Literature DB >> 28729779

Deep Learning Models of the Retinal Response to Natural Scenes.

Lane T McIntosh1, Niru Maheswaranathan1, Aran Nayebi1, Surya Ganguli2,3, Stephen A Baccus3.   

Abstract

A central challenge in sensory neuroscience is to understand neural computations and circuit mechanisms that underlie the encoding of ethologically relevant, natural stimuli. In multilayered neural circuits, nonlinear processes such as synaptic transmission and spiking dynamics present a significant obstacle to the creation of accurate computational models of responses to natural stimuli. Here we demonstrate that deep convolutional neural networks (CNNs) capture retinal responses to natural scenes nearly to within the variability of a cell's response, and are markedly more accurate than linear-nonlinear (LN) models and Generalized Linear Models (GLMs). Moreover, we find two additional surprising properties of CNNs: they are less susceptible to overfitting than their LN counterparts when trained on small amounts of data, and generalize better when tested on stimuli drawn from a different distribution (e.g. between natural scenes and white noise). An examination of the learned CNNs reveals several properties. First, a richer set of feature maps is necessary for predicting the responses to natural scenes compared to white noise. Second, temporally precise responses to slowly varying inputs originate from feedforward inhibition, similar to known retinal mechanisms. Third, the injection of latent noise sources in intermediate layers enables our model to capture the sub-Poisson spiking variability observed in retinal ganglion cells. Fourth, augmenting our CNNs with recurrent lateral connections enables them to capture contrast adaptation as an emergent property of accurately describing retinal responses to natural scenes. These methods can be readily generalized to other sensory modalities and stimulus ensembles. Overall, this work demonstrates that CNNs not only accurately capture sensory circuit responses to natural scenes, but also can yield information about the circuit's internal structure and function.

Entities:  

Year:  2016        PMID: 28729779      PMCID: PMC5515384     

Source DB:  PubMed          Journal:  Adv Neural Inf Process Syst        ISSN: 1049-5258


  23 in total

1.  A simple white noise analysis of neuronal light responses.

Authors:  E J Chichilnisky
Journal:  Network       Date:  2001-05       Impact factor: 1.273

2.  Prediction and decoding of retinal ganglion cell responses with a probabilistic spiking model.

Authors:  Jonathan W Pillow; Liam Paninski; Valerie J Uzzell; Eero P Simoncelli; E J Chichilnisky
Journal:  J Neurosci       Date:  2005-11-23       Impact factor: 6.167

3.  Selectivity for multiple stimulus features in retinal ganglion cells.

Authors:  Adrienne L Fairhall; C Andrew Burlingame; Ramesh Narasimhan; Robert A Harris; Jason L Puchalla; Michael J Berry
Journal:  J Neurophysiol       Date:  2006-08-16       Impact factor: 2.714

4.  Detection and prediction of periodic patterns by the retina.

Authors:  Greg Schwartz; Rob Harris; David Shrom; Michael J Berry
Journal:  Nat Neurosci       Date:  2007-04-22       Impact factor: 24.884

5.  Rapid neural coding in the retina with relative spike latencies.

Authors:  Tim Gollisch; Markus Meister
Journal:  Science       Date:  2008-02-22       Impact factor: 47.728

6.  Two temporal phases of light adaptation in retinal rods.

Authors:  Peter D Calvert; Victor I Govardovskii; Vadim Y Arshavsky; Clint L Makino
Journal:  J Gen Physiol       Date:  2002-02       Impact factor: 4.086

Review 7.  Features and functions of nonlinear spatial integration by retinal ganglion cells.

Authors:  Tim Gollisch
Journal:  J Physiol Paris       Date:  2012-12-20

Review 8.  Eye smarter than scientists believed: neural computations in circuits of the retina.

Authors:  Tim Gollisch; Markus Meister
Journal:  Neuron       Date:  2010-01-28       Impact factor: 17.173

9.  Spatio-temporal correlations and visual signalling in a complete neuronal population.

Authors:  Jonathan W Pillow; Jonathon Shlens; Liam Paninski; Alexander Sher; Alan M Litke; E J Chichilnisky; Eero P Simoncelli
Journal:  Nature       Date:  2008-07-23       Impact factor: 49.962

10.  Coordinated dynamic encoding in the retina using opposing forms of plasticity.

Authors:  David B Kastner; Stephen A Baccus
Journal:  Nat Neurosci       Date:  2011-09-11       Impact factor: 24.884

View more
  39 in total

1.  Asymmetric ON-OFF processing of visual motion cancels variability induced by the structure of natural scenes.

Authors:  James E Fitzgerald; Damon A Clark; Juyue Chen; Holly B Mandel
Journal:  Elife       Date:  2019-10-15       Impact factor: 8.140

2.  Inferring synaptic inputs from spikes with a conductance-based neural encoding model.

Authors:  Kenneth W Latimer; Fred Rieke; Jonathan W Pillow
Journal:  Elife       Date:  2019-12-18       Impact factor: 8.140

3.  A neural network trained for prediction mimics diverse features of biological neurons and perception.

Authors:  William Lotter; Gabriel Kreiman; David Cox
Journal:  Nat Mach Intell       Date:  2020-04-20

4.  Multiple Timescales Account for Adaptive Responses across Sensory Cortices.

Authors:  Kenneth W Latimer; Dylan Barbera; Michael Sokoletsky; Bshara Awwad; Yonatan Katz; Israel Nelken; Ilan Lampl; Adriene L Fairhall; Nicholas J Priebe
Journal:  J Neurosci       Date:  2019-10-29       Impact factor: 6.167

5.  The Spatial Structure of Neural Encoding in Mouse Posterior Cortex during Navigation.

Authors:  Matthias Minderer; Kristen D Brown; Christopher D Harvey
Journal:  Neuron       Date:  2019-02-13       Impact factor: 17.173

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

Authors:  Matthew R Whiteway; Karolina Socha; Vincent Bonin; Daniel A Butts
Journal:  Neuron Behav Data Anal Theory       Date:  2019-04-27

7.  Deep convolutional models improve predictions of macaque V1 responses to natural images.

Authors:  Santiago A Cadena; George H Denfield; Edgar Y Walker; Leon A Gatys; Andreas S Tolias; Matthias Bethge; Alexander S Ecker
Journal:  PLoS Comput Biol       Date:  2019-04-23       Impact factor: 4.475

8.  Convergent Temperature Representations in Artificial and Biological Neural Networks.

Authors:  Martin Haesemeyer; Alexander F Schier; Florian Engert
Journal:  Neuron       Date:  2019-07-31       Impact factor: 17.173

9.  Inference of nonlinear receptive field subunits with spike-triggered clustering.

Authors:  Nishal P Shah; Nora Brackbill; Colleen Rhoades; Alexandra Kling; Georges Goetz; Alan M Litke; Alexander Sher; Eero P Simoncelli; E J Chichilnisky
Journal:  Elife       Date:  2020-03-09       Impact factor: 8.140

10.  Deep learning as a tool for neural data analysis: Speech classification and cross-frequency coupling in human sensorimotor cortex.

Authors:  Jesse A Livezey; Kristofer E Bouchard; Edward F Chang
Journal:  PLoS Comput Biol       Date:  2019-09-16       Impact factor: 4.475

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.