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首页> 外文期刊>Frontiers in Veterinary Science >Using Machine Learning to Predict Swine Movements within a Regional Program to Improve Control of Infectious Diseases in the US
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Using Machine Learning to Predict Swine Movements within a Regional Program to Improve Control of Infectious Diseases in the US

机译:在区域计划中使用机器学习预测猪的活动,以改善美国对传染病的控制

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摘要

Between-farm animal movement is one of the most important factors influencing the spread of infectious diseases in food animals, including in the US swine industry. Understanding the structural network of contacts in a food animal industry is prerequisite to planning for efficient production strategies and for effective disease control measures. Unfortunately, data regarding between farm animal movements in the US is not systematically collected and thus, such information is often unavailable. In this paper we develop a procedure to replicate the structure of a network, making use of partial data available, and subsequently use the model developed to predict animal movements among sites in 34 Minnesota counties. First, we summarized two partial networks of swine producing facilities in Minnesota, then we used a machine learning technique referred to as random forest (RF), an ensemble of independent classification trees, to estimate the probability of pig movements between farms and/or markets sites located in two counties in Minnesota. The model was calibrated and tested by comparing predicted to observed data in those two counties for which data were available. Finally, the model was used to predict animal movements in sites located across 34 Minnesota counties. Variables that were important in predicting pig movements included between-site distance, ownership, and production type of the sending and receiving farms and/or markets. Using a weighted-kernel approach to describe spatial variation in the centrality measures of the predicted network we showed that the south-central region of the study area exhibited high aggregation of predicted pig movements. Our results show an overlap with the distribution of outbreaks of porcine reproductive and respiratory syndrome (PRRS), which is believed to be transmitted, at least in part, though animal movements. While the correspondence of movements and disease is not a causal test; it suggests that the predicted network may approximate actual movements. Accordingly, the predictions provided here might help to design and implement control strategies in the region. Additionally, the methodology here may be used to estimate contact networks for other livestock systems when only incomplete information regarding animal movements is available.
机译:农场之间的动物流动是影响传染性疾病在包括美国养猪业在内的食用动物中传播的最重要因素之一。了解食用动物行业的人脉结构网络是规划有效生产策略和有效疾病控制措施的前提。不幸的是,由于没有系统地收集有关美国农场动物活动之间的数据,因此通常无法获得此类信息。在本文中,我们开发了一种程序来复制网络的结构,利用部分可用数据,随后使用开发的模型来预测明尼苏达州34个县之间站点之间的动物活动。首先,我们总结了明尼苏达州的两个养猪生产设施的部分网络,然后我们使用称为随机森林(RF)(一种独立分类树的集合)的机器学习技术来估计猪在农场和/或市场之间移动的可能性地点位于明尼苏达州的两个县。通过比较可获得数据的两个县的预测数据与观察数据,对模型进行了校准和测试。最后,该模型用于预测明尼苏达州34个县的动物迁徙情况。在预测生猪运动方面重要的变量包括站点之间的距离,所有权以及发送和接收农场和/或市场的生产类型。使用加权核方法来描述预测网络的中心度度量中的空间变化,我们表明研究区域的中南部地区展示了预测的猪运动的高度聚集。我们的结果显示与猪生殖和呼吸综合症(PRRS)的爆发分布重叠,据信这是通过动物运动至少部分传播的。运动与疾病的对应关系不是因果关系的检验;它表明预测的网络可以近似实际的运动。因此,此处提供的预测可能有助于设计和实施该地区的控制策略。另外,当仅可获得关于动物运动的不完整信息时,此处的方法可用于估计其他牲畜系统的联系网络。

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