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传播动力学与网络动力学。

The dynamics of transmission and the dynamics of networks.

作者信息

Farine Damien

机构信息

Department of Collective Behaviour, Max Planck Institute for Ornithology, 78457 Konstanz, Germany.

Chair of Biodiversity and Collective Behaviour, Department of Biology, University of Konstanz 78457, Konstanz, Germany.

出版信息

J Anim Ecol. 2017 May;86(3):415-418. doi: 10.1111/1365-2656.12659.

Abstract

A toy example depicted here highlighting the results of a study in this issue of the Journal of Animal Ecology that investigates the impact of network dynamics on potential disease outbreaks. Infections (stars) that spread by contact only (left) reduce the predicted outbreak size compared to situations where individuals can become infected by moving through areas that previously contained infected individuals (right). This is potentially important in species where individuals, or in this case groups, have overlapping ranges (as depicted on the top right). Incorporating network dynamics that maintain information about the ordering of contacts (central blocks; including the ordering of spatial overlap as noted by the arrows that highlight the blue group arriving after the red group in top-right of the figure) is important for capturing how a disease might not have the opportunity to spread to all individuals. By contrast, a static or 'average' network (lower blocks) does not capture any of these dynamics. Interestingly, although static networks generally predict larger outbreak sizes, the authors find that in cases when transmission probability is low, this prediction can switch as a result of changes in the estimated intensity of contacts among individuals. [Colour figure can be viewed at wileyonlinelibrary.com]. Springer, A., Kappeler, P.M. & Nunn, C.L. (2017) Dynamic vs. static social networks in models of parasite transmission: Predicting Cryptosporidium spread in wild lemurs. Journal of Animal Ecology, 86, 419-433. The spread of disease or information through networks can be affected by several factors. Whether and how these factors are accounted for can fundamentally change the predicted impact of a spreading epidemic. Springer, Kappeler & Nunn () investigate the role of different modes of transmission and network dynamics on the predicted size of a disease outbreak across several groups of Verreaux's sifakas, a group-living species of lemur. While some factors, such as seasonality, led to consistent differences in the structure of social networks, using dynamic vs. static representations of networks generated differences in the predicted outbreak size of an emergent disease. These findings highlight some of the challenges associated with studying disease dynamics in animal populations, and the importance of continuing efforts to develop the network tools needed to study disease spread.

摘要

此处展示了一个简单示例,突出了本期《动物生态学杂志》一项研究的结果,该研究调查了网络动态对潜在疾病爆发的影响。仅通过接触传播的感染(星号)(左图)与个体通过曾有感染个体的区域移动而被感染的情况(右图)相比,预测的爆发规模较小。这在个体(或在此例中为群体)活动范围重叠的物种中可能很重要(如右上角所示)。纳入能保留接触顺序信息的网络动态(中间部分;包括空间重叠顺序,如图右上角突出显示蓝色群体在红色群体之后到达的箭头所示)对于了解疾病可能没有机会传播到所有个体的情况很重要。相比之下,静态或“平均”网络(下方部分)无法体现这些动态。有趣的是,尽管静态网络通常预测的爆发规模更大,但作者发现,在传播概率较低的情况下,由于个体间估计接触强度的变化,这一预测可能会改变。[彩色图可在wileyonlinelibrary.com查看]。施普林格、卡佩勒、P.M.和纳恩、C.L.(2017年)。寄生虫传播模型中的动态与静态社会网络:预测隐孢子虫在野生狐猴中的传播。《动物生态学杂志》,86卷,419 - 4三百三十三页。疾病或信息在网络中的传播可能受多种因素影响。这些因素是否以及如何被考虑在内,可能从根本上改变对传播性流行病预测的影响。施普林格、卡佩勒和纳恩()研究了不同传播模式和网络动态对几群维氏冕狐猴(一种群居狐猴物种)疾病爆发预测规模的作用。虽然一些因素,如季节性,导致社交网络结构存在一致差异,但使用网络的动态与静态表示法会使新出现疾病的预测爆发规模产生差异。这些发现凸显了研究动物种群疾病动态所面临的一些挑战,以及持续努力开发研究疾病传播所需网络工具的重要性。

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