ATTENTION/WARNING - NE PAS DÉPOSER ICI/DO NOT SUBMIT HERE

Ceci est la version de TEST de DIAL.mem. Veuillez ne pas soumettre votre mémoire sur ce site mais bien à l'URL suivante: 'https://thesis.dial.uclouvain.be'.
This is the TEST version of DIAL.mem. Please use the following URL to submit your master thesis: 'https://thesis.dial.uclouvain.be'.
 

A toolbox for the processing of cognitive tests for the assessment of the Alzheimer's disease

(2024)

Files

Debelle_15531800_2024.pdf
  • Closed access
  • Adobe PDF
  • 3.72 MB

Details

Supervisors
Faculty
Degree label
Abstract
Neuropsychological tests are used to assess a person's cognitive functions in order to diagnose dementia, in particular Alzheimer's disease. The aim of this work is to integrate machine learning (ML) and computer vision (CV) into the diagnosis of Alzheimer's disease in order to improve it and enable earlier detection. The focus is on the neuropsychological clock test, and more specifically on the recognition of numbers from 0 to 12. The number recognition model was tested on synthetic data generated from the MNIST set and on real data from clock tests performed by controls and Alzheimer's patients. The results suggest that Alzheimer's disease affects handwriting.