Title of article
Brain MR Image Classification for Alzheimer’s Disease Diagnosis Based on Multifeature Fusion
Author/Authors
Xiao, Zhe School of Information and Software Engineering - University of Electronic Science and Technology of China - Chengdu - Sichuan Province, China , Ding, Yi School of Information and Software Engineering - University of Electronic Science and Technology of China - Chengdu - Sichuan Province, China , Lan, Tian School of Information and Software Engineering - University of Electronic Science and Technology of China - Chengdu - Sichuan Province, China , Zhang, Cong School of Information and Software Engineering - University of Electronic Science and Technology of China - Chengdu - Sichuan Province, China , Luo, Chuanji School of Information and Software Engineering - University of Electronic Science and Technology of China - Chengdu - Sichuan Province, China , Qin, Zhiguang School of Information and Software Engineering - University of Electronic Science and Technology of China - Chengdu - Sichuan Province, China
Pages
13
From page
1
To page
13
Abstract
We propose a novel classification framework to precisely identify individuals with Alzheimer’s disease (AD) or mild cognitive
impairment (MCI) from normal controls (NC). The proposed method combines three different features from structural MR
images: gray-matter volume, gray-level cooccurrence matrix, and Gabor feature. These features can obtain both the 2D and 3D
information of brains, and the experimental results show that a better performance can be achieved through the multifeature
fusion. We also analyze the multifeatures combination correlation technologies and improve the SVM-RFE algorithm through
the covariance method. The results of comparison experiments on public Alzheimer’s Disease Neuroimaging Initiative (ADNI)
database demonstrate the effectiveness of the proposed method. Besides, it also indicates that multifeatures combination is better
than the single-feature method. The proposed features selection algorithm could effectively extract the optimal features subset in
order to improve the classification performance.
Keywords
MR , MCI , Alzheimer , Classification
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2017
Full Text URL
Record number
2608449
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