Slobounov Semyon, Cao Cheng, Jaiswal Niharika, Newell Karl M
Department of Kinesiology, The Pennsylvania State University, 268 Recreation Building, University Park, PA, 16802, USA.
Exp Brain Res. 2009 Oct;199(1):1-16. doi: 10.1007/s00221-009-1956-5. Epub 2009 Aug 5.
In this study, we investigated the neural basis of virtual time to contact (VTC) and the hypothesis that VTC provides predictive information for future postural instability. A novel approach to differentiate stable pre-falling and transition-to-instability stages within a single postural trial while a subject was performing a challenging single leg stance with eyes closed was developed. Specifically, we utilized wavelet transform and stage segmentation algorithms using VTC time series data set as an input. The VTC time series was time-locked with multichannel (n = 64) EEG signals to examine its underlying neural substrates. To identify the focal sources of neural substrates of VTC, a two-step approach was designed combining the independent component analysis (ICA) and low-resolution tomography (LORETA) of multichannel EEG. There were two major findings: (1) a significant increase of VTC minimal values (along with enhanced variability of VTC) was observed during the transition-to-instability stage with progression to ultimate loss of balance and falling; and (2) this VTC dynamics was associated with pronounced modulation of EEG predominantly within theta, alpha and gamma frequency bands. The sources of this EEG modulation were identified at the cingulate cortex (ACC) and the junction of precuneus and parietal lobe, as well as at the occipital cortex. The findings support the hypothesis that the systematic increase of minimal values of VTC concomitant with modulation of EEG signals at the frontal-central and parietal-occipital areas serve collectively to predict the future instability in posture.
在本研究中,我们探究了虚拟接触时间(VTC)的神经基础以及VTC为未来姿势不稳定提供预测信息的假设。我们开发了一种新颖的方法,在受试者闭眼进行具有挑战性的单腿站立姿势试验时,区分单个姿势试验中的稳定预跌倒阶段和向不稳定过渡阶段。具体而言,我们利用小波变换和阶段分割算法,将VTC时间序列数据集作为输入。VTC时间序列与多通道(n = 64)脑电图信号进行时间锁定,以检查其潜在的神经基质。为了识别VTC神经基质的焦点源,设计了一种结合多通道脑电图独立成分分析(ICA)和低分辨率断层扫描(LORETA)的两步法。有两个主要发现:(1)在向不稳定过渡阶段,随着平衡最终丧失和跌倒的进展,观察到VTC最小值显著增加(以及VTC变异性增强);(2)这种VTC动态与脑电图在θ、α和γ频段的明显调制相关。脑电图调制的源位于扣带回皮质(ACC)、楔前叶和顶叶的交界处以及枕叶皮质。这些发现支持了这样的假设,即VTC最小值的系统性增加与额中央和顶枕区域脑电图信号的调制共同作用,以预测未来的姿势不稳定。