Seo Hyeram, Ahn Imjin, Gwon Hansle, Kang Heejun, Kim Yunha, Choi Heejung, Kim Minkyoung, Han Jiye, Kee Gaeun, Park Seohyun, Ko Soyoung, Jung HyoJe, Kim Byeolhee, Oh Jungsik, Jun Tae Joon, Kim Young-Hak
Department of Medical Science, Asan Medical Institute of Convergence Science and Technology, Asan Medical Center & University of Ulsan College of Medicine, Seoul, Republic of Korea.
Department of Information Medicine, Asan Medical Center, Seoul, Republic of Korea.
JMIR Med Inform. 2024 Mar 21;12:e53400. doi: 10.2196/53400.
Predicting the bed occupancy rate (BOR) is essential for efficient hospital resource management, long-term budget planning, and patient care planning. Although macro-level BOR prediction for the entire hospital is crucial, predicting occupancy at a detailed level, such as specific wards and rooms, is more practical and useful for hospital scheduling.
The aim of this study was to develop a web-based support tool that allows hospital administrators to grasp the BOR for each ward and room according to different time periods.
We trained time-series models based on long short-term memory (LSTM) using individual bed data aggregated hourly each day to predict the BOR for each ward and room in the hospital. Ward training involved 2 models with 7- and 30-day time windows, and room training involved models with 3- and 7-day time windows for shorter-term planning. To further improve prediction performance, we added 2 models trained by concatenating dynamic data with static data representing room-specific details.
We confirmed the results of a total of 12 models using bidirectional long short-term memory (Bi-LSTM) and LSTM, and the model based on Bi-LSTM showed better performance. The ward-level prediction model had a mean absolute error (MAE) of 0.067, mean square error (MSE) of 0.009, root mean square error (RMSE) of 0.094, and R score of 0.544. Among the room-level prediction models, the model that combined static data exhibited superior performance, with a MAE of 0.129, MSE of 0.050, RMSE of 0.227, and R score of 0.600. Model results can be displayed on an electronic dashboard for easy access via the web.
We have proposed predictive BOR models for individual wards and rooms that demonstrate high performance. The results can be visualized through a web-based dashboard, aiding hospital administrators in bed operation planning. This contributes to resource optimization and the reduction of hospital resource use.
预测床位占用率(BOR)对于高效的医院资源管理、长期预算规划和患者护理规划至关重要。虽然对整个医院进行宏观层面的BOR预测很关键,但对特定病房和房间等详细层面的占用情况进行预测,对医院排班更具实际意义和实用性。
本研究的目的是开发一种基于网络的支持工具,使医院管理人员能够根据不同时间段掌握每个病房和房间的BOR。
我们使用每天按小时汇总的个体床位数据训练基于长短期记忆(LSTM)的时间序列模型,以预测医院每个病房和房间的BOR。病房训练涉及2个分别具有7天和30天时间窗口的模型,房间训练涉及具有3天和7天时间窗口的模型用于短期规划。为进一步提高预测性能,我们添加了2个通过将动态数据与代表房间特定细节的静态数据连接起来进行训练的模型。
我们使用双向长短期记忆(Bi-LSTM)和LSTM确认了总共12个模型的结果,基于Bi-LSTM的模型表现更好。病房级预测模型的平均绝对误差(MAE)为0.067,均方误差(MSE)为0.009,均方根误差(RMSE)为0.094,R分数为0.544。在房间级预测模型中,结合静态数据的模型表现更优,MAE为0.129,MSE为0.050,RMSE为0.227,R分数为0.600。模型结果可显示在电子仪表板上,以便通过网络轻松访问。
我们提出了针对各个病房和房间的BOR预测模型,这些模型表现出高性能。结果可通过基于网络的仪表板进行可视化,有助于医院管理人员进行床位运营规划。这有助于资源优化和减少医院资源使用。