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Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram

BACKGROUND: Adverse events in COVID-19 are difficult to predict. Risk stratification is encumbered by the need to protect healthcare workers. We hypothesize that artificial intelligence (AI) can help identify subtle signs of myocardial involvement in the 12-lead electrocardiogram (ECG), which could...

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Autores principales: Sridhar, Arun R., Chen (Amber), Zih-Hua, Mayfield, Jacob J., Fohner, Alison E., Arvanitis, Panagiotis, Atkinson, Sarah, Braunschweig, Frieder, Chatterjee, Neal A., Zamponi, Alessio Falasca, Johnson, Gregory, Joshi, Sanika A., Lassen, Mats C.H., Poole, Jeanne E., Rumer, Christopher, Skaarup, Kristoffer G., Biering-Sørensen, Tor, Blomstrom-Lundqvist, Carina, Linde, Cecilia M., Maleckar, Mary M., Boyle, Patrick M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8719367/
https://www.ncbi.nlm.nih.gov/pubmed/35005676
http://dx.doi.org/10.1016/j.cvdhj.2021.12.003
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author Sridhar, Arun R.
Chen (Amber), Zih-Hua
Mayfield, Jacob J.
Fohner, Alison E.
Arvanitis, Panagiotis
Atkinson, Sarah
Braunschweig, Frieder
Chatterjee, Neal A.
Zamponi, Alessio Falasca
Johnson, Gregory
Joshi, Sanika A.
Lassen, Mats C.H.
Poole, Jeanne E.
Rumer, Christopher
Skaarup, Kristoffer G.
Biering-Sørensen, Tor
Blomstrom-Lundqvist, Carina
Linde, Cecilia M.
Maleckar, Mary M.
Boyle, Patrick M.
author_facet Sridhar, Arun R.
Chen (Amber), Zih-Hua
Mayfield, Jacob J.
Fohner, Alison E.
Arvanitis, Panagiotis
Atkinson, Sarah
Braunschweig, Frieder
Chatterjee, Neal A.
Zamponi, Alessio Falasca
Johnson, Gregory
Joshi, Sanika A.
Lassen, Mats C.H.
Poole, Jeanne E.
Rumer, Christopher
Skaarup, Kristoffer G.
Biering-Sørensen, Tor
Blomstrom-Lundqvist, Carina
Linde, Cecilia M.
Maleckar, Mary M.
Boyle, Patrick M.
author_sort Sridhar, Arun R.
collection PubMed
description BACKGROUND: Adverse events in COVID-19 are difficult to predict. Risk stratification is encumbered by the need to protect healthcare workers. We hypothesize that artificial intelligence (AI) can help identify subtle signs of myocardial involvement in the 12-lead electrocardiogram (ECG), which could help predict complications. OBJECTIVE: Use intake ECGs from COVID-19 patients to train AI models to predict risk of mortality or major adverse cardiovascular events (MACE). METHODS: We studied intake ECGs from 1448 COVID-19 patients (60.5% male, aged 63.4 ± 16.9 years). Records were labeled by mortality (death vs discharge) or MACE (no events vs arrhythmic, heart failure [HF], or thromboembolic [TE] events), then used to train AI models; these were compared to conventional regression models developed using demographic and comorbidity data. RESULTS: A total of 245 (17.7%) patients died (67.3% male, aged 74.5 ± 14.4 years); 352 (24.4%) experienced at least 1 MACE (119 arrhythmic, 107 HF, 130 TE). AI models predicted mortality and MACE with area under the curve (AUC) values of 0.60 ± 0.05 and 0.55 ± 0.07, respectively; these were comparable to AUC values for conventional models (0.73 ± 0.07 and 0.65 ± 0.10). There were no prominent temporal trends in mortality rate or MACE incidence in our cohort; holdout testing with data from after a cutoff date (June 9, 2020) did not degrade model performance. CONCLUSION: Using intake ECGs alone, our AI models had limited ability to predict hospitalized COVID-19 patients’ risk of mortality or MACE. Our models’ accuracy was comparable to that of conventional models built using more in-depth information, but translation to clinical use would require higher sensitivity and positive predictive value. In the future, we hope that mixed-input AI models utilizing both ECG and clinical data may be developed to enhance predictive accuracy.
