Division of Pediatric and Public Health, Adams School of Dentistry, University of North Carolina, Chapel Hill, NC, USA.
Department of Biostatistics, Gillings School of Global Public Health, University of North Carolina, Chapel Hill, NC, USA.
J Dent Res. 2021 Jun;100(6):615-622. doi: 10.1177/0022034520982963. Epub 2021 Jan 9.
Dental caries is characterized by a dysbiotic shift at the biofilm-tooth surface interface, yet comprehensive biochemical characterizations of the biofilm are scant. We used metabolomics to identify biochemical features of the supragingival biofilm associated with early childhood caries (ECC) prevalence and severity. The study's analytical sample comprised 289 children ages 3 to 5 (51% with ECC) who attended public preschools in North Carolina and were enrolled in a community-based cross-sectional study of early childhood oral health. Clinical examinations were conducted by calibrated examiners in community locations using International Caries Detection and Classification System (ICDAS) criteria. Supragingival plaque collected from the facial/buccal surfaces of all primary teeth in the upper-left quadrant was analyzed using ultra-performance liquid chromatography-tandem mass spectrometry. Associations between individual metabolites and 18 clinical traits (based on different ECC definitions and sets of tooth surfaces) were quantified using Brownian distance correlations (dCor) and linear regression modeling of log-transformed values, applying a false discovery rate multiple testing correction. A tree-based pipeline optimization tool (TPOT)-machine learning process was used to identify the best-fitting ECC classification metabolite model. There were 503 named metabolites identified, including microbial, host, and exogenous biochemicals. Most significant ECC-metabolite associations were positive (i.e., upregulations/enrichments). The localized ECC case definition (ICDAS ≥1 caries experience within the surfaces from which plaque was collected) had the strongest correlation with the metabolome (dCor = 8 × 10). Sixteen metabolites were significantly associated with ECC after multiple testing correction, including fucose ( = 3.0 × 10) and -acetylneuraminate (p = 6.8 × 10) with higher ECC prevalence, as well as catechin ( = 4.7 × 10) and epicatechin ( = 2.9 × 10) with lower. Catechin, epicatechin, imidazole propionate, fucose, 9,10-DiHOME, and -acetylneuraminate were among the top 15 metabolites in terms of ECC classification importance in the automated TPOT model. These supragingival biofilm metabolite findings provide novel insights in ECC biology and can serve as the basis for the development of measures of disease activity or risk assessment.
龋齿的特征是生物膜与牙表面交界处的共生失调,但对生物膜的综合生化特征描述甚少。我们使用代谢组学来鉴定与儿童早期龋(ECC)患病率和严重程度相关的龈上生物膜的生化特征。该研究的分析样本包括 289 名 3 至 5 岁的儿童(51%患有 ECC),他们在北卡罗来纳州的公立幼儿园就读,并参与了一项基于社区的儿童早期口腔健康的横断面研究。由经过校准的检查者在社区场所使用国际龋病检测和分类系统(ICDAS)标准进行临床检查。从左上象限所有乳牙的颊/唇面收集龈上菌斑,使用超高效液相色谱-串联质谱法进行分析。使用布朗距离相关(dCor)和对数转换值的线性回归建模,对个体代谢物与 18 种临床特征(基于不同的 ECC 定义和牙面集)之间的关联进行量化,应用虚假发现率多重检验校正。基于树的管道优化工具(TPOT)-机器学习过程用于识别最佳拟合的 ECC 分类代谢物模型。共鉴定出 503 种命名代谢物,包括微生物、宿主和外源性生物化学物质。与 ECC 最显著的代谢物关联是阳性的(即上调/富集)。局部 ECC 病例定义(ICDAS 在采集菌斑的牙面内有≥1 个龋损经历)与代谢组相关性最强(dCor = 8×10)。经过多次测试校正后,有 16 种代谢物与 ECC 显著相关,包括岩藻糖( = 3.0×10)和 -N-乙酰神经氨酸(p = 6.8×10),与 ECC 患病率较高有关,而儿茶素( = 4.7×10)和表儿茶素( = 2.9×10)与 ECC 患病率较低有关。儿茶素、表儿茶素、咪唑丙酸、岩藻糖、9,10-二 HOMES 和 -N-乙酰神经氨酸是自动 TPOT 模型中基于 ECC 分类重要性的前 15 种代谢物之一。这些龈上生物膜代谢物的发现为 ECC 生物学提供了新的见解,并可作为疾病活动或风险评估措施的基础。