Predictors of Failure of Nonoperative Management Following Subaxial Spine Trauma and Creation of Modified Subaxial Injury Classification System

2019 
Background Subaxial cervical spine injuries may be treated with either nonoperative stabilization or surgical fixation. The subaxial injury classification (SLIC) provides 1 method for suggesting the degree of necessity for surgery. In the current study, we examined if the SLIC score, or other preoperative metrics, can predict failure of nonoperative management. Methods We performed a retrospective chart review to identify patients who presented with acute, nonpenetrating, subaxial cervical spine injury within our health system between 2007 and 2016. Patient demographics, medical comorbidities, injuries, and treatments were collected. Logistic regression analysis was used to determine potential predictors of failure of nonoperative management. Results During the study period, 40 patients met the inclusion criteria. A small subset of patients failed nonoperative management ( n  = 5, 12.5%). The mean SLIC score was 3.9 ± 1.9; however, 14 (35%) patients had scores >4. Neither total SLIC score ( P  = 0.68) nor SLIC subscores (morphology [ P  = 0.96], discoligamentous complex [ P  = 0.83], neurologic status [ P  = 0.60]) predicted failure of nonoperative treatment. Time to evaluation/treatment did predict failure of nonoperative management. Evaluation within 8 hours of injury was a negative predictor of failure (odds ratio = 0.03, P  = 0.001) and evaluation 24 hours or more after injury was a positive predictor of failure (odds ratio = 66.00, P P  = 0.044). Conclusions Management of subaxial spine injuries is complex. In our cohort, SLIC scoring did not adequately predict odds of failure of nonoperative management. Time to evaluation, however, did. We created a modified SLIC score that significantly predicted failure of nonoperative management.
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