MAGICAL Group, Department of Health Policy and Management, Ben-Gurion University of the Negev, Beer-Sheva, Israel.
Department of Computer Science and Applied Math, Weizmann Institute of Science, Rehovot, Israel.
NPJ Biofilms Microbiomes. 2022 Aug 22;8(1):66. doi: 10.1038/s41522-022-00329-5.
Dogs have a key role in law enforcement and military work, and research with the goal of improving working dog performance is ongoing. While there have been intriguing studies from lab animal models showing a potential connection between the gut microbiome and behavior or mental health there is a dearth of studies investigating the microbiome-behavior relationship in working dogs. The overall objective of this study was to characterize the microbiota of working dogs and to determine if the composition of the microbiota is associated with behavioral and performance outcomes. Freshly passed stools from each working canine (Total n = 134) were collected and subject to shotgun metagenomic sequencing using Illumina technology. Behavior, performance, and demographic metadata were collected. Descriptive statistics and prediction models of behavioral/phenotypic outcomes using gradient boosting classification based on Xgboost were used to study associations between the microbiome and outcomes. Regarding machine learning methodology, only microbiome features were used for training and predictors were estimated in cross-validation. Microbiome markers were statistically associated with motivation, aggression, cowardice/hesitation, sociability, obedience to one trainer vs many, and body condition score (BCS). When prediction models were developed based on machine learning, moderate predictive power was observed for motivation, sociability, and gastrointestinal issues. Findings from this study suggest potential gut microbiome markers of performance and could potentially advance care for working canines.
狗在执法和军事工作中发挥着关键作用,并且正在进行旨在提高工作犬性能的研究。虽然实验室动物模型的一些研究表明肠道微生物组与行为或心理健康之间存在潜在联系,但在工作犬中研究微生物组-行为关系的研究还很少。本研究的总体目标是描述工作犬的微生物组,并确定微生物组的组成是否与行为和性能结果相关。从每只工作犬(总共 n=134)采集新鲜通过的粪便,并使用 Illumina 技术进行 shotgun 宏基因组测序。收集行为、性能和人口统计学数据元。使用基于 Xgboost 的梯度提升分类的描述性统计和行为/表型结果预测模型来研究微生物组与结果之间的关联。关于机器学习方法,仅使用微生物组特征进行训练,并在交叉验证中估计预测因子。微生物组标志物与动机、攻击性、怯懦/犹豫、社交能力、对一名训练师与多名训练师的服从性以及身体状况评分(BCS)具有统计学关联。当基于机器学习开发预测模型时,观察到动机、社交能力和胃肠道问题具有中等预测能力。这项研究的结果表明了性能的潜在肠道微生物组标志物,这可能有助于提高工作犬的护理水平。