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Optimization of spectral analysis of electrophysiological recordings of the subthalamic nucleus in Parkinson's disease: A retrospective study

机译:帕金森病亚粒子核电生理记录光谱分析的优化:回顾性研究

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Parkinson's disease (PD) is a neurodegenerative disorder that is diagnosed in over 60.000 people per year in the USA alone. Deep brain stimulation of the STN has been implemented to ameliorate the motor symptoms, being highly effective. PD has been associated with increased power in the beta frequency band (13-35 Hz) in the STN's stereo electroencephalography signals (sEEG). Several studies have estimated the spectrum of the sEEG signals in order to identify spectral behavior according to anatomical structures and pathologies; however, the estimation methods do not give enough sensitivity. In the present study, we hypothesize that parametric methods can have a better performance to correctly estimate the spectrum of a sEEG signal in the beta band using the right model order. AR models were estimated, with four different information criteria to choose the proper order, where the Akaike's information criterion corrected (AICc) gives the best estimation with an order of 17.
机译:帕金森病(PD)是一种神经变性障碍,仅在美国每年超过60.000人诊断出来。 STN的深脑刺激已经实施以改善电机症状,非常有效。 PD在STN立体声脑电图信号(SEEG)中的β频带(13-35Hz)中的功率增加了相关的电力。几项研究估计了跷跷板信号的光谱,以根据解剖结构和病理识别光谱行为;然而,估计方法不给予足够的敏感性。在本研究中,我们假设参数方法可以具有更好的性能来使用右模型顺序正确估计Beta频带中的跷跷板信号的频谱。估计AR模型,具有四种不同的信息标准来选择正确的顺序,其中Akaike的信息标准(AICC)提供了17个订单的最佳估计。

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