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Tremor quantification of Parkinson's disease - a pilot study

机译:帕金森氏病的震颤量化-一项初步研究

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The objective of this study was to quantify Parkinson's disease tremor severity using signals acquired from wearable inertial sensors. A machine learning approach was used in the development of classification models. Features calculated from signals produced by accelerometer and gyroscope sensors placed on the index finger and wrist were taken into account. Linear Support Vector Machine (SVM) models were used to assess the severity of rest and postural tremor. The analysis showed that sensor signals collected from the index finger more accurately predict tremor severity compared to signals from a sensor placed on the wrist. Also, standard deviation of linear acceleration and angular velocity signals was shown to increase the accuracy of classifier from 88.6% to 88.9% for resting tremor and 78.8% to 81.8% for postural tremor.
机译:这项研究的目的是使用从可穿戴惯性传感器获取的信号量化帕金森氏病的震颤严重程度。在分类模型的开发中使用了机器学习方法。考虑到了由食指和手腕上的加速度计和陀螺仪传感器产生的信号计算出的特征。线性支持向量机(SVM)模型用于评估休息和姿势性震颤的严重程度。分析表明,与食指放在手腕上相比,从食指收集的传感器信号可以更准确地预测震颤的严重程度。同样,线性加速度和角速度信号的标准偏差也显示出将静息震颤的分类器准确性从88.6%提高到88.9%,对于姿态震颤的分类器的准确性从78.8%提高到81.8%。

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