<div><p>Understanding spontaneous transitions between dynamical modes in a network is of significant importance. These transitions may separate pathological and normal functions of the brain. In this paper, we develop a set of measures that, based on spatio-temporal features of network activity, predict autonomous network transitions from asynchronous to synchronous dynamics under various conditions. These metrics quantify spike-timing distributions within a narrow time window as a function of the relative location of the active neurons. We applied these metrics to investigate the properties of these transitions in excitatory-only and excitatory-and-inhibitory networks and elucidate how network topology, noise level, and cellular heterogene...
Pairs of active neurons frequently fire action potentials or "spikes" nearly synchronously (i.e., wi...
Abstract\ud \ud Pairs of active neurons frequently fire action potentials or “spikes” nearly synchro...
<div><p>Cortical networks, <i>in-vitro</i> as well as <i>in-vivo</i>, can spontaneously generate a v...
Understanding spontaneous transitions between dynamical modes in a network is of signifi-cant import...
http://deepblue.lib.umich.edu/bitstream/2027.42/109548/1/12868_2014_Article_3557.pd
The question of how the structure of a neuronal network affects its functionality has gained a lot o...
Synchronized neural activity, in which the firing of neurons is coordinated in time, is an observed ...
<p>(A) To characterize instantaneous spatial patterning in the network, we calculate the minimum tim...
The human brain is a hierarchical complex network − always active and evolvingdynamically. Its...
Understanding the computational capabilities of the nervous system means to "identify" its...
<p>Presented here are different possible dynamics of spike timing in a two dimensional network. The ...
Synchronous bursting plays an integral role in a variety of applications, from generating respirator...
Cortical networks, in-vitro as well as in-vivo, can spontaneously generate a variety of collective d...
Neuronal networks are often characterized by their spiking and bursting statistics. Previously, we i...
Complex systems such as ecological communities and neuron networks are essential parts of our everyd...
Pairs of active neurons frequently fire action potentials or "spikes" nearly synchronously (i.e., wi...
Abstract\ud \ud Pairs of active neurons frequently fire action potentials or “spikes” nearly synchro...
<div><p>Cortical networks, <i>in-vitro</i> as well as <i>in-vivo</i>, can spontaneously generate a v...
Understanding spontaneous transitions between dynamical modes in a network is of signifi-cant import...
http://deepblue.lib.umich.edu/bitstream/2027.42/109548/1/12868_2014_Article_3557.pd
The question of how the structure of a neuronal network affects its functionality has gained a lot o...
Synchronized neural activity, in which the firing of neurons is coordinated in time, is an observed ...
<p>(A) To characterize instantaneous spatial patterning in the network, we calculate the minimum tim...
The human brain is a hierarchical complex network − always active and evolvingdynamically. Its...
Understanding the computational capabilities of the nervous system means to "identify" its...
<p>Presented here are different possible dynamics of spike timing in a two dimensional network. The ...
Synchronous bursting plays an integral role in a variety of applications, from generating respirator...
Cortical networks, in-vitro as well as in-vivo, can spontaneously generate a variety of collective d...
Neuronal networks are often characterized by their spiking and bursting statistics. Previously, we i...
Complex systems such as ecological communities and neuron networks are essential parts of our everyd...
Pairs of active neurons frequently fire action potentials or "spikes" nearly synchronously (i.e., wi...
Abstract\ud \ud Pairs of active neurons frequently fire action potentials or “spikes” nearly synchro...
<div><p>Cortical networks, <i>in-vitro</i> as well as <i>in-vivo</i>, can spontaneously generate a v...