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AuthorZachi I., Attia
AuthorKapa, Suraj
AuthorDugan, Jennifer
AuthorPereira, Naveen
AuthorNoseworthy, Peter A.
AuthorJimenez, Francisco Lopez
AuthorCruz, Jessica
AuthorCarter, Rickey E.
AuthorDeSimone, Daniel C.
AuthorSignorino, John
AuthorHalamka, John
AuthorChennaiah Gari, Nikhita R.
AuthorMadathala, Raja Sekhar
AuthorPlatonov, Pyotr G.
AuthorGul, Fahad
AuthorJanssens, Stefan P.
AuthorNarayan, Sanjiv
AuthorUpadhyay, Gaurav A.
AuthorAlenghat, Francis J.
AuthorLahiri, Marc K.
AuthorDujardin, Karl
AuthorHermel, Melody
AuthorDominic, Paari
AuthorTurk-Adawi, Karam
AuthorAsaad, Nidal
AuthorSvensson, Anneli
AuthorFernandez-Aviles, Francisco
AuthorEsakof, Darryl D.
AuthorBartunek, Jozef
AuthorNoheria, Amit
AuthorSridhar, Arun R.
AuthorLanza, Gaetano A.
AuthorCohoon, Kevin
AuthorPadmanabhan, Deepak
AuthorPardo Gutierrez, Jose Alberto
AuthorSinagra, Gianfranco
AuthorMerlo, Marco
AuthorZagari, Domenico
AuthorRodriguez Escenaro, Brenda D.
AuthorPahlajani, Dev B.
AuthorLoncar, Goran
AuthorVukomanovic, Vladan
AuthorJensen, Henrik K.
AuthorFarkouh, Michael E.
AuthorLuescher, Thomas F.
AuthorSu Ping, Carolyn Lam
AuthorPeters, Nicholas S.
AuthorFriedman, Paul A.
Available date2021-08-08T11:02:47Z
Publication Date2021-08-31
Publication NameMayo Clinic Proceedings
Identifierhttp://dx.doi.org/10.1016/j.mayocp.2021.05.027
CitationAttia, Zachi I. et. al. , "Rapid Exclusion of COVID Infection With the Artificial Intelligence Electrocardiogram", Mayo Clinic Proceedings, Volume 96, Issue 8, 2021, Pages 2081-2094, ISSN 0025-6196, https://doi.org/10.1016/j.mayocp.2021.05.027.
ISSN00256196
URIhttps://www.sciencedirect.com/science/article/pii/S0025619621004699
URIhttp://hdl.handle.net/10576/21645
AbstractObjectiveTo rapidly exclude severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infection using artificial intelligence applied to the electrocardiogram (ECG). MethodsA global, volunteer consortium from 4 continents identified patients with ECGs obtained around the time of polymerase chain reaction–confirmed COVID-19 diagnosis and age- and sex-matched controls from the same sites. Clinical characteristics, polymerase chain reaction results, and raw electrocardiographic data were collected. A convolutional neural network was trained using 26,153 ECGs (33.2% COVID positive), validated with 3826 ECGs (33.3% positive), and tested on 7870 ECGs not included in other sets (32.7% positive). Performance under different prevalence values was tested by adding control ECGs from a single high-volume site. ResultsThe area under the curve for detection of acute COVID-19 infection in the test group was 0.767 (95% CI, 0.756 to 0.778; sensitivity, 98%; specificity, 10%; positive predictive value, 37%; negative predictive value, 91%). To more accurately reflect a real-world population, 50,905 normal controls were added to adjust the COVID prevalence to approximately 5% (2657/58,555), resulting in an area under the curve of 0.780 (95% CI, 0.771 to 0.790) with a specificity of 12.1% and a negative predictive value of 99.2%. ConclusionInfection with SARS-CoV-2 results in electrocardiographic changes that permit the artificial intelligence–enhanced ECG to be used as a rapid screening test with a high negative predictive value (99.2%). This may permit the development of electrocardiography-based tools to rapidly screen individuals for pandemic control.
Languageen
PublisherElsevier
SubjectScreening
COVID 19
Artificial Intelligence
TitleRapid Exclusion of COVID Infection With the Artificial Intelligence Electrocardiogram
TypeArticle
Issue Number8
Volume Number96
dc.accessType Abstract Only


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