Projects per year
Abstract
Introduction:
The aperiodic (1/f-like) component of electrophysiological data dictates that power systematically decreases with increasing frequency. The exponent of such aperiodic signal has been shown to differentiate sleep stages. Previous studies typically measured this exponent over narrow frequency ranges and averaged across sleep stages.In this study, we performed fine-graine analysis of brain activity patterns during sleep, expanding the analysis to include wider frequency ranges and alternative models, such as detecting 'knees' in the aperiodic component, which reflect bends in the power spectrum indicating changes in the exponent.
Method:
We analysed aperiodic brain activity from two souces: an intracranial electroencephalography (iEEG) dataset (n=91) from human patients, as well as a high-density EEG dataset collected from 17 healthy humans across a full night of sleep. Spectral features were estimated using the specparam toolbox (formerly ‘fooof’), comparing model-forms and computing time-resolved estimates.
Results:
Our results suggest a changes in the processing timescales of the underlying physiological activity across sleep stages, offering new insights into the understanding of changes previously attributed to cortical excitation-inhibition ratio. In addition, our method allows detailed examination of brain transitions between sleep stages, revealing rich temporal dynamics beyond the more typical 30-second analysis windows. Furthermore, our approach delineates transient responses to stimuli, showing how rapid transitions in aperiodic activity reflect the processing of external events, and how this varies across sleep stages.
Conclusion:
These findings enhance our understanding of brain dynamics during sleep and paves the way for future work on time-resolved quantitative analysis of aperiodic activity in electrophysiological signals.
The aperiodic (1/f-like) component of electrophysiological data dictates that power systematically decreases with increasing frequency. The exponent of such aperiodic signal has been shown to differentiate sleep stages. Previous studies typically measured this exponent over narrow frequency ranges and averaged across sleep stages.In this study, we performed fine-graine analysis of brain activity patterns during sleep, expanding the analysis to include wider frequency ranges and alternative models, such as detecting 'knees' in the aperiodic component, which reflect bends in the power spectrum indicating changes in the exponent.
Method:
We analysed aperiodic brain activity from two souces: an intracranial electroencephalography (iEEG) dataset (n=91) from human patients, as well as a high-density EEG dataset collected from 17 healthy humans across a full night of sleep. Spectral features were estimated using the specparam toolbox (formerly ‘fooof’), comparing model-forms and computing time-resolved estimates.
Results:
Our results suggest a changes in the processing timescales of the underlying physiological activity across sleep stages, offering new insights into the understanding of changes previously attributed to cortical excitation-inhibition ratio. In addition, our method allows detailed examination of brain transitions between sleep stages, revealing rich temporal dynamics beyond the more typical 30-second analysis windows. Furthermore, our approach delineates transient responses to stimuli, showing how rapid transitions in aperiodic activity reflect the processing of external events, and how this varies across sleep stages.
Conclusion:
These findings enhance our understanding of brain dynamics during sleep and paves the way for future work on time-resolved quantitative analysis of aperiodic activity in electrophysiological signals.
Original language | English |
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Publication status | Published - 26 Sept 2024 |
Event | The 27th Conference of the European Sleep Research Society (ESRS) 2024 - Fibes – Conference and Exhibition, Seville, Spain Duration: 24 Sept 2024 → 27 Sept 2024 |
Conference
Conference | The 27th Conference of the European Sleep Research Society (ESRS) 2024 |
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Abbreviated title | Sleep Europe 2024 |
Country/Territory | Spain |
City | Seville |
Period | 24/09/24 → 27/09/24 |
Fields of Science and Technology Classification 2012
- 501 Psychology
Projects
- 1 Finished
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Doktoratskolleg Imaging the Mind: Connectivity and Higher Cognitive Function
Schabus, M. (Principal Investigator), Wilhelm, F. (Co-Investigator), Blechert, J. (Co-Investigator), Hödlmoser, K. (Co-Investigator), Hutzler, F. (Co-Investigator), Jonas, E. (Co-Investigator), Perner, J. (Co-Investigator), Weisz, N. (Co-Investigator), Pletzer, B. A. (Co-Investigator) & Kronbichler, M. (Co-Investigator)
1/03/19 → 31/08/24
Project: Research
Activities
- 1 Poster presentation
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Temporally Resolved Analyses of Aperiodic FeaturesTrack Neural Dynamics during Sleep
Ameen, M. (Presenter)
26 Sept 2024Activity: Talk or presentation › Poster presentation › science to science / art to art