Review Article Open Access

Deep Learning in Early Alzheimer’s Disease’s Detection: A Comprehensive Survey of Classification, Segmentation and Feature Extraction Methods

Rubab Hafeez1, Sadia Waheed2, Syeda Aleena Naqvi2, Fahad Maqbool3, Amna Sarwar2, Sajjad Saleem4, Kamran Siddique5 and Zahid Akhtar6
  • 1 Department of Computer Science, Air University Aerospace and Aviation Campus Kamra, Pakistan
  • 2 Department of Computer Science, University of Wah, Wah Cantt, Pakistan
  • 3 School of Electrical Engineering and Computer Sciences (SEECS), NUST, Pakistan
  • 4 Department of Information and Technology, Washington University of Science and Technology Virginia, Virginia, United States
  • 5 Department of Computer Science and Engineering, University of Alaska Anchorage, Anchorage, United States
  • 6 Department of Network and Computer Security, State University of New York Polytechnic Institute, United States

Abstract

Alzheimer’s disease is a deadly neurological condition, impairing important memory and brain functions. Alzheimer’s disease promotes brain shrinkage, ultimately leading to dementia. Dementia diagnosis typically takes 2.8-4.4 years after the first clinical indication. Advancements in computing and information technology have led to many techniques for studying Alzheimer's disease. Early identification and therapy are crucial for preventing Alzheimer's disease, as early-onset dementia hits people before the age of 65, while late-onset dementia occurs after this age. According to the 2015 World Alzheimer's Disease Report, there are 46.8 million individuals worldwide suffering from dementia, with an anticipated 74.7 million more by 2030 and 131.5 million by 2050. Deep Learning has outperformed conventional machine learning techniques by identifying intricate structures in high-dimensional data. Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) have achieved an accuracy of up to 96.0% for Alzheimer’s disease classification and 84.2% for Mild Cognitive Impairment (MCI) conversion prediction. There have been few literature surveys available on applying ML to predict dementia, lacking in congenital observations. However, this survey has focused on a specific data channel for dementia detection. This study evaluated deep learning algorithms for early Alzheimer's disease detection using openly accessible datasets, feature segmentation, and classification methods. This article also has identified research gaps and limits in detecting Alzheimer's disease, which can inform future research.

Journal of Computer Science
Volume 21 No. 5, 2025, 1083-1098

DOI: https://doi.org/10.3844/jcssp.2025.1083.1098

Submitted On: 11 August 2024 Published On: 26 April 2025

How to Cite: Hafeez, R., Waheed, S., Naqvi, S. A., Maqbool, F., Sarwar, A., Saleem, S., Siddique, K. & Akhtar, Z. (2025). Deep Learning in Early Alzheimer’s Disease’s Detection: A Comprehensive Survey of Classification, Segmentation and Feature Extraction Methods. Journal of Computer Science, 21(5), 1083-1098. https://doi.org/10.3844/jcssp.2025.1083.1098

  • 41 Views
  • 12 Downloads
  • 0 Citations

Download

Keywords

  • Dementia Prediction
  • Feature Selection
  • CNN
  • Segmentation
  • Mild Cognitive Impairment
  • Neuro-Imaging
  • Magnetic Resonance Imaging