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Queue-based features for dynamic waiting time prediction in emergency department

机译:基于队列的功能可动态预测急诊科的等待时间

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Purpose - The purpose of this study is twofold: exploring new queue-based variables enabled by process mining and evaluating their impact on the accuracy of waiting time prediction. Such queue-based predictors that capture the current state of the emergency department (ED) may lead to a significant improvement in the accuracy of the prediction models. Design/methodology/approach - Alongside the traditional variables influencing ED waiting time, the authors developed new queue-based predictors exploiting process mining. Process mining techniques allowed the authors to discover the actual patient-flow and derive information about the crowding level of the activities. The proposed predictors were evaluated using linear and nonlinear learning techniques. The authors used real data from an ED. Findings - As expected, the main results show that integrating the set of predictors with queue-based variables significantly improves the accuracy of waiting time prediction. Specifically, mean square error values were reduced by about 22 and 23 per cent by applying linear and nonlinear learning techniques, respectively. Practical implications - Accurate estimates of waiting time can enable the ED systems to prevent overcrowding e.g. improving the routing of patients in EDs and managing more efficiently the resources. Providing accurate waiting time information also can lead to decreased patients' dissatisfaction and elopement. Originality/value - The novelty of the study relies on the attempt to derive queue-based variables reporting the crowding level of the activities within the ED through process mining techniques. Such information is often unavailable or particularly difficult to extract automatically, due to the characteristics of ED processes.
机译:目的-这项研究的目的是双重的:探索通过流程挖掘实现的基于队列的新变量,并评估它们对等待时间预测准确性的影响。此类捕获应急部门(ED)当前状态的基于队列的预测器可能会导致预测模型准确性的显着提高。设计/方法/方法-除了影响ED等待时间的传统变量外,作者还利用过程挖掘开发了新的基于队列的预测器。过程挖掘技术使作者能够发现实际的病人流,并获得有关活动拥挤程度的信息。使用线性和非线性学习技术对提出的预测指标进行了评估。作者使用了来自ED的真实数据。发现-预期的是,主要结果表明,将预测变量集与基于队列的变量集成在一起可以显着提高等待时间预测的准确性。具体来说,通过应用线性和非线性学习技术,均方误差值分别降低了约22%和23%。实际意义-准确的等待时间估计可以使ED系统防止拥挤,例如改善急诊部的患者选路,并更有效地管理资源。提供准确的等待时间信息还可以减少患者的不满和私奔。原创性/价值-研究的新颖性在于尝试通过过程挖掘技术来得出基于队列的变量,以报告ED中活动的拥挤程度。由于ED过程的特性,此类信息通常不可用或特别难以自动提取。

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