A multi-atlas propagation based whole heart segmentation augmented by semi-automated manual strokes for pulmonary vein identification achieved an overall mean Dice score of 0.91.
A multi-atlas propagation method augmented by semi-automated strokes provides accurate segmentation of the left atrium and pulmonary veins from LGE CMRI.
Late Gadolinium-Enhanced Cardiac MRI (LGE CMRI) is a non-invasive technique, which has shown promise in detecting native and post-ablation atrial scarring. To visualize the scarring, a precise segmentation of the left atrium (LA) and pulmonary veins (PVs) anatomy is performed as a first step—usually from an ECG gated CMRI roadmap acquisition—and the enhanced scar regions from the LGE CMRI images are superimposed. The anatomy of the LA and PVs in particular is highly variable and manual segmentation is labor intensive and highly subjective. In this paper, we developed a multi-atlas propagation based whole heart segmentation (WHS) to delineate the LA and PVs from ECG gated CMRI roadmap scans. While this captures the anatomy of the atrium well, the PVs anatomy is less easily visualized. The process is therefore augmented by semi-automated manual strokes for PVs identification in the registered LGE CMRI data. This allows us to extract more accurate anatomy than the fully automated WHS. Both qualitative visualization and quantitative assessment with respect to manual segmented ground truth showed that our method is efficient and effective with an overall mean Dice score of 0.91.
Yang et al. (Fri,) conducted a other in Atrial scarring. Multi-atlas propagation based whole heart segmentation augmented by semi-automated manual strokes vs. Manual segmented ground truth was evaluated on Overall mean Dice score. A multi-atlas propagation based whole heart segmentation augmented by semi-automated manual strokes for pulmonary vein identification achieved an overall mean Dice score of 0.91.
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