Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study

Introduction: Aging affects the electrocardiogram (ECG) with a higher incidence of abnormalities in older patients. ECG-age can be predicted by artificial intelligence (AI) and can be used as a measure of cardiovascular health. Hypothesis: ECG-age predicted by AI is a risk factor for overall mortali...

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Published in:Circulation
Main Authors: Paixao, Gabriela, Lima, Emilly M, Ribeiro, Antonio H, Gomes, Paulo R, Oliveira, Derick, Pinto Junior, Marcelo M, Sabino, Ester, Barreto, Sandhi, Giatti, Luana, Andrade Lotufo, Paulo A, Duncan, Bruce, Meira Junior, Wagner, Schon, Thomas, Ribeiro, Antonio L
Format: Article in Journal/Newspaper
Language:English
Published: Ovid Technologies (Wolters Kluwer Health) 2020
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Online Access:http://dx.doi.org/10.1161/circ.142.suppl_3.16883
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spelling crovidcr:10.1161/circ.142.suppl_3.16883 2023-05-15T18:11:37+02:00 Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study Paixao, Gabriela Lima, Emilly M Ribeiro, Antonio H Gomes, Paulo R Oliveira, Derick Pinto Junior, Marcelo M Sabino, Ester Barreto, Sandhi Giatti, Luana Andrade Lotufo, Paulo A Duncan, Bruce Meira Junior, Wagner Schon, Thomas Ribeiro, Antonio L 2020 http://dx.doi.org/10.1161/circ.142.suppl_3.16883 en eng Ovid Technologies (Wolters Kluwer Health) Circulation volume 142, issue Suppl_3 ISSN 0009-7322 1524-4539 Physiology (medical) Cardiology and Cardiovascular Medicine journal-article 2020 crovidcr https://doi.org/10.1161/circ.142.suppl_3.16883 2022-05-29T06:48:08Z Introduction: Aging affects the electrocardiogram (ECG) with a higher incidence of abnormalities in older patients. ECG-age can be predicted by artificial intelligence (AI) and can be used as a measure of cardiovascular health. Hypothesis: ECG-age predicted by AI is a risk factor for overall mortality. Methods: The Clinical Outcomes in Digital Electrocardiography (CODE) study is a retrospective cohort with a mean follow-up of 3.67 years.The dataset consists of Brazilian patients, mainly from primary care centers. Two established cohorts, ELSA-Brasil, of Brazilian public servants, and SaMi-Trop, of Chagas disease patients, were used for external validation. 2,322,513 ECGs from 1,558,421 patients over 16 years old that underwent an ECG from 2010 to 2017 were included. A deep convolutional neural network was trained in order to predict the age of the patient based solely on ECG 12-lead tracings. The ECG database was split into 85-15% training and test datasets, respectively. Death was ascertained using probabilistic linkage with Brazil′s mortality information data. The Cox regression model, adjusted by age and sex, was used for statistical analysis. The model was validated in two cohorts: ELSA-Brasil (n=14,263) and SaMi-Trop (n=1,631). Results: he mean predicted ECG-age was 52.0 years (±18.7) with a mean absolute error of 8.38 (±7.0) years. Patients with ECG-age >8y older than chronological age had higher mortality rate (HR 1.79, 95%CI 1.69-1.90; p<0.001), whereas those ECG-age >8y younger than chronological age were associated with a lower mortality rate (HR 0.78, 95%CI 0.74-0.83; p<0.001). These results were similar in ELSA-Brasil and SaMi-Trop external validation cohorts (HR 1.75, 95%CI 1.35-2.27; p<0.001;HR 2.42, 95%CI 1.53-3.83; p<0.001 for >8y difference, retrospectively; HR 0.74, 95%CI 0.63-0.88; p<0.001;HR 0.89, 95%CI 0.52-1.54; p=0.68 for <8y difference, respectively). Conclusions: ECG-age, predicted by AI, can be useful as a tool for risk ... Article in Journal/Newspaper sami Ovid (via Crossref) Circulation 142 Suppl_3
institution Open Polar
collection Ovid (via Crossref)
op_collection_id crovidcr
language English
topic Physiology (medical)
Cardiology and Cardiovascular Medicine
spellingShingle Physiology (medical)
