Faculty of Engineering, University of Bristol, Bristol, United Kingdom.
School of Computing, Engineering & Intelligent Systems, Ulster University, Derry/Londonderry, United Kingdom.
Elife. 2023 Sep 12;12:e84602. doi: 10.7554/eLife.84602.
Electroencephalography and magnetoencephalography recordings are non-invasive and temporally precise, making them invaluable tools in the investigation of neural responses in humans. However, these recordings are noisy, both because the neuronal electrodynamics involved produces a muffled signal and because the neuronal processes of interest compete with numerous other processes, from blinking to day-dreaming. One fruitful response to this noisiness has been to use stimuli with a specific frequency and to look for the signal of interest in the response at that frequency. Typically this signal involves measuring the coherence of response phase: here, a Bayesian approach to measuring phase coherence is described. This Bayesian approach is illustrated using two examples from neurolinguistics and its properties are explored using simulated data. We suggest that the Bayesian approach is more descriptive than traditional statistical approaches because it provides an explicit, interpretable generative model of how the data arises. It is also more data-efficient: it detects stimulus-related differences for smaller participant numbers than the standard approach.
脑电图和脑磁图记录是非侵入性的且具有时间精度,这使得它们成为研究人类神经反应的非常有价值的工具。然而,这些记录存在噪声,一方面是因为涉及的神经元电动力学产生了模糊的信号,另一方面是因为感兴趣的神经元过程与许多其他过程竞争,从眨眼到白日梦。应对这种噪声的一种有效方法是使用具有特定频率的刺激,并在该频率的响应中寻找感兴趣的信号。通常,这个信号涉及测量响应相位的相干性:这里描述了一种用于测量相位相干性的贝叶斯方法。使用神经语言学的两个示例来说明这种贝叶斯方法,并使用模拟数据探索其性质。我们认为,贝叶斯方法比传统的统计方法更具描述性,因为它提供了一个关于数据产生方式的明确、可解释的生成模型。它也更具数据效率:与标准方法相比,它可以检测到较小参与者数量的与刺激相关的差异。