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Graded, Dynamically Routable Information Processing with Synfire-Gated Synfire Chains

机译:使用Synfire门控的Synfire链进行分级,动态可路由的信息处理

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摘要

Coherent neural spiking and local field potentials are believed to be signatures of the binding and transfer of information in the brain. Coherent activity has now been measured experimentally in many regions of mammalian cortex. Recently experimental evidence has been presented suggesting that neural information is encoded and transferred in packets, i.e., in stereotypical, correlated spiking patterns of neural activity. Due to their relevance to coherent spiking, synfire chains are one of the main theoretical constructs that have been appealed to in order to describe coherent spiking and information transfer phenomena. However, for some time, it has been known that synchronous activity in feedforward networks asymptotically either approaches an attractor with fixed waveform and amplitude, or fails to propagate. This has limited the classical synfire chain’s ability to explain graded neuronal responses. Recently, we have shown that pulse-gated synfire chains are capable of propagating graded information coded in mean population current or firing rate amplitudes. In particular, we showed that it is possible to use one synfire chain to provide gating pulses and a second, pulse-gated synfire chain to propagate graded information. We called these circuits synfire-gated synfire chains (SGSCs). Here, we present SGSCs in which graded information can rapidly cascade through a neural circuit, and show a correspondence between this type of transfer and a mean-field model in which gating pulses overlap in time. We show that SGSCs are robust in the presence of variability in population size, pulse timing and synaptic strength. Finally, we demonstrate the computational capabilities of SGSC-based information coding by implementing a self-contained, spike-based, modular neural circuit that is triggered by streaming input, processes the input, then makes a decision based on the processed information and shuts itself down.
机译:相干神经刺突和局部场电位被认为是大脑中信息的结合和转移的标志。现在已经在哺乳动物皮质的许多区域中通过实验测量了相干活性。最近已经提出了实验证据,表明神经信息以分组的形式,即以定型的,相关的神经活动尖峰模式进行编码和传输。由于它们与连贯尖峰相关,因此,synfire链是描述连贯尖峰和信息传递现象而吸引的主要理论构造之一。然而,一段时间以来,已知前馈网络中的同步活动渐近地接近具有固定波形和幅度的吸引子,或者无法传播。这限制了经典的synfire链解释分级神经元反应的能力。最近,我们显示了脉冲门控合成火链能够传播以平均种群电流或发射速率幅度编码的分级信息。特别地,我们表明可以使用一个synfire链提供门控脉冲,使用第二个脉冲门控synfire链来传播分级信息。我们称这些电路为synfire门控的synfire链(SGSC)。在这里,我们介绍了SGSC,其中分级信息可以通过神经回路快速级联,并显示了这种类型的传输与门控脉冲在时间上重叠的均值场模型之间的对应关系。我们显示,SGSCs在种群大小,脉冲时间和突触强度的可变性存在下具有鲁棒性。最后,我们通过实现一个独立的,基于尖峰的模块化神经电路,演示了基于SGSC的信息编码的计算能力,该神经电路由流输入触发,处理输入,然后根据处理后的信息做出决定并自行关闭下。

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