Kyriazakis Ilias, Alameer Ali, Bučková Katarína, Muns Ramon
School of Biological Sciences, Institute for Global Food Security, Queen's University Belfast, Belfast, United Kingdom.
Sustainable Agri-Food Science Division, Livestock Production Science Branch, Agri-Food and Biosciences Institute, Hillsborough, United Kingdom.
Front Vet Sci. 2023 Jan 4;9:1087570. doi: 10.3389/fvets.2022.1087570. eCollection 2022.
We modified an automated method capable of quantifying behaviors which we then applied to the changes associated with the post-weaning transition in pigs. The method is data-driven and depends solely on video-captured image data without relying on sensors or additional pig markings. It was applied to video images generated from an experiment during which post-weaned piglets were subjected to treatments either containing or not containing in-feed antimicrobials (ZnO or antibiotics). These treatments were expected to affect piglet performance and health in the short-term by minimizing the risk from post-weaning enteric disorders, such as diarrhea. The method quantified total group feeding and drinking behaviors as well as posture (i.e., standing and non-standing) during the first week post-weaning, when the risk of post-weaning diarrhea is at its highest, by learning from the variations within each behavior using data manually annotated by a behavioral scientist. Automatically quantified changes in behavior were consistent with the effects of the absence of antimicrobials on pig performance and health, and manifested as reduced feed efficiency and looser feces. In these piglets both drinking and standing behaviors were increased during the first 6 days post-weaning. The correlation between fecal consistency and drinking behavior 6 days post weaning was relatively high, suggesting that these behaviors may have a diagnostic value. The presence or absence of in-feed antimicrobials had no effect on feeding behavior, which, however, increased over time. The approach developed here is capable of automatically monitoring several different behaviors of a group of pigs at the same time, and potentially this may be where its value as a diagnostic tool may lie.
我们改进了一种能够量化行为的自动化方法,随后将其应用于与仔猪断奶后过渡期相关的变化。该方法以数据为驱动,仅依赖视频捕捉的图像数据,不依赖传感器或额外的猪标记。它被应用于一项实验生成的视频图像,在此实验中,断奶后的仔猪接受了含有或不含饲料中抗菌剂(氧化锌或抗生素)的处理。预计这些处理通过将断奶后肠道疾病(如腹泻)的风险降至最低,在短期内影响仔猪的生长性能和健康。该方法通过利用行为科学家手动标注的数据,从每种行为的变化中学习,量化了断奶后第一周内整个群体的进食、饮水行为以及姿势(即站立和非站立),此时断奶后腹泻的风险最高。行为的自动量化变化与抗菌剂缺失对猪生长性能和健康的影响一致,表现为饲料效率降低和粪便变稀。在这些仔猪中,断奶后的前6天饮水和站立行为均增加。断奶后6天粪便稠度与饮水行为之间的相关性相对较高,表明这些行为可能具有诊断价值。饲料中抗菌剂的存在与否对进食行为没有影响,但进食行为会随着时间增加。这里开发的方法能够同时自动监测一组猪的几种不同行为,这可能就是其作为诊断工具的价值所在。