Objective: The relevance of the dimensional complexity (DC) for the analysis of sleep EEG data is investigated and compared to linear measures.Methods: We calculated DC of artifact-free 1 min segments of all-night sleep EEG recordings of 4 healthy young subjects. Non-linearity was tested by comparing with DC values of surrogate data. Linear properties of the segments were characterized by estimating the self-similarity exponent ? based on the detrended fluctuation analysis which quantifies the persistence of the signal and by calculating spectral power in the delta, theta, alpha and sigma bands, respectively.Results: We found weak nonlinear signatures in all sleep stages, but most pronounced in sleep stage 2. Strong correlations between DC ...
Conventional sleep analysis relies primarily on electroencephalogram (EEG) waveform features assesse...
Aim of this preliminary study was to examine and compare topographic distribution of Higuchi's fract...
Symbolic dynamic analysis (SDA) methods have been applied to biomedical signals and have been proven...
Differences in dimensionality of electroencephalogram during awake and deeper sleep stages. The nonl...
Sleep electroencephalography (EEG) provides an opportunity to study sleep scientifically, whose chao...
This work investigates the relation between EEG complexity measures, in particular Fractal Dimension...
This work investigates the relation between EEG complexity measures, in particular Fractal Dimension...
This work investigates the relation between the complexity of electroencephalography (EEG) signal, a...
Specific patterns of brain activity during sleep and waking are recorded in the electroencephalogram...
Specific patterns of brain activity during sleep and waking are recorded in the electroencephalogra...
Application of non-linear dynamics methods to the physiological sciences demonstrated that non-linea...
Electroencephalogram (EEG), the measures and records of the electrical activity of the brain, exhibi...
Determination of the sleep stages is essential for sleep quality measurement, which is associated wi...
We study short-term and long-term persistence properties (related with auto-correlations) of amplitu...
Abasolo, Daniel/0000-0002-4268-2885WOS: 000455753100001Symbolic dynamic analysis (SDA) methods have ...
Conventional sleep analysis relies primarily on electroencephalogram (EEG) waveform features assesse...
Aim of this preliminary study was to examine and compare topographic distribution of Higuchi's fract...
Symbolic dynamic analysis (SDA) methods have been applied to biomedical signals and have been proven...
Differences in dimensionality of electroencephalogram during awake and deeper sleep stages. The nonl...
Sleep electroencephalography (EEG) provides an opportunity to study sleep scientifically, whose chao...
This work investigates the relation between EEG complexity measures, in particular Fractal Dimension...
This work investigates the relation between EEG complexity measures, in particular Fractal Dimension...
This work investigates the relation between the complexity of electroencephalography (EEG) signal, a...
Specific patterns of brain activity during sleep and waking are recorded in the electroencephalogram...
Specific patterns of brain activity during sleep and waking are recorded in the electroencephalogra...
Application of non-linear dynamics methods to the physiological sciences demonstrated that non-linea...
Electroencephalogram (EEG), the measures and records of the electrical activity of the brain, exhibi...
Determination of the sleep stages is essential for sleep quality measurement, which is associated wi...
We study short-term and long-term persistence properties (related with auto-correlations) of amplitu...
Abasolo, Daniel/0000-0002-4268-2885WOS: 000455753100001Symbolic dynamic analysis (SDA) methods have ...
Conventional sleep analysis relies primarily on electroencephalogram (EEG) waveform features assesse...
Aim of this preliminary study was to examine and compare topographic distribution of Higuchi's fract...
Symbolic dynamic analysis (SDA) methods have been applied to biomedical signals and have been proven...