首页> 美国卫生研究院文献>Neuroscience Bulletin >Mapping the Information Trace in Local Field Potentials by a Computational Method of Two-Dimensional Time-Shifting Synchronization Likelihood Based on Graphic Processing Unit Acceleration
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Mapping the Information Trace in Local Field Potentials by a Computational Method of Two-Dimensional Time-Shifting Synchronization Likelihood Based on Graphic Processing Unit Acceleration

机译:基于图形处理单元加速的二维时移同步似然计算方法绘制局部场势中的信息迹线

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摘要

The local field potential (LFP) is a signal reflecting the electrical activity of neurons surrounding the electrode tip. Synchronization between LFP signals provides important details about how neural networks are organized. Synchronization between two distant brain regions is hard to detect using linear synchronization algorithms like correlation and coherence. Synchronization likelihood (SL) is a non-linear synchronization-detecting algorithm widely used in studies of neural signals from two distant brain areas. One drawback of non-linear algorithms is the heavy computational burden. In the present study, we proposed a graphic processing unit (GPU)-accelerated implementation of an SL algorithm with optional 2-dimensional time-shifting. We tested the algorithm with both artificial data and raw LFP data. The results showed that this method revealed detailed information from original data with the synchronization values of two temporal axes, delay time and onset time, and thus can be used to reconstruct the temporal structure of a neural network. Our results suggest that this GPU-accelerated method can be extended to other algorithms for processing time-series signals (like EEG and fMRI) using similar recording techniques.
机译:局部电场电势(LFP)是反映电极尖端周围神经元电活动的信号。 LFP信号之间的同步提供了有关神经网络如何组织的重要细节。使用诸如相关性和相干性之类的线性同步算法很难检测到两个遥远的大脑区域之间的同步。同步可能性(SL)是一种非线性同步检测算法,广泛用于研究来自两个遥远大脑区域的神经信号。非线性算法的一个缺点是繁重的计算负担。在本研究中,我们提出了带有可选二维时移的SL算法的图形处理单元(GPU)加速实现。我们使用人工数据和原始LFP数据测试了该算法。结果表明,该方法从原始数据中获得了具有两个时间轴的同步值,延迟时间和开始时间的详细信息,从而可用于重建神经网络的时间结构。我们的结果表明,这种GPU加速方法可以扩展到其他使用类似记录技术处理时间序列信号的算法(例如EEG和fMRI)。

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