4.5 Article

Combining MRI and cognitive evaluation to classify concussion in university athletes

Journal

BRAIN IMAGING AND BEHAVIOR
Volume 16, Issue 5, Pages 2175-2187

Publisher

SPRINGER
DOI: 10.1007/s11682-022-00687-w

Keywords

Concussion; Mild traumatic brain injury (mTBI); Classification; Diffusion tensor imaging (DTI); Resting state functional MRI

Categories

Funding

  1. U.S. Navy (Naval Health Research Center) [W911QY-14-C-0098]
  2. University of Connecticut Institute for the Brain and Cognitive Sciences - Brain Imaging Research Center (IBACS-BIRC) Research Assistantship in Neuroimaging (IBRAiN)

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Current methods of concussion assessment lack objectivity and reliability. This study combines neuroimaging and cognitive measures to train algorithms for detecting concussion in university athletes. The results show that trained algorithms incorporating both MRI and cognitive performance variables can reliably detect common neurobiological sequelae of acute concussion.
Current methods of concussion assessment lack the objectivity and reliability to detect neurological injury. This multi-site study uses combinations of neuroimaging (diffusion tensor imaging and resting state functional MRI) and cognitive measures to train algorithms to detect the presence of concussion in university athletes. Athletes (29 concussed, 48 controls) completed symptom reports, brief cognitive evaluation, and MRI within 72 h of injury. Hierarchical linear regression compared groups on cognitive and neuroimaging measures while controlling for sex and data collection site. Logistic regression and support vector machine models were trained using cognitive and neuroimaging measures and evaluated for overall accuracy, sensitivity, and specificity. Concussed athletes reported greater symptoms than controls (increment R-2 = 0.32, p < .001), and performed worse on tests of concentration (increment R-2 = 0.07, p < .05) and delayed memory (increment R-2 = 0.17, p < .001). Concussed athletes showed lower functional connectivity within the frontoparietal and primary visual networks (p < .05), but did not differ on mean diffusivity and fractional anisotropy. Of the cognitive measures, classifiers trained using delayed memory yielded the best performance with overall accuracy of 71%, though sensitivity was poor at 46%. Of the neuroimaging measures, classifiers trained using mean diffusivity yielded similar accuracy. Combining cognitive measures with mean diffusivity increased overall accuracy to 74% and sensitivity to 64%, comparable to the sensitivity of symptom report. Trained algorithms incorporating both MRI and cognitive performance variables can reliably detect common neurobiological sequelae of acute concussion. The integration of multi-modal data can serve as an objective, reliable tool in the assessment and diagnosis of concussion.

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