Title | Machine learning to investigate superficial white matter integrity in early multiple sclerosis. |
Publication Type | Journal Article |
Year of Publication | 2022 |
Authors | Buyukturkoglu K, Vergara C, Fuentealba V, Tozlu C, Dahan JB, Carroll BE, Kuceyeski A, Riley CS, Sumowski JF, Oliva CGuevara, Sitaram R, Guevara P, Leavitt VM |
Journal | J Neuroimaging |
Volume | 32 |
Issue | 1 |
Pagination | 36-47 |
Date Published | 2022 01 |
ISSN | 1552-6569 |
Keywords | Anisotropy, Diffusion Tensor Imaging, Humans, Machine Learning, Magnetic Resonance Imaging, Multiple Sclerosis, White Matter |
Abstract | BACKGROUND AND PURPOSE: This study aims todetermine the sensitivity of superficial white matter (SWM) integrity as a metric to distinguish early multiple sclerosis (MS) patients from healthy controls (HC). METHODS: Fractional anisotropy and mean diffusivity (MD) values from SWM bundles across the cortex and major deep white matter (DWM) tracts were extracted from 29 early MS patients and 31 age- and sex-matched HC. Thickness of 68 cortical regions and resting-state functional-connectivity (RSFC) among them were calculated. The distribution of structural and functional metrics between groups were compared using Wilcoxon rank-sum test. Utilizing a machine learning method (adaptive boosting), 6 models were built based on: 1-SWM, 2-DWM, 3-SWM and DWM, 4-cortical thickness, or 5-RSFC measures. In model 6, all features from previous models were incorporated. The models were trained with nested 5-folds cross-validation. Area under the receiver operating characteristic curve (AUC ) values were calculated to evaluate classification performance of each model. Permutation tests were used to compare the AUC values. RESULTS: Patients had higher MD in SWM bundles including insula, inferior frontal, orbitofrontal, superior and medial temporal, and pre- and post-central cortices (p < .05). No group differences were found for any other MRI metric. The model incorporating SWM and DWM features provided the best classification (AUC = 0.75). The SWM model provided higher AUC (0.74), compared to DWM (0.63), cortical thickness (0.67), RSFC (0.63), and all-features (0.68) models (p < .001 for all). CONCLUSION: Our results reveal a non-random pattern of SWM abnormalities at early stages of MS even before pronounced structural and functional alterations emerge. |
DOI | 10.1111/jon.12934 |
Alternate Journal | J Neuroimaging |
PubMed ID | 34532924 |
PubMed Central ID | PMC8752496 |
Grant List | R01 HD082176 / HD / NICHD NIH HHS / United States |
Related Institute:
Brain Health Imaging Institute (BHII)