Article ID Journal Published Year Pages File Type
3075215 NeuroImage: Clinical 2015 13 Pages PDF
Abstract

•We analyzed resting state connectivity profiles in 31 mTBI patients and 55 controls.•We quantified frequency-specific connectivity couplings using phase-locking values.•Normal control networks showed dense local and sparse long-range connections.•TBI patient networks showed sparse local and dense long-range connections.•Tensor subspace analysis could classify subjects with 100% accuracy in the α band

Mild traumatic brain injury (mTBI) may affect normal cognition and behavior by disrupting the functional connectivity networks that mediate efficient communication among brain regions. In this study, we analyzed brain connectivity profiles from resting state Magnetoencephalographic (MEG) recordings obtained from 31 mTBI patients and 55 normal controls. We used phase-locking value estimates to compute functional connectivity graphs to quantify frequency-specific couplings between sensors at various frequency bands. Overall, normal controls showed a dense network of strong local connections and a limited number of long-range connections that accounted for approximately 20% of all connections, whereas mTBI patients showed networks characterized by weak local connections and strong long-range connections that accounted for more than 60% of all connections. Comparison of the two distinct general patterns at different frequencies using a tensor representation for the connectivity graphs and tensor subspace analysis for optimal feature extraction showed that mTBI patients could be separated from normal controls with 100% classification accuracy in the alpha band. These encouraging findings support the hypothesis that MEG-based functional connectivity patterns may be used as biomarkers that can provide more accurate diagnoses, help guide treatment, and monitor effectiveness of intervention in mTBI.

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