Beckman Institute for Advanced Sciences and Technology, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, United States.
Beckman Institute for Advanced Sciences and Technology, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, United States; Department of Psychology, University of Illinois at Urbana-Champaign, Urbana, Illinois 61801, United States.
Neuroimage. 2021 Aug 15;237:118192. doi: 10.1016/j.neuroimage.2021.118192. Epub 2021 May 25.
Typically, time-frequency analysis (TFA) of electrophysiological data is aimed at isolating narrowband signals (oscillatory activity) from broadband non-oscillatory (1/f) activity, so that changes in oscillatory activity resulting from experimental manipulations can be assessed. A widely used method to do this is to convert the data to the decibel (dB) scale through baseline division and log transformation. This procedure assumes that, for each frequency, sources of power (i.e., oscillations and 1/f activity) scale by the same factor relative to the baseline (multiplicative model). This assumption may be incorrect when signal and noise are independent contributors to the power spectrum (additive model). Using resting-state EEG data from 80 participants, we found that the level of 1/f activity and alpha power are not positively correlated within participants, in line with the additive but not the multiplicative model. Then, to assess the effects of dB conversion on data that violate the multiplicativity assumption, we simulated a mixed design study with one between-subject (noise level, i.e., level of 1/f activity) and one within-subject (signal amplitude, i.e., amplitude of oscillatory activity added onto the background 1/f activity) factor. The effect size of the noise level × signal amplitude interaction was examined as a function of noise difference between groups, following dB conversion. Findings revealed that dB conversion led to the over- or under-estimation of the true interaction effect when groups differing in 1/f levels were compared, and it also led to the emergence of illusory interactions when none were present. This is because signal amplitude was systematically underestimated in the noisier compared to the less noisy group. Hence, we recommend testing whether the level of 1/f activity differs across groups or conditions and using multiple baseline correction strategies to validate results if it does. Such a situation may be particularly common in aging, developmental, or clinical studies.
通常,对电生理数据进行时频分析(TFA)的目的是从宽带非振荡(1/f)活动中分离出窄带信号(振荡活动),以便评估实验操作引起的振荡活动变化。一种广泛使用的方法是通过基线划分和对数转换将数据转换为分贝(dB)标度。该过程假设,对于每个频率,功率源(即,振荡和 1/f 活动)相对于基线以相同的因子缩放(乘法模型)。当信号和噪声是功率谱的独立贡献者时(加法模型),这种假设可能是不正确的。使用 80 名参与者的静息态 EEG 数据,我们发现参与者内部的 1/f 活动水平和阿尔法功率之间没有正相关,这与加法模型一致,而与乘法模型不一致。然后,为了评估违反乘法性假设的数据的 dB 转换效果,我们使用混合设计研究模拟了一个实验,其中有一个组间变量(噪声水平,即 1/f 活动的水平)和一个组内变量(信号幅度,即叠加在背景 1/f 活动上的振荡活动的幅度)。在进行 dB 转换后,我们检查了噪声水平与信号幅度交互作用的效应大小作为组间噪声差异的函数。研究结果表明,当比较 1/f 水平不同的组时,dB 转换会导致对真实交互作用效果的高估或低估,而且当不存在交互作用时,也会导致虚假交互作用的出现。这是因为与噪声较小的组相比,信号幅度在噪声较大的组中被系统地低估了。因此,如果 1/f 活动水平在组间或条件间存在差异,我们建议测试并在确实存在差异时使用多种基线校正策略来验证结果。这种情况在衰老、发育或临床研究中可能特别常见。