Àá½Ã¸¸ ±â´Ù·Á ÁÖ¼¼¿ä. ·ÎµùÁßÀÔ´Ï´Ù.
KMID : 1118520150120010092
Psychiatry Investigation
2015 Volume.12 No. 1 p.92 ~ p.102
Automated Classification to Predict the Progression of Alzheimer¡¯s Disease Using Whole-Brain Volumetry and DTI
Jung Won-Beom

Lee Young-Min
Kim Young-Hoon
Mun Chi-Woong
Abstract
Objective : This study proposes an automated diagnostic method to classify patients with Alzheimer¡¯s disease (AD) of degenerative etiology using magnetic resonance imaging (MRI) markers.

Methods : Twenty-seven patients with subjective memory impairment (SMI), 18 patients with mild cognitive impairment (MCI), and 27 patients with AD participated. MRI protocols included three dimensional brain structural imaging and diffusion tensor imaging to assess the cortical thickness, subcortical volume and white matter integrity. Recursive feature elimination based on support vector machine (SVM) was conducted to determine the most relevant features for classifying abnormal regions and imaging parameters, and then a factor analysis for the top-ranked factors was performed. Subjects were classified using nonlinear SVM.

Results : Medial temporal regions in AD patients were dominantly detected with cortical thinning and volume atrophy compared with SMI and MCI patients. Damage to white matter integrity was also accredited with decreased fractional anisotropy and increased mean diffusivity (MD) across the three groups. The microscopic damage in the subcortical gray matter was reflected in increased MD. Classification accuracy between pairs of groups (SMI vs. MCI, MCI vs. AD, SMI vs. AD) and among all three groups were 84.4% (¡¾13.8), 86.9% (¡¾10.5), 96.3% (¡¾4.6), and 70.5% (¡¾11.5), respectively.

Conclusion : This proposed method may be a potential tool to diagnose AD pathology with the current clinical criteria.
KEYWORD
Magnetic resonance imaging, Alzheimer¡¯s disease, Diagnosis, Support vector machines.
FullTexts / Linksout information
 
Listed journal information
SCI(E) ÇмúÁøÈïÀç´Ü(KCI) KoreaMed