Phenotype discovery of traumatic brain injury segmentations from heterogeneous multi-site data
Adam M. Saunders, Michael E. Kim, Gaurav Rudravaram, Lucas W. Remedios, Chloe Cho, Elyssa M. McMaster, Daniel R. Gillis, Yihao Liu, Lianrui Zuo, Bennett A. Landman, and Tonia S. Rex

TL;DR
This study analyzes multi-site MRI data to identify structural brain differences in traumatic brain injury patients, revealing specific regions associated with injury heterogeneity.
Contribution
It introduces a method for harmonizing multi-site MRI data and identifying shared injury pathways in TBI through segmentation and statistical analysis.
Findings
Significant differences in 37 brain regions between TBI and controls.
Identified key affected areas: brainstem, subcortical gray matter, white matter.
Used multivariate regression and clustering to analyze injury patterns.
Abstract
Traumatic brain injury (TBI) is intrinsically heterogeneous, and typical clinical outcome measures like the Glasgow Coma Scale complicate this diversity. The large variability in severity and patient outcomes render it difficult to link structural damage to functional deficits. The Federal Interagency Traumatic Brain Injury Research (FITBIR) repository contains large-scale multi-site magnetic resonance imaging data of varying resolutions and acquisition parameters (25 shared studies with 7,693 sessions that have age, sex and TBI status defined - 5,811 TBI and 1,882 controls). To reveal shared pathways of injury of TBI through imaging, we analyzed T1-weighted images from these sessions by first harmonizing to a local dataset and segmenting 132 regions of interest (ROIs) in the brain. After running quality assurance, calculating the volumes of the ROIs, and removing outliers, we…
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