A deep supervised transformer U‐shaped full‐resolution residual network for the segmentation of breast ultrasound image

Author:

Zhou Jiale1,Hou Zuoxun2,Lu Hongyan1,Wang Wenhan1,Zhao Wanchen1,Wang Zenan3,Zheng Dezhi4,Wang Shuai5,Tang Wenzhong5,Qu Xiaolei1

Affiliation:

1. School of Instrumentation and Optoelectronics Engineering Beihang University Beijing China

2. Beijing Institute of Mechanics & Electricity Beijing China

3. Department of Gastroenterology, Beijing Chaoyang Hospital Capital Medical University Beijing China

4. Research Institute for Frontier Science Beihang University Beijing China

5. School of Computer Science and Engineering Beihang University Beijing China

Abstract

AbstractPurposeBreast ultrasound (BUS) is an important breast imaging tool. Automatic BUS image segmentation can measure the breast tumor size objectively and reduce doctors’ workload. In this article, we proposed a deep supervised transformer U‐shaped full‐resolution residual network (DSTransUFRRN) to segment BUS images.MethodsIn the proposed method, a full‐resolution residual stream and a deep supervision mechanism were introduced into TransU‐Net. The residual stream can keep full resolution features from different levels and enhance features fusion. Then, the deep supervision can suppress gradient dispersion. Moreover, the transformer module can suppress irrelevant features and improve feature extraction process. Two datasets (dataset A and B) were used for training and evaluation. The dataset A included 980 BUS image samples and the dataset B had 163 BUS image samples.ResultsCross‐validation was conducted. For the dataset A, the proposed DSTransUFRRN achieved significantly higher Dice (91.04 ± 0.86%) than all compared methods (p < 0.05). For the dataset B, the Dice was lower than that for the dataset A due to the small number of samples, but the Dice of DSTransUFRRN (88.15% ± 2.11%) was significantly higher than that of other compared methods (p < 0.05).ConclusionsIn this study, we proposed DSTransUFRRN for BUS image segmentation. The proposed methods achieved significantly higher accuracy than the compared previous methods.

Publisher

Wiley

Subject

General Medicine

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