Hyperspectral imaging for the detection of glioblastoma tumor cells in H&E slides using convolution neural networks
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https://hdl.handle.net/10037/20638Date
2020-03-30Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Ortega, S.; Halicek, M.; Fabelo, H.; Camacho, R.S.; Plaza, M.L.; Godtliebsen, Fred; Callico, G. M.; Fei, BaoweiAbstract
Hyperspectral imaging (HSI) technology has demonstrated potential to provide useful information about the chemical composition of tissue and its morphological features in a single image modality. Deep learning (DL) techniques have demonstrated the ability of automatic feature extraction from data for a successful classification. In this study, we exploit HSI and DL for the automatic differentiation of glioblastoma (GB) and non-tumor tissue on hematoxylin and eosin (H&E) stained histological slides of human brain tissue. GB detection is a challenging application, showing high heterogeneity in the cellular morphology across different patients. We employed an HSI microscope, with a spectral range from 400 to 1000 nm, to collect 517 HS cubes from 13 GB patients using 20× magnification. Using a convolutional neural network (CNN), we were able to automatically detect GB within the pathological slides, achieving average sensitivity and specificity values of 88% and 77%, respectively, representing an improvement of 7% and 8% respectively, as compared to the results obtained using RGB (red, green, and blue) images. This study demonstrates that the combination of hyperspectral microscopic imaging and deep learning is a promising tool for future computational pathologies.
Publisher
MDPICitation
Ortega S, Halicek, Fabelo, Camacho R, Plaza, Godtliebsen F, Callico. Hyperspectral imaging for the detection of glioblastoma tumor cells in H&E slides using convolution neural networks . Sensors. 2020;20(7)Metadata
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