Department of Ecological Modelling, PG Ecological Epidemiology, Helmholtz Centre for Environmental Research GmbH-UFZ, Leipzig, Germany.
Animal Health Ireland, Carrick-on-Shannon, Co., Leitrim, Ireland.
Sci Rep. 2021 Feb 4;11(1):2989. doi: 10.1038/s41598-021-82373-3.
A detailed understanding of herd types is needed for animal disease control and surveillance activities, to inform epidemiological study design and interpretation, and to guide effective policy decision-making. In this paper, we present a new approach to classify herd types in livestock systems by combining expert knowledge and a machine-learning algorithm called self-organising-maps (SOMs). This approach is applied to the cattle sector in Ireland, where a detailed understanding of herd types can assist with on-going discussions on control and surveillance for endemic cattle diseases. To our knowledge, this is the first time that the SOM algorithm has been used to differentiate livestock systems. In compliance with European Union (EU) requirements, relevant data in the Irish livestock register includes the birth, movements and disposal of each individual bovine, and also the sex and breed of each bovine and its dam. In total, 17 herd types were identified in Ireland using 9 variables. We provide a data-driven classification tree using decisions derived from the Irish livestock registration data. Because of the visual capabilities of the SOM algorithm, the interpretation of results is relatively straightforward and we believe our approach, with adaptation, can be used to classify herd type in any other livestock system.
为了进行动物疾病防控和监测活动,需要详细了解畜群类型,为流行病学研究设计和解释提供信息,并为有效的政策决策提供指导。在本文中,我们提出了一种新的方法,通过结合专家知识和一种称为自组织映射(SOM)的机器学习算法来对牲畜系统中的畜群类型进行分类。该方法应用于爱尔兰的牛群,对畜群类型的详细了解可以帮助正在进行的关于地方性牛病防控和监测的讨论。据我们所知,这是首次使用 SOM 算法来区分牲畜系统。根据欧盟(EU)的要求,爱尔兰牲畜登记册中的相关数据包括每头奶牛的出生、移动和处置情况,以及每头奶牛及其母畜的性别和品种。总共使用 9 个变量在爱尔兰确定了 17 种畜群类型。我们使用从爱尔兰牲畜登记数据中得出的决策提供了一个数据驱动的分类树。由于 SOM 算法的可视化能力,结果的解释相对简单,我们相信我们的方法可以通过适应来用于对任何其他牲畜系统中的畜群类型进行分类。