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脑振荡的时频表征:哪一种更好?

Time-Frequency Representations of Brain Oscillations: Which One Is Better?

作者信息

Bârzan Harald, Ichim Ana-Maria, Moca Vasile Vlad, Mureşan Raul Cristian

机构信息

Department of Theoretical and Experimental Neuroscience, Transylvanian Institute of Neuroscience, Cluj-Napoca, Romania.

Department of Electronics, Telecommunications and Informational Technologies, Technical University of Cluj-Napoca, Cluj-Napoca, Romania.

出版信息

Front Neuroinform. 2022 Apr 14;16:871904. doi: 10.3389/fninf.2022.871904. eCollection 2022.

Abstract

Brain oscillations are thought to subserve important functions by organizing the dynamical landscape of neural circuits. The expression of such oscillations in neural signals is usually evaluated using time-frequency representations (TFR), which resolve oscillatory processes in both time and frequency. While a vast number of methods exist to compute TFRs, there is often no objective criterion to decide which one is better. In feature-rich data, such as that recorded from the brain, sources of noise and unrelated processes abound and contaminate results. The impact of these distractor sources is especially problematic, such that TFRs that are more robust to contaminants are expected to provide more useful representations. In addition, the minutiae of the techniques themselves impart better or worse time and frequency resolutions, which also influence the usefulness of the TFRs. Here, we introduce a methodology to evaluate the "quality" of TFRs of neural signals by quantifying how much information they retain about the experimental condition during visual stimulation and recognition tasks, in mice and humans, respectively. We used machine learning to discriminate between various experimental conditions based on TFRs computed with different methods. We found that various methods provide more or less informative TFRs depending on the characteristics of the data. In general, however, more advanced techniques, such as the superlet transform, seem to provide better results for complex time-frequency landscapes, such as those extracted from electroencephalography signals. Finally, we introduce a method based on feature perturbation that is able to quantify how much time-frequency components contribute to the correct discrimination among experimental conditions. The methodology introduced in the present study may be extended to other analyses of neural data, enabling the discovery of data features that are modulated by the experimental manipulation.

摘要

脑振荡被认为通过组织神经回路的动态格局来实现重要功能。神经信号中此类振荡的表达通常使用时频表示(TFR)进行评估,时频表示可在时间和频率上解析振荡过程。虽然存在大量计算TFR的方法,但通常没有客观标准来决定哪种方法更好。在特征丰富的数据中,例如从大脑记录的数据,噪声源和无关过程大量存在并会干扰结果。这些干扰源的影响尤其成问题,因此对污染物更具鲁棒性的TFR有望提供更有用的表示。此外,技术本身的细节会带来更好或更差的时间和频率分辨率,这也会影响TFR的有用性。在这里,我们分别在小鼠和人类中引入一种方法,通过量化神经信号的TFR在视觉刺激和识别任务期间保留了多少关于实验条件的信息,来评估TFR的“质量”。我们使用机器学习基于用不同方法计算的TFR来区分各种实验条件。我们发现,根据数据的特征,各种方法提供的TFR或多或少都包含信息。然而,一般来说,更先进的技术,如超小波变换,似乎对于复杂的时频格局(如从脑电图信号中提取的格局)能提供更好的结果。最后,我们引入一种基于特征扰动的方法,该方法能够量化时频成分对实验条件之间正确区分的贡献程度。本研究中引入的方法可扩展到神经数据的其他分析,从而发现受实验操作调制的数据特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2184/9050353/dcedfaeca799/fninf-16-871904-g001.jpg

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