Image-Based Alzheimer's Disease Detection Using Pretrained Convolutional Neural Network Models
Journal:
arXiv
Published Date:
Feb 9, 2025
Abstract
Alzheimer's disease is an untreatable, progressive brain disorder that slowly
robs people of their memory, thinking abilities, and ultimately their capacity
to complete even the most basic tasks. Among older adults, it is the most
frequent cause of dementia. Although there is presently no treatment for
Alzheimer's disease, scientific trials are ongoing to discover drugs to combat
the condition. Treatments to slow the signs of dementia are also available.
Many researchers throughout the world became interested in developing
computer-aided diagnosis systems to aid in the early identification of this
deadly disease and assure an accurate diagnosis. In particular, image based
approaches have been coupled with machine learning techniques to address the
challenges of Alzheimer's disease detection. This study proposes a computer
aided diagnosis system to detect Alzheimer's disease from biomarkers captured
using neuroimaging techniques. The proposed approach relies on deep learning
techniques to extract the relevant visual features from the image collection to
accurately predict the Alzheimer's class value. In the experiments, standard
datasets and pre-trained deep learning models were investigated. Moreover,
standard performance measures were used to assess the models' performances. The
obtained results proved that VGG16-based models outperform the state of the art
performance.