Non-invasive localization of post-infarct ventricular tachycardia exit sites to guide ablation planning: a computational deep learning platform utilizing the 12-lead electrocardiogram and intracardiac electrograms from implanted devices
Sofia Monaci(King's College London), Martin J. Bishop(King's College London), Karli Gillette(Medical University of Graz), Shuang Qian(King's College London), Mark O’Neill(St Thomas' Hospital), Andrew P. King(King's College London), John Whitaker(St Thomas' Hospital), Rahul Mukherjee(St Thomas' Hospital), Mark K. Elliott(St Thomas' Hospital), Ronak Rajani(Guy's and St Thomas' NHS Foundation Trust), Gernot Plank(Medical University of Graz), Esther Puyol‐Antón(King's College London), Christopher A. Rinaldi(King's College London)
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