Dept. of Prosthetic Dentistry, Folktandvården Eastmaninstitutet, Stockholm, Sweden; Dept. of Dental Medicine, Karolinska Institutet, Stockholm, Sweden.
Dept. of Dental Medicine, Karolinska Institutet, Stockholm, Sweden; Scandinavian Centre for Orofacial Neuroscience (SCON), Denmark.
J Dent. 2019 Mar;82:22-29. doi: 10.1016/j.jdent.2019.01.001. Epub 2019 Jan 8.
Explore a new approach to identify phenotypes of tooth wear (TW) patients using an unsupervised cluster analysis model, based on demographic, self-report, clinical, salivary and electromyographic (EMG) findings.
Data was collected for 34 variables from 125 patients, aged 17-65 years, with a TW index > grade 2. Demographic information and presumed risk factors for chemical and mechanical TW were collected. A 14-item stress scale was completed and salivary flow rates, pH and buffer capacity were measured. Sleep bruxism was assessed with a portable single channel EMG device.
The final cluster model comprised 16 variables and 103 patients and indicated two groups of TW patients; 61 participants in cluster A and 42 in cluster B. Cluster assignment was determined by several presumed mechanical risk factors and diseases affecting saliva. Cluster B had the highest percentage of sleep bruxism self-reports (A 1.6%, B 92.9%, p ≤ 0.001), awake bruxism self-reports (A 45.9%, B 85.7%, p ≤ 0.001), heavy sport exercises (A 1.6%, B 21.4%, p = 0.001); and highest percentage of diseases affecting saliva (A 13.1%, B 47.6%, p ≤ 0.001). A notable finding was the lack of significant differences between clusters in many other presumed risk factors for mechanical and chemical TW.
TW patients can be clustered in at least two groups with different phenotypic characteristics but also with a large degree of overlap. Based on this type of algorithm, tools for clinical application may be developed and underpin TW classification and treatment planning in the future.
探索一种新方法,基于人口统计学、自我报告、临床、唾液和肌电图(EMG)发现,使用无监督聚类分析模型来识别牙齿磨损(TW)患者的表型。
从 125 名年龄在 17-65 岁之间、TW 指数>2 级的 TW 患者中收集了 34 个变量的数据。收集了人口统计学信息和化学及机械 TW 的潜在危险因素。完成了 14 项压力量表,测量了唾液流量、pH 值和缓冲能力。使用便携式单通道 EMG 设备评估睡眠磨牙症。
最终的聚类模型包括 16 个变量和 103 名患者,表明 TW 患者分为两组;A 组 61 名参与者,B 组 42 名参与者。聚类分配由几个潜在的机械危险因素和影响唾液的疾病决定。B 组的睡眠磨牙症自我报告比例最高(A 组 1.6%,B 组 92.9%,p≤0.001)、觉醒磨牙症自我报告比例最高(A 组 45.9%,B 组 85.7%,p≤0.001)、重度运动锻炼(A 组 1.6%,B 组 21.4%,p=0.001);以及影响唾液的疾病比例最高(A 组 13.1%,B 组 47.6%,p≤0.001)。一个显著的发现是,在许多其他机械和化学 TW 的潜在危险因素方面,两组之间没有显著差异。
TW 患者可以至少分为两组,具有不同的表型特征,但也有很大的重叠。基于这种类型的算法,可以开发用于临床应用的工具,并为未来的 TW 分类和治疗计划提供支持。