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Regression Forecasting of Patient Admission Data
Conference paper   Peer reviewed

Regression Forecasting of Patient Admission Data

J Boyle, Marianne Wallis, M Jessup, J Crilly, J Lind, P Miller and G Fitzgerald
Proceedings of the 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, pp.3819-3822
IEEE International Conference of the Engineering in Medicine and Biology Society (EMBC), 30th (Vancouver, Canada, 20-Aug-2008–24-Aug-2008)
IEEE (Institute of Electrical and Electronics Engineers)
2008

Abstract

Nursing
Forecasting is an important aid in many areas of hospital management, including elective surgery scheduling, bed management, and staff resourcing. This paper describes our work in analyzing patient admission data and forecasting this data using regression techniques. Five years of Emergency Department admissions data were obtained from two hospitals with different demographic techniques. Forecasts made from regression models were compared with observed admission data over a 6-month horizon. The best method was linear regression using 11 dummy variables to model monthly variation (MAPE=1.79%). Similar performance was achieved with a 2-year average, supporting further investigation at finer time scales.

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