Literature DB >> 31592129

Characterizing the nonlinear structure of shared variability in cortical neuron populations using latent variable models.

Matthew R Whiteway1, Karolina Socha2,3,4, Vincent Bonin2,3,4, Daniel A Butts1,5.   

Abstract

Sensory neurons often have variable responses to repeated presentations of the same stimulus, which can significantly degrade the stimulus information contained in those responses. This information can in principle be preserved if variability is shared across many neurons, but depends on the structure of the shared variability and its relationship to sensory encoding at the population level. The structure of this shared variability in neural activity can be characterized by latent variable models, although they have thus far typically been used under restrictive mathematical assumptions, such as assuming linear transformations between the latent variables and neural activity. Here we introduce two nonlinear latent variable models for analyzing large-scale neural recordings. We first present a general nonlinear latent variable model that is agnostic to the stimulus tuning properties of the individual neurons, and is hence well suited for exploring neural populations whose tuning properties are not well characterized. This motivates a second class of model, the Generalized Affine Model, which simultaneously determines each neuron's stimulus selectivity and a set of latent variables that modulate these stimulus-driven responses both additively and multiplicatively. While these approaches can detect very general nonlinear relationships in shared neural variability, we find that neural activity recorded in anesthetized primary visual cortex (V1) is best described by a single additive and single multiplicative latent variable, i.e., an "affine model". In contrast, application of the same models to recordings in awake macaque prefrontal cortex discover more general nonlinearities to compactly describe the population response variability. These results thus demonstrate how nonlinear latent variable models can be used to describe population variability, and suggest that a range of methods is necessary to study different brain regions under different experimental conditions.

Entities:  

Keywords:  Latent variable modeling; neural networks; shared variability; visual cortex

Year:  2019        PMID: 31592129      PMCID: PMC6779168     

Source DB:  PubMed          Journal:  Neuron Behav Data Anal Theory


  38 in total

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Journal:  PLoS Comput Biol       Date:  2019-04-23       Impact factor: 4.475

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Journal:  Nature       Date:  2010-07-04       Impact factor: 49.962

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Journal:  Elife       Date:  2016-04-12       Impact factor: 8.140

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9.  Dethroning the Fano Factor: A Flexible, Model-Based Approach to Partitioning Neural Variability.

Authors:  Adam S Charles; Mijung Park; J Patrick Weller; Gregory D Horwitz; Jonathan W Pillow
Journal:  Neural Comput       Date:  2018-01-30       Impact factor: 2.026

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Authors:  Robbe L T Goris; J Anthony Movshon; Eero P Simoncelli
Journal:  Nat Neurosci       Date:  2014-04-28       Impact factor: 24.884

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