학술논문

Multidimensional Analysis of Magnetic Resonance Imaging Predicts Early Impairment in Thoracic and Thoracolumbar Spinal Cord Injury
Document Type
article
Source
Journal of Neurotrauma. 33(10)
Subject
Spinal Cord Injury
Clinical Research
Neurosciences
Biomedical Imaging
Neurodegenerative
Physical Injury - Accidents and Adverse Effects
Traumatic Head and Spine Injury
Detection
screening and diagnosis
4.1 Discovery and preclinical testing of markers and technologies
Neurological
Adult
Female
Humans
Lumbar Vertebrae
Magnetic Resonance Imaging
Male
Middle Aged
Principal Component Analysis
Prognosis
Reproducibility of Results
Severity of Illness Index
Spinal Cord Injuries
Thoracic Vertebrae
Young Adult
BASIC
MRI
spinal cord injury
thoracic
T2 hyperintensity
TLICS
Clinical Sciences
Neurology & Neurosurgery
Language
Abstract
Literature examining magnetic resonance imaging (MRI) in acute spinal cord injury (SCI) has focused on cervical SCI. Reproducible systems have been developed for MRI-based grading; however, it is unclear how they apply to thoracic SCI. Our hypothesis is that MRI measures will group as coherent multivariate principal component (PC) ensembles, and that distinct PCs and individual variables will show discriminant validity for predicting early impairment in thoracic SCI. We undertook a retrospective cohort study of 25 patients with acute thoracic SCI who underwent MRI on admission and had American Spinal Injury Association Impairment Scale (AIS) assessment at hospital discharge. Imaging variables of axial grade, sagittal grade, length of injury, thoracolumbar injury classification system (TLICS), maximum canal compromise (MCC), and maximum spinal cord compression (MSCC) were collected. We performed an analytical workflow to detect multivariate PC patterns followed by explicit hypothesis testing to predict AIS at discharge. All imaging variables loaded positively on PC1 (64.3% of variance), which was highly related to AIS at discharge. MCC, MSCC, and TLICS also loaded positively on PC2 (22.7% of variance), while variables concerning cord signal abnormality loaded negatively on PC2. PC2 was highly related to the patient undergoing surgical decompression. Variables of signal abnormality were all negatively correlated with AIS at discharge with the highest level of correlation for axial grade as assessed with the Brain and Spinal Injury Center (BASIC) score. A multiple variable model identified BASIC as the only statistically significant predictor of AIS at discharge, signifying that BASIC best captured the variance in AIS within our study population. Our study provides evidence of convergent validity, construct validity, and clinical predictive validity for the sampled MRI measures of SCI when applied in acute thoracic and thoracolumbar SCI.