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Combined analysis of sensor data from hand and gait motor function improves automatic recognition of Parkinson’s disease

机译:从手和步态电机功能的传感器数据的组合分析提高了帕金森病的自动识别

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and rater independent analysis of movement impairment is one of the most challenging tasks in medical engineering. Especially assessment of motor symptoms defines the clinical diagnosis in Parkinson's disease (PD). A sensor-based system to measure the movement of the upper and lower extremities would therefore complement the clinical evaluation of PD. In this study two different sensor-based systems were combined to assess movement of 18 PD patients and 17 healthy controls. First, hand motor function was evaluated using a sensor pen with integrated accelerometers and pressure sensors, and second, gait function was assessed using a sports shoe with attached inertial sensors (gyroscopes, accelerometers). Subjects performed standardized tests for both extremities. Features were calculated from sensor signals to differentiate between patients and controls. For the latter, pattern recognition methods were used and the performance of four classifiers was compared. In a first step classification was done for every single system and in a second step for combined features of both systems. Combination of both motor task assessments substantially improved classification rates to 97% using the AdaBoost classifier for the experiment patients vs. controls. The combination of two different analysis systems led to enhanced, more stable, objective, and rater independent recognition of motor impairment. The method can be used as a complementary diagnostic tool for movement disorders.
机译:和Rater独立分析运动障碍是医疗工程中最具挑战性的任务之一。特别是对电机症状的评估定义了帕金森病(PD)的临床诊断。因此,基于传感器的系统测量上肢和下肢运动将补充PD的临床评价。在这项研究中,组合了两种不同的基于传感器的系统,以评估18名PD患者的运动和17例健康对照。首先,使用具有集成加速度计和压力传感器的传感器笔评估手机功能,并使用具有附着的惯性传感器(陀螺仪,加速度计)的运动鞋来评估步态功能。受试者对两端进行了标准化测试。从传感器信号计算特征,以区分患者和对照。对于后者,使用模式识别方法,比较了四种分类器的性能。在第一步中,为每个单一系统进行分类,并在第二步中完成两个系统的组合特征。两种电机任务评估的组合使用实验患者的Adaboost分类器与对照的Adaboost分类器显着提高了97%的分类率。两种不同的分析系统的组合导致了增强,更稳定,客观和对电机损伤的自由识别。该方法可用作运动障碍的互补诊断工具。

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