4.6 Article

Symmetric data-driven fusion of diffusion tensor MRI: Age differences in white matter

Journal

FRONTIERS IN NEUROLOGY
Volume 14, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/fneur.2023.1094313

Keywords

aging; white matter; diffusion MRI; multimodal; fusion

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In the past 20 years, diffusion tensor imaging (DTI) has been used to study white matter (WM) microstructure. However, studying individual DTI parameters separately limits our understanding of WM pathology. By applying symmetric fusion to DTI data, a data-driven approach, we were able to simultaneously examine age differences in all four DTI parameters. This method revealed an age-related modality-shared component in WM, which was correlated with cognitive abilities not detected by unimodal analyses.
In the past 20 years, white matter (WM) microstructure has been studied predominantly using diffusion tensor imaging (DTI). Decreases in fractional anisotropy (FA) and increases in mean (MD) and radial diffusivity (RD) have been consistently reported in healthy aging and neurodegenerative diseases. To date, DTI parameters have been studied individually (e.g., only FA) and separately (i.e., without using the joint information across them). This approach gives limited insights into WM pathology, increases the number of multiple comparisons, and yields inconsistent correlations with cognition. To take full advantage of the information in a DTI dataset, we present the first application of symmetric fusion to study healthy aging WM. This data-driven approach allows simultaneous examination of age differences in all four DTI parameters. We used multiset canonical correlation analysis with joint independent component analysis (mCCA+jICA) in cognitively healthy adults (age 20-33, n=51 and age 60-79, n=170). Four-way mCCA+jICA yielded one high-stability modality-shared component with co-variant patterns of age differences in RD and AD in the corpus callosum, internal capsule, and prefrontal WM. The mixing coefficients (or loading parameters) showed correlations with processing speed and fluid abilities that were not detected by unimodal analyses. In sum, mCCA+jICA allows data-driven identification of cognitively relevant multimodal components within the WM. The presented method should be further extended to clinical samples and other MR techniques (e.g., myelin water imaging) to test the potential of mCCA+jICA to discriminate between different WM disease etiologies and improve the diagnostic classification of WM diseases.

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