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Hyperspectral imaging has demonstrated its potential to provide correlated spatial and spectral information of a sample by a non-contact and non-invasive technology. In the medical field, especially in histopathology, HSI has been applied for the classification and identification of diseased tissue and for the characterization of its morphological properties. In this work, we propose a hybrid scheme to classify non-tumor and tumor histological brain samples by hyperspectral imaging. The proposed approach is based on the identification of characteristic components in a hyperspectral image by linear unmixing, as a features engineering step, and the subsequent classification by a deep learning approach. For this last step, an ensemble of deep neural networks is evaluated by a cross-validation scheme on an augmented dataset and a transfer learning scheme. The proposed method can classify histological brain samples with an average accuracy of 88%, and reduced variability, computational cost, and inference times, which presents an advantage over methods in the state-of-the-art. Hence, the work demonstrates the potential of hybrid classification methodologies to achieve robust and reliable results by combining linear unmixing for features extraction and deep learning for classification.
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Cruz‐Guerrero et al. (Tue,) studied this question.
synapsesocial.com/papers/68e643e3b6db6435875d55fc — DOI: https://doi.org/10.1049/htl2.12084
Inés A. Cruz‐Guerrero
Colorado School of Public Health
Daniel U. Campos‐Delgado
Louisiana State University
Aldo R. Mejía‐Rodríguez
Autonomous University of San Luis Potosí
Healthcare Technology Letters
University of Colorado Anschutz Medical Campus
Universidad de Las Palmas de Gran Canaria
Colorado School of Public Health
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