Destexhe Alain, Contreras Diego
Integrative and Computational Neuroscience Unit (UNIC), CNRS, Gif sur Yvette, France.
Science. 2006 Oct 6;314(5796):85-90. doi: 10.1126/science.1127241.
Neuronal networks in vivo are characterized by considerable spontaneous activity, which is highly complex and intrinsically generated by a combination of single-cell electrophysiological properties and recurrent circuits. As seen, for example, during waking compared with being asleep or under anesthesia, neuronal responsiveness differs, concomitant with the pattern of spontaneous brain activity. This pattern, which defines the state of the network, has a dramatic influence on how local networks are engaged by inputs and, therefore, on how information is represented. We review here experimental and theoretical evidence of the decisive role played by stochastic network states in sensory responsiveness with emphasis on activated states such as waking. From single cells to networks, experiments and computational models have addressed the relation between neuronal responsiveness and the complex spatiotemporal patterns of network activity. The understanding of the relation between network state dynamics and information representation is a major challenge that will require developing, in conjunction, specific experimental paradigms and theoretical frameworks.
体内的神经元网络具有显著的自发活动特征,这种活动高度复杂,是由单细胞电生理特性和循环回路共同内在产生的。例如,与睡眠或麻醉状态相比,清醒时可见神经元反应性不同,这与自发脑活动模式相伴。这种定义网络状态的模式,对局部网络如何被输入激活进而对信息如何被表征有着巨大影响。在此,我们回顾关于随机网络状态在感觉反应性中所起决定性作用的实验和理论证据,重点关注诸如清醒等激活状态。从单细胞到网络,实验和计算模型都探讨了神经元反应性与网络活动复杂时空模式之间的关系。理解网络状态动态与信息表征之间的关系是一项重大挑战,这需要同时开发特定的实验范式和理论框架。