| Literature DB >> 34151986 |
Alexander J Ryu1, Santiago Romero-Brufau2, Narges Shahraki3, Jiawei Zhang4, Ray Qian5, Thomas C Kingsley1.
Abstract
Hospital census prediction has well-described implications for efficient hospital resource utilization, and recent issues with hospital crowding due to CoVID-19 have emphasized the importance of this task. Our team has been leading an institutional effort to develop machine-learning models that can predict hospital census 12 hours into the future. We describe our efforts at developing accurate empirical models for this task. Ultimately, with limited resources and time, we were able to develop simple yet useful models for 12-hour census prediction and design a dashboard application to display this output to our hospital's decision-makers. Specifically, we found that linear models with ElasticNet regularization performed well for this task with relative 95% error of +/- 3.4% and that this work could be completed in approximately 7 months.Entities:
Keywords: forecasting; hospital census; inpatient; machine learning
Year: 2021 PMID: 34151986 DOI: 10.1093/jamia/ocab089
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497