Carotid arteries vulnerable plaques are a crucial factor in the screening of atherosclerosis by ultrasound technique. However, the plaques are contaminated by various noises such as artifact, speckle noise, and manual segmentation may be time-consuming. This paper proposes an automatic convolutional neural network (CNN) method for plaque segmentation in carotid ultrasound images using a small dataset. First, a parallel network with three independent scale decoders is utilized as our base segmentation network, pyramid dilation convolutions are used to enlarge receptive fields in the three segmentation sub-networks. Subsequently, the three decoders are merged to be rectified in channels by SENet. Thirdly, in test stage, the initially segmented plaque is refined by the max contour morphology post-processing to obtain the final plaque. Moreover, three loss function Dice loss, SSIM loss and cross-entropy loss are compared to segment plaques. Test results show that the proposed method with dice loss function yields a Dice value of 0.820, an IoU of 0.701, Acc of 0.969, and modified Hausdorff distance (MHD) of 1.43 for 30 vulnerable cases of plaques, it outperforms some of the conventional CNN-based methods on these metrics. Additionally, we apply an ablation experiment to show the validity of each proposed module. Our study provides some reference for similar researches and may be useful in actual applications for plaque segmentation of ultrasound carotid arteries.
翻译:在通过超声波技术筛选出超声波分解器时,木卫一动动脉脆弱红动图解剖术是一个关键因素,但是,这些红砖受到各种噪音的污染,如人工制品、分角噪音和人工分解等,可能耗时。本文建议使用一个小数据集,在木卫二超声图中,自动形成一个变形神经网络(CNN),用于在木卫二超声波图像中进行分解。首先,使用一个具有三个独立比例脱色器的平行网络作为我们的基础分解网,使用金字形变形变形来扩大三个分解器的接收场。随后,三个解形变形器将合并,由Senet在频道中进行纠正。第三,在试验阶段,最初的分层红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外红外的红外红外红外图和红外红外红外红外红外红外红外红外红外红外红外红外图。在红外红外红外红外红外红外的图和红外红外红外红外红外红外红外红外红外红外红外的颜色图和红外的图上红外的图和红外红外的图解解阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵阵列。