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1.
J Comput Neurosci ; 33(1): 1-19, 2012 Aug.
Artigo em Inglês | MEDLINE | ID: mdl-22089473

RESUMO

We discuss methods for optimally inferring the synaptic inputs to an electrotonically compact neuron, given intracellular voltage-clamp or current-clamp recordings from the postsynaptic cell. These methods are based on sequential Monte Carlo techniques ("particle filtering"). We demonstrate, on model data, that these methods can recover the time course of excitatory and inhibitory synaptic inputs accurately on a single trial. Depending on the observation noise level, no averaging over multiple trials may be required. However, excitatory inputs are consistently inferred more accurately than inhibitory inputs at physiological resting potentials, due to the stronger driving force associated with excitatory conductances. Once these synaptic input time courses are recovered, it becomes possible to fit (via tractable convex optimization techniques) models describing the relationship between the sensory stimulus and the observed synaptic input. We develop both parametric and nonparametric expectation-maximization (EM) algorithms that consist of alternating iterations between these synaptic recovery and model estimation steps. We employ a fast, robust convex optimization-based method to effectively initialize the filter; these fast methods may be of independent interest. The proposed methods could be applied to better understand the balance between excitation and inhibition in sensory processing in vivo.


Assuntos
Potenciais da Membrana/fisiologia , Modelos Neurológicos , Método de Monte Carlo , Neurônios/fisiologia , Sinapses/fisiologia , Animais , Biofísica , Estimulação Elétrica , Técnicas de Patch-Clamp , Processos Estocásticos
2.
J Comput Neurosci ; 29(1-2): 107-126, 2010 Aug.
Artigo em Inglês | MEDLINE | ID: mdl-19649698

RESUMO

State space methods have proven indispensable in neural data analysis. However, common methods for performing inference in state-space models with non-Gaussian observations rely on certain approximations which are not always accurate. Here we review direct optimization methods that avoid these approximations, but that nonetheless retain the computational efficiency of the approximate methods. We discuss a variety of examples, applying these direct optimization techniques to problems in spike train smoothing, stimulus decoding, parameter estimation, and inference of synaptic properties. Along the way, we point out connections to some related standard statistical methods, including spline smoothing and isotonic regression. Finally, we note that the computational methods reviewed here do not in fact depend on the state-space setting at all; instead, the key property we are exploiting involves the bandedness of certain matrices. We close by discussing some applications of this more general point of view, including Markov chain Monte Carlo methods for neural decoding and efficient estimation of spatially-varying firing rates.


Assuntos
Simulação por Computador , Modelos Neurológicos , Modelos Estatísticos , Neurônios/fisiologia , Potenciais de Ação/fisiologia , Animais , Células Ganglionares da Retina/fisiologia , Sinapses/fisiologia
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