<div><p>Traditional approaches to the problem of parameter estimation in biophysical models of neurons and neural networks usually adopt a global search algorithm (for example, an evolutionary algorithm), often in combination with a local search method (such as gradient descent) in order to minimize the value of a cost function, which measures the discrepancy between various features of the available experimental data and model output. In this study, we approach the problem of parameter estimation in conductance-based models of single neurons from a different perspective. By adopting a hidden-dynamical-systems formalism, we expressed parameter estimation as an inference problem in these systems, which can then be tackled using a range of we...
We consider the problem of how to recover the state and parameter values of typical model neurons, s...
Characterizing the input-output transformations of single neurons is critical for understanding neur...
Single neuron models have a long tradition in computational neuroscience. Detailed biophysical model...
Traditional approaches to the problem of parameter estimation in biophysical models of neurons and n...
Traditional approaches to the problem of parameter estimation in biophysical models of neurons and n...
Neurons, although tiny in size, are vastly complicated systems, which are responsible for the most b...
© 2020 Elsevier Ltd This paper applies the classical prediction error method (PEM) to the estimation...
Estimation of the maximal ion channel conductances in Hodgkin-Huxley models from patch clamp data is...
We report on the construction of neuron models by assimilating electrophysiological data with large-...
Model optimization in neuroscience has focused on inferring intracellular parameters from time serie...
Neurons within cortical populations are tightly coupled into collective dynamical systems that code ...
International audienceConductance-based models of biological neurons can accurately reproduce the wa...
International audienceDynamics of the membrane potential in a single neuron can be studied estimatin...
Conductance-based compartmental neuron models are traditionally used to investigate the electrophysi...
We present a novel framework for automatically constraining parameters of compartmental models of ne...
We consider the problem of how to recover the state and parameter values of typical model neurons, s...
Characterizing the input-output transformations of single neurons is critical for understanding neur...
Single neuron models have a long tradition in computational neuroscience. Detailed biophysical model...
Traditional approaches to the problem of parameter estimation in biophysical models of neurons and n...
Traditional approaches to the problem of parameter estimation in biophysical models of neurons and n...
Neurons, although tiny in size, are vastly complicated systems, which are responsible for the most b...
© 2020 Elsevier Ltd This paper applies the classical prediction error method (PEM) to the estimation...
Estimation of the maximal ion channel conductances in Hodgkin-Huxley models from patch clamp data is...
We report on the construction of neuron models by assimilating electrophysiological data with large-...
Model optimization in neuroscience has focused on inferring intracellular parameters from time serie...
Neurons within cortical populations are tightly coupled into collective dynamical systems that code ...
International audienceConductance-based models of biological neurons can accurately reproduce the wa...
International audienceDynamics of the membrane potential in a single neuron can be studied estimatin...
Conductance-based compartmental neuron models are traditionally used to investigate the electrophysi...
We present a novel framework for automatically constraining parameters of compartmental models of ne...
We consider the problem of how to recover the state and parameter values of typical model neurons, s...
Characterizing the input-output transformations of single neurons is critical for understanding neur...
Single neuron models have a long tradition in computational neuroscience. Detailed biophysical model...