Programs
- M. Tech. in Automotive Engineering -
- Clinical Fellowship in Laboratory Genetics & Genomics - Fellowship
Publication Type : Conference Paper
Publisher : IEEE
Source : In Proceedings of IEEE International Conference on Healthcare Informatics, 2016, DOI: 10.1109/ICHI.2016.26
Url : https://ieeexplore.ieee.org/document/7776342
Campus : Amritapuri
School : School for Sustainable Futures
Year : 2016
Abstract : Modelling patient flow is crucial in understanding resource demand and prioritization. To date, there has been limited work in predicting ward-level discharges. Our study investigates forecasting total next-day discharges from an open ward. In the absence of real-time clinical data, we propose to construct a feature set from patient demographics, ward data and discharge time series to derive a random forest model for forecasting daily discharge. Using data from a general ward of a large regional Australian hospital, we compared our random forest model with a classical auto-regressive integrated moving average (ARIMA) for 12,141 patient visits over 1826 days. Forecasting quality was measured using Mean Forecast Error, Mean Absolute Error, symmetric Mean Absolute Percentage Error and Root Mean Square Error. When compared to the baseline model, next day discharge forecasts using random forests achieved 17.4 % improvement in Mean Absolute Error, for all days in the year 2014.
Cite this Research Publication : S. Gopakumar, T. Tran, W. Luo, D. Phung, and S. Venkatesh, "Forecasting patient outflow from wards having no real-time clinical data," In Proceedings of IEEE International Conference on Healthcare Informatics, 2016, DOI: 10.1109/ICHI.2016.26