Gorsich Erin E, McKee Clifton D, Grear Daniel A, Miller Ryan S, Portacci Katie, Lindström Tom, Webb Colleen T
Department of Biology, Colorado State University, Fort Collins, CO, USA.
Department of Biology, Colorado State University, Fort Collins, CO, USA.
Prev Vet Med. 2018 Feb 1;150:52-59. doi: 10.1016/j.prevetmed.2017.12.004. Epub 2017 Dec 6.
Risk-based sampling is an essential component of livestock health surveillance because it targets resources towards sub-populations with a higher risk of infection. Risk-based surveillance in U.S. livestock is limited because the locations of high-risk herds are often unknown and data to identify high-risk herds based on shipments are often unavailable. In this study, we use a novel, data-driven network model for the shipments of cattle in the U.S. (the U.S. Animal Movement Model, USAMM) to provide surveillance suggestions for cattle imported into the U.S. from Mexico. We describe the volume and locations where cattle are imported and analyze their predicted shipment patterns to identify counties that are most likely to receive shipments of imported cattle. Our results suggest that most imported cattle are sent to relatively few counties. Surveillance at 10 counties is predicted to sample 22-34% of imported cattle while surveillance at 50 counties is predicted to sample 43%-61% of imported cattle. These findings are based on the assumption that USAMM accurately describes the shipments of imported cattle because their shipments are not tracked separately from the remainder of the U.S. herd. However, we analyze two additional datasets - Interstate Certificates of Veterinary Inspection and brand inspection data - to ensure that the characteristics of potential post-import shipments do not change on an annual scale and are not dependent on the dataset informing our analyses. Overall, these results highlight the utility of USAMM to inform targeted surveillance strategies when complete shipment information is unavailable.
基于风险的抽样是牲畜健康监测的重要组成部分,因为它将资源瞄准感染风险较高的亚群体。美国牲畜的基于风险的监测受到限制,因为高风险畜群的位置往往未知,而且基于运输数据来识别高风险畜群的数据通常无法获取。在本研究中,我们使用一种新颖的、数据驱动的美国牛运输网络模型(美国动物移动模型,USAMM),为从墨西哥进口到美国的牛提供监测建议。我们描述了进口牛的数量和地点,并分析它们预测的运输模式,以识别最有可能接收进口牛运输的县。我们的结果表明,大多数进口牛被运往相对较少的县。预计对10个县进行监测可对22%-34%的进口牛进行抽样,而对50个县进行监测预计可对43%-61%的进口牛进行抽样。这些发现基于这样的假设,即USAMM准确描述了进口牛的运输情况,因为它们的运输没有与美国其余畜群分开跟踪。然而,我们分析了另外两个数据集——州际兽医检查证书和品牌检查数据——以确保潜在的进口后运输特征不会在年度尺度上发生变化,并且不依赖于为我们的分析提供信息的数据集。总体而言,这些结果凸显了在完整运输信息不可用时,USAMM对制定有针对性的监测策略的实用性。