Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons

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Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons. / Li, Kang; Ditlevsen, Susanne.

I: PLoS ONE, Bind 14, Nr. 5, e0216322, 2019.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Li, K & Ditlevsen, S 2019, 'Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons', PLoS ONE, bind 14, nr. 5, e0216322. https://doi.org/10.1371/journal.pone.0216322

APA

Li, K., & Ditlevsen, S. (2019). Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons. PLoS ONE, 14(5), [e0216322]. https://doi.org/10.1371/journal.pone.0216322

Vancouver

Li K, Ditlevsen S. Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons. PLoS ONE. 2019;14(5). e0216322. https://doi.org/10.1371/journal.pone.0216322

Author

Li, Kang ; Ditlevsen, Susanne. / Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons. I: PLoS ONE. 2019 ; Bind 14, Nr. 5.

Bibtex

@article{a9eb05ef2f0f4ad6bd32a20bfb7e82cf,
title = "Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons",
abstract = "How the brain makes sense of a complicated environment is an important question, and a first step is to be able to reconstruct the stimulus that give rise to an observed brain response. Neural coding relates neurobiological observations to external stimuli using computational methods. Encoding refers to how a stimulus affects the neuronal output, and entails constructing a neural model and parameter estimation. Decoding refers to reconstruction of the stimulus that led to a given neuronal output. Existing decoding methods rarely explain neuronal responses to complicated stimuli in a principled way. Here we perform neural decoding for a mixture of multiple stimuli using the leaky integrate-and-fire model describing neural spike trains, under the visual attention hypothesis of probability mixing in which the neuron only attends to a single stimulus at any given time. We assume either a parallel or serial processing visual search mechanism when decoding multiple simultaneous neurons. We consider one or multiple stochastic stimuli following Ornstein-Uhlenbeck processes, and dynamic neuronal attention that switches following discrete Markov processes. To decode stimuli in such situations, we develop various sequential Monte Carlo particle methods in different settings. The likelihood of the observed spike trains is obtained through the first-passage time probabilities obtained by solving the Fokker-Planck equations. We show that the stochastic stimuli can be successfully decoded by sequential Monte Carlo, and different particle methods perform differently considering the number of observed spike trains, the number of stimuli, model complexity, etc. The proposed novel decoding methods, which analyze the neural data through psychological visual attention theories, provide new perspectives to understand the brain.",
author = "Kang Li and Susanne Ditlevsen",
year = "2019",
doi = "10.1371/journal.pone.0216322",
language = "English",
volume = "14",
journal = "PLoS ONE",
issn = "1932-6203",
publisher = "Public Library of Science",
number = "5",

}

RIS

TY - JOUR

T1 - Neural decoding with visual attention using sequential Monte Carlo for leaky integrate-and-fire neurons

AU - Li, Kang

AU - Ditlevsen, Susanne

PY - 2019

Y1 - 2019

N2 - How the brain makes sense of a complicated environment is an important question, and a first step is to be able to reconstruct the stimulus that give rise to an observed brain response. Neural coding relates neurobiological observations to external stimuli using computational methods. Encoding refers to how a stimulus affects the neuronal output, and entails constructing a neural model and parameter estimation. Decoding refers to reconstruction of the stimulus that led to a given neuronal output. Existing decoding methods rarely explain neuronal responses to complicated stimuli in a principled way. Here we perform neural decoding for a mixture of multiple stimuli using the leaky integrate-and-fire model describing neural spike trains, under the visual attention hypothesis of probability mixing in which the neuron only attends to a single stimulus at any given time. We assume either a parallel or serial processing visual search mechanism when decoding multiple simultaneous neurons. We consider one or multiple stochastic stimuli following Ornstein-Uhlenbeck processes, and dynamic neuronal attention that switches following discrete Markov processes. To decode stimuli in such situations, we develop various sequential Monte Carlo particle methods in different settings. The likelihood of the observed spike trains is obtained through the first-passage time probabilities obtained by solving the Fokker-Planck equations. We show that the stochastic stimuli can be successfully decoded by sequential Monte Carlo, and different particle methods perform differently considering the number of observed spike trains, the number of stimuli, model complexity, etc. The proposed novel decoding methods, which analyze the neural data through psychological visual attention theories, provide new perspectives to understand the brain.

AB - How the brain makes sense of a complicated environment is an important question, and a first step is to be able to reconstruct the stimulus that give rise to an observed brain response. Neural coding relates neurobiological observations to external stimuli using computational methods. Encoding refers to how a stimulus affects the neuronal output, and entails constructing a neural model and parameter estimation. Decoding refers to reconstruction of the stimulus that led to a given neuronal output. Existing decoding methods rarely explain neuronal responses to complicated stimuli in a principled way. Here we perform neural decoding for a mixture of multiple stimuli using the leaky integrate-and-fire model describing neural spike trains, under the visual attention hypothesis of probability mixing in which the neuron only attends to a single stimulus at any given time. We assume either a parallel or serial processing visual search mechanism when decoding multiple simultaneous neurons. We consider one or multiple stochastic stimuli following Ornstein-Uhlenbeck processes, and dynamic neuronal attention that switches following discrete Markov processes. To decode stimuli in such situations, we develop various sequential Monte Carlo particle methods in different settings. The likelihood of the observed spike trains is obtained through the first-passage time probabilities obtained by solving the Fokker-Planck equations. We show that the stochastic stimuli can be successfully decoded by sequential Monte Carlo, and different particle methods perform differently considering the number of observed spike trains, the number of stimuli, model complexity, etc. The proposed novel decoding methods, which analyze the neural data through psychological visual attention theories, provide new perspectives to understand the brain.

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U2 - 10.1371/journal.pone.0216322

DO - 10.1371/journal.pone.0216322

M3 - Journal article

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AN - SCOPUS:85065760815

VL - 14

JO - PLoS ONE

JF - PLoS ONE

SN - 1932-6203

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ER -

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