Frontiers in Aging Neuroscience (Oct 2016)

Identify the Atrophy of Alzheimer's Disease, Mild Cognitive Impairment and Normal Aging using Morphometric MRI Analysis

  • Xiangyu Ma,
  • Zhaoxia Li,
  • Bin Jing,
  • Han Liu,
  • Dan Li,
  • Haiyun Li

DOI
https://doi.org/10.3389/fnagi.2016.00243
Journal volume & issue
Vol. 8

Abstract

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Quantitatively assessing the medial temporal lobe structures atrophy is vital for early diagnosis of Alzheimer's disease (AD) and accurately tracking of the disease progression. Morphometry characteristics such as gray matter volume (GMV) and cortical thickness have been proved to be valuable measurements of brain atrophy. In this study, we proposed a morphometric MRI analysis based method to explore the cross-sectional differences and longitudinal changes of GMV and cortical thickness in patients with AD, (mild cognitive impairment) MCI and the normal elderly. High resolution 3D MRI data was obtained from ADNI database. SPM8 plus DARTEL was carried out for data preprocessing. Two kinds of z-score map were calculated to respectively reflect the GMV and cortical thickness decline compared with age-matched normal control database (NCDB). A volume of interest (VOI) covering medial temporal lobe structures was defined by group comparison. Within this VOI, GMV and cortical thickness decline indicators were respectively defined as the mean of the negative z-scores and the sum of the normalized negative z-scores of the corresponding z-score map. Kruskal–Wallis test was applied to statistically identify group wise differences of the indicators. Support vector machines (SVM) based prediction was performed with a leave-one-out cross-validation design to evaluate the predictive accuracies of the indicators. Linear least squares estimation was utilized to assess the changing rate of the indicators for the three groups. Cross-sectional comparison of the baseline decline indicators revealed that the GMV and cortical thickness decline were more serious from NC, MCI to AD, with statistic significance. Using a multi-region based SVM model with the two indicators, the discrimination accuracy between AD and NC, MCI and NC, AD and MCI was 92.7%, 91.7%, 78.4% respectively. For three-way prediction, the accuracy was 74.6%. Furthermore, the proposed two indicators could also identify the atrophy rate differences among the three groups in longitudinal analysis. The proposed method could serve as an automatic and time-sparing approach for early diagnosis and tracking the progression of AD.

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