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    Por favor, use este identificador para citar o enlazar este ítem:https://uvadoc.uva.es/handle/10324/59926

    Título
    A deep learning approach for brain tumor classification and segmentation using a multiscale convolutional neural network
    Autor
    Díaz Pernas, Francisco JavierAutoridad UVA
    Martínez Zarzuela, MarioAutoridad UVA Orcid
    Antón Rodríguez, MiriamAutoridad UVA
    González Ortega, DavidAutoridad UVA Orcid
    Año del Documento
    2021
    Editorial
    MDPI
    Descripción
    Producción Científica
    Documento Fuente
    Healthcare, 2021, Vol. 9, Nº. 2, 153
    Abstract
    In this paper, we present a fully automatic brain tumor segmentation and classification model using a Deep Convolutional Neural Network that includes a multiscale approach. One of the differences of our proposal with respect to previous works is that input images are processed in three spatial scales along different processing pathways. This mechanism is inspired in the inherent operation of the Human Visual System. The proposed neural model can analyze MRI images containing three types of tumors: meningioma, glioma, and pituitary tumor, over sagittal, coronal, and axial views and does not need preprocessing of input images to remove skull or vertebral column parts in advance. The performance of our method on a publicly available MRI image dataset of 3064 slices from 233 patients is compared with previously classical machine learning and deep learning published methods. In the comparison, our method remarkably obtained a tumor classification accuracy of 0.973, higher than the other approaches using the same database
    Materias (normalizadas)
    Brain - Tumors - Diagnosis
    Tumors cerebrals
    Cerebro - Tumores
    Neurology
    Machine learning
    Artificial intelligence
    Neural networks (Computer science)
    Redes neuronales (Informática)
    Signal processing
    Statistics
    Estadística
    Magnetic resonance
    Resonancia Magnética
    Materias Unesco
    3205.07 Neurología
    1209.03 Análisis de Datos
    ISSN
    2227-9032
    Revisión por pares
    SI
    DOI
    10.3390/healthcare9020153
    Version del Editor
    https://www.mdpi.com/2227-9032/9/2/153
    Propietario de los Derechos
    © 2021 The authors
    Idioma
    eng
    URI
    https://uvadoc.uva.es/handle/10324/59926
    Tipo de versión
    info:eu-repo/semantics/publishedVersion
    Derechos
    openAccess
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    • DEP71 - Artículos de revista [358]
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    A-Deep-Learning-Approach-for-Brain-Tumor-Classification.pdf
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    Universidad de Valladolid

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