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Data-driven optimization methodology for admission control in critical care units

机译:批判性监护单元中的录取控制的数据驱动优化方法

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The decision of whether to admit a patient to a critical care unit is a crucial operational problem that has significant influence on both hospital performance and patient outcomes. Hospitals currently lack a methodology to selectively admit patients to these units in a way that patient health risk metrics can be incorporated while considering the congestion that will occur. The hospital is modeled as a complex loss queueing network with a stochastic model of how long risk-stratified patients spend time in particular units and how they transition between units. A Mixed Integer Programming model approximates an optimal admission control policy for the network of units. While enforcing low levels of patient blocking, we optimize a monotonic dual-threshold admission policy. A hospital network including Intermediate Care Units (IMCs) and Intensive Care Units (ICUs) was considered for validation. The optimized model indicated a reduction in the risk levels required for admission, and weekly average admissions to ICUs and IMCs increased by 37% and 12%, respectively, with minimal blocking. Our methodology captures utilization and accessibility in a network model of care pathways while supporting the personalized allocation of scarce care resources to the neediest patients. The interesting benefits of admission thresholds that vary by day of week are studied.
机译:是否承认患者对关键护理单位的决定是一个至关重要的业务问题,对医院性能和患者结果有重大影响。医院目前缺乏选择性地承认患者以患者健康风险指标可以在考虑将发生的拥塞时纳入这些单位的方法。该医院被建模为复杂的损失排队网络,其随机模型是风险分层患者在特定单位的时间花费时间以及它们在单位之间的转换方式。混合整数编程模型近似于单位网络的最佳录取控制策略。在执行低水平的患者阻止的同时,我们优化单调双阈值入学政策。考虑了包括中间护理单位(IMC)和重症监护单元(ICU)的医院网络进行验证。优化模型表明入院所需的风险水平降低,每周平均入学ICU和IMC分别增加37%和12%,封闭最小。我们的方法论在护理途径网络模型中捕获利用率和可访问性,同时支持对最佳患者的个性化分配稀缺的护理资源。研究了一周内各不等的入学阈值的有趣益处。

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