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Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data

Tuning curves are the functions that relate the responses of sensory neurons to various values within one continuous stimulus dimension (such as the orientation of a bar in the visual domain or the frequency of a tone in the auditory domain). They are commonly determined by fitting a model e.g. a Ga...

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Autores principales: Helmer, Markus, Kozyrev, Vladislav, Stephan, Valeska, Treue, Stefan, Geisel, Theo, Battaglia, Demian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4718600/
https://www.ncbi.nlm.nih.gov/pubmed/26785378
http://dx.doi.org/10.1371/journal.pone.0146500
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author Helmer, Markus
Kozyrev, Vladislav
Stephan, Valeska
Treue, Stefan
Geisel, Theo
Battaglia, Demian
author_facet Helmer, Markus
Kozyrev, Vladislav
Stephan, Valeska
Treue, Stefan
Geisel, Theo
Battaglia, Demian
author_sort Helmer, Markus
collection PubMed
description Tuning curves are the functions that relate the responses of sensory neurons to various values within one continuous stimulus dimension (such as the orientation of a bar in the visual domain or the frequency of a tone in the auditory domain). They are commonly determined by fitting a model e.g. a Gaussian or other bell-shaped curves to the measured responses to a small subset of discrete stimuli in the relevant dimension. However, as neuronal responses are irregular and experimental measurements noisy, it is often difficult to determine reliably the appropriate model from the data. We illustrate this general problem by fitting diverse models to representative recordings from area MT in rhesus monkey visual cortex during multiple attentional tasks involving complex composite stimuli. We find that all models can be well-fitted, that the best model generally varies between neurons and that statistical comparisons between neuronal responses across different experimental conditions are affected quantitatively and qualitatively by specific model choices. As a robust alternative to an often arbitrary model selection, we introduce a model-free approach, in which features of interest are extracted directly from the measured response data without the need of fitting any model. In our attentional datasets, we demonstrate that data-driven methods provide descriptions of tuning curve features such as preferred stimulus direction or attentional gain modulations which are in agreement with fit-based approaches when a good fit exists. Furthermore, these methods naturally extend to the frequent cases of uncertain model selection. We show that model-free approaches can identify attentional modulation patterns, such as general alterations of the irregular shape of tuning curves, which cannot be captured by fitting stereotyped conventional models. Finally, by comparing datasets across different conditions, we demonstrate effects of attention that are cell- and even stimulus-specific. Based on these proofs-of-concept, we conclude that our data-driven methods can reliably extract relevant tuning information from neuronal recordings, including cells whose seemingly haphazard response curves defy conventional fitting approaches.
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spelling pubmed-47186002016-01-30 Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data Helmer, Markus Kozyrev, Vladislav Stephan, Valeska Treue, Stefan Geisel, Theo Battaglia, Demian PLoS One Research Article Tuning curves are the functions that relate the responses of sensory neurons to various values within one continuous stimulus dimension (such as the orientation of a bar in the visual domain or the frequency of a tone in the auditory domain). They are commonly determined by fitting a model e.g. a Gaussian or other bell-shaped curves to the measured responses to a small subset of discrete stimuli in the relevant dimension. However, as neuronal responses are irregular and experimental measurements noisy, it is often difficult to determine reliably the appropriate model from the data. We illustrate this general problem by fitting diverse models to representative recordings from area MT in rhesus monkey visual cortex during multiple attentional tasks involving complex composite stimuli. We find that all models can be well-fitted, that the best model generally varies between neurons and that statistical comparisons between neuronal responses across different experimental conditions are affected quantitatively and qualitatively by specific model choices. As a robust alternative to an often arbitrary model selection, we introduce a model-free approach, in which features of interest are extracted directly from the measured response data without the need of fitting any model. In our attentional datasets, we demonstrate that data-driven methods provide descriptions of tuning curve features such as preferred stimulus direction or attentional gain modulations which are in agreement with fit-based approaches when a good fit exists. Furthermore, these methods naturally extend to the frequent cases of uncertain model selection. We show that model-free approaches can identify attentional modulation patterns, such as general alterations of the irregular shape of tuning curves, which cannot be captured by fitting stereotyped conventional models. Finally, by comparing datasets across different conditions, we demonstrate effects of attention that are cell- and even stimulus-specific. Based on these proofs-of-concept, we conclude that our data-driven methods can reliably extract relevant tuning information from neuronal recordings, including cells whose seemingly haphazard response curves defy conventional fitting approaches. Public Library of Science 2016-01-19 /pmc/articles/PMC4718600/ /pubmed/26785378 http://dx.doi.org/10.1371/journal.pone.0146500 Text en © 2016 Helmer et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Helmer, Markus
Kozyrev, Vladislav
Stephan, Valeska
Treue, Stefan
Geisel, Theo
Battaglia, Demian
Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data
title Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data
title_full Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data
title_fullStr Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data
title_full_unstemmed Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data
title_short Model-Free Estimation of Tuning Curves and Their Attentional Modulation, Based on Sparse and Noisy Data
title_sort model-free estimation of tuning curves and their attentional modulation, based on sparse and noisy data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4718600/
https://www.ncbi.nlm.nih.gov/pubmed/26785378
http://dx.doi.org/10.1371/journal.pone.0146500
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