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Hold Your Methods! How Multineuronal Firing Ensembles Can Be Studied Using Classical Spike-Train Analysis Techniques

机译:坚持你的方法!如何使用经典的尖峰火车分析技术研究多神经发火集合体

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摘要

Responses of neuronal populations play an important role in the encoding of stimulus related information. However, the inherent multidimensionality required to describe population activity has imposed significant challenges and has limited the applicability of classical spike train analysis techniques. Here, we show that these limitations can be overcome. We first quantify the collective activity of neurons as multidimensional vectors (patterns). Then we characterize the behavior of these patterns by applying classical spike train analysis techniques: peri-stimulus time histograms, tuning curves and auto- and cross-correlation histograms. We find that patterns can exhibit a broad spectrum of properties, some resembling and others substantially differing from those of their component neurons. We show that in some cases pattern behavior cannot be intuitively inferred from the activity of component neurons. Importantly, silent neurons play a critical role in shaping pattern expression. By correlating pattern timing with local-field potentials, we show that the method can reveal fine temporal coordination of cortical circuits at the mesoscale. Because of its simplicity and reliance on well understood classical analysis methods the proposed approach is valuable for the study of neuronal population dynamics.
机译:神经元群体的反应在刺激相关信息的编码中起重要作用。但是,描述种群活动所需的固有多维性带来了重大挑战,并限制了经典穗状花序分析技术的适用性。在这里,我们表明可以克服这些限制。我们首先将神经元的集体活动量化为多维向量(模式)。然后,我们通过应用经典的峰值训练分析技术来表征这些模式的行为:刺激周期时间直方图,调整曲线以及自相关和互相关直方图。我们发现模式可以表现出广泛的特性,有些类似于它们的组成神经元,而有些则与它们的组成神经元有很大不同。我们表明,在某些情况下,不能从组成神经元的活动直观地推断出模式行为。重要的是,沉默神经元在塑造模式表达中起着至关重要的作用。通过将模式时序与局部场电位相关联,我们表明该方法可以揭示中尺度的皮层电路的精细时间协调。由于其简单性和对众所周知的经典分析方法的依赖,因此该方法对于研究神经元种群动态非常有价值。

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