The disease epilepsy is related to hypersynchronous activity of networks of neurons. While acute epileptic seizures are the most extreme manifestation of this hypersynchronous activity, an elevated level of interdependence of neuronal dynamics is thought to persist also during the seizure-free interval. In multichannel recordings from brain areas involved in the epileptic process, this interdependence can be reflected in an increased linear cross correlation but also in signal properties of higher order. Bivariate time series analysis comprises a variety of approaches, each with different degrees of sensitivity and specificity for interdependencies reflected in lower- or higher-order properties of pairs of simultaneously recorded signals. H...
Background. The quantification of directed interactions within the brain and in particular their tim...
The application of non-linear signal analysis techniques to biomedical data is key to improve our kn...
This dissertation introduces a novel approach at gauging patterns of informa- tion flow using brain ...
Treball fi de màster de: Master in Computational Biomedical EngineeringTutor: Ralph Gregor Andrzejak...
An advanced characterization of the complicated dynamical system brain is one of science's biggest c...
We study performance, stability and spatial distribution of three previously proposed [1,2] non-line...
International audienceOur objective is to analyze EEG signals recorded with depth electrodes during ...
During the last years methods from nonlinear time series analysis have been successfully applied in ...
During the past decades, considerable effort has been devoted to the development of signal processin...
To derive tests for randomness, nonlinear-independence, and stationarity, we combine surrogates with...
International audienceNumerous works have been dedicated to the development of signal processing met...
Currently, a variety of linear and nonlinear measures is in use to investigate spatiotemporal interr...
Objective: The mapping of haemodynamic changes related to interictal epileptic discharges (IED) in s...
International audienceFor the past decades, numerous works have been dedicated to the development of...
Treball de fi de grau en BiomèdicaTutor: Ralph G. AndrzejakEpilepsy is a neurological disorder that ...
Background. The quantification of directed interactions within the brain and in particular their tim...
The application of non-linear signal analysis techniques to biomedical data is key to improve our kn...
This dissertation introduces a novel approach at gauging patterns of informa- tion flow using brain ...
Treball fi de màster de: Master in Computational Biomedical EngineeringTutor: Ralph Gregor Andrzejak...
An advanced characterization of the complicated dynamical system brain is one of science's biggest c...
We study performance, stability and spatial distribution of three previously proposed [1,2] non-line...
International audienceOur objective is to analyze EEG signals recorded with depth electrodes during ...
During the last years methods from nonlinear time series analysis have been successfully applied in ...
During the past decades, considerable effort has been devoted to the development of signal processin...
To derive tests for randomness, nonlinear-independence, and stationarity, we combine surrogates with...
International audienceNumerous works have been dedicated to the development of signal processing met...
Currently, a variety of linear and nonlinear measures is in use to investigate spatiotemporal interr...
Objective: The mapping of haemodynamic changes related to interictal epileptic discharges (IED) in s...
International audienceFor the past decades, numerous works have been dedicated to the development of...
Treball de fi de grau en BiomèdicaTutor: Ralph G. AndrzejakEpilepsy is a neurological disorder that ...
Background. The quantification of directed interactions within the brain and in particular their tim...
The application of non-linear signal analysis techniques to biomedical data is key to improve our kn...
This dissertation introduces a novel approach at gauging patterns of informa- tion flow using brain ...