基于全卷积深度学习网络和语义分割的乳腺超声恶性属性识别

S. Ahila, M. Geetha, S. Ramesh, C. Senthilkumar, N. P
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引用次数: 0

摘要

乳腺超声检查是一种用于检测和分类乳腺恶性肿瘤的非放射成像技术。个人对它的不良症状的发生率最低,并且结合治疗程序很简单。本研究使用全卷积深度学习网络从乳腺超声图像中提取特征,以识别乳腺成像和数据系统术语的不同特征。这反过来又简化了将肿瘤分为良性或恶性的过程。使用BI-RADS词汇表,378张乳房超声图像被分析,并从中发现了7个潜在的癌症特征。特征提取的平均准确率和平均IU分别为32.82%和28.88%。曲线下面积和归一化连接在union上的结果均高于使用相同数据范围的等效特征提取连接(如SegNet和U-Net)所获得的结果。ROC曲线下面积为89.47%,白色邦联上方的分级互连面积为85.35%。通过利用超声检查筛查乳腺癌,拟议的研究表明,将深度学习网络与BI-RADS术语结合使用作为一种实质性的补充诊断工具是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Malignant Attributes in Breast Ultrasound using a Fully Convolutional Deep Learning Network and Semantic Segmentation
Breast ultrasonography is a non-radiation imaging technology that is used to detect and categorize breast malignancies. Individuals have a minimal prevalence of adverse symptoms to it, and it is simple to incorporate therapeutic procedures. The proposed study has used a fully convolutional deep learning network to extract features from breast ultrasound images in order to identify different characteristics of breast imaging and data system terminology. This in turn simplify the procedure of categorizing tumors as benign or malignant. Using the BI-RADS vocabulary, 378 breast ultrasound images are analyzed and from that seven potentially cancerous characteristics are discovered. The mean accuracy and mean IU for the feature extraction are 32.82% and 28.88% respectively. Both the area under the curve and the normalized interconnection over union were observed to be higher than the results obtained by the equivalent feature extraction connections such as SegNet and U-Net by using the same range of data. The area under ROC curve has been 89.47% as well as the graded interconnection placed above a white confederation was 85.35%. By utilizing the ultrasonography to screen for breast cancer, the proposed research study suggests that it would be beneficial to make use of a deep learning network in conjunction with the BI-RADS terminology as a substantial supplementary diagnostic tool.
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