Baseline biomarkers of connectome disruption and atrophy predict future processing speed in early multiple sclerosis.

TitleBaseline biomarkers of connectome disruption and atrophy predict future processing speed in early multiple sclerosis.
Publication TypeJournal Article
Year of Publication2018
AuthorsKuceyeski A, Monohan E, Morris E, Fujimoto K, Vargas W, Gauthier SA
JournalNeuroimage Clin
Volume19
Pagination417-424
Date Published2018
ISSN2213-1582
KeywordsAdult, Atrophy, Biomarkers, Cognition Disorders, Connectome, Female, Gray Matter, Humans, Magnetic Resonance Imaging, Male, Middle Aged, Multiple Sclerosis, Putamen
Abstract

The development of accurate prognoses in multiple sclerosis is difficult, as the disease is characterized by heterogeneous patterns of brain abnormalities that relate in an unclear way to future impairments. Here, we use a statistical modeling approach to determine if the baseline pattern of connectome disruption due to T2-FLAIR lesions could predict a patient's future processing speed, as measured using the Symbol Digits Modality Test scores. Imaging data, demographics and Symbol Digits Modality Test scores were collected from 61 early relapsing remitting multiple sclerosis patients. The Network Modification Tool was used to estimate damage to the connectome by quantifying white matter abnormalities' effects on 1) global network properties, 2) regional connectivity and 3) connectivity between pairs of regions. MS subjects showed significant improvement of processing speed between baseline and follow-up ( = -2.6,  = 0.0096); however, both baseline ( = -4.01,  = 0.00012) and follow-up ( = -2.10,  = 0.038) processing speed were significantly lower than age-matched healthy controls. Partial Least Squares Regression was used to create models that predict future processing speed from between baseline imaging metrics and demographics. The model based on region-pair disconnection and gray matter atrophy had the lowest AIC and highest prediction accuracy (R = 0.79) compared to models based on global (R = 0.41) or regional (R = 0.66) disconnection and gray matter atrophy, overlap with an ROI-based atlas and gray matter atrophy (R = 0.73) or gray matter atrophy alone (R = 0.71). We found that baseline measures of connectivity disruption in various parietal, temporal, occipital and subcortical regions and atrophy in the putamen were important predictors of future processing speed. We conclude that information about disruptions to pairwise brain connections is more informative of future processing speed than regional or global metrics or gray matter atrophy alone. The combination of quantitative disconnectome metrics, gray matter atrophy and statistical modeling approaches could enable clinicians in developing more accurate, individualized prognoses of future cognitive status in multiple sclerosis patients.

DOI10.1016/j.nicl.2018.05.003
Alternate JournalNeuroimage Clin
PubMed ID30013921
PubMed Central IDPMC6019863
Grant ListR21 NS104634 / NS / NINDS NIH HHS / United States
TL1 TR000456 / TR / NCATS NIH HHS / United States
R01 NS102646 / NS / NINDS NIH HHS / United States
UL1 TR000454 / TR / NCATS NIH HHS / United States
UL1 TR002378 / TR / NCATS NIH HHS / United States
R01 NS104283 / NS / NINDS NIH HHS / United States

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