Faculdade de Ciências, Instituto de Biofísica e Engenharia Biomédica, Universidade de Lisboa, 1749-016 Lisboa, Portugal.
Faculdade de Ciências, LASIGE, Universidade de Lisboa, 1749-016 Lisboa, Portugal.
Tomography. 2023 Feb 14;9(1):398-412. doi: 10.3390/tomography9010032.
Breast cancer was the most diagnosed cancer around the world in 2020. Screening programs, based on mammography, aim to achieve early diagnosis which is of extreme importance when it comes to cancer. There are several flaws associated with mammography, with one of the most important being tissue overlapping that can result in both lesion masking and fake-lesion appearance. To overcome this, digital breast tomosynthesis takes images (slices) at different angles that are later reconstructed into a 3D image. Having in mind that the slices are planar images where tissue overlapping does not occur, the goal of the work done here was to develop a deep learning model that could, based on the said slices, classify lesions as benign or malignant. The developed model was based on the work done by Muduli et. al, with a slight change in the fully connected layers and in the regularization done. In total, 77 DBT volumes-39 benign and 38 malignant-were available. From each volume, nine slices were taken, one where the lesion was most visible and four above/below. To increase the quantity and the variability of the data, common data augmentation techniques (rotation, translation, mirroring) were applied to the original images three times. Therefore, 2772 images were used for training. Data augmentation techniques were then applied two more times-one set used for validation and one set used for testing. Our model achieved, on the testing set, an accuracy of 93.2% while the values of sensitivity, specificity, precision, F1-score, and Cohen's kappa were 92%, 94%, 94%, 94%, and 0.86, respectively. Given these results, the work done here suggests that the use of single-slice DBT can compare to state-of-the-art studies and gives a hint that with more data, better augmentation techniques and the use of transfer learning might overcome the use of mammograms in this type of studies.
2020 年,乳腺癌是全球最常见的癌症。基于乳房 X 光摄影术的筛查计划旨在实现早期诊断,这在癌症方面至关重要。乳房 X 光摄影术存在一些缺陷,其中最重要的是组织重叠,这可能导致病灶遮蔽和假病灶出现。为了克服这一问题,数字乳腺断层合成术会从不同角度拍摄图像(切片),然后将这些切片重建为 3D 图像。由于切片是不存在组织重叠的平面图像,因此这里的工作目标是开发一种深度学习模型,该模型可以根据这些切片将病灶分类为良性或恶性。所开发的模型基于 Muduli 等人的工作,在全连接层和正则化方面做了一些小的改变。总共提供了 77 个 DBT 体层-39 个良性和 38 个恶性。从每个体层中取出 9 个切片,一个是病灶最明显的位置,另外 4 个在其上下方。为了增加数据的数量和多样性,将常见的数据增强技术(旋转、平移、镜像)应用于原始图像三次。因此,使用了 2772 张图像进行训练。然后,再将数据增强技术应用两次,一次用于验证,一次用于测试。我们的模型在测试集上的准确率达到了 93.2%,而敏感性、特异性、精确性、F1 评分和 Cohen's kappa 的值分别为 92%、94%、94%、94%和 0.86。考虑到这些结果,这里的工作表明,使用单次切片 DBT 可以与最先进的研究相媲美,并暗示通过使用更多的数据、更好的数据增强技术和迁移学习,可以克服在这种类型的研究中使用乳房 X 光摄影术的问题。