A network evaluation of human and animal movement data across multiple swine farm systems in North America

IF 2.2 2区 农林科学 Q1 VETERINARY SCIENCES
Tara Prezioso , Alicia Boakes , Jeff Wrathall , W. Jonas Reger , Suman Bhowmick , Rebecca Lee Smith
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引用次数: 0

Abstract

Introduction

The U.S. swine industry is vulnerable to the rapid spread of disease due to systemic structural issues. While animal movement networks are used to identify disease spread risks and design response plans, human movement between farms were rarely accounted for. Human movements, when integrated with animal movement models, create a different, more inclusive, and accurate network structure when compared to animal movements alone.

Methods

One year of propriety farm visit data was analyzed and consisted of anonymized property IDs, location, and user/truck IDs, along with visit dates, property, vehicle, and entry types from three swine management companies. A static directed network was created using the igraph package in R for all movements, with separate sub-networks for each entry type (animal, human, and subsets of vehicle types). Network statistics for each sub-network were compared.

Results

The full network included 455 properties, 11 property types, 9 vehicle types, 12 entry types, and 320001 edges (trips between properties). The longest path length was 10 in the animal movement network but decreased to 5 for the full and human movement network, while the average path length decreased from 3.2 to 2.2. Edge density increased from 0.03 to 0.09 for the human network and 0.1 for the full network. For all network properties examined, the full and human movement networks demonstrated higher connectivity than the animal network. A heavy right skew in the degree distributions indicates a 'hub' structure (scale-free-like network) and the shorter path lengths indicates a small-world network topology.

Discussion

The full network is very well connected, more so than expected based on animal movement alone. Hubs may indicate points of disease susceptibility and 'super-spreader' properties. The high connectivity shows that swine farm networks may be more susceptible to spread of an introduced disease than expected from previous analyses.

Conclusions

Monitoring human, as well as animal movement, provides for a more complete and accurate understanding of swine farm biosecurity risks.
对北美多个猪场系统中的人类和动物移动数据进行网络评估。
导言:由于系统性结构问题,美国养猪业很容易受到疾病快速传播的影响。虽然动物移动网络被用于识别疾病传播风险和设计应对计划,但农场之间的人员移动却很少被考虑在内。与单纯的动物移动相比,人的移动与动物移动模型相结合,可形成不同的、更具包容性和准确性的网络结构:分析了一年的农场访问数据,包括三个猪场管理公司的匿名财产 ID、地点和用户/卡车 ID,以及访问日期、财产、车辆和进入类型。使用 R 中的 igraph 软件包为所有移动创建了静态有向网络,并为每种进入类型(动物、人类和车辆类型子集)创建了单独的子网络。比较了每个子网络的网络统计数据:完整网络包括 455 个物业、11 种物业类型、9 种车辆类型、12 种入口类型和 320001 条边(物业之间的行程)。动物移动网络的最长路径长度为 10,而完整网络和人类移动网络的最长路径长度降至 5,平均路径长度从 3.2 降至 2.2。人类网络的边缘密度从 0.03 增加到 0.09,完整网络的边缘密度从 0.1 增加到 0.09。在所考察的所有网络属性中,完整网络和人类运动网络的连通性都高于动物网络。阶数分布的严重右倾表明存在 "枢纽 "结构(无标度网络),较短的路径长度表明存在小世界网络拓扑结构:讨论:整个网络的连通性非常好,比仅根据动物运动所预期的还要好。枢纽可能表示疾病易感点和 "超级传播者 "特性。高连通性表明,猪场网络可能比以往分析所预期的更容易传播传入的疾病:结论:通过监测人类和动物的流动,可以更全面、更准确地了解猪场的生物安全风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Preventive veterinary medicine
Preventive veterinary medicine 农林科学-兽医学
CiteScore
5.60
自引率
7.70%
发文量
184
审稿时长
3 months
期刊介绍: Preventive Veterinary Medicine is one of the leading international resources for scientific reports on animal health programs and preventive veterinary medicine. The journal follows the guidelines for standardizing and strengthening the reporting of biomedical research which are available from the CONSORT, MOOSE, PRISMA, REFLECT, STARD, and STROBE statements. The journal focuses on: Epidemiology of health events relevant to domestic and wild animals; Economic impacts of epidemic and endemic animal and zoonotic diseases; Latest methods and approaches in veterinary epidemiology; Disease and infection control or eradication measures; The "One Health" concept and the relationships between veterinary medicine, human health, animal-production systems, and the environment; Development of new techniques in surveillance systems and diagnosis; Evaluation and control of diseases in animal populations.
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