三维+时间超声心动图中具有分割能力的形状正则化无监督左心室运动网络。

Kevinminh Ta, Shawn S Ahn, John C Stendahl, Albert J Sinusas, James S Duncan
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引用次数: 1

摘要

从医学图像中对左心室进行准确的运动估计和分割是定量评价心血管健康的重要任务。超声心动图提供了一种低成本、无创的心脏检查方式,但由于超声成像固有的低信噪比,为自动分析带来了额外的挑战。在这项工作中,我们提出了一种形状正则化卷积神经网络,用于估计连续3D b型超声心动图图像之间的密集位移场,并具有预测左心室分割掩模的能力。手动跟踪的分割被用作指导,以协助源图像和目标图像之间的位移的无监督估计,同时也作为标签来训练网络,以额外预测分割。为了加强真实的心脏运动模式,还加入了流动不可压缩性项来惩罚分歧。我们提出的网络在犬体内3D+t b型超声心动图数据集上进行了评估。结果表明,形状正则化器提高了网络的运动估计性能,并且我们的整体模型比竞争方法表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SHAPE-REGULARIZED UNSUPERVISED LEFT VENTRICULAR MOTION NETWORK WITH SEGMENTATION CAPABILITY IN 3D+TIME ECHOCARDIOGRAPHY.

Accurate motion estimation and segmentation of the left ventricle from medical images are important tasks for quantitative evaluation of cardiovascular health. Echocardiography offers a cost-efficient and non-invasive modality for examining the heart, but provides additional challenges for automated analyses due to the low signal-to-noise ratio inherent in ultrasound imaging. In this work, we propose a shape regularized convolutional neural network for estimating dense displacement fields between sequential 3D B-mode echocardiography images with the capability of also predicting left ventricular segmentation masks. Manually traced segmentations are used as a guide to assist in the unsupervised estimation of displacement between a source and a target image while also serving as labels to train the network to additionally predict segmentations. To enforce realistic cardiac motion patterns, a flow incompressibility term is also incorporated to penalize divergence. Our proposed network is evaluated on an in vivo canine 3D+t B-mode echocardiographic dataset. It is shown that the shape regularizer improves the motion estimation performance of the network and our overall model performs favorably against competing methods.

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