| Literature DB >> 35814619 |
Kanix Wang1, Walid Hussain2, John R Birge1, Michael D Schreiber2, Daniel Adelman3.
Abstract
Having an interpretable dynamic length-of-stay (LOS) model can help hospital administrators and clinicians make better decisions and improve the quality of care. The widespread implementation of electronic medical record (EMR) systems has enabled hospitals to collect massive amounts of health data. However, how to integrate this deluge of data into healthcare operations remains unclear. We propose a framework grounded in established clinical knowledge to model patients' lengths-of-stay. In particular, we impose expert knowledge when grouping raw clinical data into medically meaningful variables, which summarize patients' health trajectories. We use dynamic predictive models to output patients' remaining lengths-of-stay (RLOS), future discharges, and census probability distributions based on their health trajectories up to the current stay. Evaluated with large-scale EMR data, the dynamic model significantly improves predictive power over the performance of any model in previous literature and remains medically interpretable.Entities:
Keywords: computational methods; healthcare; hospitals; nonparametric; statistics
Year: 2021 PMID: 35814619 PMCID: PMC9262254 DOI: 10.1287/ijoc.2021.1062
Source DB: PubMed Journal: INFORMS J Comput ISSN: 1091-9856 Impact factor: 3.288