论文标题
使用尖峰神经元网络的模拟,可视化和分析工具用于模式识别评估
Simulation, visualization and analysis tools for pattern recognition assessment with spiking neuronal networks
论文作者
论文摘要
计算建模已成为现代神经科学中广泛使用的方法。但是,随着研究现象的复杂性增加,对模拟产生的结果的分析也变得更加具有挑战性。特别是,涉及学习的大脑回路的配置和验证通常需要处理大量的动作电位及其与刺激显示给系统输入的刺激的比较。在这项研究中,我们提出了一个系统的工作流,用于配置基于峰值 - 神经网络网络的学习系统,包括用于信息传输优化的进化算法,用于验证最佳合适配置的高级可视化工具和最终定量的学习能力定量评估。通过整合分组的动作潜在信息和与刺激相关的事件,提出的可视化框架可在研究中对学习过程的演变进行定性评估。所提出的工作流已用于研究如何在抑制性中间神经元网络中出现接受兴奋性和抑制性尖峰依赖性可塑性,当时它会暴露于重复性和部分重叠的刺激模式时。根据我们的结果,即使中间神经元的扇形比例受到相当严格的限制,产出人群也可靠地检测到了刺激模式的存在。
Computational modeling is becoming a widely used methodology in modern neuroscience. However, as the complexity of the phenomena under study increases, the analysis of the results emerging from the simulations concomitantly becomes more challenging. In particular, the configuration and validation of brain circuits involving learning often require the processing of large amounts of action potentials and their comparison to the stimulation being presented to the input of the system. In this study we present a systematic work-flow for the configuration of spiking-neuronal-network-based learning systems including evolutionary algorithms for information transmission optimization, advanced visualization tools for the validation of the best suitable configuration and customized scripts for final quantitative evaluation of the learning capabilities. By integrating both grouped action potential information and stimulation-related events, the proposed visualization framework provides qualitatively assessment of the evolution of the learning process in the simulation under study. The proposed work-flow has been used to study how receptive fields emerge in a network of inhibitory interneurons with excitatory and inhibitory spike-timing dependent plasticity when it is exposed to repetitive and partially overlapped stimulation patterns. According to our results, the output population reliably detected the presence of the stimulation patterns, even when the fan-in ratio of the interneurons was considerably restricted.