Amorín de Hegedüs Rocío, Conesa Ana, Foster Jamie S
Genetics Institute, University of Florida, Gainesville, FL, United States.
Department of Microbiology and Cell Sciences, Space Life Sciences Lab, University of Florida, Merritt Island, FL, United States.
Front Microbiol. 2023 Jul 28;14:1174685. doi: 10.3389/fmicb.2023.1174685. eCollection 2023.
Microbes continually shape Earth's biochemical and physical landscapes by inhabiting diverse metabolic niches. Despite the important role microbes play in ecosystem functioning, most microbial species remain unknown highlighting a gap in our understanding of structured complex ecosystems. To elucidate the relevance of these unknown taxa, often referred to as "microbial dark matter," the integration of multiple high throughput sequencing technologies was used to evaluate the co-occurrence and connectivity of all microbes within the community. Since there are no standard methodologies for multi-omics integration of microbiome data, we evaluated the abundance of "microbial dark matter" in microbialite-forming communities using different types meta-omic datasets: amplicon, metagenomic, and metatranscriptomic sequencing previously generated for this ecosystem. Our goal was to compare the community structure and abundances of unknown taxa within the different data types rather than to perform a functional characterization of the data. Metagenomic and metatranscriptomic data were input into SortMeRNA to extract 16S rRNA gene reads. The output, as well as amplicon sequences, were processed through QIIME2 for taxonomy analysis. The R package mdmnets was utilized to build co-occurrence networks. Most hubs presented unknown classifications, even at the phyla level. Comparisons of the highest scoring hubs of each data type using sequence similarity networks allowed the identification of the most relevant hubs within the microbialite-forming communities. This work highlights the importance of unknown taxa in community structure and proposes that ecosystem network construction can be used on several types of data to identify keystone taxa and their potential function within microbial ecosystems.
微生物通过占据多样的代谢生态位不断塑造着地球的生物化学和物理景观。尽管微生物在生态系统功能中发挥着重要作用,但大多数微生物物种仍不为人知,这凸显了我们对结构化复杂生态系统理解上的差距。为了阐明这些通常被称为“微生物暗物质”的未知分类群的相关性,我们使用多种高通量测序技术的整合来评估群落中所有微生物的共现和连通性。由于目前尚无微生物组数据多组学整合的标准方法,我们使用不同类型的元组学数据集(此前为该生态系统生成的扩增子、宏基因组和宏转录组测序数据)来评估形成微生物岩的群落中“微生物暗物质”的丰度。我们的目标是比较不同数据类型中未知分类群的群落结构和丰度,而非对数据进行功能表征。将宏基因组和宏转录组数据输入SortMeRNA以提取16S rRNA基因读数。输出结果以及扩增子序列通过QIIME2进行分类分析。利用R包mdmnets构建共现网络。即使在门水平,大多数中心节点也呈现未知分类。使用序列相似性网络对每种数据类型得分最高的中心节点进行比较,从而确定形成微生物岩的群落中最相关的中心节点。这项工作突出了未知分类群在群落结构中的重要性,并提出生态系统网络构建可用于多种类型的数据,以识别关键分类群及其在微生物生态系统中的潜在功能。