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

机译:卷积神经网络表征视觉神经元的非线性感受野

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摘要

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.
机译:对单个神经元的刺激反应特性的全面理解对于破解感觉皮质的神经密码是必要的。但是,实现此目标的障碍是难以分析神经元反应的非线性。在这里,通过结合卷积神经网络(CNN)对视觉皮层中的神经元模型进行编码,我们开发了一种非线性响应表征的新方法,尤其是对接收场(RF)的非线性估计,而无需考虑非线性的类型。简要地说,在训练CNN以预测对自然图像的视觉响应之后,我们合成了RF图像,以使图像可预测性地引起最大响应。我们首先使用具有各种非线性类型的模拟单元的数据集演示了原理证明。我们可以可视化具有各种非线性类型的RF,例如不变位移RF或旋转不变RF,这表明该方法可能适用于在较高视域中具有复杂非线性的神经元。接下来,我们将该方法应用于鼠标V1中的神经元数据集。我们可以可视化简单细胞样或复杂细胞样(不变位移)RF,并量化不变不变的程度。这些结果表明,CNN编码模型可用于视觉神经元以及潜在的任何感觉神经元的非线性响应分析。

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