Breast Lesions Segmentation using Dual-level UNet (DL-UNet)

Yanjiao Zhao, Zhihui Lai, Linlin Shen, Heng Kong
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引用次数: 2

Abstract

Breast disease is one of the primary diseases endangering women's health. Accurate segmentation of breast lesions can help doctors diagnose breast diseases. However, the size and morphology of breast lesions are different, and the intensity of breast tissue is uneven. Thus, it is challenging to segment the lesion area accurately. In this paper, we propose Dual-scale Feature Fusion (DSFF) module and Edgeloss to segment breast lesions. The DSFF module aims to integrate two-scale features and design another effective skip connection scheme to reduce false positive regions. To solve the problem of unclear segmentation boundary, we design Edgeloss for additional supervision on the boundary region to obtain a finer segmentation boundary. The experiment results show that the proposed DL-UNet with the DSFF module and new Edgeloss performs best in several classic networks.
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基于双级UNet的乳腺病变分割
乳腺疾病是危害妇女健康的主要疾病之一。乳腺病变的准确分割可以帮助医生诊断乳腺疾病。然而,乳腺病变的大小和形态不同,乳腺组织的强度也不均匀。因此,准确分割病变区域是一项挑战。本文提出了双尺度特征融合(DSFF)模块和edge - loss对乳腺病变进行分割。DSFF模块旨在整合双尺度特征,设计另一种有效的跳接方案,以减少误报区域。为了解决分割边界不清晰的问题,我们设计了Edgeloss对边界区域进行额外的监督,以获得更精细的分割边界。实验结果表明,采用DSFF模块和新边缘损耗的DL-UNet在几种经典网络中表现最好。
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