Rzeznik Matthias, Triba Mohamed Nawfal, Levy Pierre, Jungo Sébastien, Botosoa Eliot, Duchemann Boris, Le Moyec Laurence, Bernaudin Jean-François, Savarin Philippe, Guez Dominique
Paris 13 University, Sorbonne Paris Cité, CSPBAT, UMR 7244, CNRS, Bobigny, France.
APHP, Department of Periodontology, Bretonneau Hospital, Paris-Descartes University, Paris, France.
PLoS One. 2017 Aug 24;12(8):e0182767. doi: 10.1371/journal.pone.0182767. eCollection 2017.
Periodontitis is characterized by the loss of the supporting tissues of the teeth in an inflammatory-infectious context. The diagnosis relies on clinical and X-ray examination. Unfortunately, clinical signs of tissue destruction occur late in the disease progression. Therefore, it is mandatory to identify reliable biomarkers to facilitate a better and earlier management of this disease. To this end, saliva represents a promising fluid for identification of biomarkers as metabolomic fingerprints. The present study used high-resolution 1H-nuclear magnetic resonance (NMR) spectroscopy coupled with multivariate statistical analysis to identify the metabolic signature of active periodontitis. The metabolome of stimulated saliva of 26 patients with generalized periodontitis (18 chronic and 8 aggressive) was compared to that of 25 healthy controls. Principal Components Analysis (PCA), performed with clinical variables, indicated that the patient population was homogeneous, demonstrating a strong correlation between the clinical and the radiological variables used to assess the loss of periodontal tissues and criteria of active disease. Orthogonal Projection to Latent Structure (OPLS) analysis showed that patients with periodontitis can be discriminated from controls on the basis of metabolite concentrations in saliva with satisfactory explained variance (R2X = 0.81 and R2Y = 0.61) and predictability (Q2Y = 0.49, CV-AUROC = 0.94). Interestingly, this discrimination was irrespective of the type of generalized periodontitis, i.e. chronic or aggressive. Among the main discriminating metabolites were short chain fatty acids as butyrate, observed in higher concentrations, and lactate, γ-amino-butyrate, methanol, and threonine observed in lower concentrations in periodontitis. The association of lactate, GABA, and butyrate to generate an aggregated variable reached the best positive predictive value for diagnosis of periodontitis. In conclusion, this pilot study showed that 1H-NMR spectroscopy analysis of saliva could differentiate patients with periodontitis from controls. Therefore, this simple, robust, non-invasive method, may offer a significant help for early diagnosis and follow-up of periodontitis.
牙周炎的特征是在炎症感染的情况下牙齿支持组织的丧失。诊断依赖于临床和X线检查。不幸的是,组织破坏的临床体征在疾病进展后期才出现。因此,必须识别可靠的生物标志物,以便更好、更早地管理这种疾病。为此,唾液作为代谢组指纹图谱,是一种很有前景的用于识别生物标志物的液体。本研究采用高分辨率1H-核磁共振(NMR)光谱结合多变量统计分析来识别活动性牙周炎的代谢特征。将26例广泛性牙周炎患者(18例慢性和8例侵袭性)刺激唾液的代谢组与25例健康对照者的代谢组进行比较。用临床变量进行的主成分分析(PCA)表明患者群体是同质的,表明用于评估牙周组织丧失和活动性疾病标准的临床和放射学变量之间存在很强的相关性。正交投影到潜在结构(OPLS)分析表明,根据唾液中的代谢物浓度,可以将牙周炎患者与对照者区分开来,具有令人满意的解释方差(R2X = 0.81和R2Y = 0.61)和可预测性(Q2Y = 0.49,CV-AUROC = 0.94)。有趣的是,这种区分与广泛性牙周炎的类型无关,即慢性或侵袭性。主要的鉴别代谢物包括丁酸等短链脂肪酸,其浓度较高,而乳酸、γ-氨基丁酸、甲醇和苏氨酸在牙周炎中的浓度较低。乳酸、GABA和丁酸联合生成的聚集变量对牙周炎诊断的阳性预测值最佳。总之,这项初步研究表明,唾液的1H-NMR光谱分析可以区分牙周炎患者和对照者。因此,这种简单、可靠、非侵入性的方法可能为牙周炎的早期诊断和随访提供重要帮助。