Centre for Bio-Inspired Technology, Imperial College London, London, UK.
Sci Rep. 2021 Nov 30;11(1):23190. doi: 10.1038/s41598-021-02277-0.
It is of great interest in neuroscience to determine what frequency bands in the brain have covarying power. This would help us robustly identify the frequency signatures of neural processes. However to date, to the best of the author's knowledge, a comprehensive statistical approach to this question that accounts for intra-frequency autocorrelation, frequency-domain oversampling, and multiple testing under dependency has not been undertaken. As such, this work presents a novel statistical significance test for correlated power across frequency bands for a broad class of non-stationary time series. It is validated on synthetic data. It is then used to test all of the inter-frequency power correlations between 0.2 and 8500 Hz in continuous intracortical extracellular neural recordings in Macaque M1, using a very large, publicly available dataset. The recordings were Current Source Density referenced and were recorded with a Utah array. The results support previous results in the literature that show that neural processes in M1 have power signatures across a very broad range of frequency bands. In particular, the power in LFP frequency bands as low as 20 Hz was found to almost always be statistically significantly correlated to the power in kHz frequency ranges. It is proposed that this test can also be used to discover the superimposed frequency domain signatures of all the neural processes in a neural signal, allowing us to identify every interesting neural frequency band.
在神经科学中,确定大脑中哪些频段具有协变功率是非常有趣的。这将帮助我们稳健地识别神经过程的频率特征。然而,迄今为止,据作者所知,还没有一种全面的统计方法来解决这个问题,该方法需要考虑到频率内自相关、频域过采样和相关性下的多重检验。因此,这项工作提出了一种新的统计显著性检验方法,用于检验广泛的非平稳时间序列中跨频段的相关功率。它在合成数据上进行了验证。然后,它被用于使用一个非常大的、公开可用的数据集测试猕猴 M1 中连续皮质内细胞外神经记录中 0.2 到 8500 Hz 之间的所有频段间功率相关性。记录采用电流源密度参考,并用犹他阵列记录。结果支持文献中的先前结果,表明 M1 中的神经过程具有非常广泛的频段的功率特征。特别是,发现 LFp 频段中低至 20 Hz 的功率几乎总是与 kHz 频段中的功率有统计学显著相关性。据提议,该测试还可用于发现神经信号中所有神经过程的叠加频域特征,从而使我们能够识别每个有趣的神经频段。