Manipal School of Information Sciences, Manipal Academy of Higher Education, Manipal, India.
Manipal School of Information Sciences, Manipal Academy of Higher Education, Manipal, India.
Artif Intell Med. 2021 Nov;121:102191. doi: 10.1016/j.artmed.2021.102191. Epub 2021 Oct 12.
Breast cancer among women is the second most common cancer worldwide. Non-invasive techniques such as mammograms and ultrasound imaging are used to detect the tumor. However, breast histopathological image analysis is inevitable for the detection of malignancy of the tumor. Manual analysis of breast histopathological images is subjective, tedious, laborious and is prone to human errors. Recent developments in computational power and memory have made automation a popular choice for the analysis of these images. One of the key challenges of breast histopathological image classification at 100× magnification is to extract the features of the potential regions of interest to decide on the malignancy of the tumor. The current state-of-the-art CNN based methods for breast histopathological image classification extract features from the entire image (global features) and thus may overlook the features of the potential regions of interest. This can lead to inaccurate diagnosis of breast histopathological images. This research gap has motivated us to propose BCHisto-Net to classify breast histopathological images at 100× magnification. The proposed BCHisto-Net extracts both global and local features required for the accurate classification of breast histopathological images. The global features extract abstract image features while local features focus on potential regions of interest. Furthermore, a feature aggregation branch is proposed to combine these features for the classification of 100× images. The proposed method is quantitatively evaluated on red a private dataset and publicly available BreakHis dataset. An extensive evaluation of the proposed model showed the effectiveness of the local and global features for the classification of these images. The proposed method achieved an accuracy of 95% and 89% on KMC and BreakHis datasets respectively, outperforming state-of-the-art classifiers.
在全球范围内,女性乳腺癌是第二大常见癌症。人们采用非侵入性技术,如乳房 X 光照片和超声成像,来检测肿瘤。然而,为了检测肿瘤的恶性程度,对乳腺组织病理学图像进行分析是不可避免的。手动分析乳腺组织病理学图像具有主观性、繁琐、费力且容易出现人为错误。由于计算能力和内存的最新发展,自动化已成为这些图像分析的热门选择。在 100×放大倍数下对乳腺组织病理学图像进行分类的主要挑战之一是提取潜在感兴趣区域的特征,以确定肿瘤的恶性程度。目前基于卷积神经网络的乳腺组织病理学图像分类方法从整个图像(全局特征)中提取特征,因此可能会忽略潜在感兴趣区域的特征。这可能导致乳腺组织病理学图像的诊断不准确。为了解决这一研究空白,我们提出了 BCHisto-Net,用于在 100×放大倍数下对乳腺组织病理学图像进行分类。所提出的 BCHisto-Net 提取了准确分类乳腺组织病理学图像所需的全局和局部特征。全局特征提取抽象图像特征,而局部特征则关注潜在的感兴趣区域。此外,还提出了一个特征聚合分支,用于对 100×图像进行分类。在一个私人数据集和一个公开的 BreakHis 数据集上对所提出的方法进行了定量评估。对所提出模型的广泛评估表明,局部和全局特征对于这些图像的分类非常有效。该方法在 KMC 和 BreakHis 数据集上的准确率分别达到了 95%和 89%,优于最先进的分类器。