Segmentation of cardiac infarction in delayed-enhancement MRI using probability map and transformers-based neural networks

Computer Methods and Programs in Biomedicine - Tập 242 - Trang 107841 - 2023
Erwan Lecesne1, Antoine Simon1, Mireille Garreau1, Gilles Barone-Rochette2, Céline Fouard3
1Univ Rennes, Inserm, LTSI - UMR 1099, Rennes, 35000, France
2Clinic of Cardiology, Cardiovascular and Thoracic Department, University Hospital of Grenoble, Grenoble, 38000, France
3Univ. Grenoble Alpes, CNRS, UMR 5525, VetAgro Sup, Grenoble INP, TIMC, Grenoble, 38000, France

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