[HTML][HTML] Regional magnetic resonance imaging measures for multivariate analysis in Alzheimer's disease and mild cognitive impairment

E Westman, C Aguilar, JS Muehlboeck, A Simmons - Brain topography, 2013 - Springer
Brain topography, 2013Springer
Automated structural magnetic resonance imaging (MRI) processing pipelines are gaining
popularity for Alzheimer's disease (AD) research. They generate regional volumes, cortical
thickness measures and other measures, which can be used as input for multivariate
analysis. It is not clear which combination of measures and normalization approach are most
useful for AD classification and to predict mild cognitive impairment (MCI) conversion. The
current study includes MRI scans from 699 subjects [AD, MCI and controls (CTL)] from the …
Abstract
Automated structural magnetic resonance imaging (MRI) processing pipelines are gaining popularity for Alzheimer’s disease (AD) research. They generate regional volumes, cortical thickness measures and other measures, which can be used as input for multivariate analysis. It is not clear which combination of measures and normalization approach are most useful for AD classification and to predict mild cognitive impairment (MCI) conversion. The current study includes MRI scans from 699 subjects [AD, MCI and controls (CTL)] from the Alzheimer’s disease Neuroimaging Initiative (ADNI). The Freesurfer pipeline was used to generate regional volume, cortical thickness, gray matter volume, surface area, mean curvature, gaussian curvature, folding index and curvature index measures. 259 variables were used for orthogonal partial least square to latent structures (OPLS) multivariate analysis. Normalisation approaches were explored and the optimal combination of measures determined. Results indicate that cortical thickness measures should not be normalized, while volumes should probably be normalized by intracranial volume (ICV). Combining regional cortical thickness measures (not normalized) with cortical and subcortical volumes (normalized with ICV) using OPLS gave a prediction accuracy of 91.5 % when distinguishing AD versus CTL. This model prospectively predicted future decline from MCI to AD with 75.9 % of converters correctly classified. Normalization strategy did not have a significant effect on the accuracies of multivariate models containing multiple MRI measures for this large dataset. The appropriate choice of input for multivariate analysis in AD and MCI is of great importance. The results support the use of un-normalised cortical thickness measures and volumes normalised by ICV.
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