2019
DOI: 10.1101/671909
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Inferring the collective dynamics of neuronal populations from single-trial spike trains using mechanistic models

Abstract: Multi-neuronal spike-train data recorded in vivo often exhibit rich dynamics as well as considerable variability across cells and repetitions of identical experimental conditions (trials). Efforts to characterize and predict the population dynamics and the contributions of individual neurons require model-based tools. Abstract statistical models allow for principled parameter estimation and model selection, but possess only limited interpretive power because they typically do not incorporate prior biophysical … Show more

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Cited by 2 publications
(1 citation statement)
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“…In Results section 4.2 we extracted the variations of the mean input from estimates of the instantaneous neuronal spike rate at different timescales. A useful extension may be to consider a separate stochastic process that governs the evolution of the mean input, allowing to extract the most appropriate timescale from the data [98], which in turn could benefit the estimation of synaptic couplings using our approach.…”
Section: Possible Methodological Extensionsmentioning
confidence: 99%
“…In Results section 4.2 we extracted the variations of the mean input from estimates of the instantaneous neuronal spike rate at different timescales. A useful extension may be to consider a separate stochastic process that governs the evolution of the mean input, allowing to extract the most appropriate timescale from the data [98], which in turn could benefit the estimation of synaptic couplings using our approach.…”
Section: Possible Methodological Extensionsmentioning
confidence: 99%