Modeling workflows: Identifying the most predictive features in healthcare operational processes

PLoS One. 2020 Jun 11;15(6):e0233810. doi: 10.1371/journal.pone.0233810. eCollection 2020.

Abstract

Limited resources and increased patient flow highlight the importance of optimizing healthcare operational systems to improve patient care. Accurate prediction of exam volumes, workflow surges and, most notably, patient delay and wait times are known to have significant impact on quality of care and patient satisfaction. The main objective of this work was to investigate the choice of different operational features to achieve (1) more accurate and concise process models and (2) more effective interventions. To exclude process modelling bias, data from four different workflows was considered, including a mix of walk-in, scheduled, and hybrid facilities. A total of 84 features were computed, based on previous literature and our independent work, all derivable from a typical Hospital Information System. The features were categorized by five subgroups: congestion, customer, resource, task and time features. Two models were used in the feature selection process: linear regression and random forest. Independent of workflow and the model used for selection, it was determined that congestion feature sets lead to models most predictive for operational processes, with a smaller number of predictors.

MeSH terms

  • Appointments and Schedules
  • Hospital Information Systems / statistics & numerical data
  • Logistic Models*
  • Machine Learning
  • Patient Care Planning / organization & administration
  • Patient Care Planning / statistics & numerical data*
  • Workflow*

Grants and funding

The author(s) received no specific funding for this work.