| Literature DB >> 29389047 |
Yifeng Wang1,2, Wang Chen1,2, Liangkai Ye1,2, Bharat B Biswal1,2,3, Xuezhi Yang1,2, Qijun Zou1,2, Pu Yang1,2, Qi Yang1,2, Xinqi Wang1,2, Qian Cui1,4, Xujun Duan1,2, Wei Liao1,2, Huafu Chen1,2.
Abstract
Traditional task-evoked brain activations are based on detection and estimation of signal change from the mean signal. By contrast, the low-frequency steady-state brain response (lfSSBR) reflects frequency-tagging activity at the fundamental frequency of the task presentation and its harmonics. Compared to the activity at these resonant frequencies, brain responses at nonresonant frequencies are largely unknown. Additionally, because the lfSSBR is defined by power change, we hypothesize using Parseval's theorem that the power change reflects brain signal variability rather than the change of mean signal. Using a face recognition task, we observed power increase at the fundamental frequency (0.05 Hz) and two harmonics (0.1 and 0.15 Hz) and power decrease within the infra-slow frequency band (<0.1 Hz), suggesting a multifrequency energy reallocation. The consistency of power and variability was demonstrated by the high correlation (r > .955) of their spatial distribution and brain-behavior relationship at all frequency bands. Additionally, the reallocation of finite energy was observed across various brain regions and frequency bands, forming a particular spatiotemporal pattern. Overall, results from this study strongly suggest that frequency-specific power and variability may measure the same underlying brain activity and that these results may shed light on different mechanisms between lfSSBR and brain activation, and spatiotemporal characteristics of energy reallocation induced by cognitive tasks.Keywords: brain signal variability; fMRI; face recognition; frequency specificity; steady-state brain response
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Year: 2018 PMID: 29389047 PMCID: PMC6866265 DOI: 10.1002/hbm.23992
Source DB: PubMed Journal: Hum Brain Mapp ISSN: 1065-9471 Impact factor: 5.038