Karpinets Tatiana V, Gopalakrishnan Vancheswaran, Wargo Jennifer, Futreal Andrew P, Schadt Christopher W, Zhang Jianhua
Department of Genomic Medicine, The University of Texas MD Anderson Cancer Center, Houston, TX, United States.
Biosciences Division, Oak Ridge National Laboratory, Oak Ridge, TN, United States.
Front Microbiol. 2018 Mar 7;9:297. doi: 10.3389/fmicb.2018.00297. eCollection 2018.
Studies of microbial communities by targeted sequencing of rRNA genes lead to recovering numerous rare low-abundance taxa with unknown biological roles. We propose to study associations of such rare organisms with their environments by a computational framework based on transformation of the data into qualitative variables. Namely, we analyze the sparse table of putative species or OTUs (operational taxonomic units) and samples generated in such studies, also known as an OTU table, by collecting statistics on co-occurrences of the species and on shared species richness across samples. Based on the statistics we built two association networks, of the rare putative species and of the samples respectively, using a known computational technique, Association networks (Anets) developed for analysis of qualitative data. Clusters of samples and clusters of OTUs are then integrated and combined with metadata of the study to produce a map of associated putative species in their environments. We tested and validated the framework on two types of microbiomes, of human body sites and that of the tree root systems. We show that in both studies the associations of OTUs can separate samples according to environmental or physiological characteristics of the studied systems.
通过对rRNA基因进行靶向测序来研究微生物群落,会发现众多具有未知生物学作用的罕见低丰度分类群。我们提议通过一个计算框架来研究此类稀有生物与其环境之间的关联,该框架基于将数据转化为定性变量。具体而言,我们分析在此类研究中生成的假定物种或OTU(操作分类单元)与样本的稀疏表格,也就是OTU表格,通过收集物种共现情况以及样本间共享物种丰富度的统计数据。基于这些统计数据,我们分别使用一种已知的计算技术——为分析定性数据而开发的关联网络(Anets),构建了稀有假定物种的关联网络和样本的关联网络。然后将样本簇和OTU簇进行整合,并与研究的元数据相结合,以生成其环境中相关假定物种的图谱。我们在人体部位微生物群和树根系统微生物群这两种类型的微生物组上对该框架进行了测试和验证。我们表明,在这两项研究中,OTU的关联都可以根据所研究系统的环境或生理特征来区分样本。