Information is transmitted in the brain through various kinds of neurons that respond differently to the same signal. Full characteristics including cognitive functions of the brain should ultimately be comprehended by building simulators capable of precisely mirroring spike responses of a variety of neurons. Neuronal modeling that had remained on a qualitative level has recently advanced to a quantitative level, but is still incapable of accurately predicting biological data and requires high computational cost. In this study, we devised a simple, fast computational model that can be tailored to any cortical neuron not only for reproducing but also for predicting a variety of spike responses to greatly fluctuating currents. The key feature...
For large-scale network simulations, it is often desirable to have computationally tractable, yet in...
Biologically relevant large-scale computational models currently represent one of the main methods i...
Over the past years Spiking Neural Networks (SNNs) models became attractive as a possible bridge to ...
In simulating realistic neuronal circuitry composed of diverse types of neurons, we need an elementa...
UNiversity of Minnesota Ph.D. dissertation. August 2012. Major: Biomedical Engineering. Advisor: The...
Computational modeling is increasingly used to understand the function of neural circuits in systems...
The ability of simple mathematical models to predict the activity of single neurons is important for...
This work investigates the capacity of Integrate-and-Fire-type (I&F-type) models to quantitatively p...
In computational neuroscience, it is of crucial importance to dispose of a model that is able to acc...
Neural adaptation underlies the ability of neurons to maximize encoded informa-tion over a wide dyna...
Abstract The ability of neurons to adapt their responses to greatly varying sensory signal statistic...
The most biologically-inspired artificial neurons are those of the third generation, and are termed ...
We present a simple rate-reduced neuron model that captures a wide rangeof complex, biologically pla...
We present a simple rate-reduced neuron model that captures a wide rangeof complex, biologically pla...
Abstract-A model is presented that reproduces spiking and bursting behavior of known types of cortic...
For large-scale network simulations, it is often desirable to have computationally tractable, yet in...
Biologically relevant large-scale computational models currently represent one of the main methods i...
Over the past years Spiking Neural Networks (SNNs) models became attractive as a possible bridge to ...
In simulating realistic neuronal circuitry composed of diverse types of neurons, we need an elementa...
UNiversity of Minnesota Ph.D. dissertation. August 2012. Major: Biomedical Engineering. Advisor: The...
Computational modeling is increasingly used to understand the function of neural circuits in systems...
The ability of simple mathematical models to predict the activity of single neurons is important for...
This work investigates the capacity of Integrate-and-Fire-type (I&F-type) models to quantitatively p...
In computational neuroscience, it is of crucial importance to dispose of a model that is able to acc...
Neural adaptation underlies the ability of neurons to maximize encoded informa-tion over a wide dyna...
Abstract The ability of neurons to adapt their responses to greatly varying sensory signal statistic...
The most biologically-inspired artificial neurons are those of the third generation, and are termed ...
We present a simple rate-reduced neuron model that captures a wide rangeof complex, biologically pla...
We present a simple rate-reduced neuron model that captures a wide rangeof complex, biologically pla...
Abstract-A model is presented that reproduces spiking and bursting behavior of known types of cortic...
For large-scale network simulations, it is often desirable to have computationally tractable, yet in...
Biologically relevant large-scale computational models currently represent one of the main methods i...
Over the past years Spiking Neural Networks (SNNs) models became attractive as a possible bridge to ...