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1.
Neural Comput ; 29(1): 50-93, 2017 01.
Article in English | MEDLINE | ID: mdl-27870612

ABSTRACT

Our understanding of neural population coding has been limited by a lack of analysis methods to characterize spiking data from large populations. The biggest challenge comes from the fact that the number of possible network activity patterns scales exponentially with the number of neurons recorded ([Formula: see text]). Here we introduce a new statistical method for characterizing neural population activity that requires semi-independent fitting of only as many parameters as the square of the number of neurons, requiring drastically smaller data sets and minimal computation time. The model works by matching the population rate (the number of neurons synchronously active) and the probability that each individual neuron fires given the population rate. We found that this model can accurately fit synthetic data from up to 1000 neurons. We also found that the model could rapidly decode visual stimuli from neural population data from macaque primary visual cortex about 65 ms after stimulus onset. Finally, we used the model to estimate the entropy of neural population activity in developing mouse somatosensory cortex and, surprisingly, found that it first increases, and then decreases during development. This statistical model opens new options for interrogating neural population data and can bolster the use of modern large-scale in vivo Ca[Formula: see text] and voltage imaging tools.


Subject(s)
Action Potentials/physiology , Models, Neurological , Models, Statistical , Neurons/physiology , Animals , Calcium/metabolism , Entropy , Macaca , Photic Stimulation , Visual Cortex/cytology , Voltage-Sensitive Dye Imaging
2.
J Comput Neurosci ; 41(3): 339-366, 2016 Dec.
Article in English | MEDLINE | ID: mdl-27624733

ABSTRACT

We present a hidden Markov model that describes variation in an animal's position associated with varying levels of activity in action potential spike trains of individual place cell neurons. The model incorporates a coarse-graining of position, which we find to be a more parsimonious description of the system than other models. We use a sequential Monte Carlo algorithm for Bayesian inference of model parameters, including the state space dimension, and we explain how to estimate position from spike train observations (decoding). We obtain greater accuracy over other methods in the conditions of high temporal resolution and small neuronal sample size. We also present a novel, model-based approach to the study of replay: the expression of spike train activity related to behaviour during times of motionlessness or sleep, thought to be integral to the consolidation of long-term memories. We demonstrate how we can detect the time, information content and compression rate of replay events in simulated and real hippocampal data recorded from rats in two different environments, and verify the correlation between the times of detected replay events and of sharp wave/ripples in the local field potential.


Subject(s)
Action Potentials/physiology , Markov Chains , Models, Neurological , Neurons/physiology , Algorithms , Animals , Bayes Theorem , Computer Simulation , Conditioning, Operant/physiology , Hippocampus/cytology , Locomotion/physiology , Nerve Net/physiology , Rats , Time Factors
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