Motor-related elderly brain activity revealed via recurrence quantification analysis

E. Pitsik, N. Frolov, A. Kiselev, N. Shchukovskii, Artem Badarin, V. Grubov
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Abstract

We study motor-related brain activity in the group of elderly individuals (aged 55-76) using the continuous wavelet transform and the recurrence quantification analysis (RQA). Detecting motor patterns on electroencephalograms (EEGs) is a complex task due to the nonstationarity and complexity of EEG signal, which leads to the high inter- and intra-subject variability of traditionally applied methods. It is especially demanded to use these methods in the context of the elderly group analysis due to the additional age-related changes of the brain motor cortex functioning. In the present paper, we show that RQA measure of complexity is very useful in detection of transitions from background (normal) to motor-related brain activity captured via EEG signals. Moreover, used RQA measure of determinism calculated to quantify brain processes during upper limbs movements reflects contralateral properties of motor-related neuronal activity, which is helpful at distinguishing between two types of executed movements.
通过复发量化分析揭示老年人运动相关脑活动
本文采用连续小波变换和递归量化分析(RQA)对55 ~ 76岁老年人的运动相关脑活动进行了研究。由于脑电图信号的非平稳性和复杂性,运动模式检测是一项复杂的任务,这导致传统方法在受试者之间和受试者内部具有很高的可变性。由于大脑运动皮质功能的额外年龄相关变化,特别需要在老年人组分析的背景下使用这些方法。在本文中,我们表明复杂性的RQA测量在检测从背景(正常)到通过脑电图信号捕获的运动相关脑活动的转换时非常有用。此外,使用确定性的RQA测量来量化上肢运动时的大脑过程,反映了运动相关神经元活动的对侧特性,这有助于区分两种类型的执行运动。
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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