Myocardial Infarct Segmentation From Magnetic Resonance Images for Personalized Modeling of Cardiac Electrophysiology
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Wu Qiu | Jing Yuan | Eranga Ukwatta | Katherine C. Wu | Natalia A. Trayanova | Hermenegild Arevalo | Fijoy Vadakkumpadan | Kristina Li | Peter Malamas | N. Trayanova | Jing Yuan | W. Qiu | E. Ukwatta | H. Arevalo | F. Vadakkumpadan | P. Malamas | Kristina Li | Peter Malamas
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