Back to Search Start Over

Statistical learning of blunt cerebrovascular injury risk factors using the elastic net

Authors :
Arthur J. Fountain
Maxwell E. Cooper
Jason W. Allen
Benjamin B. Risk
Amanda S. Corey
Source :
Emergency Radiology. 28:929-937
Publication Year :
2021
Publisher :
Springer Science and Business Media LLC, 2021.

Abstract

To compare logistic regression to elastic net for identifying and ranking clinical risk factors for blunt cerebrovascular injury (BCVI). Consecutive trauma patients undergoing screening CTA at a level 1 trauma center over a 2-year period. Each internal carotid artery (ICA) and vertebral artery (VA) was independently graded by 2 neuroradiologists using the Denver grading scale. Unadjusted odds ratios were calculated by univariate and adjusted odds ratios by multiple logistic regression with FDR correction. We applied logistic regression with the elastic net penalty and tenfold cross-validation. Total of 467 patients; 73 patients with BCVI. Maxillofacial fracture, basilar skull fracture, and GCS had significant unadjusted odds ratios (OR) for ICA injury and C-spine fracture, spinal ligamentous injury, and age for VA injury. Only transverse foramen fracture had significant adjusted OR for VA injury, with none for ICA injury, after FDR correction. Using elastic net, ICA injury variables included maxillofacial fracture, basilar skull fracture, GCS, and carotid canal fracture. For VA injury, these included cervical spine transverse foramen fracture, ligamentous injury, C1–C3 fractures, posterior element fracture, and vertebral body fracture. Elastic net statistical learning methods identified additional risk factors and outperformed multiple logistic regression for BCVI. Elastic net allows the study of a large number of variables, and is useful when covariates are correlated.

Details

ISSN :
14381435 and 10703004
Volume :
28
Database :
OpenAIRE
Journal :
Emergency Radiology
Accession number :
edsair.doi...........e86fdd3288fe06523e44a60c5a255749
Full Text :
https://doi.org/10.1007/s10140-021-01949-8