Singer Wolf, Lazar Andreea
Ernst Strüngmann Institute for Neuroscience in Cooperation with Max Planck SocietyFrankfurt am Main, Germany; Max Planck Institute for Brain ResearchFrankfurt am Main, Germany; Frankfurt Institute for Advanced StudiesFrankfurt am Main, Germany.
Front Comput Neurosci. 2016 Sep 22;10:99. doi: 10.3389/fncom.2016.00099. eCollection 2016.
The discovery of stimulus induced synchronization in the visual cortex suggested the possibility that the relations among low-level stimulus features are encoded by the temporal relationship between neuronal discharges. In this framework, temporal coherence is considered a signature of perceptual grouping. This insight triggered a large number of experimental studies which sought to investigate the relationship between temporal coordination and cognitive functions. While some core predictions derived from the initial hypothesis were confirmed, these studies, also revealed a rich dynamical landscape beyond simple coherence whose role in signal processing is still poorly understood. In this paper, a framework is presented which establishes links between the various manifestations of cortical dynamics by assigning specific coding functions to low-dimensional dynamic features such as synchronized oscillations and phase shifts on the one hand and high-dimensional non-linear, non-stationary dynamics on the other. The data serving as basis for this synthetic approach have been obtained with chronic multisite recordings from the visual cortex of anesthetized cats and from monkeys trained to solve cognitive tasks. It is proposed that the low-dimensional dynamics characterized by synchronized oscillations and large-scale correlations are substates that represent the results of computations performed in the high-dimensional state-space provided by recurrently coupled networks.
视觉皮层中刺激诱导同步的发现表明,低层次刺激特征之间的关系可能由神经元放电之间的时间关系编码。在此框架下,时间相干性被视为知觉分组的标志。这一见解引发了大量实验研究,旨在探究时间协调与认知功能之间的关系。虽然最初假设得出的一些核心预测得到了证实,但这些研究也揭示了一个超出简单相干性的丰富动态图景,其在信号处理中的作用仍知之甚少。本文提出了一个框架,通过一方面为诸如同步振荡和相移等低维动态特征,另一方面为高维非线性、非平稳动态赋予特定编码功能,在皮层动力学的各种表现之间建立联系。作为这种综合方法基础的数据,是通过对麻醉猫的视觉皮层以及训练来解决认知任务的猴子进行慢性多部位记录而获得的。有人提出,以同步振荡和大规模相关性为特征的低维动力学是子状态,代表了在由递归耦合网络提供的高维状态空间中执行的计算结果。