Thalakottor Louie Antony, Shirwaikar Rudresh Deepak, Pothamsetti Pavan Teja, Mathews Lincy Meera
Department of Information Science and Engineering, Ramaiah Institute of Technology (RIT), 560054, India.
Department of Computer Engineering, Agnel Institute of Technology and Design (AITD), Goa University, Assagao, Goa, India, 403507.
Crit Rev Biomed Eng. 2023;51(4):41-62. doi: 10.1615/CritRevBiomedEng.2023047793.
Cancer, a leading cause of mortality, is distinguished by the multi-stage conversion of healthy cells into cancer cells. Discovery of the disease early can significantly enhance the possibility of survival. Histology is a procedure where the tissue of interest is first surgically removed from a patient and cut into thin slices. A pathologist will then mount these slices on glass slides, stain them with specialized dyes like hematoxylin and eosin (H&E), and then inspect the slides under a microscope. Unfortunately, a manual analysis of histopathology images during breast cancer biopsy is time consuming. Literature suggests that automated techniques based on deep learning algorithms with artificial intelligence can be used to increase the speed and accuracy of detection of abnormalities within the histopathological specimens obtained from breast cancer patients. This paper highlights some recent work on such algorithms, a comparative study on various deep learning methods is provided. For the present study the breast cancer histopathological database (BreakHis) is used. These images are processed to enhance the inherent features, classified and an evaluation is carried out regarding the accuracy of the algorithm. Three convolutional neural network (CNN) models, visual geometry group (VGG19), densely connected convolutional networks (DenseNet201), and residual neural network (ResNet50V2), were employed while analyzing the images. Of these the DenseNet201 model performed better than other models and attained an accuracy of 91.3%. The paper includes a review of different classification techniques based on machine learning methods including CNN-based models and some of which may replace manual breast cancer diagnosis and detection.
癌症是主要的致死原因之一,其特征是健康细胞向癌细胞的多阶段转变。早期发现这种疾病可显著提高生存几率。组织学是一种先从患者身上手术切除感兴趣的组织并切成薄片的程序。然后病理学家会将这些切片安装在载玻片上,用苏木精和伊红(H&E)等特殊染料进行染色,接着在显微镜下检查玻片。不幸的是,乳腺癌活检期间对组织病理学图像进行人工分析非常耗时。文献表明,基于带有人工智能的深度学习算法的自动化技术可用于提高从乳腺癌患者获取的组织病理学标本中异常检测的速度和准确性。本文重点介绍了此类算法的一些最新研究成果,并对各种深度学习方法进行了比较研究。本研究使用了乳腺癌组织病理学数据库(BreakHis)。对这些图像进行处理以增强其固有特征,进行分类,并对算法的准确性进行评估。在分析图像时采用了三种卷积神经网络(CNN)模型,即视觉几何组(VGG19)、密集连接卷积网络(DenseNet201)和残差神经网络(ResNet50V2)。其中,DenseNet201模型表现优于其他模型,准确率达到了91.3%。本文还回顾了基于机器学习方法的不同分类技术,包括基于CNN的模型,其中一些可能会取代乳腺癌的人工诊断和检测。