Development and evaluation of an ensemble model to identify host-related metadata from fecal microbiota of zoo-housed mammals

Franziska Zoelzer, Daniel dos Santos Monteiro, P. Dierkes
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Abstract

Much research has been conducted to describe the factors that determine the fecal microbiome, with diet and host phylogeny as the main drivers. The influence of diet has been described at different levels. Firstly, there are major differences in the microbiomes of herbivorous and carnivorous species and secondly the morphology of the digestive system also determines the composition and diversity of the microbiota. In this study, we aim to describe the influence of the three factors – diet, digestive system and host - on the microbiota in order to develop a model that is able to characterize host-specific metadata from an unknown fecal sample. We therefore analyzed the 16s rRNA from 525 fecal samples of 14 zoo-housed species belonging to different phylogenetic groups including herbivores, carnivores and omnivores. We found significant differences in the bacterial taxa correlated with these groups. While herbivores show positive correlations with a large number of bacterial taxa, we found fewer taxa correlating with carnivores or omnivores. We also detected considerable differences in the microbiota of the ruminant, hindgut fermenting and simple digestive system. Based on these results, we developed a logistic ensemble model, that predicts the diet and based on these findings either the herbivorous digestive system or the carnivorous host-family from a given fecal microbiota composition. This model is able to effectively discriminate herbivores, omnivores and carnivores. It also excels at predicting the herbivore-specific digestive system with 98% accuracy, further reinforcing the strong link between microbiota and digestive system morphology. Carnivorous host-family identification achieves an overall accuracy of 79%, although this performance varies between families. We provide this trained model as a tool to enable users to generate host-specific information from their microbiome data. In future research, tools such as the one presented here could lead to a combined approach of microbiome and host-specific analyses which would be a great advantage in non-invasive wildlife monitoring.
从动物园饲养的哺乳动物粪便微生物群中识别宿主相关元数据的集合模型的开发与评估
许多研究都在描述决定粪便微生物群的因素,其中饮食和宿主系统发育是主要驱动因素。人们从不同层面描述了饮食的影响。首先,草食性和肉食性物种的微生物群存在很大差异;其次,消化系统的形态也决定了微生物群的组成和多样性。在本研究中,我们旨在描述饮食、消化系统和宿主这三个因素对微生物群的影响,从而建立一个能够从未知粪便样本中描述宿主特异性元数据的模型。因此,我们分析了 14 种动物园饲养物种的 525 份粪便样本中的 16s rRNA,这些物种属于不同的系统发育群,包括食草动物、食肉动物和杂食动物。我们发现与这些类群相关的细菌类群存在明显差异。草食动物与大量细菌类群呈正相关,而我们发现与肉食动物或杂食动物相关的类群较少。我们还发现反刍动物、后肠发酵动物和单纯消化系统的微生物群存在很大差异。基于这些结果,我们建立了一个逻辑集合模型,该模型可以预测饮食,并根据这些发现从给定的粪便微生物群组成中预测草食性消化系统或肉食性宿主家族。该模型能够有效区分食草动物、杂食动物和食肉动物。它在预测食草动物消化系统方面的准确率也高达 98%,进一步加强了微生物群与消化系统形态之间的紧密联系。食肉动物宿主家族识别的总体准确率为 79%,但不同家族之间的准确率有所不同。我们将这个训练有素的模型作为一种工具提供给用户,使他们能够从微生物组数据中生成特定于宿主的信息。在未来的研究中,像本文介绍的这种工具可以将微生物组和宿主特异性分析结合起来,这将是非侵入式野生动物监测的一大优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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