Realistic modeling of neurons are quite successful in complementing traditional experimental techniques. However, their networks require a computational power beyond the capabilities of current supercomputers, and the present methods used to reduce their complexity do not take into account the key features of the cells nor critical physiological properties. Here we introduce a new, automatic and fast method to map realistic neurons into equivalent reduced models running up to ≈44 times faster while maintaining all the original biophysical mechanisms, a direct link with experimental observables, and a very high accuracy of the membrane potential dynamics during arbitrary synaptic inputs. Using this method an entirely new generation of large-...
© 2017 The Author(s). Published by Elsevier B. V. This is an Open Access article, distributed under ...
In this study mathematical model order reduction is applied to a nonlinear model of a network of bio...
This thesis introduces and applies model reduction techniques to problems associated with simulation...
Realistic modeling of neurons are quite successful in complementing traditional experimental techniq...
Detailed conductance-based nonlinear neuron models consisting of thousands of synapses are key for u...
The cellular mechanisms underlying higher brain functions/dysfunctions are extremely difficult to in...
In this paper I present the results of an investigation into modelling neurons by a method that appr...
Supercomputing is increasingly available in neuroscience and boosts the ability to create models wit...
BackgroundRecent progress in electrophysiological and optical methods for neuronal recordings provid...
Single neuron models are fundamental for computational modeling of the brain's neuronal networks, an...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/61...
Accurately simulating neurons with realistic morphological structure and synaptic inputs requires th...
Background Recent progress in electrophysiological and optical methods for neuronal recordings prov...
The ability to simulate brain neurons in real-time using biophysically-meaningful models is a critic...
The neural network in the brain is not hard-wired. Even in the mature brain, new connections between...
© 2017 The Author(s). Published by Elsevier B. V. This is an Open Access article, distributed under ...
In this study mathematical model order reduction is applied to a nonlinear model of a network of bio...
This thesis introduces and applies model reduction techniques to problems associated with simulation...
Realistic modeling of neurons are quite successful in complementing traditional experimental techniq...
Detailed conductance-based nonlinear neuron models consisting of thousands of synapses are key for u...
The cellular mechanisms underlying higher brain functions/dysfunctions are extremely difficult to in...
In this paper I present the results of an investigation into modelling neurons by a method that appr...
Supercomputing is increasingly available in neuroscience and boosts the ability to create models wit...
BackgroundRecent progress in electrophysiological and optical methods for neuronal recordings provid...
Single neuron models are fundamental for computational modeling of the brain's neuronal networks, an...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/61...
Accurately simulating neurons with realistic morphological structure and synaptic inputs requires th...
Background Recent progress in electrophysiological and optical methods for neuronal recordings prov...
The ability to simulate brain neurons in real-time using biophysically-meaningful models is a critic...
The neural network in the brain is not hard-wired. Even in the mature brain, new connections between...
© 2017 The Author(s). Published by Elsevier B. V. This is an Open Access article, distributed under ...
In this study mathematical model order reduction is applied to a nonlinear model of a network of bio...
This thesis introduces and applies model reduction techniques to problems associated with simulation...