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使用遗传算法寻找大流行性流感的最佳疫苗接种策略。

Finding optimal vaccination strategies for pandemic influenza using genetic algorithms.

作者信息

Patel Rajan, Longini Ira M, Halloran M Elizabeth

机构信息

Department of Biostatistics, The Rollins School of Public Health, Emory University, 1518 Clifton Road, Atlanta, GA 30322, USA.

出版信息

J Theor Biol. 2005 May 21;234(2):201-12. doi: 10.1016/j.jtbi.2004.11.032. Epub 2005 Jan 20.

DOI:10.1016/j.jtbi.2004.11.032
PMID:15757679
Abstract

In the event of pandemic influenza, only limited supplies of vaccine may be available. We use stochastic epidemic simulations, genetic algorithms (GA), and random mutation hill climbing (RMHC) to find optimal vaccine distributions to minimize the number of illnesses or deaths in the population, given limited quantities of vaccine. Due to the non-linearity, complexity and stochasticity of the epidemic process, it is not possible to solve for optimal vaccine distributions mathematically. However, we use GA and RMHC to find near optimal vaccine distributions. We model an influenza pandemic that has age-specific illness attack rates similar to the Asian pandemic in 1957-1958 caused by influenza A(H2N2), as well as a distribution similar to the Hong Kong pandemic in 1968-1969 caused by influenza A(H3N2). We find the optimal vaccine distributions given that the number of doses is limited over the range of 10-90% of the population. While GA and RMHC work well in finding optimal vaccine distributions, GA is significantly more efficient than RMHC. We show that the optimal vaccine distribution found by GA and RMHC is up to 84% more effective than random mass vaccination in the mid range of vaccine availability. GA is generalizable to the optimization of stochastic model parameters for other infectious diseases and population structures.

摘要

在大流行性流感发生时,疫苗供应可能有限。我们使用随机流行病模拟、遗传算法(GA)和随机突变爬山法(RMHC)来寻找最佳疫苗分配方案,以便在疫苗数量有限的情况下,尽量减少人群中的患病或死亡人数。由于疫情过程的非线性、复杂性和随机性,无法通过数学方法求解最佳疫苗分配方案。然而,我们使用遗传算法和随机突变爬山法来寻找接近最佳的疫苗分配方案。我们模拟了一种流感大流行,其特定年龄的疾病攻击率与1957 - 1958年由甲型(H2N2)流感引起的亚洲大流行相似,以及一种分布与1968 - 1969年由甲型(H3N2)流感引起的香港大流行相似。我们在疫苗剂量限制在人群的10% - 90%范围内的情况下,找到了最佳疫苗分配方案。虽然遗传算法和随机突变爬山法在寻找最佳疫苗分配方案方面效果良好,但遗传算法比随机突变爬山法效率显著更高。我们表明,在疫苗供应的中等范围内,遗传算法和随机突变爬山法找到的最佳疫苗分配方案比随机大规模接种的效果高出84%。遗传算法可推广用于优化其他传染病和人群结构的随机模型参数。

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