利用离散事件模拟和机器学习技术优化急诊科资源分配

Sina Moosavi Kashani, Elham Yavari, Toktam Khatibi
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摘要

背景:由于资源有限且成本高昂,优化急诊科(ED)的资源分配具有挑战性。研究目的本研究旨在利用数据挖掘算法和模拟建模来预测患者的住院时间(LOS),并对提高病床生产率的方案进行比较。方法:采用数据挖掘算法,包括随机森林(RF)回归和 CatBoost(CB)回归模型,根据患者人口统计学信息和生命体征预测住院时间。模拟急诊室从入院到出院的过程,并对不同情况进行比较,以确定提高病床生产率的策略。结果显示RF 回归和 CB 回归模型的组合在预测患者生命周期方面的表现优于其他方法。模拟建模表明,使用预测的 LOS 值可以实现最佳资源分配并提高病床生产率。结论:这项研究表明,数据挖掘和模拟相结合的方法可以有效管理急诊室资源,减少拥堵。研究结果凸显了先进分析技术在改善医疗服务和患者治疗效果方面的潜力。
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Optimizing Emergency Department Resource Allocation Using Discrete Event Simulation and Machine Learning Techniques
Background: Optimizing resource allocation in emergency departments (ED) is challenging due to limited resources and high costs. Objectives: The objective of this study was to utilize data mining algorithms and simulation modeling to predict the length of stay (LOS) of patients and compare scenarios for increasing bed productivity. Methods: Data mining algorithms, including Random Forest (RF) regression and CatBoost (CB) regression models, were used to predict the LOS based on patient demographic information and vital signs. The process of admission to discharge in the ED was simulated, and different scenarios were compared to identify strategies for increasing bed productivity. Results: The combination of RF regression and CB regression models performed better than other methods in predicting the LOS of patients. Simulation modeling demonstrated that optimal resource allocation and increased bed productivity could be achieved using predicted LOS values. Conclusions: This study demonstrates that a combined approach of data mining and simulation can effectively manage ED resources and reduce congestion. The findings highlight the potential of advanced analytical techniques for improving healthcare service delivery and patient outcomes.
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