Artificial Neural Network Predictions of Lengths of Stay on a Post-Coronary Care Unit
Document Type
Article
Publication Date
1-1-1995
Description
Objective: To create and validate a model that predicts length of hospital unit stay. Design: Ex post facto. Seventy-four independent admission variables in 15 general categories were utilized to predict possible stays of 1 to 20 days. Setting: Laboratory. Sample: Records of patients discharged from a post-coronary care unit in early 1993. Results: An artificial neural network was trained on 629 records and tested on an additional 127 records of patients. The absolute disparity between the actual lengths of stays in the test records and the predictions of the network averaged 1.4 days per record, and the actual length of stay was predicted within 1 day 72% of the time. Conclusions: The artificial neural network demonstrated the capacity to utilize common patient admission characteristics to predict lengths of stay. This technology shows promise in aiding timely initiation of treatment and effective resource planning and cost control.
Citation Information
Mobley, Bert A.; Leasure, Renee; and Davidson, Lynda. 1995. Artificial Neural Network Predictions of Lengths of Stay on a Post-Coronary Care Unit. Heart and Lung - The Journal of Acute and Critical Care. Vol.24(3). 251-256. https://doi.org/10.1016/S0147-9563(05)80045-7 PMID: 7622400 ISSN: 0147-9563