A Practical Approach to Predicting Surgical Site Infection Risk Among Patients Before Leaving the Operating Room

Cureus. 2023 Jul 18;15(7):e42085. doi: 10.7759/cureus.42085. eCollection 2023 Jul.

Abstract

A surgical site infection (SSI) prediction model that identifies at-risk patients before leaving the operating room can support efforts to improve patient safety. In this study, eight pre-operative and five perioperative patient- and procedure-specific characteristics were tested with two scoring algorithms: 1) count of positive factors (manual), and 2) logistic regression model (automated). Models were developed and validated using data from 3,440 general and oncologic surgical patients. In the automated algorithm, two pre-operative (procedure urgency, odds ratio [OR]: 1.7; and antibiotic administration >2 hours before incision, OR: 1.6) and three intraoperative risk factors (open surgery [OR: 3.7], high-risk procedure [OR: 3.5], and operative time OR: [2.6]) were associated with SSI risk. The manual score achieved an area under the curve (AUC) of 0.831 and the automated algorithm achieved AUC of 0.868. Open surgery had the greatest impact on prediction, followed by procedure risk, operative time, and procedure urgency. At 80% sensitivity, the manual and automated scores achieved a positive predictive value of 16.3% and 22.0%, respectively. Both the manual and automated SSI risk prediction algorithms accurately identified at-risk populations. Use of either model before the patient leaves the operating room can provide the clinical team with evidence-based guidance to consider proactive intervention to prevent SSIs.

Keywords: intraoperative risk factors; operative safety; pre-operative risk factors; predictive model; surgical site infection (ssi).

Grants and funding

Caresyntax Corp funded the study. Dr. Jonathan Darer is an employee of Health Analytics LLC, which was contracted to assist in the preparation of the manuscript. The remaining authors are either employed by Caresyntax or supported by contracted research services agreement to support this initiative.