Zafar Amad, Tanveer Jawad, Ali Muhammad Umair, Lee Seung Won
Department of Intelligent Mechatronics Engineering, Sejong University, Seoul 05006, Republic of Korea.
Department of Computer Science and Engineering, Sejong University, Seoul 05006, Republic of Korea.
Bioengineering (Basel). 2023 Jul 11;10(7):825. doi: 10.3390/bioengineering10070825.
Early detection of breast lesions and distinguishing between malignant and benign lesions are critical for breast cancer (BC) prognosis. Breast ultrasonography (BU) is an important radiological imaging modality for the diagnosis of BC. This study proposes a BU image-based framework for the diagnosis of BC in women. Various pre-trained networks are used to extract the deep features of the BU images. Ten wrapper-based optimization algorithms, including the marine predator algorithm, generalized normal distribution optimization, slime mold algorithm, equilibrium optimizer (EO), manta-ray foraging optimization, atom search optimization, Harris hawks optimization, Henry gas solubility optimization, path finder algorithm, and poor and rich optimization, were employed to compute the optimal subset of deep features using a support vector machine classifier. Furthermore, a network selection algorithm was employed to determine the best pre-trained network. An online BU dataset was used to test the proposed framework. After comprehensive testing and analysis, it was found that the EO algorithm produced the highest classification rate for each pre-trained model. It produced the highest classification accuracy of 96.79%, and it was trained using only a deep feature vector with a size of 562 in the ResNet-50 model. Similarly, the Inception-ResNet-v2 had the second highest classification accuracy of 96.15% using the EO algorithm. Moreover, the results of the proposed framework are compared with those in the literature.
早期检测乳腺病变并区分恶性和良性病变对乳腺癌(BC)的预后至关重要。乳腺超声检查(BU)是诊断BC的一种重要放射成像方式。本研究提出了一种基于BU图像的女性BC诊断框架。使用各种预训练网络来提取BU图像的深度特征。十种基于包装器的优化算法,包括海洋捕食者算法、广义正态分布优化、黏液霉菌算法、平衡优化器(EO)、蝠鲼觅食优化、原子搜索优化、哈里斯鹰优化、亨利气体溶解度优化、路径查找算法以及贫富优化,被用于使用支持向量机分类器计算深度特征的最优子集。此外,采用了一种网络选择算法来确定最佳的预训练网络。使用一个在线BU数据集来测试所提出的框架。经过全面测试和分析,发现EO算法对每个预训练模型产生的分类率最高。它产生了96.79%的最高分类准确率,并且仅使用ResNet-50模型中大小为562的深度特征向量进行训练。同样,使用EO算法时,Inception-ResNet-v2的分类准确率第二高,为96.15%。此外,将所提出框架的结果与文献中的结果进行了比较。