Surangsrirat Decho, Thanawattano Chusak, Pongthornseri Ronachai, Dumnin Songphon, Anan Chanawat, Bhidayasiri Roongroj
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:6389-6392. doi: 10.1109/EMBC.2016.7592190.
Tremor is a common symptom shared in both Parkinson's disease (PD) and Essential tremor (ET) subjects. The differential diagnosis of PD and ET tremor is important since the realization of treatment depends on specific medication. A novel feature is developed based on a hypothesis that tremor of PD subject has a larger fluctuation during resting than action task. Tremor signal is collected using a triaxial gyroscope sensor attached to subject's finger during kinetic and resting task. The angular velocity signal is analyzed by transforming a one-dimensional to two-dimensional signal using a relation of signal and its delay versions. Tremor fluctuation is defined as the area of 95% confidence ellipse covering the two-dimensional signal. The tremor fluctuation during kinetic and resting task is used as classification features. The support vector machine is used as a classifier and tested with 10-fold cross-validation. This novel feature provides a perfect PD/ET classification with 100% accuracy, sensitivity and specificity.
震颤是帕金森病(PD)和特发性震颤(ET)患者共有的常见症状。PD和ET震颤的鉴别诊断很重要,因为治疗方案的确定取决于具体的药物。基于PD患者在静息状态下的震颤比动作任务时波动更大这一假设,开发了一种新特征。在动态和静息任务期间,使用附着在受试者手指上的三轴陀螺仪传感器收集震颤信号。通过利用信号及其延迟版本的关系将一维信号转换为二维信号来分析角速度信号。震颤波动定义为覆盖二维信号的95%置信椭圆的面积。动态和静息任务期间的震颤波动用作分类特征。支持向量机用作分类器,并通过10折交叉验证进行测试。这一新特征提供了完美的PD/ET分类,准确率、灵敏度和特异性均为100%。