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Non-Linear Dynamical Analysis of Resting Tremor for Demand-Driven Deep Brain Stimulation

机译:需求驱动的深部大脑刺激的静息震颤的非线性动力学分析

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摘要

Parkinson’s Disease (PD) is currently the second most common neurodegenerative disease. One of the most characteristic symptoms of PD is resting tremor. Local Field Potentials (LFPs) have been widely studied to investigate deviations from the typical patterns of healthy brain activity. However, the inherent dynamics of the Sub-Thalamic Nucleus (STN) LFPs and their spatiotemporal dynamics have not been well characterized. In this work, we study the non-linear dynamical behaviour of STN-LFPs of Parkinsonian patients using ε-recurrence networks. RNs are a non-linear analysis tool that encodes the geometric information of the underlying system, which can be characterised (for example, using graph theoretical measures) to extract information on the geometric properties of the attractor. Results show that the activity of the STN becomes more non-linear during the tremor episodes and that ε-recurrence network analysis is a suitable method to distinguish the transitions between movement conditions, anticipating the onset of the tremor, with the potential for application in a demand-driven deep brain stimulation system.
机译:帕金森氏病(PD)是目前第二常见的神经退行性疾病。 PD最典型的症状之一是静息性震颤。局部场电势(LFP)已得到广泛研究,以研究与健康大脑活动的典型模式之间的偏差。但是,尚未很好地表征亚丘脑下核(STN)LFP的固有动力学及其时空动力学。在这项工作中,我们使用 ε -递归网络。 RN是对底层系统的几何信息进行编码的非线性分析工具,可以对其进行特征化(例如,使用图形理论方法)以提取有关吸引子的几何特性的信息。结果表明,在震颤发作期间,STN的活动变得更加非线性,并且 ε -递归网络分析是一种区分运动状态之间过渡的合适方法,可以预测震颤的发生,具有潜在的应用前景在需求驱动的深度大脑刺激系统中。

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