| Literature DB >> 30603216 |
Asami Yonekura1, Hiroharu Kawanaka1, V B Surya Prasath2,3,4, Bruce J Aronow2,3, Haruhiko Takase1.
Abstract
In the field of computational histopathology, computer-assisted diagnosis systems are important in obtaining patient-specific diagnosis for various diseases and help precision medicine. Therefore, many studies on automatic analysis methods for digital pathology images have been reported. In this work, we discuss an automatic feature extraction and disease stage classification method for glioblastoma multiforme (GBM) histopathological images. In this paper, we use deep convolutional neural networks (Deep CNNs) to acquire feature descriptors and a classification scheme simultaneously. Further, comparisons with other popular CNNs objectively as well as quantitatively in this challenging classification problem is undertaken. The experiments using Glioma images from The Cancer Genome Atlas shows that we obtain 96.5 % average classification accuracy for our network and for higher cross validation folds other networks perform similarly with a higher accuracy of 98.0 % . Deep CNNs could extract significant features from the GBM histopathology images with high accuracy. Overall, the disease stage classification of GBM from histopathological images with deep CNNs is very promising and with the availability of large scale histopathological image data the deep CNNs are well suited in tackling this challenging problem.Entities:
Keywords: Classification; Convolutional neural network; Deep learning; Glioblastoma multiforme; Histopathology; Image analysis
Year: 2018 PMID: 30603216 PMCID: PMC6208537 DOI: 10.1007/s13534-018-0077-0
Source DB: PubMed Journal: Biomed Eng Lett ISSN: 2093-9868