CinE caRdiac magneTic resonAnce to predIct veNTricular arrhYthmia (CERTAINTY)
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Katherine C. Wu | H. Delingette | H. Ashikaga | J. Lima | Tommaso Mansi | R. Weiss | G. Tomaselli | T. Dickfeld | J. Marine | B. Lou | Barbara Butcher | Susumu Tao | M. Stillabower | Sanaz Norgard | L. Ciuffo | Wei-Hsing Lee | E. Chamera | Henry Halperin | Julian Krebs | Henry R. Halperin
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