Neurons in the brain form highly complex networks through synaptic connections. Traditionally, functional connectivity between neurons has been explored using methods such as correlations, which do not contain any notion of directionality. Recently, an information-theoretic approach based on directed information theory has been proposed as a way to infer the direction of influence. However, it is still unclear whether this new approach provides any additional insight beyond conventional correlation analyses. In this paper, we present a modified procedure for estimating directed information and provide a comparison of results obtained using correlation analyses on both simulated and experimental data. Using physiologically realistic simulati...
The complex relationship between structural and functional connectivity, as measured by noninvasive ...
The complex relationship between structural and functional connectivity, as measured by noninvasive ...
In order to provide adequate multivariate measures of information flow between neural structures, mo...
Neurons in the brain form complicated networks through synaptic connections. Traditionally, function...
Analysis of information transfer has found rapid adoption in neuroscience, where a highly dynamic tr...
The concept of mutual information (MI) has been widely used for inferring complex networks such as g...
A major challenge in neuroscience is to develop effective tools that infer the circuit connectivity ...
This work examines an information theoretic quantity known as directed information, which measures ...
Measuring directed interactions in the brain in terms of information flow is a promising approach, m...
Measuring directed interactions in the brain in terms of information flow is a promising approach, m...
Abstract—This paper quantifies and comparatively validates functional connectivity between neurons b...
Background ‘Non-parametric directionality’ (NPD) is a novel method for estimation of directed functi...
International audienceBrain functions rely on flexible communication between microcircuits in distin...
BACKGROUND: 'Non-parametric directionality' (NPD) is a novel method for estimation of directed funct...
Understanding information processing in the brain requires the ability to determine the functional c...
The complex relationship between structural and functional connectivity, as measured by noninvasive ...
The complex relationship between structural and functional connectivity, as measured by noninvasive ...
In order to provide adequate multivariate measures of information flow between neural structures, mo...
Neurons in the brain form complicated networks through synaptic connections. Traditionally, function...
Analysis of information transfer has found rapid adoption in neuroscience, where a highly dynamic tr...
The concept of mutual information (MI) has been widely used for inferring complex networks such as g...
A major challenge in neuroscience is to develop effective tools that infer the circuit connectivity ...
This work examines an information theoretic quantity known as directed information, which measures ...
Measuring directed interactions in the brain in terms of information flow is a promising approach, m...
Measuring directed interactions in the brain in terms of information flow is a promising approach, m...
Abstract—This paper quantifies and comparatively validates functional connectivity between neurons b...
Background ‘Non-parametric directionality’ (NPD) is a novel method for estimation of directed functi...
International audienceBrain functions rely on flexible communication between microcircuits in distin...
BACKGROUND: 'Non-parametric directionality' (NPD) is a novel method for estimation of directed funct...
Understanding information processing in the brain requires the ability to determine the functional c...
The complex relationship between structural and functional connectivity, as measured by noninvasive ...
The complex relationship between structural and functional connectivity, as measured by noninvasive ...
In order to provide adequate multivariate measures of information flow between neural structures, mo...