DocumentCode :
1929107
Title :
Electrotonic effects on spike response model dynamics
Author :
Ascoli, Giorgio A.
Author_Institution :
Krasnow Inst. for Adv. Study & Psychol. Dept., George Mason Univ., Fairfax, VA, USA
Volume :
4
fYear :
2003
fDate :
20-24 July 2003
Firstpage :
2831
Abstract :
According to dendritic cable theory, proximal synapses give rise to inputs with short delay, high amplitude, and short duration. In contrast, inputs from distal synapses have long delays, low amplitude, and long duration. Large scale neural networks are seldom built with realistically layered synaptic architectures and corresponding electrotonic parameters. A complete representation of electrotonic dynamics implies the computationally expensive solution of cable differential equations. Here, we use a simpler model to investigate the spike response dynamics of networks with different electrotonic structures. The networks consist of a layer of neurons receiving a sparse feedforward projection from a set of inputs, as well as sparse recurrent connections from within the layer. Firing patterns are set in the set of inputs, and recorded from the neuron (output) layer. The feedforward and recurrent synapses are independently set as proximal or distal, representing dendritic connections near or far from the soma, respectively. Analyses of firing dynamics indicate that recurrent distal synapses tend to concentrate network activity in fewer neurons, while proximal recurrent synapses result in a more homogeneous activity distribution. In addition, when the feedforward input is regular (spiking or bursting) and asynchronous, the output is regular if recurrent synapses are more distal than feedforward ones, and irregular in the opposite configuration. Finally, the amplitude of network fluctuations in response to asynchronous input is lower if feedforward and recurrent synapses are electrotonically distant from one another (in either configuration). In conclusion, electrotonic effects reflecting different dendritic positions of synaptic inputs significantly influence network dynamics.
Keywords :
bioelectric phenomena; feedforward neural nets; neurophysiology; recurrent neural nets; cable differential equations; dendritic cable theory; dendritic connections; distal synapses; electrotonic dynamics; electrotonic effects; feedforward synapses; firing patterns; homogeneous activity distribution; large scale neural networks; network fluctuation amplitude; proximal recurrent synapses; proximal synapses; recurrent distal synapses; sparse feedforward projection; sparse recurrent connections; spike response model dynamics; Computational modeling; Delay; Differential equations; Fluctuations; Large-scale systems; Neural networks; Neurons; Power cables; Psychology; Uniform resource locators;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 2003. Proceedings of the International Joint Conference on
ISSN :
1098-7576
Print_ISBN :
0-7803-7898-9
Type :
conf
DOI :
10.1109/IJCNN.2003.1224020
Filename :
1224020
Link To Document :
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