NCLGNov 6, 2018

Revealing Fine Structures of the Retinal Receptive Field by Deep Learning Networks

arXiv:1811.02290v22 citations
Originality Incremental advance
AI Analysis

This provides a model for neural system identification in neuroscience, though it is incremental as it builds on existing CNN applications in visual neuroscience.

The study tackled the problem of interpreting what deep convolutional neural networks (CNNs) learn in terms of neuronal circuits by training CNNs with white noise images to predict responses of single retinal ganglion cells, revealing that learned filters resemble biological components and showing cell-specific transfer learning performance.

Deep convolutional neural networks (CNNs) have demonstrated impressive performance on many visual tasks. Recently, they became useful models for the visual system in neuroscience. However, it is still not clear what are learned by CNNs in terms of neuronal circuits. When a deep CNN with many layers is used for the visual system, it is not easy to compare the structure components of CNNs with possible neuroscience underpinnings due to highly complex circuits from the retina to higher visual cortex. Here we address this issue by focusing on single retinal ganglion cells with biophysical models and recording data from animals. By training CNNs with white noise images to predict neuronal responses, we found that fine structures of the retinal receptive field can be revealed. Specifically, convolutional filters learned are resembling biological components of the retinal circuit. This suggests that a CNN learning from one single retinal cell reveals a minimal neural network carried out in this cell. Furthermore, when CNNs learned from different cells are transferred between cells, there is a diversity of transfer learning performance, which indicates that CNNs are cell-specific. Moreover, when CNNs are transferred between different types of input images, here white noise v.s. natural images, transfer learning shows a good performance, which implies that CNNs indeed capture the full computational ability of a single retinal cell for different inputs. Taken together, these results suggest that CNNs could be used to reveal structure components of neuronal circuits, and provide a powerful model for neural system identification.

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