Roman Brittany, Gallagher Christa, Beierschmitt Amy, Hooper Sarah
Center for Conservation Medicine and Ecosystem Health, Ross University School of Veterinary Medicine, Basseterre KN 0101, Saint Kitts and Nevis.
Department of Biomedical Sciences, Ross University School of Veterinary Medicine, Basseterre KN 0101, Saint Kitts and Nevis.
Vet Sci. 2025 Mar 1;12(3):209. doi: 10.3390/vetsci12030209.
Integrating behavioral and physiological assessment is critical to improve our ability to assess animal welfare in biomedical settings. Hair, blood, and saliva samples were collected from 40 recently acquired male African green monkeys (AGMs) to analyze concentrations of hair cortisol, plasma β-endorphin, and lysozyme alongside focal behavioral observations. The statistical methodology utilized machine learning and multivariate generalized linear mixed models to find associations between behaviors and fluctuations of cortisol, lysozyme, and β-endorphin concentrations. The study population was divided into two groups to assess the effectiveness of an enrichment intervention, though the hair cortisol results revealed no difference between the groups. The principal component analysis (PCA) with a Bayesian mixed model analysis reveals several significant patterns in specific behaviors and physiological responses, highlighting the need for further research to deepen our understanding of how behaviors correlate with animal welfare. This study's methodology demonstrates a more refined approach to interpreting these behaviors that can help improve animal welfare and inform the development of better management practices.
整合行为和生理评估对于提高我们在生物医学环境中评估动物福利的能力至关重要。从40只最近获得的雄性非洲绿猴(AGM)身上采集了毛发、血液和唾液样本,以分析毛发皮质醇、血浆β-内啡肽和溶菌酶的浓度,并进行重点行为观察。统计方法利用机器学习和多元广义线性混合模型来寻找行为与皮质醇、溶菌酶和β-内啡肽浓度波动之间的关联。研究人群被分为两组以评估丰富化干预的效果,尽管毛发皮质醇结果显示两组之间没有差异。主成分分析(PCA)与贝叶斯混合模型分析揭示了特定行为和生理反应中的几种显著模式,突出了进一步研究以加深我们对行为与动物福利之间关联理解的必要性。本研究的方法展示了一种更精细的方法来解释这些行为,有助于改善动物福利并为更好的管理实践发展提供信息。