Kukielka Esther Andrea, Martínez-López Beatriz, Beltrán-Alcrudo Daniel
Center for Animal Disease Modeling and Surveillance (CADMS), Department of Medicine & Epidemiology, School of Veterinary Medicine, University of California, Davis, California, United States of America.
Food and Agriculture Organization, FAO Budapest, Hungary.
PLoS One. 2017 Jun 9;12(6):e0178904. doi: 10.1371/journal.pone.0178904. eCollection 2017.
Live pig trade patterns, drivers and characteristics, particularly in backyard predominant systems, remain largely unexplored despite their important contribution to the spread of infectious diseases in the swine industry. A better understanding of the pig trade dynamics can inform the implementation of risk-based and more cost-effective prevention and control programs for swine diseases. In this study, a semi-structured questionnaire elaborated by FAO and implemented to 487 farmers was used to collect data regarding basic characteristics about pig demographics and live-pig trade among villages in the country of Georgia, where very scarce information is available. Social network analysis and exponential random graph models were used to better understand the structure, contact patterns and main drivers for pig trade in the country. Results indicate relatively infrequent (a total of 599 shipments in one year) and geographically localized (median Euclidean distance between shipments = 6.08 km; IQR = 0-13.88 km) pig movements in the studied regions. The main factors contributing to live-pig trade movements among villages were being from the same region (i.e., local trade), usage of a middleman or a live animal market to trade live pigs by at least one farmer in the village, and having a large number of pig farmers in the village. The identified villages' characteristics and structural network properties could be used to inform the design of more cost-effective surveillance systems in a country which pig industry was recently devastated by African swine fever epidemics and where backyard production systems are predominant.
尽管生猪活体贸易模式、驱动因素和特点,尤其是在以小规模养殖为主的体系中,对猪业传染病传播有着重要影响,但在很大程度上仍未得到充分探索。更好地了解生猪贸易动态可以为实施基于风险且更具成本效益的猪病防控计划提供依据。在本研究中,粮农组织编制并向487名养殖户发放的半结构化问卷,用于收集格鲁吉亚村庄生猪数量及生猪活体贸易的基本特征数据,该国这方面信息非常匮乏。运用社会网络分析和指数随机图模型,以更好地了解该国生猪贸易的结构、联系模式和主要驱动因素。结果表明,在研究区域内,生猪运输相对较少(一年共599次运输)且地域集中(运输之间的欧几里得距离中位数 = 6.08公里;四分位距 = 0 - 13.88公里)。导致村庄间生猪活体贸易运输的主要因素包括来自同一地区(即本地贸易)、至少有一名养殖户通过中间商或牲畜活体市场进行生猪贸易,以及村庄内有大量养猪户。在一个猪业最近因非洲猪瘟疫情而遭受重创且以小规模养殖生产体系为主的国家,所确定的村庄特征和结构网络属性可用于设计更具成本效益的监测系统。