A simulation-based evaluation of machine learning models for clinical decision support: application and analysis using hospital readmission.
Velibor V MišićKumar RajaramEilon GabelPublished in: NPJ digital medicine (2021)
The interest in applying machine learning in healthcare has grown rapidly in recent years. Most predictive algorithms requiring pathway implementations are evaluated using metrics focused on predictive performance, such as the c statistic. However, these metrics are of limited clinical value, for two reasons: (1) they do not account for the algorithm's role within a provider workflow; and (2) they do not quantify the algorithm's value in terms of patient outcomes and cost savings. We propose a model for simulating the selection of patients over time by a clinician using a machine learning algorithm, and quantifying the expected patient outcomes and cost savings. Using data on unplanned emergency department surgical readmissions, we show that factors such as the provider's schedule and postoperative prediction timing can have major effects on the pathway cohort size and potential cost reductions from preventing hospital readmissions.
Keyphrases
- machine learning
- healthcare
- big data
- clinical decision support
- electronic health record
- emergency department
- artificial intelligence
- deep learning
- end stage renal disease
- primary care
- adverse drug
- newly diagnosed
- ejection fraction
- chronic kidney disease
- patients undergoing
- acute care
- peritoneal dialysis
- risk assessment
- climate change