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Models of Emergency Departments for Reducing Patient Waiting Times

机译:减少病人等待时间的急诊科模式

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摘要

In this paper, we apply both agent-based models and queuing models to investigate patient access and patient flow through emergency departments. The objective of this work is to gain insights into the comparative contributions and limitations of these complementary techniques, in their ability to contribute empirical input into healthcare policy and practice guidelines. The models were developed independently, with a view to compare their suitability to emergency department simulation. The current models implement relatively simple general scenarios, and rely on a combination of simulated and real data to simulate patient flow in a single emergency department or in multiple interacting emergency departments. In addition, several concepts from telecommunications engineering are translated into this modeling context. The framework of multiple-priority queue systems and the genetic programming paradigm of evolutionary machine learning are applied as a means of forecasting patient wait times and as a means of evolving healthcare policy, respectively. The models' utility lies in their ability to provide qualitative insights into the relative sensitivities and impacts of model input parameters, to illuminate scenarios worthy of more complex investigation, and to iteratively validate the models as they continue to be refined and extended. The paper discusses future efforts to refine, extend, and validate the models with more data and real data relative to physical (spatial–topographical) and social inputs (staffing, patient care models, etc.). Real data obtained through proximity location and tracking system technologies is one example discussed.
机译:在本文中,我们同时应用了基于代理的模型和排队模型,以调查通过急诊室的患者出入情况和患者流向。这项工作的目的是深入了解这些补充技术的比较贡献和局限性,以帮助他们为医疗保健政策和实践指南提供经验输入。这些模型是独立开发的,旨在将其适用性与急诊部门模拟进行比较。当前的模型实现了相对简单的一般方案,并依赖于模拟数据和真实数据的组合来模拟单个急诊室或多个交互急诊室中的患者流量。此外,将电信工程学的一些概念转换为此建模上下文。多优先级队列系统的框架和进化机器学习的遗传编程范例分别被用作预测患者等待时间的手段和发展卫生保健政策的手段。该模型的用途在于能够对模型输入参数的相对敏感性和影响提供定性见解,阐明值得进行更复杂调查的方案以及在模型不断完善和扩展时反复验证模型的能力。本文讨论了未来的努力,以通过相对于物理(空间-地形)和社会投入(人员,患者护理模型等)的更多数据和实际数据来完善,扩展和验证模型。讨论了通过邻近定位和跟踪系统技术获得的真实数据。

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