Stachowicz Joanna, Umstätter Christina
Research Division on Competitiveness and System Evaluation, Agroscope, Tänikon 1, 8356 Ettenhausen, Switzerland.
Proc Biol Sci. 2021 May 12;288(1950):20210190. doi: 10.1098/rspb.2021.0190.
The early detection of health disorders is a central goal in livestock production. Thus, a great demand for technologies enabling the automated detection of such issues exists. However, despite decades of research, precision livestock farming (PLF) technologies with sufficient accuracy and ready for implementation on commercial farms are rare. A central factor impeding technological development is likely the use of non-specific indicators for various issues. On commercial farms, where animals are exposed to changing environmental conditions, where they undergo different internal states and, most importantly, where they can be challenged by more than one issue at a time, such an approach leads inevitably to errors. To improve the accuracy of PLF technologies, the presented framework proposes a categorization of the aim of detection of issues related to general welfare, disease and distress and defined disease. Each decision level provides a different degree of information and therefore requires indicators varying in specificity. Based on these considerations, it becomes apparent that while most technologies aim to detect a defined health issue, they facilitate only the identification of issues related to general welfare. To achieve detection of specific issues, new indicators such as rhythmicity patterns of behaviour or physiological processes should be examined.
健康紊乱的早期检测是畜牧生产的核心目标。因此,对能够自动检测此类问题的技术有巨大需求。然而,尽管经过了数十年的研究,但具有足够准确性且可在商业农场实施的精准畜牧养殖(PLF)技术却很少见。阻碍技术发展的一个核心因素可能是针对各种问题使用了非特异性指标。在商业农场中,动物面临不断变化的环境条件,处于不同的内部状态,而且最重要的是,它们可能同时受到不止一个问题的挑战,这种方法不可避免地会导致错误。为提高PLF技术的准确性,本文提出的框架对与一般福利、疾病、痛苦和特定疾病相关的问题检测目标进行了分类。每个决策级别提供不同程度的信息,因此需要特异性不同的指标。基于这些考虑,很明显,虽然大多数技术旨在检测特定的健康问题,但它们仅有助于识别与一般福利相关的问题。为了实现对特定问题的检测,应研究行为或生理过程的节律模式等新指标。