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Classification of Alzheimer's Disease Using Ricci Flow-Based Spherical Parameterization and Machine Learning Techniques Publisher



Khodaei M1 ; Bidabad B1, 2 ; Shiri ME1 ; Sedaghat MK1 ; Amirifard H3
Authors
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Authors Affiliations
  1. 1. Department of Mathematics and Computer Science, Amirkabir University of Technology (Tehran Polytechnic), Hafez Av, Tehran, 15916, Iran
  2. 2. (IMT) Institut de Mathematique de Toulouse, Universite’ Paul Sabatier, 118 Route de Narbonne, Toulouse, 31062, France
  3. 3. Iranian Center of Neurological Research, Neuroscience Institute, Tehran University of Medical Sciences, Tehran, Iran

Source: Signal, Image and Video Processing Published:2024


Abstract

Magnetic Resonance Imaging (MRI) is an imaging tool employed to analyze brain structures, aiding in diagnosis and treatment planning. Alzheimer's disease (AD), a progressive neurodegenerative disorder leading to memory and cognitive function impairments, is the primary cause of dementia. Early detection of Mild Cognitive Impairment (MCI), a precursor to AD, is crucial for timely treatment. Diagnosis of atrophy, especially in the hippocampus, as a reliable biomarker for early diagnosis of Alzheimer's disease can be done using an MRI scan. This paper presents a new method for AD detection utilizing discrete surface Ricci flow theory, which creates Riemannian metrics on hippocampus surfaces with user-defined Gaussian curvatures. First, the surface of the hippocampus is extracted from the brain's subcortical surface. Then, Euclidean Ricci flow is applied to map this surface onto a sphere. Edge lengths of the triangular mesh are calculated, resulting in a feature vector. This vector is used as input for a classifier that distinguishes between brains affected by AD and healthy ones. The model is trained using the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset, and its accuracy, precision, sensitivity, and specificity performance are evaluated. Experimental results show an accuracy rate of over 90% in classifying AD and healthy hippocampus. The multiclass classification model achieves impressive performance metrics, with accuracy, precision, sensitivity, and specificity at 83, 80, 83, and 82%, respectively. These results are exceptionally satisfactory and outperform alternative methods. © The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2024.