Zhong Yutong, Piao Yan, Zhang Guohui
School of Electronic Information Engineering, Changchun University of Science and Technology, Changchun, China.
Pneumoconiosis Diagnosis and Treatment Center, Occupational Preventive and Treatment Hospital in Jilin Province, Changchun, China.
Microsc Res Tech. 2022 Apr;85(4):1248-1257. doi: 10.1002/jemt.23991. Epub 2021 Dec 3.
Breast cancer is one of the most common types of cancer in women, and histopathological imaging is considered the gold standard for its diagnosis. However, the great complexity of histopathological images and the considerable workload make this work extremely time-consuming, and the results may be affected by the subjectivity of the pathologist. Therefore, the development of an accurate, automated method for analysis of histopathological images is critical to this field. In this article, we propose a deep learning method guided by the attention mechanism for fast and effective classification of haematoxylin and eosin-stained breast biopsy images. First, this method takes advantage of DenseNet and uses the feature map's information. Second, we introduce dilated convolution to produce a larger receptive field. Finally, spatial attention and channel attention are used to guide the extraction of the most useful visual features. With the use of fivefold cross-validation, the best model obtained an accuracy of 96.47% on the BACH2018 dataset. We also evaluated our method on other datasets, and the experimental results demonstrated that our model has reliable performance. This study indicates that our histopathological image classifier with a soft attention-guided deep learning model for breast cancer shows significantly better results than the latest methods. It has great potential as an effective tool for automatic evaluation of digital histopathological microscopic images for computer-aided diagnosis.
乳腺癌是女性中最常见的癌症类型之一,组织病理学成像被认为是其诊断的金标准。然而,组织病理学图像的极大复杂性和相当大的工作量使得这项工作极其耗时,并且结果可能会受到病理学家主观性的影响。因此,开发一种准确、自动化的组织病理学图像分析方法对该领域至关重要。在本文中,我们提出了一种以注意力机制为导向的深度学习方法,用于对苏木精和伊红染色的乳腺活检图像进行快速有效的分类。首先,该方法利用DenseNet并使用特征图的信息。其次,我们引入空洞卷积以产生更大的感受野。最后,使用空间注意力和通道注意力来指导最有用视觉特征的提取。通过使用五折交叉验证,最佳模型在BACH2018数据集上获得了96.47%的准确率。我们还在其他数据集上评估了我们的方法,实验结果表明我们的模型具有可靠的性能。这项研究表明,我们的具有软注意力引导深度学习模型的乳腺癌组织病理学图像分类器比最新方法显示出明显更好的结果。作为一种用于计算机辅助诊断的数字组织病理学显微图像自动评估的有效工具,它具有巨大的潜力。