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Non-parametric Modeling of the Optical Nerve Response by Trans-corneal Stimulation Using Differential Neural Networks

机译:差分神经网络跨角膜刺激的光神经响应的非参数建模

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Nowadays, the field of biomedical intelligent stimulators has received more and more attention. Those devices have been applied for the treatment of several pathologies. Among others, the visual diseases have attracted special attention due the difficulties associated to obtain desired responses in the optical nerve. The trans-corneal stimulation is strongly dependent on many factors. One of the most important aspects relies on how to produce the required stimulation signal to produce the desired response. However, this is not an easy task, due to the relationship between the stimulation signals and the response is almost unknown. Within the modeling theory, it can be a good choice to select an adaptive technique to achieve a good approximation of the uncertain function relating the stimulation and response signals. Neural networks seem to be a good option to obtain such uncertain nonlinear functions. The differential neural network (DNN) is a class of neural networks used to reproduce continuous signals. Therefore, the DNN technique can be applied to generate the relation between the stimulation and response signals. In this paper, we have explored the possibility to use a set of several DNNs working in parallel to produce the aforementioned relationships. The DNN produces a set of models that can be used with the stimulated signals as inputs and to produce a similar signal to that monitored in the optical nerve. The set of DNN was successfully applied to reproduce the optical nerve response. A technological platform was produced to test the adaptive model suggested in this study. The device proposed in this paper was used to simulate the response in the optical nerve, to acquire the image that regulates the amplitude of these stimulation signals. The numerical simulations showed the closeness between the simulated signal and the trajectories produced by the DNN
机译:如今,生物医学智能刺激器领域得到了越来越多的关注。这些装置已被应用于治疗几种病理学。其中,视觉疾病引起了特别关注,因为在光神经中获得所需的响应相关的困难。逆角刺激强烈依赖于许多因素。其中一个最重要的方面依赖于如何产生所需的刺激信号以产生所需的响应。然而,由于刺激信号与响应之间的关系几乎未知,这不是一件容易的任务。在建模理论中,选择自适应技术可以是一种良好的选择,以实现有关刺激和响应信号的不确定功能的良好近似。神经网络似乎是获得这种不确定的非线性功能的好选择。差分神经网络(DNN)是用于再现连续信号的一类神经网络。因此,可以应用DNN技术以产生刺激和响应信号之间的关系。在本文中,我们探讨了使用一组并行工作的多个DNN的可能性,以产生上述关系。 DNN产生一组模型,可以与刺激的信号一起使用,作为输入,并产生类似的信号到在光学神经中监视的信号。成功应用了DNN的一组以再现光学神经响应。制作了一种技术平台来测试本研究中提出的自适应模型。本文提出的设备用于模拟光学神经中的响应,以获取调节这些刺激信号的幅度的图像。数值模拟显示了模拟信号与DNN产生的轨迹之间的近距离

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