Predicting the occurrence of complications following corrective cervical deformity surgery: Analysis of a prospective multicenter database using predictive analytics

International Spine Study Group, Peter G. Passias, Cheongeun Oh, Samantha R. Horn, Han Jo Kim, D. Kojo Hamilton, Daniel M. Sciubba, Brian J. Neuman, Aaron J. Buckland, Gregory W. Poorman, Frank A. Segreto, Cole A. Bortz, Avery E. Brown, Themistocles S. Protopsaltis, Eric O. Klineberg, Christopher Ames, Justin S. Smith, Virginie Lafage

Research output: Contribution to journalArticlepeer-review

23 Scopus citations

Abstract

We developed a predictive model to describe risk factors for complications in cervical deformity surgeries. Cervical deformity (CD) surgical patients are growing in number, but remain under-studied in the literature. CD was defined as at least one of the following: C2–C7 Cobb >10° CL >10° cSVA >4 cm, CBVA >25°. Patient demographics and clinical data were assessed as risk factors for medical/surgical complications using multivariate regression models. 123 patients underwent CD surgery (60.6 yrs, 60.8% F). The most common complications were neurologic (24.4%), dysphagia (13.0%), cardiopulmonary (11.4%), infection (9.7%). 51 (41.5%) of patients experienced a medical complication and 73 (59.3%) had a surgical complication. An overall complication was predicted with high accuracy (AUC = 0.79) by the following combinations of factors: higher baseline EQ5D pain and lower baseline EQ5D anxiety/depression scores, and higher cervical and global SVA. A medical complication can be predicted by male gender, baseline mJOA score, and cervical SVA (AUC = 0.770). A surgical complication can be predicted by higher estimated blood loss, lower anxiety scores, and larger global SVA (AUC = 0.739). 64.2% of patients undergoing cervical deformity correction sustained any complication. While the most reliable predictor of the occurrence of a complication involved a cluster of risk factors, a radiographic baseline sagittal parameter of cervical SVA was the strongest isolated predictor for complications across categories. Although these findings are specific to a cervical population with moderate to severe deformities, collectively they can be utilized for pre-operative risk assessment and patient education.

Original languageEnglish
Pages (from-to)155-161
Number of pages7
JournalJournal of Clinical Neuroscience
Volume59
DOIs
StatePublished - Jan 2019

Keywords

  • Cervical deformity
  • Clinical outcomes
  • Health-related quality of life scores
  • Medical complications
  • Predictive model
  • Surgical complications
  • Surgical correction

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