使用深度卷积神经网络和相位一致性图的颈动脉超声自动分割

Carl Azzopardi, Y. Hicks, K. Camilleri
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引用次数: 24

摘要

颈动脉中膜-外膜和管腔-内膜边界的分割是超声成像中评估斑块形态的重要组成部分。手工分割方法繁琐且易发生变化,因此,开发自动分割算法是可取的。在本文中,我们建议使用深度卷积网络在颈动脉超声图像的横切面和纵切面上自动分割中膜-外膜边界。深度网络最近在图像分割任务上取得了很好的成功,因此我们提出了它们在超声数据上的应用,使用编码器-解码器卷积结构,允许网络端到端进行逐像素分类训练。同时,我们评估了网络中各种配置、深度和过滤器大小的性能。此外,我们进一步提出了一种新的包络和相位一致性数据融合作为网络的输入,因为后者为网络提供了一个强度不变的数据源。我们表明,这种数据融合和提出的网络结构比最先进的技术产生更高的分割性能。
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Automatic Carotid ultrasound segmentation using deep Convolutional Neural Networks and phase congruency maps
The segmentation of media-adventitia and lumen-intima boundaries of the Carotid Artery forms an essential part in assessing plaque morphology in Ultrasound Imaging. Manual methods are tedious and prone to variability and thus, developing automated segmentation algorithms is preferable. In this paper, we propose to use deep convolutional networks for automated segmentation of the media-adventitia boundary in transverse and longitudinal sections of carotid ultrasound images. Deep networks have recently been employed with good success on image segmentation tasks, and we thus propose their application on ultrasound data, using an encoder-decoder convolutional structure which allows the network to be trained end-to-end for pixel-wise classification. Concurrently, we evaluate the performance for various configurations, depths and filter sizes within the network. In addition, we further propose a novel fusion of envelope and phase congruency data as an input to the network, as the latter provides an intensity-invariant data source to the network. We show that this data fusion and the proposed network structure yields higher segmentation performance than the state-of-the-art techniques.
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