Literature DB >> 1527596

Predicting responses of nonlinear neurons in monkey striate cortex to complex patterns.

S R Lehky1, T J Sejnowski, R Desimone.   

Abstract

The overwhelming majority of neurons in primate visual cortex are nonlinear. For those cells, the techniques of linear system analysis, used with some success to model retinal ganglion cells and striate simple cells, are of limited applicability. As a start toward understanding the properties of nonlinear visual neurons, we have recorded responses of striate complex cells to hundreds of images, including both simple stimuli (bars and sinusoids) as well as complex stimuli (random textures and 3-D shaded surfaces). The latter set tended to give the strongest response. We created a neural network model for each neuron using an iterative optimization algorithm. The recorded responses to some stimulus patterns (the training set) were used to create the model, while responses to other patterns were reserved for testing the networks. The networks predicted recorded responses to training set patterns with a median correlation of 0.95. They were able to predict responses to test stimuli not in the training set with a correlation of 0.78 overall, and a correlation of 0.65 for complex stimuli considered alone. Thus, they were able to capture much of the input/output transfer function of the neurons, even for complex patterns. Examining connection strengths within each network, different parts of the network appeared to handle information at different spatial scales. To gain further insights, the network models were inverted to construct "optimal" stimuli for each cell, and their receptive fields were mapped with high-resolution spots. The receptive field properties of complex cells could not be reduced to any simpler mathematical formulation than the network models themselves.

Mesh:

Year:  1992        PMID: 1527596      PMCID: PMC6575725     

Source DB:  PubMed          Journal:  J Neurosci        ISSN: 0270-6474            Impact factor:   6.167


  12 in total

1.  Computational subunits of visual cortical neurons revealed by artificial neural networks.

Authors:  Brian Lau; Garrett B Stanley; Yang Dan
Journal:  Proc Natl Acad Sci U S A       Date:  2002-06-11       Impact factor: 11.205

2.  Decoding cortical neuronal signals: network models, information estimation and spatial tuning.

Authors:  T W Kjaer; J A Hertz; B J Richmond
Journal:  J Comput Neurosci       Date:  1994-06       Impact factor: 1.621

3.  Inception loops discover what excites neurons most using deep predictive models.

Authors:  Edgar Y Walker; Fabian H Sinz; Erick Cobos; Taliah Muhammad; Emmanouil Froudarakis; Paul G Fahey; Alexander S Ecker; Jacob Reimer; Xaq Pitkow; Andreas S Tolias
Journal:  Nat Neurosci       Date:  2019-11-04       Impact factor: 24.884

4.  Selectivity and sparseness in the responses of striate complex cells.

Authors:  Sidney R Lehky; Terrence J Sejnowski; Robert Desimone
Journal:  Vision Res       Date:  2005-01       Impact factor: 1.886

Review 5.  Nonlinear System Identification of Neural Systems from Neurophysiological Signals.

Authors:  Fei He; Yuan Yang
Journal:  Neuroscience       Date:  2020-12-11       Impact factor: 3.590

6.  Network Receptive Field Modeling Reveals Extensive Integration and Multi-feature Selectivity in Auditory Cortical Neurons.

Authors:  Nicol S Harper; Oliver Schoppe; Ben D B Willmore; Zhanfeng Cui; Jan W H Schnupp; Andrew J King
Journal:  PLoS Comput Biol       Date:  2016-11-11       Impact factor: 4.475

Review 7.  Models of Neuronal Stimulus-Response Functions: Elaboration, Estimation, and Evaluation.

Authors:  Arne F Meyer; Ross S Williamson; Jennifer F Linden; Maneesh Sahani
Journal:  Front Syst Neurosci       Date:  2017-01-12

8.  Characterisation of nonlinear receptive fields of visual neurons by convolutional neural network.

Authors:  Jumpei Ukita; Takashi Yoshida; Kenichi Ohki
Journal:  Sci Rep       Date:  2019-03-07       Impact factor: 4.379

9.  Beyond GLMs: a generative mixture modeling approach to neural system identification.

Authors:  Lucas Theis; Andrè Maia Chagas; Daniel Arnstein; Cornelius Schwarz; Matthias Bethge
Journal:  PLoS Comput Biol       Date:  2013-11-21       Impact factor: 4.475

10.  Model Constrained by Visual Hierarchy Improves Prediction of Neural Responses to Natural Scenes.

Authors:  Ján Antolík; Sonja B Hofer; James A Bednar; Thomas D Mrsic-Flogel
Journal:  PLoS Comput Biol       Date:  2016-06-27       Impact factor: 4.475

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