增强现实前馈神经网络模型的电磁信号可检测性

M. Giannì, F. Maggio, M. Liberti, A. Paffi, F. Apollonio, G. D'Inzeo
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引用次数: 8

摘要

具有前馈结构的神经网络是典型的周围神经系统。本文建立了一个真实的前馈网络随机模型,并用于研究神经元感觉通路对输入电磁场的敏感性。这项工作的目的是解决和表征整个网络的电磁信号可探测性,指出潜在的信号放大的生物物理特性。根据随机共振范式,突触噪声被证明可以增强信号转导,前馈配置中的池化神经元组件被证明可以在整个网络层中产生放大。这可能与生物医学的观点有关,其中基于神经系统的电或磁刺激的技术可以利用信号转导优化。
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Enhancement of EM Signal Detectability in a Realistic Model of Feedforward Neuronal Network
Neuronal networks with feedforward architecture are typical of peripheral nervous system. A realistic stochastic model of feedforward network was here implemented and used to investigate the sensitivity of neuronal sensory pathways to input electromagnetic (EM) fields. Aim of this work was to address and characterize EM signal detectability throughout the network, pointing out the biophysical properties underlying possible signal amplification. Synaptic noise is shown to enhance signal transduction according to the stochastic resonance paradigm, and pooling neuron assemblies in a feedforward configuration is evidenced to give rise to amplification throughout the network layers. This may be relevant in a biomedical perspective, where techniques based on electric or magnetic stimulation of the nervous system could take advantage from signal transduction optimization.
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