Literature DB >> 25222050

Exploring variations in functional connectivity of the resting state default mode network in mild traumatic brain injury.

Dominic E Nathan1, Terrence R Oakes, Ping Hong Yeh, Louis M French, Jamie F Harper, Wei Liu, Rachel D Wolfowitz, Bin Quan Wang, John L Graner, Gerard Riedy.   

Abstract

A definitive diagnosis of mild traumatic brain injury (mTBI) is difficult due to the absence of biomarkers in standard clinical imaging. The brain is a complex network of interconnected neurons and subtle changes can modulate key networks of cognitive function. The resting state default mode network (DMN) has been shown to be sensitive to changes induced by pathology. This study seeks to determine whether quantitative measures of the DMN are sensitive in distinguishing mTBI subjects. Resting state functional magnetic resonance imaging data were obtained for healthy (n=12) and mTBI subjects (n=15). DMN maps were computed using dual-regression Independent Component Analysis (ICA). A goodness-of-fit (GOF) index was calculated to assess the degree of spatial specificity and sensitivity between healthy controls and mTBI subjects. DMN regions and neuropsychological assessments were examined to identify potential relationships. The resting state DMN maps indicate an increase in spatial coactivity in mTBI subjects within key regions of the DMN. Significant coactivity within the cerebellum and supplementary motor areas of mTBI subjects were also observed. This has not been previously reported in seed-based resting state network analysis. The GOF suggested the presence of high variability within the mTBI subject group, with poor sensitivity and specificity. The neuropsychological data showed correlations between areas of coactivity within the resting state network in the brain with a number of measures of emotion and cognitive functioning. The poor performance of the GOF highlights the key challenge associated with mTBI injury: the high variability in injury mechanisms and subsequent recovery. However, the quantification of the DMN using dual-regression ICA has potential to distinguish mTBI from healthy subjects, and provide information on the relationship of aspects of cognitive and emotional functioning with their potential neural correlates.

Entities:  

Keywords:  default mode network; dual-regression ICA; exploratory biomarkers of mild TBI; goodness-of-fit measure; neuropsychological assessments of mTBI; resting state fMRI

Mesh:

Year:  2014        PMID: 25222050     DOI: 10.1089/brain.2014.0273

Source DB:  PubMed          Journal:  Brain Connect        ISSN: 2158-0014


  24 in total

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4.  Magnetoencephalography-based identification of functional connectivity network disruption following mild traumatic brain injury.

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8.  Effects of Mild Traumatic Brain Injury on Resting State Brain Network Connectivity in Older Adults.

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Review 10.  The effect of preprocessing pipelines in subject classification and detection of abnormal resting state functional network connectivity using group ICA.

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