The Novo Nordisk Foundation Center for Basic Metabolic Research, Faculty of Health and Medical Sciences, Copenhagen University, Copenhagen, Denmark.
Institute of Odontology, Section of Oral Microbiology, Faculty of Health and Medical Sciences, Copenhagen University, Copenhagen, Denmark.
Front Cell Infect Microbiol. 2022 Nov 16;12:1055117. doi: 10.3389/fcimb.2022.1055117. eCollection 2022.
Previous research indicates that the salivary microbiota may be a biomarker of oral as well as systemic disease. However, clarifying the potential bias from general health status and lifestyle-associated factors is a prerequisite of using the salivary microbiota for screening.
MATERIALS & METHODS: ADDDITION-PRO is a nationwide Danish cohort, nested within the Danish arm of the Anglo-Danish-Dutch Study of Intensive treatment in People with Screen-Detected Diabetes in Primary Care. Saliva samples from n=746 individuals from the ADDITION-PRO cohort were characterized using 16s rRNA sequencing. Alpha- and beta diversity as well as relative abundance of genera was examined in relation to general health and lifestyle-associated variables. Permutational multivariate analysis of variance (PERMANOVA) was performed on individual variables and all variables together. Classification models were created using sparse partial-least squares discriminant analysis (sPLSDA) for variables that showed statistically significant differences based on PERMANOVA analysis (p < 0.05).
Glycemic status, hemoglobin-A (HbA) level, sex, smoking and weekly alcohol intake were found to be significantly associated with salivary microbial composition (individual variables PERMANOVA, p < 0.05). Collectively, these variables were associated with approximately 5.8% of the observed differences in the composition of the salivary microbiota. Smoking status was associated with 3.3% of observed difference, and smoking could be detected with good accuracy based on salivary microbial composition (AUC 0.95, correct classification rate 79.6%).
Glycemic status, HbA level, sex, smoking and weekly alcohol intake were significantly associated with the composition of the salivary microbiota. Despite smoking only being associated with 3.3% of the difference in overall salivary microbial composition, it was possible to create a model for detection of smoking status with a high correct classification rate. However, the lack of information on the oral health status of participants serves as a limitation in the present study. Further studies in other cohorts are needed to validate the external validity of these findings.
先前的研究表明,唾液微生物群可能是口腔和全身疾病的生物标志物。然而,阐明一般健康状况和与生活方式相关因素的潜在偏差是将唾液微生物群用于筛查的前提。
ADDITION-PRO 是一个全国性的丹麦队列,嵌套在丹麦人在初级保健中筛查发现的糖尿病患者强化治疗的英-丹-荷研究的丹麦部分。来自 ADDITION-PRO 队列的 n=746 个人的唾液样本使用 16s rRNA 测序进行了特征描述。在与一般健康和与生活方式相关的变量有关的情况下,检查了 alpha 和 beta 多样性以及属的相对丰度。对个体变量和所有变量一起进行了可变性多元方差分析 (PERMANOVA)。使用稀疏偏最小二乘判别分析 (sPLSDA) 为基于 PERMANOVA 分析显示出统计学显著差异的变量 (p < 0.05) 创建分类模型。
血糖状态、血红蛋白-A (HbA) 水平、性别、吸烟和每周饮酒量与唾液微生物组成显著相关 (个体变量 PERMANOVA,p < 0.05)。总的来说,这些变量与唾液微生物组成的观察到的差异的大约 5.8%有关。吸烟状况与观察到的差异的 3.3%有关,并且可以根据唾液微生物组成很好地检测到吸烟状况 (AUC 0.95,正确分类率 79.6%)。
血糖状态、HbA 水平、性别、吸烟和每周饮酒量与唾液微生物群的组成显著相关。尽管吸烟仅与总体唾液微生物组成的差异的 3.3%有关,但可以创建一个用于检测吸烟状况的模型,其正确分类率很高。然而,参与者的口腔健康状况信息的缺乏是本研究的一个限制。需要在其他队列中进行进一步的研究,以验证这些发现的外部有效性。