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Implementation of a Smartphone Wireless Accelerometer Platform for Establishing Deep Brain Stimulation Treatment Efficacy of Essential Tremor with Machine Learning

机译:实施智能手机无线加速度计平台,用于建立深脑刺激治疗基本震颤的效果与机器学习

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Essential tremor (ET) is a highly prevalent movement disorder. Patients with ET exhibit a complex progressive and disabling tremor, and medical management often fails. Deep brain stimulation (DBS) has been successfully applied to this disorder, however there has been no quantifiable way to measure tremor severity or treatment efficacy in this patient population. The quantified amelioration of kinetic tremor via DBS is herein demonstrated through the application of a smartphone (iPhone) as a wireless accelerometer platform. The recorded acceleration signal can be obtained at a setting of the subject's convenience and conveyed by wireless transmission through the Internet for post-processing anywhere in the world. Further post-processing of the acceleration signal can be classified through a machine learning application, such as the support vector machine. Preliminary application of deep brain stimulation with a smartphone for acquisition of a feature set and machine learning for classification has been successfully applied. The support vector machine achieved 100% classification between deep brain stimulation in 'on' and 'off' mode based on the recording of an accelerometer signal through a smartphone as a wireless accelerometer platform.
机译:基本震颤(ET)是一种高度普遍的运动障碍。 ET患者展示复杂的渐进性和致力震颤,医疗管理经常失败。深脑刺激(DBS)已成功应用于这种疾病,然而没有可量化的方法来测量该患者人群中的震颤严重程度或治疗效果。本文通过应用智能手机(iPhone)作为无线加速度计平台来证明通过DBS的量化震颤的量化改善。记录的加速信号可以在主题的便利性设置中获得,并通过无线传输通过互联网来传达世界任何地方的后处理。加速信号的进一步后处理可以通过机器学习应用来分类,例如支持向量机。已经成功地应用了用智能手机进行深脑刺激的初步应用,以获得分类的特征集和机器学习。基于通过智能手机作为无线加速度计平台的加速度计信号记录,支持向量机在“开”和“OFF”模式下的深脑刺激之间的分类100%。

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