School of Clinical Dentistry, University of Sheffield, Sheffield, U.K.
J Periodontol. 2017 Nov;88(11):1135-1144. doi: 10.1902/jop.2017.170187. Epub 2017 Jul 3.
An ability to predict the response to conventional non-surgical treatment of a periodontal site would be advantageous. However, biomarkers or tests devised to achieve this have lacked sensitivity. The aim of this study is to assess the ability of a novel combination of biomarkers to predict treatment outcome of patients with chronic periodontitis.
Gingival crevicular fluid (GCF) and subgingival plaque were collected from 77 patients at three representative sites, one healthy (probing depth [PD] ≤3 mm) and two diseased (PD ≥6 mm), at baseline and at 3 and 6 months after treatment. Patients received standard non-surgical periodontal treatment at each time point as appropriate. The outcome measure was improvement in probing depth of ≥2 mm. Concentrations of active enzymes (matrix metalloproteinase [MMP]-8, elastase, and sialidase) in GCF and subgingival plaque levels of Porphyromonas gingivalis, Tannerella forsythia, and Fusobacterium nucleatum were analyzed for prediction of the outcome measure.
Using threshold values of MMP-8 (94 ng/μL), elastase (33 ng/μL), sialidase (23 ng/μL), and levels of P. gingivalis (0.23%) and T. forsythia (0.35%), receiver operating characteristic curves analysis demonstrated that these biomarkers at baseline could differentiate healthy from diseased sites (sensitivity and specificity ≥77%). Furthermore, logistic regression showed that this combination of these biomarkers at baseline provided accurate predictions of treatment outcome (≥92%).
The "fingerprint" of GCF enzymes and bacteria described here offers a way to predict the outcome of non-surgical periodontal treatment on a site-specific basis.
如果有一种能够预测牙周部位常规非手术治疗效果的能力,那将是非常有利的。然而,目前设计用于实现这一目标的生物标志物或检测方法缺乏敏感性。本研究旨在评估一种新型生物标志物组合预测慢性牙周炎患者治疗效果的能力。
在基线时以及治疗后 3 个月和 6 个月,从 77 名患者的三个代表性部位(一个健康部位[探诊深度(PD)≤3mm]和两个患病部位[PD≥6mm])采集龈沟液(GCF)和龈下菌斑。在每个时间点,患者均接受标准的非手术牙周治疗。主要观察指标为探诊深度(PD)改善≥2mm。分析 GCF 中活性酶(基质金属蛋白酶[MMP]-8、弹性蛋白酶和唾液酸酶)的浓度以及龈下菌斑中牙龈卟啉单胞菌、福赛斯坦纳菌和核梭杆菌的水平,以预测主要观察指标。
使用 MMP-8(94ng/μL)、弹性蛋白酶(33ng/μL)、唾液酸酶(23ng/μL)以及牙龈卟啉单胞菌(0.23%)和福赛斯坦纳菌(0.35%)的阈值值,ROC 曲线分析表明,这些生物标志物在基线时可以区分健康部位和患病部位(灵敏度和特异性≥77%)。此外,逻辑回归显示,这些生物标志物在基线时的组合能够准确预测治疗效果(≥92%)。
此处描述的 GCF 酶和细菌“指纹”提供了一种基于特定部位预测非手术牙周治疗效果的方法。