Department of Microbiology and Cell Science, Institute for Food and Agricultural Research, University of Florida, Gainesville, FL, 32608, USA.
Department of Microbiology and Cell Science, Space Life Sciences Lab, Merritt Island, FL, 32953, USA.
ISME J. 2021 Jan;15(1):228-244. doi: 10.1038/s41396-020-00777-x. Epub 2020 Sep 22.
Microbes compose most of the biomass on the planet, yet the majority of taxa remain uncharacterized. These unknown microbes, often referred to as "microbial dark matter," represent a major challenge for biology. To understand the ecological contributions of these Unknown taxa, it is essential to first understand the relationship between unknown species, neighboring microbes, and their respective environment. Here, we establish a method to study the ecological significance of "microbial dark matter" by building microbial co-occurrence networks from publicly available 16S rRNA gene sequencing data of four extreme aquatic habitats. For each environment, we constructed networks including and excluding unknown organisms at multiple taxonomic levels and used network centrality measures to quantitatively compare networks. When the Unknown taxa were excluded from the networks, a significant reduction in degree and betweenness was observed for all environments. Strikingly, Unknown taxa occurred as top hubs in all environments, suggesting that "microbial dark matter" play necessary ecological roles within their respective communities. In addition, novel adaptation-related genes were detected after using 16S rRNA gene sequences from top-scoring hub taxa as probes to blast metagenome databases. This work demonstrates the broad applicability of network metrics to identify and prioritize key Unknown taxa and improve understanding of ecosystem structure across diverse habitats.
微生物构成了地球上大部分的生物量,但大多数类群仍然没有被描述。这些未知的微生物,通常被称为“微生物暗物质”,是生物学面临的一个主要挑战。为了了解这些未知分类群的生态贡献,首先必须了解未知物种、邻近微生物及其各自环境之间的关系。在这里,我们建立了一种方法,通过从四个极端水生栖息地的公共 16S rRNA 基因测序数据中构建微生物共现网络,来研究“微生物暗物质”的生态意义。对于每种环境,我们构建了包括和排除多个分类水平未知生物的网络,并使用网络中心性度量来定量比较网络。当从网络中排除未知分类群时,所有环境的网络的度和介数都显著降低。引人注目的是,未知分类群在所有环境中都是顶级枢纽,这表明“微生物暗物质”在其各自的群落中发挥着必要的生态作用。此外,在用得分最高的枢纽分类群的 16S rRNA 基因序列作为探针对宏基因组数据库进行 Blast 后,检测到了新的与适应相关的基因。这项工作表明,网络度量可以广泛应用于识别和优先考虑关键的未知分类群,并提高对不同生境中生态系统结构的理解。