Zhang Ying, Huang Shi, Jia Songbo, Sun Zheng, Li Shanshan, Li Fan, Zhang Lijuan, Lu Jie, Tan Kaixuan, Teng Fei, Yang Fang
School of Stomatology, Qingdao University, Qingdao, Shandong, China.
Centre of Microbiome Innovation, Jacobs School of Engineering, University of California, San Diego, La Jolla, California, 92093, USA.
J Oral Microbiol. 2021 May 13;13(1):1921486. doi: 10.1080/20002297.2021.1921486.
Early childhood caries (ECC) is one of the most prevalent chronic diseases affecting children worldwide, and thus its etiology, diagnosis, and prognosis are of particular clinical significance. This study aims to test the ability of salivary microbiome and electrolytes in diagnosing ECC, and their interplays within the same population. We here simultaneously profiled salivary microbiome and biochemical components of 331 children (166 caries-free (H group) and 165 caries-active children (C group)) aged 4-6 years. We identified both salivary microbial and biochemical dysbiosis associated with ECC. Remarkably, K, Cl, NH , Na, SO , Ca, Mg, and Br were enriched while pH and NO were depleted in ECC. Moreover, the dmft index (ECC severity) positively correlated with Cl, NH , Ca, Mg, Br, while negatively with pH and NO . Furthermore, machine-learning classification models were constructed based on these biomarkers from saliva microbiota, or electrolytes (and pH). Unexpectedly, the electrolyte-based classifier (AUROC = 0.94) outperformed microbiome-based (AUROC = 0.70) one and the composite-based one (with both microbial and biochemical data; AUC = 0.89) in predicting ECC. Collectively, these findings indicate ECC-associated alterations and interplays in the oral microbiota, electrolytes and pH, underscoring the necessity of developing diagnostic models with predictors from salivary electrolytes.
幼儿龋(ECC)是影响全球儿童的最常见慢性病之一,因此其病因、诊断和预后具有特殊的临床意义。本研究旨在测试唾液微生物群和电解质在诊断ECC方面的能力,以及它们在同一人群中的相互作用。我们同时分析了331名4至6岁儿童(166名无龋儿童(H组)和165名患龋儿童(C组))的唾液微生物群和生化成分。我们确定了与ECC相关的唾液微生物和生化失调。值得注意的是,ECC患者的K、Cl、NH、Na、SO、Ca、Mg和Br含量升高,而pH值和NO含量降低。此外,dmft指数(ECC严重程度)与Cl、NH、Ca、Mg、Br呈正相关,与pH值和NO呈负相关。此外,基于唾液微生物群或电解质(和pH值)的这些生物标志物构建了机器学习分类模型。出乎意料的是,在预测ECC方面,基于电解质的分类器(AUROC = 0.94)优于基于微生物群的分类器(AUROC = 0.70)和基于综合数据的分类器(同时包含微生物和生化数据;AUC = 0.89)。总的来说,这些发现表明口腔微生物群、电解质和pH值与ECC相关的改变和相互作用,强调了开发基于唾液电解质预测指标的诊断模型的必要性。