Development of a diagnostic aid system for neurodegenerative pathologies: Application to the detection of Alzheimer’s disease
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University of Tlemcen
Abstract
Alzheimer’s disease (AD) is a degenerative disorder and one of the most widespread
forms of dementia, with no current cure available. This absence of a cure has led
the medical field to focus on managing the symptoms of the disease. However, its
progressive nature complicates the identification of disease stages, often requiring
years of expertise. Consequently, computer-aided diagnostic systems are essential
to assist clinicians in accurately defining disease stages, enabling more targeted and
effective treatments. Given the lack of a cure, early detection of AD, particularly
at the Mild Cognitive Impairment (MCI) stage, is crucial to slow or halt disease
progression. However, distinguishing MCI symptoms from normal aging remains
challenging, even with MRI imaging, due to the subtle differences across MCI substages.
This thesis focuses on accurately classifying AD stages, emphasizing early-stage
detection. Two MRI databases were utilized, leading to four methodologies addressing
specific challenges while fulfilling the research objectives. The first system
combines the Histogram of Oriented Gradients (HOG) with the Bias Correction
Fuzzy C Means algorithm and machine learning classifiers, achieving an accuracy of
96.8% for the first database and 96% for the second. The second system shifts to
the frequency domain, employing the Fast Finite Shearlet Transform (FFST) and
Gray Level Co-occurrence Matrix (GLCM) angles, resulting in 72% accuracy for the
first database. Building on these approaches, the third system leverages inductive
transfer learning with layer-wise fine-tuning of ten pre-trained models. The best
results were achieved using the Xception architecture, yielding 85.19% accuracy for
the first database and 77.23% for the second using VGG19.
Finally, the fourth methodology integrates machine learning and deep learning
by automatically extracting features and refining them using Bayesian optimization.
It achieves an accuracy of 98.45% for the first database and 78.54% for the
second. These methodologies address critical research questions and highlight the
importance of feature quality, hyperparameter optimization, and data augmentation
techniques in medical imaging. The findings underscore the potential of advanced
computer-aided diagnostic systems to enhance the detection and staging of
Alzheimer’s disease.