Bruxism is a disorder characterised by teeth grinding and clenching, and many bruxism sufferers are not aware of this disorder until their dental health professional notices permanent teeth wear. Stress and anxiety are often listed among contributing factors impacting bruxism exacerbation, which may explain why the COVID-19 pandemic gave rise to a bruxism epidemic. It is essential to develop tools allowing for the early diagnosis of bruxism in an unobtrusive manner. This work explores the feasibility of detecting bruxism-related events using earables in a mimicked in-the-wild setting. Using inertial measurement unit for data collection, we utilise traditional machine learning for teeth grinding and clenching detection. We observe superior performance of models based on gyroscope data, achieving an 88% and 66% accuracy on grinding and clenching activities, respectively, in a controlled environment, and 76% and 73% on grinding and clenching, respectively, in an in-the-wild environment.
翻译:布鲁氏病是一种以牙磨和凝结为特征的疾病,许多布鲁氏病患者在牙科保健专业人员发现永久牙齿磨牙之前并不知道这种疾病。压力和焦虑往往被列为影响布鲁氏病恶化的诱因之一,这可以解释为什么COVID-19大流行导致布鲁氏病流行。必须开发工具,以便以不受侵扰的方式早期诊断布鲁氏病。这项工作探索了在模拟的本形环境中使用耳机探测与布鲁氏病有关的事件的可行性。我们利用惯性测量器收集数据,利用传统机器学习进行牙齿研磨和断裂检测。我们观察到基于陀螺仪数据的模型表现优异,在受控制的环境中分别达到88%和66%的精度,在受控制的环境中分别达到76%和73%的研磨和剪裂活动。