基于多区域agent的流行病动力学模型中疫苗接种和感染风险的空间差异

IF 2.2 3区 工程技术 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY
Myong-Hun Chang, Troy Tassier
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引用次数: 0

摘要

我们调查了地区疫苗覆盖率差异对未接种疫苗个体感染风险的影响。为了解决这一问题,我们开发了一个基于agent的流行病计算模型,该模型具有两个特征:1)人口分布在多个疫苗覆盖率不同的地区;2)允许区域内互动和区域间互动的个人联系网络。该模型的基准版本是使用加州县级流感疫苗索赔率来指定的。我们通过保持政府疫苗接种水平不变,同时改变区域疫苗覆盖分布的差异,来隔离异质性的影响。我们发现,平均而言,空间异质性的增加导致了更大的流行病。当网络的接触结构中存在更多的区域间连接时,这种效应会被放大。本文的中心结果是,感染风险与疫苗接种率测量的地理分辨率之间存在非单调关系。未接种疫苗的个人感染风险在全球疫苗接种率和个人特定接触者的疫苗接种率中均有所降低。令人惊讶的是,我们发现,在我们的模型中,个人家庭地区的疫苗接种率对个人的感染风险没有显著影响。这对个人的疫苗选择具有重要意义。全球和地方(特定网络)疫苗接种率与感染风险高度相关,因此应优先作为理性决策的信息来源。然而,使用特定于区域的信息很可能导致非最优决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial Disparities in Vaccination and the Risk of Infection in a Multi-Region Agent-Based Model of Epidemic Dynamics
: We investigate the impact that disparities in regional vaccine coverage have on the risk of infection for an unvaccinated individual. To address this issue, we develop an agent-based computational model of epidemics with two features: 1) a population divided among multiple regions with heterogeneous vaccine coverage; 2) contact networks for individuals that allow for both intra-regional interactions and inter-regional interactions. The benchmark version of the model is specified using county-level flu vaccination claims rates from California. Weisolatetheeffectsofheterogeneitybyholdingoverallvaccinationlevelsconstant, whilechanging the variance in the distribution of regional vaccine coverage. We find that an increase in spatial heterogeneity leads to larger epidemics on average. This effect is magnified when more inter-regional connections exist in the contact structure of the networks. The central result in the paper is that there is a non-monotonic relationship between the infection risk and the geographic resolution of vaccination rate measurement. Infection risk of an unvaccinated individual decreases in both the global rate of vaccinations and the rate of vaccination of the individual’s specific contacts. Surprisingly, we find that the vaccination rate in an individual’s home region does not have a significant impact on an individual’s infection risk in our model. This has significant implications for an individual’s vaccine choices. Global and local (network specific) vaccination rates are highly correlated with infection risk and thus should be prioritized as information sources for rational decision-making. Using the region-specific information, however, is likely to lead to non-optimal decisions.
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来源期刊
CiteScore
7.40
自引率
9.50%
发文量
16
审稿时长
21 weeks
期刊介绍: The Journal of Artificial Societies and Social Simulation is an interdisciplinary journal for the exploration and understanding of social processes by means of computer simulation. Since its first issue in 1998, it has been a world-wide leading reference for readers interested in social simulation and the application of computer simulation in the social sciences. Original research papers and critical reviews on all aspects of social simulation and agent societies that fall within the journal"s objective to further the exploration and understanding of social processes by means of computer simulation are welcome.
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