Construction of semi-supervised spatial projections to identify the source of beta- and high frequency oscillations in Parkinson's disease.

Luciano R F Branco, Ashwin Viswanathan, Arjun Tarakad, Nuri F Ince
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Abstract

Traditional deep brain stimulation (DBS) treatment for Parkinson's disease (PD) targets the placement of DBS leads into subthalamic nucleus (STN). Extraction of neurobiomarkers from STN local field potential activity can be used for the optimization of DBS. Beta (12-30 Hz) and high frequency oscillations (200-450 Hz, HFO) of STN and their phase-amplitude coupling have been previously correlated with symptom severity in PD. The typical approach is to take bipolar derivations of electrode contacts in order to enhance recordings of local brain activity and suppress noise levels. This approach can often cancel the signals in correlated neighboring contacts and create ambiguity in which monopolar contact to select for the identification of the main source of the oscillatory signal. To improve local specificity and help identify the source of beta and HFO in terms of electrode contact, we propose a semi supervised blind-source separation method. This approach presents a novel perspective to investigate electrophysiology by projecting the recorded channels into a subspace of virtual channels. We show the contribution of each channel to the identified source and correlate the spatial information with imaging and postoperative programming parameters. We anticipate such a source identification strategy can be used in the future to investigate the distribution of beta and HFO on individual contacts of the DBS lead and can improve the interpretation of these signals.

构建半监督空间投影以识别帕金森病中β和高频振荡的来源。
传统的深部脑刺激(DBS)治疗帕金森病(PD)的目标是将DBS导联置入丘脑底核(STN)。从STN局部场电位活动中提取神经生物标志物可用于DBS的优化。STN的β (12-30 Hz)和高频振荡(200-450 Hz, HFO)及其相幅耦合先前与PD的症状严重程度相关。典型的方法是采用电极接触的双极衍生,以增强局部大脑活动的记录和抑制噪声水平。这种方法往往会抵消相关相邻触点中的信号,并造成选择单极触点来识别振荡信号主源的模糊性。为了提高局部特异性,并有助于在电极接触方面识别β和HFO的来源,我们提出了一种半监督盲源分离方法。这种方法通过将记录的通道投射到虚拟通道的子空间中,提出了一种新的研究电生理学的视角。我们展示了每个通道对识别源的贡献,并将空间信息与成像和术后编程参数相关联。我们预计这种源识别策略可以在未来用于研究DBS引线上单个触点上β和HFO的分布,并可以改进这些信号的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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