Machine learning models in anaesthesiology: bridging the gap from model training to implementation

Br J Anaesth. 2026 Jun;136(6):1723-1726. doi: 10.1016/j.bja.2026.03.022. Epub 2026 Apr 24.

Abstract

Very few anaesthesiology-related machine learning models have successfully made the transition from retrospective validation to prospective implementation. A new publication in the British Journal of Anaesthesia describes the single-centre implementation of a mortality prediction model to be used by a float anaesthesiologist to trigger enhanced preoperative evaluation before add-on cases. Key adaptations and decisions during model implementation included selecting an appropriate decision threshold to trigger float anaesthesiologist review, retrieving fresh data for model input features only every 6 h, and reducing the number of input features used by the model. This implementation provides an excellent case study illustrating how a machine learning model must be tailored during deployment to meet the needs of the specific use case.

Keywords: artificial intelligence; clinical informatics; implementation; machine learning; postoperative mortality; prediction model; preoperative risk assessment.

Publication types

  • Editorial

MeSH terms

  • Anesthesiology* / education
  • Anesthesiology* / methods
  • Humans
  • Machine Learning*