A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We assume that adaptation is mainly due to a calcium-activated potassium current, and we consider two coupled stochastic differential equations for which an analytical approach combined with simulation techniques and numerical methods allow to obtain both qualitative and quantitative results about asymptotic mean firing rate, mean calcium concentration and the firing probability density. A related algorithm, based on the Hazard Rate Method, is also devised and described
Abstract. Spike frequency adaptation is an important cellular mechanism by which neocortical neurons...
The profile of transmembrane-channel expression in neurons is class dependent and a crucial determin...
Computational models offer a unique tool for understanding the network-dynamical mechanisms which me...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
The calculation of the steady-state probability density for multidimensional stochastic systems that...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms various...
Rate models are often used to study the behavior of large networks of spiking neurons. Here we propo...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
We demonstrate that single-variable integrate-and-fire models can quantitatively capture the dynamic...
Abstract. Spike frequency adaptation is an important cellular mechanism by which neocortical neurons...
The profile of transmembrane-channel expression in neurons is class dependent and a crucial determin...
Computational models offer a unique tool for understanding the network-dynamical mechanisms which me...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
A model is proposed to describe the spike-frequency adaptation observed in many neuronal systems. We...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
The calculation of the steady-state probability density for multidimensional stochastic systems that...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms various...
Rate models are often used to study the behavior of large networks of spiking neurons. Here we propo...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
Spike-frequency adaptation is a prominent feature of neural dynamics. Among other mechanisms, variou...
We demonstrate that single-variable integrate-and-fire models can quantitatively capture the dynamic...
Abstract. Spike frequency adaptation is an important cellular mechanism by which neocortical neurons...
The profile of transmembrane-channel expression in neurons is class dependent and a crucial determin...
Computational models offer a unique tool for understanding the network-dynamical mechanisms which me...