Edlund Anna, Garg Neha, Mohimani Hosein, Gurevich Alexey, He Xuesong, Shi Wenyuan, Dorrestein Pieter C, McLean Jeffrey S
Genomic Medicine Group, J. Craig Venter Institute, La Jolla, California, USA.
Collaborative Mass Spectrometry Innovation Center, Skaggs School of Pharmacy and Pharmaceutical Sciences, University of California, San Diego, La Jolla, California, USA.
mSystems. 2017 Jul 18;2(4). doi: 10.1128/mSystems.00058-17. eCollection 2017 Jul-Aug.
Recent research indicates that the human microbiota play key roles in maintaining health by providing essential nutrients, providing immune education, and preventing pathogen expansion. Processes underlying the transition from a healthy human microbiome to a disease-associated microbiome are poorly understood, partially because of the potential influences from a wide diversity of bacterium-derived compounds that are illy defined. Here, we present the analysis of peptidic small molecules (SMs) secreted from bacteria and viewed from a temporal perspective. Through comparative analysis of mass spectral profiles from a collection of cultured oral isolates and an established multispecies oral community, we found that the production of SMs both delineates a temporal expression pattern and allows discrimination between bacterial isolates at the species level. Importantly, the majority of the identified molecules were of unknown identity, and only ~2.2% could be annotated and classified. The catalogue of bacterially produced SMs we obtained in this study reveals an undiscovered molecular world for which compound isolation and ecosystem testing will facilitate a better understanding of their roles in human health and disease. Metabolomics is the ultimate tool for studies of microbial functions under any specific set of environmental conditions (D. S. Wishart, Nat Rev Drug Discov 45:473-484, 2016, https://doi.org/10.1038/nrd.2016.32). This is a great advance over studying genes alone, which only inform about metabolic potential. Approximately 25,000 compounds have been chemically characterized thus far; however, the richness of metabolites such as SMs has been estimated to be as high as 1 × 10 in the biosphere (K. Garber, Nat Biotechnol 33:228-231, 2015, https://doi.org/10.1038/nbt.3161). Our classical, one-at-a-time activity-guided approach to compound identification continues to find the same known compounds and is also incredibly tedious, which represents a major bottleneck for global SM identification. These challenges have prompted new developments of databases and analysis tools that provide putative classifications of SMs by mass spectral alignments to already characterized tandem mass spectrometry spectra and databases containing structural information (e.g., PubChem and AntiMarin). In this study, we assessed secreted peptidic SMs (PSMs) from 27 oral bacterial isolates and a complex oral biofilm community of >100 species by using the Global Natural Products Social molecular Networking and the DEREPLICATOR infrastructures, which are methodologies that allow automated and putative annotation of PSMs. These approaches enabled the identification of an untapped resource of PSMs from oral bacteria showing species-unique patterns of secretion with putative matches to known bioactive compounds.
最近的研究表明,人类微生物群通过提供必需营养素、提供免疫教育和防止病原体扩张,在维持健康方面发挥着关键作用。从健康的人类微生物组向与疾病相关的微生物组转变的潜在过程仍知之甚少,部分原因是来自种类繁多且定义不明确的细菌衍生化合物的潜在影响。在此,我们从时间角度对细菌分泌的肽类小分子(SMs)进行了分析。通过对一系列培养的口腔分离株和一个成熟的多物种口腔群落的质谱图进行比较分析,我们发现SMs的产生既描绘了一种时间表达模式,又能在物种水平上区分细菌分离株。重要的是,大多数已鉴定的分子身份不明,只有约2.2%能够被注释和分类。我们在本研究中获得的细菌产生的SMs目录揭示了一个未被发现的分子世界,化合物分离和生态系统测试将有助于更好地理解它们在人类健康和疾病中的作用。代谢组学是研究任何特定环境条件下微生物功能的终极工具(D.S. Wishart,《自然药物发现综述》45:473 - 484,2016,https://doi.org/10.1038/nrd.2016.32)。这比仅研究基因有了很大进步,因为仅研究基因只能了解代谢潜力。到目前为止,大约有25000种化合物已被化学表征;然而,据估计,像SMs这样的代谢物在生物圈中的丰富度高达1×10(K. Garber,《自然生物技术》33:228 - 231,2015,https://doi.org/10.1038/nbt.3161)。我们传统的逐个化合物进行活性导向鉴定的方法不断发现相同的已知化合物,而且极其繁琐,这是全球SM鉴定的一个主要瓶颈。这些挑战促使了数据库和分析工具的新发展,这些工具通过将质谱与已表征的串联质谱谱图和包含结构信息的数据库(如PubChem和AntiMarin)进行比对,提供SMs的推测分类。在本研究中,我们使用全球天然产物社会分子网络和DEREPLICATOR基础设施评估了27种口腔细菌分离株和一个由100多个物种组成的复杂口腔生物膜群落分泌的肽类SMs(PSMs),这两种方法能够对PSMs进行自动化和推测性注释。这些方法能够鉴定出口腔细菌中尚未开发的PSMs资源,这些PSMs呈现出物种独特的分泌模式,并与已知生物活性化合物有推测性匹配。