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Journal of Neurology and Neuroscience

  • ISSN: 2171-6625
  • Journal h-index: 18
  • Journal CiteScore: 4.35
  • Journal Impact Factor: 3.75
  • Average acceptance to publication time (5-7 days)
  • Average article processing time (30-45 days) Less than 5 volumes 30 days
    8 - 9 volumes 40 days
    10 and more volumes 45 days
Awards Nomination 20+ Million Readerbase
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Jabli Mohamed Amine

Department of Applied Informatics, National Engineering School of Sousse, University of Sousse, Sousse, Tunisia

Publications
  • Research Article   
    A CNN-based feature extraction and machine learning approach is used to analyze brain MRI scans for the diagnosis of Alzheimer's disease
    Author(s): Jabli Mohamed Amine*, Moussa Mourad and Douik Ali

    Alzheimer's disease is a common form of dementia that is often deadly, particularly among individuals over the age of 65. Early detection of Alzheimer's disease can improve patient outcomes, and machine learning techniques applied to Magnetic Resonance Imaging (MRI) scans have been utilized to aid in diagnosis and assist physicians. However, traditional machine learning approaches require the manual extraction of features from MRI images, a process that can be complicated and require expert input. To address this issue, we propose the use of a pre-trained Convolutional Neural Network (CNN) model, ResNet50, as a method of automatic feature extraction for the diagnosis of Alzheimer's disease using MRI images. We compare the performance of this model to conventional Softmax, Support Vector Machine (SVM), and Random Forest (RF) methods, evaluating the results using various met.. View More»

    Abstract PDF