Sisk-Hackworth Laura, Ortiz-Velez Adrian, Reed Micheal B, Kelley Scott T
Department of Biology, San Diego State University, San Diego, CA, United States.
Department of Nanoengineering, Joint School of Nanoscience and Nanoengineering, North Carolina Agricultural and Technical State University, Greensboro, NC, United States.
Front Microbiol. 2021 May 17;12:617949. doi: 10.3389/fmicb.2021.617949. eCollection 2021.
Periodontal disease (PD) is a chronic, progressive polymicrobial disease that induces a strong host immune response. Culture-independent methods, such as next-generation sequencing (NGS) of bacteria 16S amplicon and shotgun metagenomic libraries, have greatly expanded our understanding of PD biodiversity, identified novel PD microbial associations, and shown that PD biodiversity increases with pocket depth. NGS studies have also found PD communities to be highly host-specific in terms of both biodiversity and the response of microbial communities to periodontal treatment. As with most microbiome work, the majority of PD microbiome studies use standard data normalization procedures that do not account for the compositional nature of NGS microbiome data. Here, we apply recently developed compositional data analysis (CoDA) approaches and software tools to reanalyze multiomics (16S, metagenomics, and metabolomics) data generated from previously published periodontal disease studies. CoDA methods, such as centered log-ratio (clr) transformation, compensate for the compositional nature of these data, which can not only remove spurious correlations but also allows for the identification of novel associations between microbial features and disease conditions. We validated many of the studies' original findings, but also identified new features associated with periodontal disease, including the genera and and the cytokine C-reactive protein (CRP). Furthermore, our network analysis revealed a lower connectivity among taxa in deeper periodontal pockets, potentially indicative of a more "random" microbiome. Our findings illustrate the utility of CoDA techniques in multiomics compositional data analysis of the oral microbiome.
牙周病(PD)是一种慢性、进行性的多微生物疾病,可引发强烈的宿主免疫反应。非培养方法,如下一代测序(NGS)细菌16S扩增子和鸟枪法宏基因组文库,极大地扩展了我们对PD生物多样性的理解,确定了新的PD微生物关联,并表明PD生物多样性随牙周袋深度增加。NGS研究还发现,PD群落无论在生物多样性还是微生物群落对牙周治疗的反应方面都具有高度宿主特异性。与大多数微生物组研究一样,大多数PD微生物组研究使用的标准数据标准化程序没有考虑NGS微生物组数据的组成性质。在这里,我们应用最近开发的组成数据分析(CoDA)方法和软件工具,重新分析先前发表的牙周病研究中生成的多组学(16S、宏基因组学和代谢组学)数据。CoDA方法,如中心对数比(clr)转换,弥补了这些数据的组成性质,这不仅可以消除虚假相关性,还可以识别微生物特征与疾病状况之间的新关联。我们验证了许多研究的原始发现,但也确定了与牙周病相关的新特征,包括属和细胞因子C反应蛋白(CRP)。此外,我们的网络分析显示,牙周袋较深的分类群之间的连通性较低,这可能表明微生物组更“随机”。我们的研究结果说明了CoDA技术在口腔微生物组多组学组成数据分析中的实用性。