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spelling pubmed-87193672022-01-03 Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram Sridhar, Arun R. Chen (Amber), Zih-Hua Mayfield, Jacob J. Fohner, Alison E. Arvanitis, Panagiotis Atkinson, Sarah Braunschweig, Frieder Chatterjee, Neal A. Zamponi, Alessio Falasca Johnson, Gregory Joshi, Sanika A. Lassen, Mats C.H. Poole, Jeanne E. Rumer, Christopher Skaarup, Kristoffer G. Biering-Sørensen, Tor Blomstrom-Lundqvist, Carina Linde, Cecilia M. Maleckar, Mary M. Boyle, Patrick M. Cardiovasc Digit Health J Original Article BACKGROUND: Adverse events in COVID-19 are difficult to predict. Risk stratification is encumbered by the need to protect healthcare workers. We hypothesize that artificial intelligence (AI) can help identify subtle signs of myocardial involvement in the 12-lead electrocardiogram (ECG), which could help predict complications. OBJECTIVE: Use intake ECGs from COVID-19 patients to train AI models to predict risk of mortality or major adverse cardiovascular events (MACE). METHODS: We studied intake ECGs from 1448 COVID-19 patients (60.5% male, aged 63.4 ± 16.9 years). Records were labeled by mortality (death vs discharge) or MACE (no events vs arrhythmic, heart failure [HF], or thromboembolic [TE] events), then used to train AI models; these were compared to conventional regression models developed using demographic and comorbidity data. RESULTS: A total of 245 (17.7%) patients died (67.3% male, aged 74.5 ± 14.4 years); 352 (24.4%) experienced at least 1 MACE (119 arrhythmic, 107 HF, 130 TE). AI models predicted mortality and MACE with area under the curve (AUC) values of 0.60 ± 0.05 and 0.55 ± 0.07, respectively; these were comparable to AUC values for conventional models (0.73 ± 0.07 and 0.65 ± 0.10). There were no prominent temporal trends in mortality rate or MACE incidence in our cohort; holdout testing with data from after a cutoff date (June 9, 2020) did not degrade model performance. CONCLUSION: Using intake ECGs alone, our AI models had limited ability to predict hospitalized COVID-19 patients’ risk of mortality or MACE. Our models’ accuracy was comparable to that of conventional models built using more in-depth information, but translation to clinical use would require higher sensitivity and positive predictive value. In the future, we hope that mixed-input AI models utilizing both ECG and clinical data may be developed to enhance predictive accuracy. Elsevier 2021-12-31 /pmc/articles/PMC8719367/ /pubmed/35005676 http://dx.doi.org/10.1016/j.cvdhj.2021.12.003 Text en © 2021 Heart Rhythm Society. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Sridhar, Arun R.
Chen (Amber), Zih-Hua
Mayfield, Jacob J.
Fohner, Alison E.
Arvanitis, Panagiotis
Atkinson, Sarah
Braunschweig, Frieder
Chatterjee, Neal A.
Zamponi, Alessio Falasca
Johnson, Gregory
Joshi, Sanika A.
Lassen, Mats C.H.
Poole, Jeanne E.
Rumer, Christopher
Skaarup, Kristoffer G.
Biering-Sørensen, Tor
Blomstrom-Lundqvist, Carina
Linde, Cecilia M.
Maleckar, Mary M.
Boyle, Patrick M.
Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
title Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
title_full Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
title_fullStr Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
title_full_unstemmed Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
title_short Identifying risk of adverse outcomes in COVID-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
title_sort identifying risk of adverse outcomes in covid-19 patients via artificial intelligence–powered analysis of 12-lead intake electrocardiogram
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8719367/
https://www.ncbi.nlm.nih.gov/pubmed/35005676
http://dx.doi.org/10.1016/j.cvdhj.2021.12.003
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