Locality Sensitive Deep Learning for Detection and Classification of Nuclei in Routine Colon Cancer Histology Images
Author | Sirinukunwattana, Korsuk |
Author | Raza, Shan E Ahmed |
Author | Tsang, Yee-Wah |
Author | Snead, David R. J. |
Author | Cree, Ian A. |
Author | Rajpoot, Nasir M. |
Available date | 2021-09-01T10:04:05Z |
Publication Date | 2016 |
Publication Name | IEEE Transactions on Medical Imaging |
Resource | Scopus |
Abstract | Detection and classification of cell nuclei in histopathology images of cancerous tissue stained with the standard hematoxylin and eosin stain is a challenging task due to cellular heterogeneity. Deep learning approaches have been shown to produce encouraging results on histopathology images in various studies. In this paper, we propose a Spatially Constrained Convolutional Neural Network (SC-CNN) to perform nucleus detection. SC-CNN regresses the likelihood of a pixel being the center of a nucleus, where high probability values are spatially constrained to locate in the vicinity of the centers of nuclei. For classification of nuclei, we propose a novel Neighboring Ensemble Predictor (NEP) coupled with CNN to more accurately predict the class label of detected cell nuclei. The proposed approaches for detection and classification do not require segmentation of nuclei. We have evaluated them on a large dataset of colorectal adenocarcinoma images, consisting of more than 20,000 annotated nuclei belonging to four different classes. Our results show that the joint detection and classification of the proposed SC-CNN and NEP produces the highest average F1 score as compared to other recently published approaches. Prospectively, the proposed methods could offer benefit to pathology practice in terms of quantitative analysis of tissue constituents in whole-slide images, and potentially lead to a better understanding of cancer. 1982-2012 IEEE. |
Sponsor | This paper was made possible by NPRP grant number NPRP5-1345-1-228 from the Qatar National Research Fund (a member of Qatar Foundation). The statements made herein are solely the responsibility of the authors. K. Sirinukunwattana acknowledges the partial financial support provided by the Department of Computer Science, University of Warwick, U.K. |
Language | en |
Publisher | Institute of Electrical and Electronics Engineers Inc. |
Subject | Convolution Diseases Histology Neural networks Tissue Cancerous tissues Colorectal adenocarcinoma Convolutional neural network Deep learning High probability Histology images Locality sensitives Whole slide images Image analysis Article basal cell carcinoma breast cancer cancer classification cell nucleus colorectal carcinoma eosinophil fibroblast histopathology human image analysis immunohistochemistry lymphocyte machine learning neutrophil prostate cancer regression analysis spatially constrained convolutional neural network support vector machine artificial neural network cell nucleus cell proliferation colon colon tumor computer assisted diagnosis cytochemistry cytology diagnostic imaging machine learning physiology procedures Cell Nucleus Cell Proliferation Colon Colonic Neoplasms Histocytochemistry Humans Image Interpretation, Computer-Assisted Machine Learning Neural Networks (Computer) |
Type | Article |
Pagination | 1196-1206 |
Issue Number | 5 |
Volume Number | 35 |
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