Breast lesions segmentation is an important step of computer-aided diagnosis system, and it has attracted much attention. However, accurate segmentation of malignant breast lesions is a challenging task due to the effects of heterogeneous structure and similar intensity distributions. In this paper, a novel bidirectional aware guidance network (BAGNet) is proposed to segment the malignant lesion from breast ultrasound images. Specifically, the bidirectional aware guidance network is used to capture the context between global (low-level) and local (high-level) features from the input coarse saliency map. The introduction of the global feature map can reduce the interference of surrounding tissue (background) on the lesion regions. To evaluate the segmentation performance of the network, we compared with several state-of-the-art medical image segmentation methods on the public breast ultrasound dataset using six commonly used evaluation metrics. Extensive experimental results indicate that our method achieves the most competitive segmentation results on malignant breast ultrasound images.
翻译:乳腺损伤分割是计算机辅助诊断系统的重要一步,引起了人们的极大关注。然而,恶性乳腺损伤的精确分割是一项具有挑战性的任务,因为不同结构和类似强度分布的影响。在本文件中,建议建立一个新的双向认知指导网络(BAGNet),对乳房超声波图像的恶性损伤进行分解。具体地说,双向认知指导网络用于从输入的粗略显眼图中捕捉全球(低层次)和本地(高层次)特征之间的背景。引入全球特征图可以减少周围组织(背面)对损伤区域的干扰。为了评估网络的分解性能,我们与使用六种常用的评价指标在公共乳房超声波数据集中采用的一些最先进的医学分解方法进行了比较。广泛的实验结果表明,我们的方法在恶性乳超声图中取得了最具竞争性的分解结果。