Machine Vision and Intelligence Lab, Department of Computer Science and Engineering, National Institute of Technology, Jamshedpur 831014, India.
Digital Image and Signal Processing Laboratory, School of Electrical and Computer Engineering, Technical University of Crete, 73100 Crete, Greece.
Int J Environ Res Public Health. 2022 Feb 14;19(4):2159. doi: 10.3390/ijerph19042159.
Breast cancer is the most common cancer in women worldwide. It is the most frequently diagnosed cancer among women in 140 countries out of 184 reporting countries. Lesions of breast cancer are abnormal areas in the breast tissues. Various types of breast cancer lesions include (1) microcalcifications, (2) masses, (3) architectural distortion, and (4) bilateral asymmetry. Microcalcification can be classified as benign, malignant, and benign without a callback. In the present manuscript, we propose an automatic pipeline for the detection of various categories of microcalcification. We performed deep learning using convolution neural networks (CNNs) for the automatic detection and classification of all three categories of microcalcification. CNN was applied using four different optimizers (ADAM, ADAGrad, ADADelta, and RMSProp). The input images of a size of 299 × 299 × 3, with fully connected RELU and SoftMax output activation functions, were utilized in this study. The feature map was obtained using the pretrained InceptionResNetV2 model. The performance evaluation of our classification scheme was tested on a curated breast imaging subset of the DDSM mammogram dataset (CBIS-DDSM), and the results were expressed in terms of sensitivity, specificity, accuracy, and area under the curve (AUC). Our proposed classification scheme outperforms the ability of previously used deep learning approaches and classical machine learning schemes.
乳腺癌是全球女性最常见的癌症。在 184 个报告国家中的 140 个国家中,乳腺癌是女性中最常被诊断出的癌症。乳腺癌病变是乳房组织中的异常区域。各种类型的乳腺癌病变包括 (1) 微钙化、(2) 肿块、(3) 结构扭曲和 (4) 双侧不对称。微钙化可分为良性、恶性和良性无回调。在本手稿中,我们提出了一种用于检测各种类型微钙化的自动流水线。我们使用卷积神经网络 (CNN) 进行深度学习,用于自动检测和分类所有三类微钙化。CNN 使用了四种不同的优化器 (ADAM、ADAGrad、ADADelta 和 RMSProp)。输入图像大小为 299×299×3,具有全连接 RELU 和 SoftMax 输出激活函数,本研究中使用了该图像。使用预训练的 InceptionResNetV2 模型获得特征图。我们的分类方案的性能评估在 DDSM 乳房 X 光片数据集的经过精心整理的乳房成像子集中进行测试,并以灵敏度、特异性、准确性和曲线下面积 (AUC) 表示结果。我们提出的分类方案优于以前使用的深度学习方法和经典机器学习方案的能力。