about
neuroConstruct: a tool for modeling networks of neurons in 3D spaceInhibitory synaptic plasticity: spike timing-dependence and putative network function.Anatomy and physiology of the thick-tufted layer 5 pyramidal neuronGlutamate-bound NMDARs arising from in vivo-like network activity extend spatio-temporal integration in a L5 cortical pyramidal cell modelDendritic slow dynamics enables localized cortical activity to switch between mobile and immobile modes with noisy background inputSubregional, dendritic compartment, and spine subtype specificity in cocaine regulation of dendritic spines in the nucleus accumbensSynaptic clustering within dendrites: an emerging theory of memory formationLocation-dependent excitatory synaptic interactions in pyramidal neuron dendritesFast 3D Imaging of Spine, Dendritic, and Neuronal Assemblies in Behaving Animals.Detection and identification of speech sounds using cortical activity patterns.Simultaneous two-photon activation of presynaptic cells and calcium imaging in postsynaptic dendritic spines.Multiplicative auditory spatial receptive fields created by a hierarchy of population codesModeling multisensory enhancement with self-organizing maps.Precise subcellular input retinotopy and its computational consequences in an identified visual interneuron.Cortical neurons combine visual cues about self-movement.Evolving a neural olfactorimotor system in virtual and real olfactory environmentsThalamocortical input onto layer 5 pyramidal neurons measured using quantitative large-scale array tomographyStrings on a Violin: Location Dependence of Frequency Tuning in Active DendritesModeling fMRI signals can provide insights into neural processing in the cerebral cortex.Encoding of spatio-temporal input characteristics by a CA1 pyramidal neuron model.Resonant Dynamics of Grounded Cognition: Explanation of Behavioral and Neuroimaging Data Using the ART Neural NetworkNeural Query System: Data-mining from within the NEURON simulator.Spatiotemporally graded NMDA spike/plateau potentials in basal dendrites of neocortical pyramidal neurons.Optimal learning rules for discrete synapsesActive dendrites enhance neuronal dynamic range.The role of ongoing dendritic oscillations in single-neuron dynamics.Parallel computational subunits in dentate granule cells generate multiple place fieldsAn arithmetic rule for spatial summation of excitatory and inhibitory inputs in pyramidal neuronsLocally balanced dendritic integration by short-term synaptic plasticity and active dendritic conductancesReinforcement learning on slow features of high-dimensional input streamsShunting inhibition controls the gain modulation mediated by asynchronous neurotransmitter release in early development.Spike-based population coding and working memory.Regulation of spike timing in visual cortical circuits.An efficient stochastic diffusion algorithm for modeling second messengers in dendrites and spines.Gap junctions and epileptic seizures--two sides of the same coin?Quantitative prediction of intermittent high-frequency oscillations in neural networks with supralinear dendritic interactionsSpike-timing control by dendritic plateau potentials in the presence of synaptic barrages.Midazolam and atropine alter theta oscillations in the hippocampal CA1 region by modulating both the somatic and distal dendritic dipoles.Input clustering and the microscale structure of local circuits.Statistical physics approach to dendritic computation: the excitable-wave mean-field approximation.
P2860
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P2860
description
2003 nî lūn-bûn
@nan
2003年の論文
@ja
2003年学术文章
@wuu
2003年学术文章
@zh
2003年学术文章
@zh-cn
2003年学术文章
@zh-hans
2003年学术文章
@zh-my
2003年学术文章
@zh-sg
2003年學術文章
@yue
2003年學術文章
@zh-hant
name
Pyramidal neuron as two-layer neural network.
@en
Pyramidal neuron as two-layer neural network.
@nl
type
label
Pyramidal neuron as two-layer neural network.
@en
Pyramidal neuron as two-layer neural network.
@nl
prefLabel
Pyramidal neuron as two-layer neural network.
@en
Pyramidal neuron as two-layer neural network.
@nl
P1433
P1476
Pyramidal neuron as two-layer neural network.
@en
P2093
Bartlett W Mel
Terrence Brannon
P304
P356
10.1016/S0896-6273(03)00149-1
P407
P577
2003-03-01T00:00:00Z