The transfer entropy (TE) has recently emerged as a nonlinear model-free tool, framed in information theory, to detect directed interactions in coupled processes. Unfortunately, when applied to neurobiological time series TE is biased by signal cross-talk due to volume conduction. To compensate for this bias, in this study we introduce a modified TE measure which accounts for possible instantaneous effects between the analyzed time series. The new measure, denoted as compensated TE (cTE), is tested on simulated time series reproducing conditions typical of neuroscience applications, and on real magnetoencephalographic (MEG) multi-trial data measured during a visuo-tactile cognitive experiment. Simulations show that cTE performs similarly to...
We introduce here phase transfer entropy (Phase TE) as a measure of directed connectivity among neur...
<p>Time resolved reconstruction of transfer entropy (TE) from magnetoencephalographic (MEG) source d...
Transfer entropy (TE) is a widely used measure of directed information flows in a number of domains ...
The transfer entropy (TE) has recently emerged as a nonlinear model-free tool, framed in information...
Information theory allows us to investigate information processing in neural systems in terms of inf...
It is a common notion in neuroscience research that the brain and neural systems in general "perform...
Understanding causal relationships, or effective connectivity, between parts of the brain is of utmo...
†These authors contributed equally to this work. Information theory allows us to investigate informa...
Cross-frequency interactions, a form of oscillatory neural activity, are thought to play an essentia...
Information theory allows us to investigate information processing in neural systems in terms of inf...
We present a framework for the estimation of transfer entropy (TE) under the conditions typical of p...
Transfer Entropy, a generalisation of Granger Causality, promises to measure "information transfer" ...
Transfer entropy (TE) is an information-theoretic measure which has received recent attention in neu...
Transfer entropy (TE) provides a generalized and model-free framework to study Wiener-Granger causal...
Poster presentation: Functional connectivity of the brain describes the network of correlated activi...
We introduce here phase transfer entropy (Phase TE) as a measure of directed connectivity among neur...
<p>Time resolved reconstruction of transfer entropy (TE) from magnetoencephalographic (MEG) source d...
Transfer entropy (TE) is a widely used measure of directed information flows in a number of domains ...
The transfer entropy (TE) has recently emerged as a nonlinear model-free tool, framed in information...
Information theory allows us to investigate information processing in neural systems in terms of inf...
It is a common notion in neuroscience research that the brain and neural systems in general "perform...
Understanding causal relationships, or effective connectivity, between parts of the brain is of utmo...
†These authors contributed equally to this work. Information theory allows us to investigate informa...
Cross-frequency interactions, a form of oscillatory neural activity, are thought to play an essentia...
Information theory allows us to investigate information processing in neural systems in terms of inf...
We present a framework for the estimation of transfer entropy (TE) under the conditions typical of p...
Transfer Entropy, a generalisation of Granger Causality, promises to measure "information transfer" ...
Transfer entropy (TE) is an information-theoretic measure which has received recent attention in neu...
Transfer entropy (TE) provides a generalized and model-free framework to study Wiener-Granger causal...
Poster presentation: Functional connectivity of the brain describes the network of correlated activi...
We introduce here phase transfer entropy (Phase TE) as a measure of directed connectivity among neur...
<p>Time resolved reconstruction of transfer entropy (TE) from magnetoencephalographic (MEG) source d...
Transfer entropy (TE) is a widely used measure of directed information flows in a number of domains ...