Abstract

BackgroundA prediction model for surgical site infection (SSI) after spine surgery was developed in 2014 by Lee et al. This model was developed to compute an individual estimate of the probability of SSI after spine surgery based on the patient’s comorbidity profile and invasiveness of surgery. Before any prediction model can be validly implemented in daily medical practice, it should be externally validated to assess how the prediction model performs in patients sampled independently from the derivation cohort.MethodsWe included 898 consecutive patients who underwent instrumented thoracolumbar spine surgery.To quantify overall performance using Nagelkerke’s R2 statistic, the discriminative ability was quantified as the area under the receiver operating characteristic curve (AUC). We computed the calibration slope of the calibration plot, to judge prediction accuracy.ResultsSixty patients developed an SSI. The overall performance of the prediction model in our population was poor: Nagelkerke’s R2 was 0.01. The AUC was 0.61 (95% confidence interval (CI) 0.54–0.68). The estimated slope of the calibration plot was 0.52.ConclusionsThe previously published prediction model showed poor performance in our academic external validation cohort. To predict SSI after instrumented thoracolumbar spine surgery for the present population, a better fitting prediction model should be developed.

Highlights

  • A prediction model for surgical site infection (SSI) after spine surgery was developed in 2014 by Lee et al This model was developed to compute an individual estimate of the probability of SSI after spine surgery based on the patient’s comorbidity profile and invasiveness of surgery

  • Lee et al developed a Janssen et al Journal of Orthopaedic Surgery and Research (2018) 13:114 prediction model for SSI after spine surgery that was derived from a surgical spine register of the United States of America (USA)

  • The cohort was comprised of a total of 949 patients

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Summary

Introduction

A prediction model for surgical site infection (SSI) after spine surgery was developed in 2014 by Lee et al This model was developed to compute an individual estimate of the probability of SSI after spine surgery based on the patient’s comorbidity profile and invasiveness of surgery. Lee et al developed a Janssen et al Journal of Orthopaedic Surgery and Research (2018) 13:114 prediction model for SSI after spine surgery that was derived from a surgical spine register of the USA (the Spine End Results Registry) This model was developed to compute an individual estimate of the probability of SSI after spine surgery based on the patient’s comorbidity profile and invasiveness of surgery [11]

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