• Mi Re-Unir
    Búsqueda Avanzada
    JavaScript is disabled for your browser. Some features of this site may not work without it.
    Ver ítem 
    •   Inicio
    • UNIR REVISTAS
    • Revista IJIMAI
    • In Press
    • In Press
    • Ver ítem
    •   Inicio
    • UNIR REVISTAS
    • Revista IJIMAI
    • In Press
    • In Press
    • Ver ítem

    The Application of Deep Learning for Classification of Alzheimer's Disease Stages by Magnetic Resonance Imaging Data

    Autor: 
    Irfan, Muhammad
    ;
    Shahrestani, Seyed
    ;
    ElKhodr, Mahmoud
    Fecha: 
    07/2023
    Palabra clave: 
    Alzheimer's disease; classification; cognitive computing; Convolutional Neural Network (CNN); deep learning; electromagnetic optimization; IJIMAI
    Revista / editorial: 
    International Journal of Interactive Multimedia and Artificial Intelligence
    Tipo de Ítem: 
    article
    URI: 
    https://reunir.unir.net/handle/123456789/15135
    DOI: 
    https://doi.org/10.9781/ijimai.2023.07.009
    Dirección web: 
    https://www.ijimai.org/journal/bibcite/reference/3354
    Open Access
    Resumen:
    Detecting Alzheimer’s disease (AD) in its early stages is essential for effective management, and screening for Mild Cognitive Impairment (MCI) is common practice. Among many deep learning techniques applied to assess brain structural changes, Magnetic Resonance Imaging (MRI) and Convolutional Neural Networks (CNN) have grabbed research attention because of their excellent efficiency in automated feature learning of a variety of multilayer perceptron. In this study, various CNNs are trained to predict AD on three different views of MRI images, including Sagittal, Transverse, and Coronal views. This research use T1-Weighted MRI data of 3 years composed of 2182 NIFTI files. Each NIFTI file presents a single patient's Sagittal, Transverse, and Coronal views. T1-Weighted MRI images from the ADNI database are first preprocessed to achieve better representation. After MRI preprocessing, large slice numbers require a substantial computational cost during CNN training. To reduce the slice numbers for each view, this research proposes an intelligent probabilistic approach to select slice numbers such that the total computational cost per MRI is minimized. With hyperparameter tuning, batch normalization, and intelligent slice selection and cropping, an accuracy of 90.05% achieve with the Transverse, 82.4% with Sagittal, and 78.5% with Coronal view, respectively. Moreover, the views are stacked together and an accuracy of 92.21% is achived for the combined views. In addition, results are compared with other studies to show the performance of the proposed approach for AD detection.
    Mostrar el registro completo del ítem
    Ficheros en el ítem
    icon
    Nombre: ip2023_07_009.pdf
    Tamaño: 2.218Mb
    Formato: application/pdf
    Ver/Abrir
    Este ítem aparece en la(s) siguiente(s) colección(es)
    • In Press

    Estadísticas de uso

    Año
    2012
    2013
    2014
    2015
    2016
    2017
    2018
    2019
    2020
    2021
    2022
    2023
    2024
    2025
    Vistas
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    52
    154
    130
    Descargas
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    0
    125
    198
    146

    Ítems relacionados

    Mostrando ítems relacionados por Título, autor o materia.

    • Spectral phase estimation based on deep neural networks for single channel speech enhancement 

      Saleem, N.; Khattak, Muhammad Irfan; Verdú, Elena (Journal of Communications Technology and Electronics, 12/2019)
      Majority of speech processing algorithms operate only with the spectral magnitude, leaving spectral phase unstructured and unexplored. With recent advancement in deep neural networks (DNNs), the phase processing became ...
    • E2E-V2SResNet: Deep residual convolutional neural networks for end-to-end video driven speech synthesis 

      Saleem, Nasir; Gao, Jiechao; Irfan, Muhammad; Verdú, Elena ; Parra Puente, Javier (Image and vision computing, 2022)
      Speechreading which infers spoken message from a visually detected articulated facial trend is a challenging task. In this paper, we propose an end-to-end ResNet (E2E-ResNet) model for synthesizing speech signals from the ...
    • On improvement of speech intelligibility and quality: a survey of unsupervised single channel speech enhancement algorithms 

      Saleem, Nasir; Khattak, Muhammad Irfan; Verdú, Elena (International Journal of Interactive Multimedia and Artificial Intelligence, 06/2020)
      Many forms of human communication exist; for instance, text and nonverbal based. Speech is, however, the most powerful and dexterous form for the humans. Speech signals enable humans to communicate and this usefulness of ...

    Mi cuenta

    AccederRegistrar

    ¿necesitas ayuda?

    Manual de UsuarioContacto: reunir@unir.net

    Listar

    todo Re-UnirComunidades y coleccionesPor fecha de publicaciónAutoresTítulosPalabras claveTipo documentoTipo de accesoEsta colecciónPor fecha de publicaciónAutoresTítulosPalabras claveTipo documentoTipo de acceso






    Aviso Legal Política de Privacidad Política de Cookies Cláusulas legales RGPD
    © UNIR - Universidad Internacional de La Rioja
     
    Aviso Legal Política de Privacidad Política de Cookies Cláusulas legales RGPD
    © UNIR - Universidad Internacional de La Rioja