Department of Biological Science and Mathematics Institute, University of Warwick, Coventry CV4 7AL, UK.
Proc Natl Acad Sci U S A. 2010 May 11;107(19):8866-70. doi: 10.1073/pnas.1000416107. Epub 2010 Apr 26.
The theory of networks has had a huge impact in both the physical and life sciences, shaping our understanding of the interaction between multiple elements in complex systems. In particular, networks have been extensively used in predicting the spread of infectious diseases where individuals, or populations of individuals, interact with a limited set of others-defining the network through which the disease can spread. Here for such disease models we consider three assumptions for capturing the network of movements between populations, and focus on two applied problems supported by detailed data from Great Britain: the commuter movement of workers between local areas (wards) and the permanent movement of cattle between farms. For such metapopulation networks, we show that the identity of individuals responsible for making network connections can have a significant impact on the infection dynamics, with clear implications for detailed public health and veterinary applications.
网络理论在物理和生命科学领域都产生了巨大的影响,它改变了我们对复杂系统中多个元素相互作用的理解。特别是,网络已经被广泛应用于预测传染病的传播,其中个体或个体群体与有限数量的其他人相互作用——通过网络来定义疾病传播的途径。在这里,我们考虑了三种用于捕捉种群之间运动网络的假设,并关注了两个由英国详细数据支持的应用问题:工人在当地(病房)之间的通勤运动和牛在农场之间的永久运动。对于这种复合种群网络,我们表明,负责建立网络连接的个体的身份可能对感染动态产生重大影响,这对详细的公共卫生和兽医应用有明确的影响。