Department of Biology, Stanford University, Stanford, California, United States of America.
PLoS Comput Biol. 2010 Apr 8;6(4):e1000736. doi: 10.1371/journal.pcbi.1000736.
The dynamics of infectious diseases spread via direct person-to-person transmission (such as influenza, smallpox, HIV/AIDS, etc.) depends on the underlying host contact network. Human contact networks exhibit strong community structure. Understanding how such community structure affects epidemics may provide insights for preventing the spread of disease between communities by changing the structure of the contact network through pharmaceutical or non-pharmaceutical interventions. We use empirical and simulated networks to investigate the spread of disease in networks with community structure. We find that community structure has a major impact on disease dynamics, and we show that in networks with strong community structure, immunization interventions targeted at individuals bridging communities are more effective than those simply targeting highly connected individuals. Because the structure of relevant contact networks is generally not known, and vaccine supply is often limited, there is great need for efficient vaccination algorithms that do not require full knowledge of the network. We developed an algorithm that acts only on locally available network information and is able to quickly identify targets for successful immunization intervention. The algorithm generally outperforms existing algorithms when vaccine supply is limited, particularly in networks with strong community structure. Understanding the spread of infectious diseases and designing optimal control strategies is a major goal of public health. Social networks show marked patterns of community structure, and our results, based on empirical and simulated data, demonstrate that community structure strongly affects disease dynamics. These results have implications for the design of control strategies.
通过直接人际传播(如流感、天花、艾滋病毒/艾滋病等)传播的传染病动力学取决于潜在的宿主接触网络。人类接触网络具有很强的社区结构。了解这种社区结构如何影响流行病传播,可能有助于通过改变接触网络的结构(通过药物或非药物干预)来预防社区之间疾病的传播。我们使用经验和模拟网络来研究具有社区结构的网络中的疾病传播。我们发现社区结构对疾病动力学有重大影响,并且表明在具有强社区结构的网络中,针对跨越社区的个体的免疫干预措施比仅针对高度连接的个体的免疫干预措施更有效。由于相关接触网络的结构通常未知,并且疫苗供应通常有限,因此需要有效的疫苗接种算法,而无需完全了解网络。我们开发了一种仅基于本地可用网络信息并能够快速识别成功免疫干预目标的算法。当疫苗供应有限时,该算法通常优于现有算法,特别是在具有强社区结构的网络中。了解传染病的传播和设计最佳控制策略是公共卫生的主要目标。社交网络显示出明显的社区结构模式,我们基于经验和模拟数据的结果表明,社区结构强烈影响疾病动力学。这些结果对控制策略的设计具有影响。