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

First Author  Ukita J Year  2019
Journal  Sci Rep Volume  9
Issue  1 Pages  3791
PubMed ID  30846783 Mgi Jnum  J:275698
Mgi Id  MGI:6307661 Doi  10.1038/s41598-019-40535-4
Citation  Ukita J, et al. (2019) Characterisation of nonlinear receptive fields of visual neurons by convolutional neural network. Sci Rep 9(1):3791
abstractText  A comprehensive understanding of the stimulus-response properties of individual neurons is necessary to crack the neural code of sensory cortices. However, a barrier to achieving this goal is the difficulty of analysing the nonlinearity of neuronal responses. Here, by incorporating convolutional neural network (CNN) for encoding models of neurons in the visual cortex, we developed a new method of nonlinear response characterisation, especially nonlinear estimation of receptive fields (RFs), without assumptions regarding the type of nonlinearity. Briefly, after training CNN to predict the visual responses to natural images, we synthesised the RF image such that the image would predictively evoke a maximum response. We first demonstrated the proof-of-principle using a dataset of simulated cells with various types of nonlinearity. We could visualise RFs with various types of nonlinearity, such as shift-invariant RFs or rotation-invariant RFs, suggesting that the method may be applicable to neurons with complex nonlinearities in higher visual areas. Next, we applied the method to a dataset of neurons in mouse V1. We could visualise simple-cell-like or complex-cell-like (shift-invariant) RFs and quantify the degree of shift-invariance. These results suggest that CNN encoding model is useful in nonlinear response analyses of visual neurons and potentially of any sensory neurons.
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