3D late gadolinium enhanced (LGE) CMR images of left atrial (LA) scar tissue can be used to stratify patients with atrial fibrillation and to guide subsequent ablation therapy. This requires a segmentation of the LA anatomy (usually from an anatomical acquisition) and a further segmentation of the scar tissue within the LA (from a 3D LGE acquisition). We propose a deep learning based framework incorporating multiview information and attention mechanism to solve both LA anatomy and scar segmentations simultaneously from a single 3D LGE acquisition. Compared to existing methods, we show improved segmentation accuracy (mean Dice=93%/87% for LA/scar).
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