Deep Learning Models of the Retinal Response to Natural Scenes
Lane T. McIntosh, Niru Maheswaranathan, Aran Nayebi, Surya Ganguli,, Stephen A. Baccus

TL;DR
This paper shows that deep convolutional neural networks can accurately model retinal responses to natural scenes, outperforming traditional models and revealing insights into retinal processing mechanisms.
Contribution
The study demonstrates CNNs' superior accuracy in modeling retinal responses, their robustness with limited data, and their ability to reveal circuit properties and mechanisms.
Findings
CNNs nearly match the variability of retinal responses.
CNNs outperform LN and GLM models in accuracy.
Recurrent connections capture contrast adaptation.
Abstract
A central challenge in 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…
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Taxonomy
TopicsRetinal Imaging and Analysis
