Doctoral School, University of Medicine and Pharmacy of Craiova, 2-4 Petru Rareș Street, 200349, Craiova, Romania.
Department of Radiology and Medical Imaging, Emergency Clinical County Hospital of Craiova, 1 Tabaci Street, 200642, Craiova, Romania.
J Digit Imaging. 2021 Oct;34(5):1190-1198. doi: 10.1007/s10278-021-00508-4. Epub 2021 Sep 10.
The objective of the study was to determine if the pathology depicted on a mammogram is either benign or malignant (ductal or non-ductal carcinoma) using deep learning and artificial intelligence techniques. A total of 559 patients underwent breast ultrasound, mammography, and ultrasound-guided breast biopsy. Based on the histopathological results, the patients were divided into three categories: benign, ductal carcinomas, and non-ductal carcinomas. The mammograms in the cranio-caudal view underwent pre-processing and segmentation. Given the large variability of the areola, an algorithm was used to remove it and the adjacent skin. Therefore, patients with breast lesions close to the skin were removed. The remaining breast image was resized on the Y axis to a square image and then resized to 512 × 512 pixels. A variable square of 322,622 pixels was searched inside every image to identify the lesion. Each image was rotated with no information loss. For data augmentation, each image was rotated 360 times and a crop of 227 × 227 pixels was saved, resulting in a total of 201,240 images. The reason why our images were cropped at this size is because the deep learning algorithm transfer learning used from AlexNet network has an input image size of 227 × 227. The mean accuracy was 95.8344% ± 6.3720% and mean AUC 0.9910% ± 0.0366%, computed on 100 runs of the algorithm. Based on the results, the proposed solution can be used as a non-invasive and highly accurate computer-aided system based on deep learning that can classify breast lesions based on changes identified on mammograms in the cranio-caudal view.
本研究旨在利用深度学习和人工智能技术,确定乳腺 X 光片中的病变是良性还是恶性(导管癌或非导管癌)。共有 559 名患者接受了乳腺超声、乳腺 X 光和超声引导下的乳腺活检。根据组织病理学结果,患者分为三类:良性、导管癌和非导管癌。头尾位的乳腺 X 光片进行了预处理和分割。由于乳晕的变化很大,因此使用了一种算法来去除乳晕和相邻的皮肤。因此,去除了靠近皮肤的乳腺病变患者。剩余的乳腺图像在 Y 轴上缩放到正方形图像,然后缩放到 512×512 像素。在每个图像中搜索一个 322,622 像素的可变正方形以识别病变。每个图像都在不丢失信息的情况下旋转。为了进行数据扩充,每个图像旋转 360 度,并保存 227×227 像素的裁剪图像,总共得到 201,240 张图像。我们裁剪图像的大小为 227×227 的原因是,来自 AlexNet 网络的深度学习算法迁移学习使用的输入图像大小为 227×227。在算法的 100 次运行中,平均准确率为 95.8344%±6.3720%,平均 AUC 为 0.9910%±0.0366%。基于这些结果,所提出的解决方案可以作为一种基于深度学习的非侵入性、高度准确的计算机辅助系统,可根据头尾位乳腺 X 光片中识别的变化对乳腺病变进行分类。