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Features for detection of Parkinson's disease tremor from local field potentials of the subthalamic nucleus

机译:从亚粒子核的局部场势检测帕金森病震颤的特征

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Deep Brain Stimulation (DBS) is a treatment routinely used to alleviate the symptoms of Parkinson's disease (PD). In this type of treatment, electrical pulses are applied through electrodes implanted into the basal ganglia of the patient. As the symptoms are not permanent in most patients, it is desirable to develop an on-demand stimulator, applying pulses only when onset of the symptoms is detected. This study evaluates a feature set created for the detection of tremor — a cardinal symptom of PD. The designed feature set was based on standard signal features and researched properties of the electrical signals recorded from subthalamic nucleus (STN) within the basal ganglia, which together included temporal, spectral, statistical, autocorrelation and fractal properties. The most characterized tremor related features were selected using statistical testing and backward algorithms then used for classification on unseen patient signals. The spectral features were among the most efficient at detecting tremor, notably spectral bands 3.5–5.5 Hz and 0–1 Hz proved to be highly significant. The classification results for determination of tremor achieved 94% sensitivity with specificity equaling one.
机译:深脑刺激(DBS)是一种常规用于缓解帕金森病(PD)的症状的治疗方法。在这种类型的处理中,通过注入到患者的基底神经节的电极施加电脉冲。由于在大多数患者中症状并不永久性,因此希望开发按需刺激器,仅在检测到症状的发生时施加脉冲。本研究评估为检测震颤的特征集 - PD的基本症状。设计的功能集基于标准信号特征和从基底神经节中的亚饱和核(STN)记录的电信号的研究属性,其中包括时间,光谱,统计,自相关和分形特性。使用统计测试和后向算法选择最具特征的震颤相关特征,然后用于对看不见的患者信号进行分类。光谱特征是在检测震颤中最有效的,特别是光谱带3.5-5.5Hz和0-1Hz被证明是非常重要的。测定震颤的分类结果达到了94%的灵敏度,特异性等于1。

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