Predicting Care Times at PACU.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Patients undergoing anesthetic surgery are treated postoperatively in a Post-Anesthesia Care Unit (PACU). Traditional planning methods often fail to account for the complexity of patient data. This study aims to develop a machine learning (ML) tool to predict PACU-care times and to improve patient throughput. By integrating local-explanation models, we seek to gain clinical acceptance by providing insights into individual predictions. The project utilizes data from over 84,000 patients, including more than 170 variables.

Authors

  • Lars Mattsson
    Department of Mathematics and Mathematical Statistics, University of Umeå, Umeå 901 87, Sweden.
  • Sara D Lundsten
    Dept. Nursing, Umeå University.
  • Patrik Rydén
    Department of Mathematics and Mathematical Statistics, University of Umeå, Umeå 901 87, Sweden.
  • Lenita Lindgren
    Department of Nursing, University of Umeå, Umeå 901 87, Sweden.