Abstract

AbstractIn this article, we developed an approach for detecting brain regions that contribute to Alzheimer's disease (AD) using support vector machine (SVM) classifiers and the recently developed self regulating particle swarm optimization (SRPSO) algorithm. SRPSO employs strategies inspired by the principles of learning in humans to achieve faster and better optimization results. The classifiers for distinguishing subjects into AD patients and cognitively normal (CN) individuals were built using grey matter (GM) and white matter (WM) volumetric features extracted from structural magnetic resonance (MR) images. It could be observed from results that the classifier built using both GM and WM features provided accuracy of 89.26% which is better than the performance of classifiers built using either GM or WM features only. Moreover, consideration of clinical features in addition to volumetric features improves the accuracy further to 94.63% which is better than the performance reported by recent works in literature. In order to identify the brain regions that are important for AD vs CN classification problem, we used SRPSO to extract GM and WM features that yield better classification performance. Using 50 features identified by SRPSO, an accuracy of 89.39% was obtained which is close to the accuracy based on all features. The features identified by SRPSO were mapped back to the brain to identify brain regions that exhibit degeneration in AD. In addition to identifying areas known to be involved in AD like cerebellum, hippocampus, this helped in finding newer areas that might contribute towards AD.

Highlights

  • Alzheimer’s Disease (AD) is the most commonly occurring cause of dementia as per a recent study by the World Health Organization

  • An initial study is conducted to understand the usefulness of Grey Matter (GM) and White Matter (WM) features for AD vs. Cognitively Normal (CN) classification problem using Support Vector Machine (SVM) classifiers

  • Thereafter, the features selected by the Self Regulating Particle Swarm Optimization (SRPSO)-SVM classifier are mapped to specific brain areas from where they were extracted to identify areas that are important for better AD vs. CN classification

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Summary

Introduction

Alzheimer’s Disease (AD) is the most commonly occurring cause of dementia as per a recent study by the World Health Organization. It causes neurodegeneration which leads to cognitive and memory impairments. The number of people suffering from AD worldwide were reported to be 33.9 million in 2011 which is likely to triple by 20501. This makes early and accurate diagnosis of AD an important problem as clinical symptoms of AD become apparent only after a significant amount of brain tissue has already been damaged. MRI techniques do not employ any radioactive or radiation-emitting substances which makes it safer for repetitive use in tracking development of the disease

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