INSERM, INRAE, Univ Rennes 1, CHU de Rennes, Nutrition Metabolisms and Cancer, Rennes, France.
CIC 1414, Inserm, Rennes, France.
Mol Oral Microbiol. 2020 Jan;35(1):19-28. doi: 10.1111/omi.12274. Epub 2019 Dec 18.
The use of next generation sequencing and bioinformatics has revealed the complexity and richness of the human oral microbiota. While some species are well known for their periodontal pathogenicity, the molecular-based approaches for bacterial identification have raised awareness about new putative periodontal pathogens. Although they are found increased in case of periodontitis, there is currently a lack of data on their interrelationship with the periodontal measures. We processed the sequencing data of the subgingival microbiota of 75 patients with hemochromatosis and chronic periodontitis in order to characterize the well-described and newly identified subgingival periodontal pathogens. We used correlation tests and statistical models to assess the association between the periodontal pathogens and mean pocket depth, and to determine the most relevant bacterial biomarkers of periodontitis severity. Based on correlation test results, nine taxa were selected and included in the statistical models. The multiple linear regression models adjusted for systemic and periodontal clinical variables showed that mean pocket depth was negatively associated with Aggregatibacter and Rothia, and positively associated with Porphyromonas. Furthermore, a bacterial ratio that was previously described as a signature of dysbiosis in periodontitis (%Porphyromonas+%Treponema+%Tannerella)/(%Rothia+%Corynebacterium) was the most significant predictor. In this specific population, we found that the best model in predicting the mean pocket depth was microbial dysbiosis using the dysbiosis ratio taxa formula. While further studies are needed to assess the validity of these results on the general population, such a dysbiosis ratio could be used in the future to monitor the subgingival microbiota.
下一代测序和生物信息学的使用揭示了人类口腔微生物组的复杂性和丰富性。虽然一些物种因其牙周致病性而广为人知,但基于分子的细菌鉴定方法使人们对新的潜在牙周病原体有了更多的认识。虽然它们在牙周炎的情况下会增加,但目前缺乏它们与牙周措施之间相互关系的数据。我们处理了 75 名血色病和慢性牙周炎患者龈下微生物组的测序数据,以表征已描述和新发现的龈下牙周病原体。我们使用相关测试和统计模型来评估牙周病原体与平均牙周袋深度之间的关联,并确定牙周炎严重程度的最相关细菌生物标志物。基于相关测试结果,选择了九个分类群并包含在统计模型中。经系统和牙周临床变量调整的多元线性回归模型表明,平均牙周袋深度与Aggregatibacter 和 Rothia 呈负相关,与 Porphyromonas 呈正相关。此外,以前被描述为牙周炎中失调特征的细菌比例(%Porphyromonas+%Treponema+%Tannerella)/(%Rothia+%Corynebacterium)是最显著的预测因子。在这个特定人群中,我们发现使用失调比分类群公式预测平均牙周袋深度的最佳模型是微生物失调。虽然需要进一步研究来评估这些结果在一般人群中的有效性,但这种失调比可以用于未来监测龈下微生物组。