A preoperative predictive model for prolonged post-anaesthesia care unit stay after outpatient surgeries

J Perioper Pract. 2020 Apr;30(4):91-96. doi: 10.1177/1750458919850377. Epub 2019 May 28.

Abstract

Study objective: To create a preoperative predictive model for prolonged post-anaesthesia care unit (PACU) stay for outpatient surgery and compare with an existing (University of California-San Diego, UCSD) model.

Design: Retrospective observational study.

Setting: Post-anaesthesia care unit. Patients: Outpatient surgical patients discharged on the same day in a large academic institution. Preoperative data were collected. The study period was three months in 2016. Measurements: Prolonged PACU stay defined as a length of stay longer than the third quartile. We utilized multivariate regression analyses and bootstrapping statistical techniques to create a predictive model for prolonged PACU stay. Main results: Four strong predictors for prolonged PACU stay: general anaesthesia, obstructive sleep apnoea, surgical specialty and scheduled case duration. Our model had an excellent discrimination performance and a good calibration.

Conclusion: We developed a predictive model for prolonged PACU stay in our institution. This model is different from the UCSD model probably secondary to local and regional differences in outpatient surgery practice. Therefore, individual practice study outcomes may not apply to other practices without careful consideration of these differences.

Keywords: Ambulatory surgery; Delayed hospital stay; Outpatient surgery; PACU; Post-anaesthesia care unit; Recovery room.

MeSH terms

  • Ambulatory Surgical Procedures*
  • Hospital Units / organization & administration*
  • Humans
  • Length of Stay*
  • Models, Organizational*
  • Patient Discharge
  • Postanesthesia Nursing*
  • Postoperative Complications
  • Retrospective Studies