Predictive and Reactive Distribution of Vaccines and Antivirals during Cross-Regional Pandemic Outbreaks.

Influenza research and treatment Pub Date : 2011-01-01 Epub Date: 2011-06-05 DOI:10.1155/2011/579597
Andrés Uribe-Sánchez, Alex Savachkin
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Abstract

As recently pointed out by the Institute of Medicine, the existing pandemic mitigation models lack the dynamic decision support capability. We develop a large-scale simulation-driven optimization model for generating dynamic predictive distribution of vaccines and antivirals over a network of regional pandemic outbreaks. The model incorporates measures of morbidity, mortality, and social distancing, translated into the cost of lost productivity and medical expenses. The performance of the strategy is compared to that of the reactive myopic policy, using a sample outbreak in Fla, USA, with an affected population of over four millions. The comparison is implemented at different levels of vaccine and antiviral availability and administration capacity. Sensitivity analysis is performed to assess the impact of variability of some critical factors on policy performance. The model is intended to support public health policy making for effective distribution of limited mitigation resources.

Abstract Image

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跨区域大流行爆发期间疫苗和抗病毒药物的预测和反应性分布。
正如医学研究所最近指出的那样,现有的大流行缓解模型缺乏动态决策支持能力。我们开发了一个大规模的模拟驱动的优化模型,用于在区域大流行爆发的网络上生成疫苗和抗病毒药物的动态预测分布。该模型结合了发病率、死亡率和社会距离的措施,转化为生产力损失和医疗费用。该策略的表现与反应性近视政策的表现进行了比较,使用了美国佛罗里达州的一次样本爆发,受影响人口超过400万。比较是在疫苗和抗病毒药物的可得性和给药能力的不同水平上进行的。进行敏感性分析,以评估一些关键因素的可变性对政策绩效的影响。该模型旨在支持公共卫生政策的制定,以有效分配有限的缓解资源。
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