Deep Neural Networks Can Predict New-Onset Atrial Fibrillation From the 12-Lead ECG and Help Identify Those at Risk of Atrial Fibrillation–Related Stroke
Sushravya Raghunath(Geisinger Medical Center), Christopher M. Haggerty(Geisinger Medical Center), Dustin N. Hartzel(Geisinger Health System), John M. Pfeifer(Universidad Evangelica de El Salvador), Gargi Schneider(Geisinger Medical Center), Christoph J. Griessenauer(Paracelsus Medical University), Daniel Rocha(Geisinger Health System), H. Lester Kirchner(Geisinger Health System), Tanner Carbonati(Tempus Labs (United States)), Jeffery A. Ruhl(Geisinger Medical Center), David P. vanMaanen(Geisinger Medical Center), Alvaro Ulloa(Geisinger Medical Center), Brandon K. Fornwalt(Geisinger Medical Center), Noah Zimmerman(Tempus Labs (United States)), Christopher W. Good(Geisinger Medical Center), Braxton Lagerman(Geisinger Health System), Kipp W. Johnson(Tempus Labs (United States)), Joseph B. Leader(University of Michigan), Linyuan Jing(Geisinger Medical Center), Nathan J. Stoudt(Geisinger Medical Center), Ashraf Hafez(Tempus Labs (United States)), Arun Nemani(Tempus Labs (United States))
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