海马峰时神经编码的代数方法

Federico W. Pasini, Alexandra N. Busch, Ján Mináč, Krishnan Padmanabhan, Lyle Muller
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引用次数: 0

摘要

尽管神经科学长期以来一直对通过尖峰时间模式进行时间编码感兴趣,但对尖峰时间编码有用的具体结构仍然非常不清楚。在这里,我们引入了一种分析方法,使用离散数学的技术来研究峰值时间码。作为一个初步的例子,我们关注啮齿动物海马中的“相位进动”现象。在物理轨道上的导航和学习过程中,啮齿动物大脑中的特定细胞形成了一种高度结构化的模式,相对于该区域人口活动的振荡。由于相进动在记忆形成中的作用已经得到了很好的证实,所以对相进动的研究主要集中在其在突触可塑性的尖峰时间精确排序中的作用。相对而言,很少有人注意到相位进动是尖峰时神经编码的最佳候选之一。这个代码的确切性质仍然是一个悬而未决的问题。在这里,我们通过将单个尖峰时间表示为复数,推导出将物理空间中的点映射为复值尖峰的函数的解析表达式。这一功能的特性明确了海马突起模式中过去和未来之间的特定关系。重要的是,这种数学方法超越了这里研究的特定现象,提供了一种技术来研究在感觉编码和运动行为中发现的精确尖峰时间序列中的神经编码。然后,我们介绍了基于该函数的基于峰值的解码算法,该算法仅使用动物的初始位置和峰值时间模式就成功解码了模拟动物的轨迹。该解码器在峰值时间内对噪声具有鲁棒性,并且工作时间比通常使用的平均发射率解码器短一个数量级。这些结果说明了离散方法的实用性,该方法基于有限细胞集上尖峰模式的结构和对称性,可以深入了解神经系统的结构和功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algebraic approach to spike-time neural codes in the hippocampus
Although temporal coding through spike-time patterns has long been of interest in neuroscience, the specific structures that could be useful for spike-time codes remain highly unclear. Here, we introduce an analytical approach, using techniques from discrete mathematics, to study spike-time codes. As an initial example, we focus on the phenomenon of ``phase precession'' in the rodent hippocampus. During navigation and learning on a physical track, specific cells in a rodent's brain form a highly structured pattern relative to the oscillation of population activity in this region. Studies of phase precession largely focus on its role in precisely ordering spike times for synaptic plasticity, as the role of phase precession in memory formation is well established. Comparatively less attention has been paid to the fact that phase precession represents one of the best candidates for a spike-time neural code. The precise nature of this code remains an open question. Here, we derive an analytical expression for a function mapping points in physical space to complex-valued spikes by representing individual spike times as complex numbers. The properties of this function make explicit a specific relationship between past and future in spike patterns of the hippocampus. Importantly, this mathematical approach generalizes beyond the specific phenomenon studied here, providing a technique to study the neural codes within precise spike-time sequences found during sensory coding and motor behavior. We then introduce a spike-based decoding algorithm, based on this function, that successfully decodes a simulated animal's trajectory using only the animal's initial position and a pattern of spike times. This decoder is robust to noise in spike times and works on a timescale almost an order of magnitude shorter than typically used with decoders that work on average firing rate. These results illustrate the utility of a discrete approach, based on the structure and symmetries in spike patterns across finite sets of cells, to provide insight into the structure and function of neural systems.
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