| Literature DB >> 25280984 |
Dong Song1, Rosa H M Chan2, Brian S Robinson3, Vasilis Z Marmarelis4, Ioan Opris5, Robert E Hampson6, Sam A Deadwyler7, Theodore W Berger8.
Abstract
This paper presents a systems identification approach for studying the long-term synaptic plasticity using natural spiking activities. This approach consists of three modeling steps. First, a multi-input, single-output (MISO), nonlinear dynamical spiking neuron model is formulated to estimate and represent the synaptic strength in means of functional connectivity between input and output neurons. Second, this MISO model is extended to a nonstationary form to track the time-varying properties of the synaptic strength. Finally, a Volterra modeling method is used to extract the synaptic learning rule, e.g., spike-timing-dependent plasticity, for the explanation of the input-output nonstationarity as the consequence of the past input-output spiking patterns. This framework is developed to study the underlying mechanisms of learning and memory formation in behaving animals, and may serve as the computational basis for building the next-generation adaptive cortical prostheses.Entities:
Keywords: Learning rule; Spatio-temporal pattern; Spike; Spike-timing-dependent plasticity
Mesh:
Year: 2014 PMID: 25280984 PMCID: PMC4383743 DOI: 10.1016/j.jneumeth.2014.09.023
Source DB: PubMed Journal: J Neurosci Methods ISSN: 0165-0270 Impact factor: 2.390