During the last few years, there has been growing interest in the effects induced by individual variability on activation patterns and brain connectivity. The practical implications of individual variability are of basic relevance for both group level and subject level studies. The Electroencephalogram (EEG), still represents one of the most used recording techniques to investigate a wide range of brain-related features. In this work, we aim to estimate the effect of individual variability on a set of very simple and easily interpretable features extracted from the EEG power spectra. In particular, in an identification scenario, we investigated how the aperiodic (1/f background) component of the EEG power spectra can accurately identify subjects from a large EEG dataset. The results of this study show that the aperiodic component of the EEG signal is characterized by strong subject- specific properties, that this feature is consistent across different experimental conditions (eyes-open and eyes- closed) and outperforms the canonically-defined frequency bands. These findings suggest that the simple fea-tures (slope and offset) extracted from the aperiodic component of the EEG signal are sensitive to individual traits and may help to characterize and make inferences at single subject-level.

EEG fingerprinting: subject-specific signature based on the aperiodic component of power spectrum

Matteo Demuru
Primo
;
Matteo Fraschini
Ultimo
2020-01-01

Abstract

During the last few years, there has been growing interest in the effects induced by individual variability on activation patterns and brain connectivity. The practical implications of individual variability are of basic relevance for both group level and subject level studies. The Electroencephalogram (EEG), still represents one of the most used recording techniques to investigate a wide range of brain-related features. In this work, we aim to estimate the effect of individual variability on a set of very simple and easily interpretable features extracted from the EEG power spectra. In particular, in an identification scenario, we investigated how the aperiodic (1/f background) component of the EEG power spectra can accurately identify subjects from a large EEG dataset. The results of this study show that the aperiodic component of the EEG signal is characterized by strong subject- specific properties, that this feature is consistent across different experimental conditions (eyes-open and eyes- closed) and outperforms the canonically-defined frequency bands. These findings suggest that the simple fea-tures (slope and offset) extracted from the aperiodic component of the EEG signal are sensitive to individual traits and may help to characterize and make inferences at single subject-level.
2020
EEG; Fingerprint; Power spectra; Aperiodic component
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11584/286964
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