In the use of Artificial Intelligence and Hyperspectral Imaging in Digital Pathology for Breast Cancer Cell Identification

被引:0
作者
Quintana, Laura [1 ]
Ortega, Samuel [1 ,2 ]
Leon, Raquel [1 ]
Fabelo, Himar [1 ,3 ]
Balea-Fernandez, Francisco J. [4 ]
Sauras, Esther [5 ,6 ]
Lejeune, Marylene [5 ,6 ]
Bosch, Ramon [5 ,6 ]
Lopez, Carlos [5 ,6 ]
Callico, Gustavo M. [1 ]
机构
[1] Univ Las Palmas Gran Canaria, Inst Appl Microelect, Las Palmas Gran Canaria, Spain
[2] Norwegian Inst Food Fisheries & Aquaculture Res, Notima, Tromso, Norway
[3] Inst Invest Sanitaria Canarias IISC, Madrid, Spain
[4] Univ Las Palmas Gran Canaria, Dept Psychol Sociol & Social Work, Las Palmas Gran Canaria, Spain
[5] Hosp Tortosa Verge Cinta, IISPV, ICS, Dept Pathol, Tortosa, Spain
[6] Univ Rovira & Virgili, Tortosa, Spain
来源
MEDICAL IMAGING 2022: DIGITAL AND COMPUTATIONAL PATHOLOGY | 2022年 / 12039卷
关键词
Hyperspectral microscopy; whole-slide; digital pathology; artificial intelligence; breast cancer;
D O I
10.1117/12.2611419
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Hyperspectral (HS) imaging (HSI) is a novel technique that allows a better understanding of materials, being an improvement respect to other imaging modalities in multiple applications. Specifically, HSI technology applied to breast cancer histology, could significantly reduce the time of tumor diagnosis at the histopathology department. First, histological samples from twelve different breast cancer patients have been prepared and examined. Second, they were digitally scanned, using RGB (Red-Green-Blue) whole-slide imaging, and further annotated at cell level. Then, the annotated regions were captured with an HS microscopic acquisition system at 20x magnification, covering the 400-1000 nm spectral range. The HS data was registered (through synthetic RGB images) to the whole-slide images, allowing the transfer of accurate annotations made by pathologists to the HS image and extract each annotated cell from such image. Then, both spectral and spatial-spectral classifications were carried out to automatically detect tumor cells from the rest of the coexisting cells in the breast tissue (fibroblasts and lymphocytes). In this work, different supervised classifiers have been employed, namely kNN (k-Nearest-Neighbors), Random Forest, DNN (Deep Neural Network), Support Vector Machines (SVM) and CNN (Convolutional Neural Network). Test results for tumor cells vs. fibroblast classification show that the kNN performed with the best sensitivity/specificity (64/52%) trade-off and the CNN achieved the best sensitivity and AUC results (96% and 0.91, respectively). Moreover, at the tumor cells vs. lymphocyte classification, kNN also provided the best sensitivity-specificity ratio ( 58.47/58.86%) and an F1-score of 74.12%. The SVM algorithm also provided a high F-score result (70.38%). In conclusion, several machine learning algorithms provide promising results for cell classification in breast cancer tissue and so, future work must include these discoveries for faster cancer diagnosis.
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页数:10
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