Pannoni Samuel B, Proffitt Kelly M, Holben William E
Franke College of Forestry and Conservation University of Montana Missoula Montana USA.
Montana Fish Wildlife and Parks Bozeman Montana USA.
Ecol Evol. 2022 Feb 9;12(2):e8564. doi: 10.1002/ece3.8564. eCollection 2022 Feb.
Fecal microbial biomarkers represent a less invasive alternative for acquiring information on wildlife populations than many traditional sampling methodologies. Our goal was to evaluate linkages between fecal microbiome communities in Rocky Mountain elk () and four host factors including sex, age, population, and physical condition (body-fat). We paired a feature-selection algorithm with an LDA-classifier trained on elk differential bacterial abundance (16S-rRNA amplicon survey) to predict host health factors from 104 elk microbiomes across four elk populations. We validated the accuracy of the various classifier predictions with leave-one-out cross-validation using known measurements. We demonstrate that the elk fecal microbiome can predict the four host factors tested. Our results show that elk microbiomes respond to both the strong extrinsic factor of biogeography and simultaneously occurring, but more subtle, intrinsic forces of individual body-fat, sex, and age-class. Thus, we have developed and described herein a generalizable approach to disentangle microbiome responses attributed to multiple host factors of varying strength from the same bacterial sequence data set. Wildlife conservation and management presents many challenges, but we demonstrate that non-invasive microbiome surveys from scat samples can provide alternative options for wildlife population monitoring. We believe that, with further validation, this method could be broadly applicable in other species and potentially predict other measurements. Our study can help guide the future development of microbiome-based monitoring of wildlife populations and supports hypothetical expectations found in host-microbiome theory.
与许多传统采样方法相比,粪便微生物生物标志物是获取野生动物种群信息的一种侵入性较小的替代方法。我们的目标是评估落基山麋鹿()粪便微生物群落与四个宿主因素之间的联系,这四个因素包括性别、年龄、种群和身体状况(体脂)。我们将一种特征选择算法与一个基于麋鹿差异细菌丰度(16S-rRNA扩增子调查)训练的LDA分类器配对,以从四个麋鹿种群的104个麋鹿微生物组中预测宿主健康因素。我们使用已知测量值通过留一法交叉验证来验证各种分类器预测的准确性。我们证明麋鹿粪便微生物组可以预测所测试的四个宿主因素。我们的结果表明,麋鹿微生物组既对生物地理学这种强大的外在因素作出反应,也同时对个体体脂、性别和年龄组等更微妙的内在因素作出反应。因此,我们在此开发并描述了一种可推广的方法,用于从同一细菌序列数据集中区分归因于不同强度多个宿主因素的微生物组反应。野生动物保护和管理面临许多挑战,但我们证明,来自粪便样本的非侵入性微生物组调查可以为野生动物种群监测提供替代选择。我们相信,经过进一步验证,这种方法可以广泛应用于其他物种,并有可能预测其他测量值。我们的研究有助于指导基于微生物组的野生动物种群监测的未来发展,并支持宿主-微生物组理论中的假设预期。