Machine Learning of Three-dimensional Right Ventricular Motion Enables Outcome Prediction in Pulmonary Hypertension: A Cardiac MR Imaging Study
Timothy J. W. Dawes(MRC Clinical Trials Unit at UCL), Declan P. O’Regan(MRC Clinical Trials Unit at UCL), Wenzhe Shi, Geoffrey Watson(Imperial College London), J. Simon R. Gibbs(Imperial College London), Christopher J. Rhodes(University of Chicago), John Wharton(Pfizer (United Kingdom)), Stuart A. Cook(Hammersmith Hospital), Antonio de Marvao(MRC Clinical Trials Unit at UCL), Tristan Fletcher(J.P. Morgan), Luke Howard(Imperial College London), Martin R. Wilkins(Hammersmith Hospital), Daniel Rueckert(Munich Center for Machine Learning)
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