Self-organized criticality theory proved that information transmission and computational performances of neural networks are optimal in critical state. By using recordings of the spontaneous activity originated by dissociated neuronal assemblies coupled to Micro-Electrode Arrays (MEAs), we tested this hypothesis using Approximate Entropy (ApEn) as a measure of complexity and information transfer. We analysed 60 min of electrophysiological activity of three neuronal cultures exhibiting either sub-critical, critical or super-critical behaviour. The firing patterns on each electrode was studied in terms of the inter-spike interval (ISI), whose complexity was quantified using ApEn. We assessed that in critical state the local complexity (measur...
Synchrony and asynchrony are essential aspects of the functioning of interconnected neuronal cells a...
Living neuronal networks in dissociated neuronal cultures are widely known for their ability to gene...
The observation of apparent power laws in neuronal systems has led to the suggestion that the brain ...
Self-organized criticality theory proved that information transmission and computational performance...
Critical dynamics have been postulated as an ideal regime for neuronal networks in the brain, consid...
Over the last decades, multiple studies have reported signatures of criticality observed in various ...
Correlations, chaos, and criticality in neural networksMoritz HeliasINM-6 Juelich Research CentreThe...
International audienceThe activity of a neural network is defined by patterns of spiking and silence...
Spontaneous neural activity has been increasingly recognized as a subject of key relevance in neuros...
The human brain has a remarkable capacity for computation, and it has been theorized that this capac...
A rigorous understanding of brain dynamics and function requires a conceptual bridge between multipl...
There is mounting evidence that neural networks of the cerebral cortex exhibit scale invariant dynam...
In this work, we report the preliminary analysis of the electrophysiological behavior of in vitro ne...
In the human brain trillions of neurons transmit information “firing” electrical pulses called actio...
The mutual information between stimulus and spike-train response is commonly used to monito...
Synchrony and asynchrony are essential aspects of the functioning of interconnected neuronal cells a...
Living neuronal networks in dissociated neuronal cultures are widely known for their ability to gene...
The observation of apparent power laws in neuronal systems has led to the suggestion that the brain ...
Self-organized criticality theory proved that information transmission and computational performance...
Critical dynamics have been postulated as an ideal regime for neuronal networks in the brain, consid...
Over the last decades, multiple studies have reported signatures of criticality observed in various ...
Correlations, chaos, and criticality in neural networksMoritz HeliasINM-6 Juelich Research CentreThe...
International audienceThe activity of a neural network is defined by patterns of spiking and silence...
Spontaneous neural activity has been increasingly recognized as a subject of key relevance in neuros...
The human brain has a remarkable capacity for computation, and it has been theorized that this capac...
A rigorous understanding of brain dynamics and function requires a conceptual bridge between multipl...
There is mounting evidence that neural networks of the cerebral cortex exhibit scale invariant dynam...
In this work, we report the preliminary analysis of the electrophysiological behavior of in vitro ne...
In the human brain trillions of neurons transmit information “firing” electrical pulses called actio...
The mutual information between stimulus and spike-train response is commonly used to monito...
Synchrony and asynchrony are essential aspects of the functioning of interconnected neuronal cells a...
Living neuronal networks in dissociated neuronal cultures are widely known for their ability to gene...
The observation of apparent power laws in neuronal systems has led to the suggestion that the brain ...