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Semantic segmentation of breast ultrasound image with fuzzy deep learning network and breast anatomy constraints

机译:模糊深度学习网络和乳房解剖结构的乳房超声图像的语义分割

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摘要

Breast cancer is one of the most serious disease affecting women & rsquo;s health. Due to low cost, portable, no radiation, and high efficiency, breast ultrasound (BUS) imaging is the most popular approach for diagnosing early breast cancer. However, ultrasound images are low resolution and poor quality. Thus, developing accurate detection system is a challenging task. In this paper, we propose a fully automatic segmentation algorithm consisting of two parts: fuzzy fully convolutional network and accurately fine-tuning post-processing based on breast anatomy constraints. In the first part, the image is pre-processed by contrast enhancement, and wavelet features are employed for image augmentation. A fuzzy membership function transforms the augmented BUS images into the fuzzy domain. The features from convolutional layers are processed using fuzzy logic as well. The conditional random fields (CRFs) post-process the segmentation result. The location relation among the breast anatomy layers is utilized to improve the performance. The proposed method is applied to the dataset with 325 BUS images, and achieves state-of-the-art performance compared with that of existing methods with true positive rate 90.33%, false positive rate 9.00%, and intersection over union (IoU) 81.29% on tumor category, and overall intersection over union (mIoU) 80.47% over five categories: fat layer, mammary layer, muscle layer, background, and tumor.(c) 2021 Elsevier B.V. All rights reserved.
机译:乳腺癌是影响女性和rsquo的最严重的疾病之一。由于成本低,便携式,无辐射和高效率,乳房超声(总线)成像是诊断早期乳腺癌最流行的方法。但是,超声图像是低分辨率和质量差。因此,发育准确的检测系统是一个具有挑战性的任务。在本文中,我们提出了一种由两部分组成的全自动分割算法:模糊完全卷积网络,基于乳房解剖结构的准确微调后处理。在第一部分中,通过对比度增强预先处理图像,并且使用小波特征用于图像增强。模糊员工函数将增强的总线图像转换为模糊域。卷积层的特征也是使用模糊逻辑处理的。条件随机字段(CRFS)后处理分段结果。乳房解剖层之间的位置关系用于提高性能。该方法应用于具有325母线图像的数据集,与现有方法的现有方法实现了最先进的性能90.33%,假阳性率为9.00%,以及联盟(iou)81.29肿瘤类别的百分比,以及联盟(Miou)的整体交叉口(Miou)80.47%超过五类:脂肪层,乳房层,肌肉层,背景和肿瘤。(c)2021 Elsevier BV保留所有权利。

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