Title of article :
A Classification Algorithm by Combination of Feature Decomposition and Kernel Discriminant Analysis (KDA) for Automatic MR Brain Image Classification and AD Diagnosis
Author/Authors :
Elahifasaee, Farzaneh Department of Instrument Science and Engineering - School of SEIEE - Shanghai Jiao Tong University - Shanghai, China , Li, Fan Department of Instrument Science and Engineering - School of SEIEE - Shanghai Jiao Tong University - Shanghai, China , Yang, Ming Department of Instrument Science and Engineering - School of SEIEE - Shanghai Jiao Tong University - Shanghai, China
Abstract :
Magnetic resonance (MR) imaging is a widely used imaging modality for detection of brain anatomical variations caused by
brain diseases such as Alzheimer’s disease (AD) and mild cognitive impairment (MCI). AD considered as an irreversible
neurodegenerative disorder with progressive memory impairment moreover cognitive functions, while MCI would be
considered as a transitional phase amongst age-related cognitive weakening. Numerous machine learning approaches have
been examined, aiming at AD computer-aided diagnosis through employing MR image analysis. Conversely, MR brain
image changes could be caused by different effects such as aging and dementia. It is still a challenging difficulty to extract the
relevant imaging features and classify the subjects of different groups. /is paper would propose an automatic classification
technique based on feature decomposition and kernel discriminant analysis (KDA) for classifications of progressive MCI
(pMCI) vs. normal control (NC), AD vs. NC, and pMCI vs. stable MCI (sMCI). Feature decomposition would be based on
dictionary learning, which is used for separation of class-specific components from the non-class-specific components in the
features, while KDA would be applied for mapping original nonlinearly separable feature space to the separable features that
are linear. /e proposed technique would be evaluated by employing T1-weighted MR brain images from 830 subjects
comprising 198 AD patients, 167 pMCI, 236 sMCI, and 229 NC from the Alzheimer’s disease neuroimaging initiative
(ADNI) dataset. Experimental results demonstrate that classification accuracy (ACC) of 90.41%, 84.29%, and 65.94% can be
achieved for classification of AD vs. NC, pMCI vs. NC, and pMCI vs. sMCI, respectively, indicating the promising
performance of the proposed method.
Keywords :
MR , KDA , MCI , Algorithm , Decomposition , Kernel
Journal title :
Computational and Mathematical Methods in Medicine