Sarah Leclerc, Pierre-Marc Jodoin, L. Løvstakken, O. Bernard, E. Smistad, T. Grenier, C. Lartizien, A. Ostvik, F. Cervenansky, F. Espinosa, T. Espeland, Erik Andreas Rye Berg
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引用次数: 21
Abstract
In this work, we present a novel attention mechanism to refine the segmentation of the endocardium and epicardium in 2D echocardiography. A combination of two U-Nets is used to derive a region of interest in the image before the segmentation. By relying on parameterised sigmoids to perform thresholding operations, the full pipeline is trainable end-to-end. The Refining U-Net (RU-Net) architecture is evaluated on the CAMUS dataset, comprising 2000 annotated images from the apical 2 and 4 chamber views of 500 patients. Although geometrical scores are only marginally improved, the reduction in outlier predictions (from 20% to 16%) supports the interest of such approach.