workflow. We then built a patient-level ECG profile, a 725-element feature vector and used this profile to train and interpret machine learning models for examples of cardiac structure (left ventricular mass, left atrial volume, and mitral annulus e-prime) and disease (pulmonary arterial hypertension, hypertrophic cardiomyopathy, cardiac amyloid, and mitral valve prolapse). ECG measurements derived from the convolutional neural network-hidden Markov model segmentation agreed with clinical estimates, with median absolute deviations as a fraction of observed value of 0.6% for heart rate and 4% for QT interval. Models trained using patient-level ECG profiles enabled surprising quantitative estimates of left ventricular mass and mitral annulus e′ velocity (median absolute deviation of 16% and 19%, respectively) with good discrimination for left ventricular hypertrophy and diastolic dysfunction as binary traits. Model performance using our approach for disease detection demonstrated areas under the receiver operating characteristic curve of 0.94 for pulmonary arterial hypertension, 0.91 for hypertrophic cardiomyopathy, 0.86 for cardiac amyloid, and 0.77 for mitral valve prolapse. CONCLUSIONS: Modern machine learning methods can extend the 12-lead ECG to quantitative applications well beyond its current uses while preserving the transparency that is so fundamental to clinical care.
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spelling pubmed-69514312020-09-05 Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery Tison, Geoffrey H. Zhang, Jeffrey Delling, Francesca N. Deo, Rahul C. Circ Cardiovasc Qual Outcomes Original Articles The ECG remains the most widely used diagnostic test for characterization of cardiac structure and electrical activity. We hypothesized that parallel advances in computing power, machine learning algorithms, and availability of large-scale data could substantially expand the clinical inferences derived from the ECG while at the same time preserving interpretability for medical decision-making. METHODS AND RESULTS: We identified 36 186 ECGs from the University of California, San Francisco database that would enable training of models for estimation of cardiac structure or function or detection of disease. We segmented the ECG into standard component waveforms and intervals using a novel combination of convolutional neural networks and hidden Markov models and evaluated this segmentation by comparing resulting electrical intervals against 141 864 measurements produced during the clinical workflow. We then built a patient-level ECG profile, a 725-element feature vector and used this profile to train and interpret machine learning models for examples of cardiac structure (left ventricular mass, left atrial volume, and mitral annulus e-prime) and disease (pulmonary arterial hypertension, hypertrophic cardiomyopathy, cardiac amyloid, and mitral valve prolapse). ECG measurements derived from the convolutional neural network-hidden Markov model segmentation agreed with clinical estimates, with median absolute deviations as a fraction of observed value of 0.6% for heart rate and 4% for QT interval. Models trained using patient-level ECG profiles enabled surprising quantitative estimates of left ventricular mass and mitral annulus e′ velocity (median absolute deviation of 16% and 19%, respectively) with good discrimination for left ventricular hypertrophy and diastolic dysfunction as binary traits. Model performance using our approach for disease detection demonstrated areas under the receiver operating characteristic curve of 0.94 for pulmonary arterial hypertension, 0.91 for hypertrophic cardiomyopathy, 0.86 for cardiac amyloid, and 0.77 for mitral valve prolapse. CONCLUSIONS: Modern machine learning methods can extend the 12-lead ECG to quantitative applications well beyond its current uses while preserving the transparency that is so fundamental to clinical care. Lippincott Williams & Wilkins 2019-09-05 /pmc/articles/PMC6951431/ /pubmed/31525078 http://dx.doi.org/10.1161/CIRCOUTCOMES.118.005289 Text en © 2019 The Authors. Circulation: Cardiovascular Quality and Outcomes is published on behalf of the American Heart Association, Inc., by Wolters Kluwer Health, Inc. This is an open access article under the terms of the Creative Commons Attribution Non-Commercial-NoDerivs (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use, distribution, and reproduction in any medium, provided that the original work is properly cited, the use is noncommercial, and no modifications or adaptations are made.
spellingShingle Original Articles
Tison, Geoffrey H.
Zhang, Jeffrey
Delling, Francesca N.
Deo, Rahul C.
Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
title Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
title_full Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
title_fullStr Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
title_full_unstemmed Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
title_short Automated and Interpretable Patient ECG Profiles for Disease Detection, Tracking, and Discovery
title_sort automated and interpretable patient ecg profiles for disease detection, tracking, and discovery
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6951431/
https://www.ncbi.nlm.nih.gov/pubmed/31525078
http://dx.doi.org/10.1161/CIRCOUTCOMES.118.005289
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