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A novel symbolization scheme for multichannel recordings with emphasis on phase information and its application to differentiate EEG activity from different mental tasks

机译:一种新颖的多通道录音符号化方案,重点是相位信息及其在区分脑电活动与不同心理任务中的应用

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摘要

Symbolic dynamics is a powerful tool for studying complex dynamical systems. So far many techniques of this kind have been proposed as a means to analyze brain dynamics, but most of them are restricted to single-sensor measurements. Analyzing the dynamics in a channel-wise fashion is an invalid approach for multisite encephalographic recordings, since it ignores any pattern of coordinated activity that might emerge from the coherent activation of distinct brain areas. We suggest, here, the use of neural-gas algorithm (Martinez et al. in IEEE Trans Neural Netw 4:558-569, 1993) for encoding brain activity spatiotemporal dynamics in the form of a symbolic timeseries. A codebook of k prototypes, best representing the instantaneous multichannel data, is first designed. Each pattern of activity is then assigned to the most similar code vector. The symbolic timeseries derived in this way is mapped to a network, the topology of which encapsulates the most important phase transitions of the underlying dynamical system. Finally, global efficiency is used to characterize the obtained topology. We demonstrate the approach by applying it to EEG-data recorded from subjects while performing mental calculations. By working in a contrastive-fashion, and focusing in the phase aspects of the signals, we show that the underlying dynamics differ significantly in their symbolic representations.
机译:符号动力学是研究复杂动力学系统的有力工具。迄今为止,已经提出了许多这种技术来分析大脑动力学,但其中大多数仅限于单传感器测量。对于多站点脑电图记录,以通道方式分析动力学是无效的方法,因为它忽略了可能由于不同大脑区域的一致激活而出现的任何协调活动模式。我们建议在这里使用神经气体算法(Martinez等人,在IEEE Trans Neural Netw 4:558-569,1993)中以符号时间序列的形式编码大脑活动的时空动态。首先设计了一个k个原型的代码本,最能代表瞬时多通道数据。然后,将每种活动模式分配给最相似的代码向量。以这种方式得出的符号时间序列被映射到一个网络,该网络的拓扑结构封装了基础动力系统最重要的相变。最后,使用整体效率来表征获得的拓扑。我们通过将其应用于执行心理计算时从受试者记录的EEG数据来证明该方法。通过以对比的方式工作,并专注于信号的相位方面,我们表明基本的动力学在符号表示上有很大的不同。

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