| Literature DB >> 28676295 |
Harshita Sharma1, Norman Zerbe2, Iris Klempert2, Olaf Hellwich3, Peter Hufnagl2.
Abstract
Deep learning using convolutional neural networks is an actively emerging field in histological image analysis. This study explores deep learning methods for computer-aided classification in H&E stained histopathological whole slide images of gastric carcinoma. An introductory convolutional neural network architecture is proposed for two computerized applications, namely, cancer classification based on immunohistochemical response and necrosis detection based on the existence of tumor necrosis in the tissue. Classification performance of the developed deep learning approach is quantitatively compared with traditional image analysis methods in digital histopathology requiring prior computation of handcrafted features, such as statistical measures using gray level co-occurrence matrix, Gabor filter-bank responses, LBP histograms, gray histograms, HSV histograms and RGB histograms, followed by random forest machine learning. Additionally, the widely known AlexNet deep convolutional framework is comparatively analyzed for the corresponding classification problems. The proposed convolutional neural network architecture reports favorable results, with an overall classification accuracy of 0.6990 for cancer classification and 0.8144 for necrosis detection.Entities:
Keywords: Cancer classification; Convolutional neural networks; Deep learning; Digital pathology; Gastric carcinoma; Histopathological image analysis; Necrosis detection
Mesh:
Year: 2017 PMID: 28676295 DOI: 10.1016/j.compmedimag.2017.06.001
Source DB: PubMed Journal: Comput Med Imaging Graph ISSN: 0895-6111 Impact factor: 4.790