Relun Anne, Grosbois Vladimir, Alexandrov Tsviatko, Sánchez-Vizcaíno Jose M, Waret-Szkuta Agnes, Molia Sophie, Etter Eric Marcel Charles, Martínez-López Beatriz
Center for Animal Disease Modeling and Surveillance (CADMS), VM: Medicine and Epidemiology, University of California Davis, Davis, CA, USA; CIRAD, UPR AGIRs, Montpellier, France.
CIRAD, UPR AGIRs , Montpellier , France.
Front Vet Sci. 2017 Mar 3;4:27. doi: 10.3389/fvets.2017.00027. eCollection 2017.
In most European countries, data regarding movements of live animals are routinely collected and can greatly aid predictive epidemic modeling. However, the use of complete movements' dataset to conduct policy-relevant predictions has been so far limited by the massive amount of data that have to be processed (e.g., in intensive commercial systems) or the restricted availability of timely and updated records on animal movements (e.g., in areas where small-scale or extensive production is predominant). The aim of this study was to use exponential random graph models (ERGMs) to reproduce, understand, and predict pig trade networks in different European production systems. Three trade networks were built by aggregating movements of pig batches among premises (farms and trade operators) over 2011 in Bulgaria, Extremadura (Spain), and Côtes-d'Armor (France), where small-scale, extensive, and intensive pig production are predominant, respectively. Three ERGMs were fitted to each network with various demographic and geographic attributes of the nodes as well as six internal network configurations. Several statistical and graphical diagnostic methods were applied to assess the goodness of fit of the models. For all systems, both exogenous (attribute-based) and endogenous (network-based) processes appeared to govern the structure of pig trade network, and neither alone were capable of capturing all aspects of the network structure. Geographic mixing patterns strongly structured pig trade organization in the small-scale production system, whereas belonging to the same company or keeping pigs in the same housing system appeared to be key drivers of pig trade, in intensive and extensive production systems, respectively. Heterogeneous mixing between types of production also explained a part of network structure, whichever production system considered. Limited information is thus needed to capture most of the global structure of pig trade networks. Such findings will be useful to simplify trade networks analysis and better inform European policy makers on risk-based and more cost-effective prevention and control against swine diseases such as African swine fever, classical swine fever, or porcine reproductive and respiratory syndrome.
在大多数欧洲国家,有关活动物流动的数据会定期收集,这对预测性流行病建模大有帮助。然而,到目前为止,由于需要处理海量数据(如在集约化商业系统中),或者动物流动的及时更新记录获取受限(如在小规模或粗放型生产占主导的地区),利用完整的流动数据集进行与政策相关的预测受到了限制。本研究的目的是使用指数随机图模型(ERGM)来再现、理解和预测不同欧洲生产系统中的生猪贸易网络。通过汇总2011年保加利亚、埃斯特雷马杜拉(西班牙)和阿摩尔滨海省(法国)各场所(农场和贸易商)之间猪批次的流动情况,构建了三个贸易网络,这三个地区分别以小规模、粗放型和集约化生猪生产为主。针对每个网络,拟合了三个ERGM,其中包含节点的各种人口统计学和地理属性以及六种内部网络配置。应用了多种统计和图形诊断方法来评估模型的拟合优度。对于所有系统,外生(基于属性)和内生(基于网络)过程似乎都对生猪贸易网络的结构起支配作用,单独任何一个都无法捕捉网络结构的所有方面。地理混合模式在小规模生产系统中强烈构建了生猪贸易组织,而在集约化和粗放型生产系统中,分别属于同一家公司或在同一饲养系统中养猪似乎是生猪贸易的关键驱动因素。无论考虑哪种生产系统,不同生产类型之间的异质混合也解释了部分网络结构。因此,只需有限的信息就能捕捉生猪贸易网络的大部分全局结构。这些发现将有助于简化贸易网络分析,并为欧洲政策制定者提供更有效的信息,以便基于风险并更具成本效益地预防和控制非洲猪瘟、经典猪瘟或猪繁殖与呼吸综合征等猪病。