首页> 外文会议>2018 IEEE 4th Middle East Conference on Biomedical Engineering >Visual encoding in rat lateral geniculate nucleus: An artificial neural network approach
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Visual encoding in rat lateral geniculate nucleus: An artificial neural network approach

机译:大鼠外侧膝状核的视觉编码:一种人工神经网络方法

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Visual prostheses have recently shown success in partially restoring vision to the blind. While retinal implants are considered the most successful type of visual prostheses, other techniques are needed for patients with completely degenerated retina or injured optic nerve. Thalamic visual prostheses that target the Lateral Geniculate Nucleus (LGN) represent one promising type. However, one challenge in tuning thalamic visual prostheses is to understand how visual information is encoded in the firing of LGN neurons. In this paper, we introduce an artificial neural network visual encoding model that incorporates visual stimulation history to predict the firing of LGN neurons in response to visual stimulation. To assess the performance of the model, we recorded stimulus-driven activity from the LGN in three anesthetized rats. Multielectrode arrays with 32 channels were used to simultaneously record the extracellular activity of LGN neurons in response to single-pixel flashing stimulation patterns. Visual stimulation information and the corresponding neuronal firing rates were then used to train the proposed visual encoder that was subsequently used to predict LGN firing in a testing dataset. Our results indicate the efficacy of the proposed encoder, where a mean correlation of 0.66 between the actual and the predicted firing rates obtained using the proposed model is achieved. The results also revealed the dependency of the prediction accuracy on the length of the visual stimulation history window incorporated in the model. This approach could help in better identifying electrical stimulation patterns for thalamic visual prostheses.
机译:视觉假体最近在部分恢复盲人视力方面显示出成功。尽管视网膜植入物被认为是最成功的视觉假体类型,但对于视网膜完全变性或视神经受损的患者,还需要其他技术。针对外侧膝状核(LGN)的丘脑视觉假体代表了一种有前途的类型。然而,调整丘脑视觉假体的一个挑战是了解在LGN神经元的发射过程中视觉信息是如何编码的。在本文中,我们介绍了一种人工神经网络视觉编码模型,该模型结合了视觉刺激历史来预测LGN神经元对视觉刺激的反应。为了评估模型的性能,我们在三只麻醉大鼠中记录了LGN的刺激驱动活性。具有32个通道的多电极阵列用于同时记录LGN神经元响应单像素闪烁刺激模式的细胞外活性。然后,使用视觉刺激信息和相应的神经元放电率来训练提议的视觉编码器,该视觉编码器随后用于预测测试数据集中的LGN放电。我们的结果表明了所提出的编码器的功效,其中使用所提出的模型获得的实际和预测点火率之间的平均相关系数为0.66。结果还揭示了预测准确性对模型中包含的视觉刺激历史窗口的长度的依赖性。这种方法可以帮助更好地识别丘脑视觉假体的电刺激模式。

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