Litcius/Paper detail

Using machine learning to predict perfusionists’ critical decision-making during cardiac surgery

Roger D. Dias, Marco A. Zenati, Geoffrey Rance, Rithy Srey, David Arney, Liang Chen, Rohan Paleja, Lauren R. Kennedy-Metz, Matthew Gombolay

2021Computer Methods in Biomechanics and Biomedical Engineering Imaging & Visualization10 citationsDOIOpen Access PDF

Abstract

The cardiac surgery operating room is a high-risk and complex environment in which multiple experts work as a team to provide safe and excellent care to patients. During the cardiopulmonary bypass phase of cardiac surgery, critical decisions need to be made and the perfusionists play a crucial role in assessing available information and taking a certain course of action. In this paper, we report the findings of a simulation-based study using machine learning to build predictive models of perfusionists' decision-making during critical situations in the operating room (OR). Performing 30-fold cross-validation across 30 random seeds, our machine learning approach was able to achieve an accuracy of 78.2% (95% confidence interval: 77.8% to 78.6%) in predicting perfusionists' actions, having access to only 148 simulations. The findings from this study may inform future development of computerised clinical decision support tools to be embedded into the OR, improving patient safety and surgical outcomes.

Topics & Concepts

Cardiopulmonary bypassClinical decision makingConfidence intervalCardiac surgeryClinical decision support systemDecision support systemComputer scienceMedical physicsMachine learningMedicineArtificial intelligenceSurgeryIntensive care medicineInternal medicineCardiac, Anesthesia and Surgical OutcomesArtificial Intelligence in Healthcare and EducationHemodynamic Monitoring and Therapy