Forecasting Elective Surgery Demand Using ARIMA-Machine Learning Hybrid Model

Xing Yee Leong, N. Jajo, S. Peiris, M. Khadra
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Abstract

Long wait times for elective surgery have not only caused patients to continue to live with inconvenience or pain but also creates frustrations and dissatisfaction with the local hospitals and healthcare systems. To deal with the increasing demand, hospitals need to be able to accurately predict the future demand to properly equip their facilities and the number of staff. In this paper, we propose various ARIMA-Machine Learning hybrid models to predict future elective surgery wait list demand. The goal of this paper is to improve the future demand predictions for hospital elective surgeries. We also compare our hybrid model to ARIMA and various Machine Learning/Deep Learning models, such as ANN, LSTM, and Random Forest. We found that ARIMA-ANN performed best with MAE of 0.26-0.76 and MSE of 0.13-1.05 with two-week-forward Urology, Orthopaedics and Gynecology elective surgery data.
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使用arima -机器学习混合模型预测选择性手术需求
择期手术的长时间等待不仅使患者继续生活在不便或痛苦中,而且还造成了对当地医院和医疗保健系统的沮丧和不满。为了应对不断增长的需求,医院需要能够准确预测未来的需求,以适当配备其设施和员工人数。在本文中,我们提出了各种arima -机器学习混合模型来预测未来选择性手术等待名单的需求。本文的目的是提高未来医院选择性手术的需求预测。我们还将我们的混合模型与ARIMA和各种机器学习/深度学习模型(如ANN、LSTM和Random Forest)进行了比较。我们发现ARIMA-ANN在泌尿外科、骨科和妇科择期手术两周前的数据中表现最好,MAE为0.26-0.76,MSE为0.13-1.05。
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