Cardiology and Cardiovascular Medicine
Paixao, Gabriela
Lima, Emilly M
Ribeiro, Antonio H
Gomes, Paulo R
Oliveira, Derick
Pinto Junior, Marcelo M
Sabino, Ester
Barreto, Sandhi
Giatti, Luana
Andrade Lotufo, Paulo A
Duncan, Bruce
Meira Junior, Wagner
Schon, Thomas
Ribeiro, Antonio L
Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study
topic_facet Physiology (medical)
Cardiology and Cardiovascular Medicine
description Introduction: Aging affects the electrocardiogram (ECG) with a higher incidence of abnormalities in older patients. ECG-age can be predicted by artificial intelligence (AI) and can be used as a measure of cardiovascular health. Hypothesis: ECG-age predicted by AI is a risk factor for overall mortality. Methods: The Clinical Outcomes in Digital Electrocardiography (CODE) study is a retrospective cohort with a mean follow-up of 3.67 years.The dataset consists of Brazilian patients, mainly from primary care centers. Two established cohorts, ELSA-Brasil, of Brazilian public servants, and SaMi-Trop, of Chagas disease patients, were used for external validation. 2,322,513 ECGs from 1,558,421 patients over 16 years old that underwent an ECG from 2010 to 2017 were included. A deep convolutional neural network was trained in order to predict the age of the patient based solely on ECG 12-lead tracings. The ECG database was split into 85-15% training and test datasets, respectively. Death was ascertained using probabilistic linkage with Brazil′s mortality information data. The Cox regression model, adjusted by age and sex, was used for statistical analysis. The model was validated in two cohorts: ELSA-Brasil (n=14,263) and SaMi-Trop (n=1,631). Results: he mean predicted ECG-age was 52.0 years (±18.7) with a mean absolute error of 8.38 (±7.0) years. Patients with ECG-age >8y older than chronological age had higher mortality rate (HR 1.79, 95%CI 1.69-1.90; p<0.001), whereas those ECG-age >8y younger than chronological age were associated with a lower mortality rate (HR 0.78, 95%CI 0.74-0.83; p<0.001). These results were similar in ELSA-Brasil and SaMi-Trop external validation cohorts (HR 1.75, 95%CI 1.35-2.27; p<0.001;HR 2.42, 95%CI 1.53-3.83; p<0.001 for >8y difference, retrospectively; HR 0.74, 95%CI 0.63-0.88; p<0.001;HR 0.89, 95%CI 0.52-1.54; p=0.68 for <8y difference, respectively). Conclusions: ECG-age, predicted by AI, can be useful as a tool for risk ...
format Article in Journal/Newspaper
author Paixao, Gabriela
Lima, Emilly M
Ribeiro, Antonio H
Gomes, Paulo R
Oliveira, Derick
Pinto Junior, Marcelo M
Sabino, Ester
Barreto, Sandhi
Giatti, Luana
Andrade Lotufo, Paulo A
Duncan, Bruce
Meira Junior, Wagner
Schon, Thomas
Ribeiro, Antonio L
author_facet Paixao, Gabriela
Lima, Emilly M
Ribeiro, Antonio H
Gomes, Paulo R
Oliveira, Derick
Pinto Junior, Marcelo M
Sabino, Ester
Barreto, Sandhi
Giatti, Luana
Andrade Lotufo, Paulo A
Duncan, Bruce
Meira Junior, Wagner
Schon, Thomas
Ribeiro, Antonio L
author_sort Paixao, Gabriela
title Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study
title_short Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study
title_full Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study
title_fullStr Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study
title_full_unstemmed Abstract 16883: Validation of a Deep Neural Network Electrocardiographic-Age as a Mortality Predictor: The CODE Study
title_sort abstract 16883: validation of a deep neural network electrocardiographic-age as a mortality predictor: the code study
publisher Ovid Technologies (Wolters Kluwer Health)
publishDate 2020
url http://dx.doi.org/10.1161/circ.142.suppl_3.16883
genre sami
genre_facet sami
op_source Circulation
volume 142, issue Suppl_3
ISSN 0009-7322 1524-4539
op_doi https://doi.org/10.1161/circ.142.suppl_3.16883
container_title Circulation
container_volume 142
container_issue Suppl_3
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