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Applying Scenario Reduction Heuristics in Stochastic Programming for Phlebotomist Scheduling

机译:情景归约启发式方法在随机规划的抽血者调度中的应用

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Laboratory services in healthcare play a vital role in inpatient care. Studies have indicated laboratory data affect approximately 65% of the most critical decisions on admission, discharge, and medication. This research focuses on improving phlebotomist performance in laboratory facilities of large hospital systems. A two-stage stochastic integer linear programming (SILP) model is formulated to determine better weekly phlebotomist schedules and blood collection assignments. The objective of the two-stage SILP model is to balance the workload of the phlebotomists within and between shifts, as reducing workload imbalance will result in improved patient care. Due to the size of the two-stage SILP model, a scenario reduction model has been proposed as a solution approach. The scenario reduction heuristic is formulated as a linear programming model and the results indicate the scenarios with the largest likelihood of occurrence. These selected scenarios will be tested in the two-stage SILP model to determine weekly scheduling policies and blood draw assignments that will balance phlebotomist workload and improve overall performance.
机译:医疗保健中的实验室服务在住院治疗中起着至关重要的作用。研究表明,实验室数据影响着大约65%的关于入院,出院和用药的最关键决定。这项研究的重点是在大型医院系统的实验室设施中改善抽血者的表现。建立了两阶段随机整数线性规划(SILP)模型,以确定更好的每周静脉抽血计划和血液采集分配。两阶段SILP模型的目的是在轮班期间和轮班之间平衡采血医生的工作量,因为减少工作量不平衡将改善患者的护理。由于两阶段SILP模型的规模,已经提出了一种方案减少模型作为解决方案。将方案减少启发式公式化为线性规划模型,结果表明发生可能性最大的方案。这些选定的方案将在两阶段的SILP模型中进行测试,以确定每周调度策略和抽血分配,以平衡抽血治疗师的工作量并改善整体性能。

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