SEGMENTATION OF CANCER MASSES ON BREAST ULTRASOUND IMAGES USING MODIFIED U-NET

Q4 Engineering
Ihssane Khallassi, My Hachem El Yousfi Alaoui, Abdelilah Jilbab
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引用次数: 0

Abstract

Breast cancer causes a huge number of women’s deaths every year. The accurate localization of a breast lesion is a crucial stage. The segmentation of breast ultrasound images participates in the improvement of the process of detection of breast anomalies. An automatic approach of segmentation of breast ultrasound images is presented in this paper, the proposed model is a modified u-net called Attention Residual U-net, designed to help radiologists in their clinical examination to determine adequately the limitation of breast tumors. Attention Residual U-net is a combination of existing models (Convolutional Neural Network U-net, the Attention Gate Mechanism and the Residual Neural Network). Public breast ultrasound images dataset of Baheya hospital in Egypt is used in this work. Dice coefficient, Jaccard index and Accuracy are used to evaluate the performance of the proposed model on the test set. Attention residual u-net can significantly give a dice coefficient = 90%, Jaccard index = 76% and Accuracy = 90%. The proposed model is compared with two other breast segmentation methods on the same dataset. The results show that the modified U-net model was able to achieve accurate segmentation of breast lesions in breast ultrasound images.
基于改进u-net的乳腺超声图像癌块分割
乳腺癌每年导致大量妇女死亡。乳腺病变的准确定位是至关重要的一步。乳房超声图像的分割参与了乳房异常检测过程的改进。本文提出了一种乳腺超声图像的自动分割方法,该模型是一种改进的u-net模型,称为注意残留u-net模型,旨在帮助放射科医生在临床检查中充分确定乳腺肿瘤的局限性。注意残差U-net是现有模型(卷积神经网络U-net、注意门机制和残差神经网络)的组合。在这项工作中使用了埃及Baheya医院的公共乳房超声图像数据集。使用骰子系数、Jaccard指数和准确率来评估该模型在测试集上的性能。注意剩余u-net可以显著地给出骰子系数= 90%,Jaccard指数= 76%和准确率= 90%。将该模型与同一数据集上的其他两种乳房分割方法进行了比较。结果表明,改进的U-net模型能够实现乳腺超声图像中乳腺病变的准确分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
40
审稿时长
10 weeks
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