Optimal Planning of Health Services through Genetic Algorithm and Discrete Event Simulation: A Proposed Model and Its Application to Stroke Rehabilitation Care.

MDM policy & practice Pub Date : 2022-10-22 eCollection Date: 2022-07-01 DOI:10.1177/23814683221134098
Charles Yan, Nathan McClure, Sean P Dukelow, Balraj Mann, Jeff Round
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引用次数: 1

Abstract

Background. Increasing demand for provision of care to stroke survivors creates challenges for health care planners. A key concern is the optimal alignment of health care resources between provision of acute care, rehabilitation, and among different segments of rehabilitation, including inpatient rehabilitation, early supported discharge (ESD), and outpatient rehabilitation (OPR). We propose a novel application of discrete event simulation (DES) combined with a genetic algorithm (GA) to identify the optimal configuration of rehabilitation that maximizes patient benefits subject to finite health care resources. Design. Our stroke rehabilitation optimal model (sROM) combines DES and GA to identify an optimal solution that minimizes wait time for each segment of rehabilitation by changing care capacity across different segments. sROM is initiated by generating parameters for DES. GA is used to evaluate wait time from DES. If wait time meets specified stopping criteria, the search process stops at a point at which optimal capacity is reached. If not, capacity estimates are updated, and an additional iteration of the DES is run. To parameterize the model, we standardized real-world data from medical records by fitting them into probability distributions. A meta-analysis was conducted to determine the likelihood of stroke survivors flowing across rehabilitation segments. Results. We predict that rehabilitation planners in Alberta, Canada, have the potential to improve services by increasing capacity from 75 to 113 patients per day for ESD and from 101 to 143 patients per day for OPR. Compared with the status quo, optimal capacity would provide ESD to 138 (s = 29.5) more survivors and OPR to 262 (s = 45.5) more annually while having an estimated net annual cost savings of $25.45 (s = 15.02) million. Conclusions. The combination of DES and GA can be used to estimate optimal service capacity.

Highlights: We created a hybrid model combining a genetic algorithm and discrete event simulation to search for the optimal configuration of health care service capacity that maximizes patient outcomes subject to finite health system resources.We applied a probability distribution fitting process to standardize real-world data to probability distributions. The process consists of choosing the distribution type and estimating the parameters of that distribution that best reflects the data. Standardizing real-word data to a best-fitted distribution can increase model generalizability.In an illustrative study of stroke rehabilitation care, resource allocation to stroke rehabilitation services under an optimal configuration allows provision of care to more stroke survivors who need services while reducing wait time.Resources needed to expand rehabilitation services could be reallocated from the savings due to reduced wait time in acute care units. In general, the predicted optimal configuration of stroke rehabilitation services is associated with a net cost savings to the health care system.

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基于遗传算法和离散事件模拟的医疗服务优化规划:一种模型及其在脑卒中康复护理中的应用。
背景。为中风幸存者提供护理的需求日益增加,这给卫生保健规划人员带来了挑战。一个关键问题是在提供急症护理、康复以及不同康复部分(包括住院康复、早期支持出院(ESD)和门诊康复(OPR))之间优化卫生保健资源。我们提出了一种新的应用离散事件模拟(DES)与遗传算法(GA)相结合,以确定在有限的医疗资源下使患者利益最大化的康复最佳配置。设计。我们的中风康复优化模型(sROM)结合了DES和GA,通过改变不同康复阶段的护理能力,确定了一个优化解决方案,使每个康复阶段的等待时间最小化。rom通过生成DES的参数来启动,GA从DES中计算等待时间,如果等待时间满足指定的停止条件,则在达到最佳容量的点停止搜索。如果没有,则更新容量估计,并运行DES的额外迭代。为了参数化模型,我们通过将医疗记录中的真实数据拟合到概率分布中来标准化它们。进行了一项荟萃分析,以确定中风幸存者跨越康复段的可能性。结果。我们预测,加拿大艾伯塔省的康复规划者有潜力通过将ESD的每天75名患者增加到113名患者,将OPR的每天101名患者增加到143名患者来改善服务。与现状相比,最佳容量将使ESD每年增加138人(s = 29.5), OPR每年增加262人(s = 45.5),同时估计每年净成本节省2545美元(s = 1502)万美元。结论。将遗传算法与遗传算法相结合,可用于估计最优服务容量。重点:我们创建了一个结合遗传算法和离散事件模拟的混合模型,以寻找在有限的卫生系统资源下,使患者结果最大化的卫生保健服务能力的最佳配置。我们应用概率分布拟合过程将真实世界的数据标准化为概率分布。这个过程包括选择分布类型和估计最能反映数据的分布的参数。将实际数据标准化为最佳拟合分布可以提高模型的泛化性。在一项卒中康复护理的说明性研究中,在最佳配置下,卒中康复服务的资源分配可以为更多需要服务的卒中幸存者提供护理,同时减少等待时间。扩大康复服务所需的资源可以从减少急症护理病房等待时间所节省的资金中重新分配。一般来说,预测中风康复服务的最佳配置与卫生保健系统的净成本节约有关。
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