Department of Restorative Dentistry, Piracicaba Dental School, State University of Campinas, Av. Limeira, 901, Piracicaba, Brazil.
Faculty of Dentistry, Rio de Janeiro State University, Boulevard 28 de setembro, 157, Rio de Janeiro, Brazil.
BMC Oral Health. 2021 Jul 16;21(1):351. doi: 10.1186/s12903-021-01719-5.
Oral microbiota is considered as the second most complex in the human body and its dysbiosis can be responsible for oral diseases. Interactions between the microorganism communities and the host allow establishing the microbiological proles. Identifying the core microbiome is essential to predicting diseases and changes in environmental behavior from microorganisms.
Projects containing the term "SALIVA", deposited between 2014 and 2019 were recovered on the MG-RAST portal. Quality (Failed), taxonomic prediction (Unknown and Predicted), species richness (Rarefaction), and species diversity (Alpha) were analyzed according to sequencing approaches (Amplicon sequencing and Shotgun metagenomics). All data were checked for normality and homoscedasticity. Metagenomic projects were compared using the Mann-Whitney U test and Spearman's correlation. Microbiome cores were inferred by Principal Component Analysis. For all statistical tests, p < 0.05 was used.
The study was performed with 3 projects, involving 245 Amplicon and 164 Shotgun metagenome datasets. All comparisons of variables, according to the type of sequencing, showed significant differences, except for the Predicted. In Shotgun metagenomics datasets the highest correlation was between Rarefaction and Failed (r = - 0.78) and the lowest between Alpha and Unknown (r = - 0.12). In Amplicon sequencing datasets, the variables Rarefaction and Unknown (r = 0.63) had the highest correlation and the lowest was between Alpha and Predicted (r = - 0.03). Shotgun metagenomics datasets showed a greater number of genera than Amplicon. Propionibacterium, Lactobacillus, and Prevotella were the most representative genera in Amplicon sequencing. In Shotgun metagenomics, the most representative genera were Escherichia, Chitinophaga, and Acinetobacter.
Core of the salivary microbiome and genera diversity are dependent on the sequencing approaches. Available data suggest that Shotgun metagenomics and Amplicon sequencing have similar sensitivities to detect the taxonomic level investigated, although Shotgun metagenomics allows a deeper analysis of the microorganism diversity. Microbiome studies must consider characteristics and limitations of the sequencing approaches. Were identified 20 genera in the core of saliva microbiome, regardless of the health condition of the host. Some bacteria of the core need further study to better understand their role in the oral cavity.
口腔微生物群被认为是人体中第二复杂的微生物群,其失调可能导致口腔疾病。微生物群落与宿主之间的相互作用可以建立微生物特征。确定核心微生物组对于预测疾病和微生物环境行为的变化至关重要。
在 MG-RAST 门户上检索了 2014 年至 2019 年期间包含“唾液”一词的项目。根据测序方法(扩增子测序和鸟枪法宏基因组学)分析质量(失败)、分类预测(未知和预测)、物种丰富度(稀少)和物种多样性(阿尔法)。所有数据均进行正态性和同方差性检验。使用 Mann-Whitney U 检验和 Spearman 相关系数比较宏基因组项目。通过主成分分析推断微生物组核心。所有统计检验均使用 p < 0.05。
该研究共涉及 3 个项目,涉及 245 个扩增子和 164 个鸟枪法宏基因组数据集。根据测序类型进行的所有变量比较均显示出显著差异,除了预测。在鸟枪法宏基因组数据集中,稀少度和失败之间的相关性最高(r = -0.78),阿尔法和未知之间的相关性最低(r = -0.12)。在扩增子测序数据集中,变量稀少度和未知(r = 0.63)之间的相关性最高,阿尔法和预测(r = -0.03)之间的相关性最低。鸟枪法宏基因组数据集中的属数多于扩增子。丙酸杆菌、乳杆菌和普雷沃氏菌是扩增子测序中最具代表性的属。在鸟枪法宏基因组中,最具代表性的属是大肠杆菌、几丁质杆菌和不动杆菌。
唾液微生物组核心和属多样性取决于测序方法。现有数据表明,鸟枪法宏基因组和扩增子测序在检测所研究的分类水平上具有相似的敏感性,尽管鸟枪法宏基因组允许对微生物多样性进行更深入的分析。微生物组研究必须考虑测序方法的特点和局限性。无论宿主的健康状况如何,都可以确定 20 个属是唾液微生物组的核心。一些核心细菌需要进一步研究,以更好地了解它们在口腔中的作用。