School of Information Science and Technology, Research Centre for Intelligent Information Technology, Nantong University, Nantong, Jiangsu, China.
College of Science and Engineering, Flinders University, Adelaide, Australia.
Sci Rep. 2022 Aug 27;12(1):14634. doi: 10.1038/s41598-022-18570-5.
Hospital congestion is a common problem for the healthcare sector. However, existing approaches including hospital resource optimization and process improvement might lead to huge cost of human and physical structure changes. This study evaluated less disruptive interventions based on a hospital simulation model and offer objective reasoning to support hospital management decisions. This study tested a congestion prevention method that estimates hospital congestion risk level (R), and activates minimum intervention when R is above certain threshold, using a virtual hospital created by simulation modelling. The results indicated that applying a less disruptive intervention is often enough, and more cost effective, to reduce the risk level of hospital congestion. Moreover, the virtual implementation approach enabled testing of the method at a more detailed level, thereby revealed interesting findings difficult to achieve theoretically, such as discharging extra two medical inpatients, rather than surgical inpatients, a day earlier on days when R is above the threshold, would bring more benefits in terms of congestion reduction for the hospital.
医院拥堵是医疗保健领域的一个常见问题。然而,现有的方法,包括医院资源优化和流程改进,可能会导致巨大的人力和物力结构变化成本。本研究基于医院仿真模型评估了破坏性较小的干预措施,并提供客观的推理依据来支持医院管理决策。本研究测试了一种预防拥堵的方法,该方法估计医院拥堵风险水平(R),并在 R 超过某个阈值时激活最小干预,使用仿真建模创建的虚拟医院。结果表明,应用破坏性较小的干预措施通常足以降低医院拥堵风险水平,而且更具成本效益。此外,虚拟实施方法能够在更详细的层面上测试该方法,从而揭示了一些难以从理论上实现的有趣发现,例如在 R 超过阈值的日子里,每天提前两天出院两名额外的内科住院病人,而不是外科住院病人,对医院拥堵的缓解会带来更多的好处。