Group for Neural Theory, INSERM U960, École Normale Supérieure Département d'Études Cognitives, 29 rue d'Ulm, 75005 Paris, France.
Prog Neurobiol. 2013 Apr;103:156-93. doi: 10.1016/j.pneurobio.2012.09.004. Epub 2012 Nov 1.
Cortical activity involves large populations of neurons, even when it is limited to functionally coherent areas. Electrophysiological recordings, on the other hand, involve comparatively small neural ensembles, even when modern-day techniques are used. Here we review results which have started to fill the gap between these two scales of inquiry, by shedding light on the statistical distributions of activity in large populations of cells. We put our main focus on data recorded in awake animals that perform simple decision-making tasks and consider statistical distributions of activity throughout cortex, across sensory, associative, and motor areas. We transversally review the complexity of these distributions, from distributions of firing rates and metrics of spike-train structure, through distributions of tuning to stimuli or actions and of choice signals, and finally the dynamical evolution of neural population activity and the distributions of (pairwise) neural interactions. This approach reveals shared patterns of statistical organization across cortex, including: (i) long-tailed distributions of activity, where quasi-silence seems to be the rule for a majority of neurons; that are barely distinguishable between spontaneous and active states; (ii) distributions of tuning parameters for sensory (and motor) variables, which show an extensive extrapolation and fragmentation of their representations in the periphery; and (iii) population-wide dynamics that reveal rotations of internal representations over time, whose traces can be found both in stimulus-driven and internally generated activity. We discuss how these insights are leading us away from the notion of discrete classes of cells, and are acting as powerful constraints on theories and models of cortical organization and population coding.
皮层活动涉及大量神经元,即使其仅限于功能上连贯的区域。另一方面,电生理记录涉及相对较小的神经网络,即使使用现代技术也是如此。在这里,我们通过阐明大细胞群体活动的统计分布,来回顾开始填补这两个研究尺度之间差距的结果。我们将主要重点放在在执行简单决策任务的清醒动物中记录的数据上,并考虑整个皮层、感觉、联想和运动区域的活动的统计分布。我们从发放率的分布和尖峰列结构的度量,到对刺激或动作以及选择信号的调谐分布,以及最后是神经群体活动的动态演变和(成对)神经相互作用的分布,横切性地综述了这些分布的复杂性。这种方法揭示了皮层中跨区域的统计组织的共享模式,包括:(i)活动的长尾分布,其中准静默似乎是大多数神经元的规则;在自发状态和活动状态之间几乎无法区分;(ii)感觉(和运动)变量的调谐参数分布,其在周围区域表现出其表示的广泛外推和碎片化;以及(iii)全群体动力学揭示了内部表示随时间的旋转,其痕迹既可以在刺激驱动的活动中找到,也可以在内部生成的活动中找到。我们讨论了这些见解如何使我们摆脱离散的细胞类别的概念,并对皮层组织和群体编码的理论和模型施加了强大的约束。