A central issue of neuroscience is to understand how neural units integrates internal and external signals to create coherent states. Recently, it has been shown that the sensitivity and dynamic range of neural assemblies are optimal at a critical coupling among its elements. Complex architectures of connections seem to play a constructive role on the reliable coordination of neural units. Here we show that, the synchronizability and sensitivity of excitable neural networks can be tuned by diversity in the connections strengths. We illustrate our findings for weighted networks with regular, random and complex topologies. Additional comparisons of real brain networks support previous studies suggesting that heterogeneity in the connectivity ...
Brain waves are one of the most important features of brain dynamics. Waves at a large scale are a d...
Heterogeneity is omnipresent in living systems and biophysical diversity enriches the systems’ dynam...
Recurrent random network models are a useful theoretical tool to understand the irregular activity o...
A central issue of neuroscience is to understand how neural units integrates internal and external s...
Cerebral cortex is characterized by a strong neuron-to-neuron heterogeneity, but it is unclear what ...
Abstract Heterogeneity is the norm in biology. The brain is no different: neuronal cell-types are my...
As few real systems comprise indistinguishable units, diversity is a hallmark of nature. Diversity a...
Most network models for neural behavior assume a predefined network topology and consist of almost i...
Spatiotemporal patterning of neuronal activity is considered to be an important feature of cognitive...
We study the effect of varying wiring in excitable random networks in which connection weights chang...
Neural systems display a prominent level of heterogeneity in synaptic, neuron, and network propertie...
The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs and e...
Rhythmic synchronization of neuronal firing patterns is a widely present phenomenon in the brain—one...
Experimental evidence for cortical networks operating in the balanced state is overwhelming [1,2,3]....
Anatomic connections between brain areas affect information flow between neuronal circuits and the s...
Brain waves are one of the most important features of brain dynamics. Waves at a large scale are a d...
Heterogeneity is omnipresent in living systems and biophysical diversity enriches the systems’ dynam...
Recurrent random network models are a useful theoretical tool to understand the irregular activity o...
A central issue of neuroscience is to understand how neural units integrates internal and external s...
Cerebral cortex is characterized by a strong neuron-to-neuron heterogeneity, but it is unclear what ...
Abstract Heterogeneity is the norm in biology. The brain is no different: neuronal cell-types are my...
As few real systems comprise indistinguishable units, diversity is a hallmark of nature. Diversity a...
Most network models for neural behavior assume a predefined network topology and consist of almost i...
Spatiotemporal patterning of neuronal activity is considered to be an important feature of cognitive...
We study the effect of varying wiring in excitable random networks in which connection weights chang...
Neural systems display a prominent level of heterogeneity in synaptic, neuron, and network propertie...
The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs and e...
Rhythmic synchronization of neuronal firing patterns is a widely present phenomenon in the brain—one...
Experimental evidence for cortical networks operating in the balanced state is overwhelming [1,2,3]....
Anatomic connections between brain areas affect information flow between neuronal circuits and the s...
Brain waves are one of the most important features of brain dynamics. Waves at a large scale are a d...
Heterogeneity is omnipresent in living systems and biophysical diversity enriches the systems’ dynam...
Recurrent random network models are a useful theoretical tool to understand the irregular activity o...