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研究使用机器学习算法来支持对奶牛场和养猪场基于风险的动物福利检查。

Investigating the use of machine learning algorithms to support risk-based animal welfare inspections of cattle and pig farms.

作者信息

Thomann Beat, Kuntzer Thibault, Schüpbach-Regula Gertraud, Rieder Stefan

机构信息

Veterinary Public Health Institute, Vetsuisse Faculty, University of Bern, Bern, Switzerland.

Identitas AG, R&D, Bern, Switzerland.

出版信息

Front Vet Sci. 2024 Aug 13;11:1401007. doi: 10.3389/fvets.2024.1401007. eCollection 2024.

Abstract

In livestock production, animal-related data are often registered in specialised databases and are usually not interconnected, except for a common identifier. Analysis of combined datasets and the possible inclusion of third-party information can provide a more complete picture or reveal complex relationships. The aim of this study was to develop a risk index to predict farms with an increased likelihood for animal welfare violations, defined as non-compliance during on-farm welfare inspections. A data-driven approach was chosen for this purpose, focusing on the combination of existing Swiss government databases and registers. Individual animal-level data were aggregated at the herd level. Since data collection and availability were best for cattle and pigs, the focus was on these two livestock species. We present machine learning models that can be used as a tool to plan and optimise risk-based on-farm welfare inspections by proposing a consolidated list of priority holdings to be visited. The results of previous on-farm welfare inspections were used to calibrate a binary welfare index, which is the prediction goal. The risk index is based on proxy information, such as the participation in animal welfare programmes with structured housing and outdoor access, herd type and size, or animal movement data. Since transparency of the model is critical both for public acceptance of such a data-driven index and farm control planning, the Random Forest model, for which the decision process can be illustrated, was investigated in depth. Using historical inspection data with an overall low prevalence of violations of approximately 4% for both species, the developed index was able to predict violations with a sensitivity of 81.2 and 79.5% for cattle and pig farms, respectively. The study has shown that combining multiple and heterogeneous data sources improves the quality of the models. Furthermore, privacy-preserving methods are applied to a research environment to explore the available data before restricting the feature space to the most relevant. This study demonstrates that data-driven monitoring of livestock populations is already possible with the existing datasets and the models developed can be a useful tool to plan and conduct risk-based animal welfare inspection.

摘要

在畜牧生产中,与动物相关的数据通常记录在专门的数据库中,除了通用标识符外,这些数据库通常互不关联。对组合数据集进行分析以及纳入第三方信息,可提供更全面的情况或揭示复杂关系。本研究的目的是开发一种风险指数,以预测动物福利违规可能性增加的农场,动物福利违规定义为农场福利检查期间的不符合规定情况。为此选择了一种数据驱动的方法,重点是瑞士政府现有数据库和登记册的组合。个体动物层面的数据在畜群层面进行汇总。由于牛和猪的数据收集和可得性最佳,因此重点关注这两种牲畜。我们提出了机器学习模型,该模型可作为一种工具,通过提出要访问的优先养殖场综合清单,来规划和优化基于风险的农场福利检查。以前农场福利检查的结果用于校准二元福利指数,这是预测目标。风险指数基于代理信息,如参与有结构化畜舍和户外通道的动物福利计划、畜群类型和规模,或动物移动数据。由于模型的透明度对于公众接受这种数据驱动指数和农场控制规划都至关重要,因此对决策过程可说明的随机森林模型进行了深入研究。利用历史检查数据,两种牲畜的违规总体发生率约为4%,所开发的指数能够分别以81.2%和79.5%的灵敏度预测牛场和猪场的违规情况。研究表明,组合多个不同数据源可提高模型质量。此外,在将特征空间限制到最相关之前,隐私保护方法应用于研究环境以探索可用数据。本研究表明,利用现有数据集已经可以对牲畜群体进行数据驱动的监测,所开发的模型可成为规划和开展基于风险的动物福利检查的有用工具。

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