Bioengineering Department, Imperial College London, London, UK.
Nat Rev Neurosci. 2021 Jan;22(1):21-37. doi: 10.1038/s41583-020-00390-z. Epub 2020 Nov 11.
Neuronal networks with strong recurrent connectivity provide the brain with a powerful means to perform complex computational tasks. However, high-gain excitatory networks are susceptible to instability, which can lead to runaway activity, as manifested in pathological regimes such as epilepsy. Inhibitory stabilization offers a dynamic, fast and flexible compensatory mechanism to balance otherwise unstable networks, thus enabling the brain to operate in its most efficient regimes. Here we review recent experimental evidence for the presence of such inhibition-stabilized dynamics in the brain and discuss their consequences for cortical computation. We show how the study of inhibition-stabilized networks in the brain has been facilitated by recent advances in the technological toolbox and perturbative techniques, as well as a concomitant development of biologically realistic computational models. By outlining future avenues, we suggest that inhibitory stabilization can offer an exemplary case of how experimental neuroscience can progress in tandem with technology and theory to advance our understanding of the brain.
具有强递归连接的神经网络为大脑提供了执行复杂计算任务的强大手段。然而,高增益兴奋性网络容易不稳定,这可能导致失控活动,如癫痫等病理状态。抑制稳定提供了一种动态、快速和灵活的补偿机制,以平衡不稳定的网络,从而使大脑能够在最有效的状态下运行。在这里,我们回顾了最近关于大脑中存在这种抑制稳定动力学的实验证据,并讨论了它们对皮质计算的影响。我们展示了如何通过最近在技术工具包和微扰技术方面的进展,以及对具有生物现实性的计算模型的同时发展,来促进对大脑中抑制稳定网络的研究。通过概述未来的途径,我们认为抑制稳定可以为实验神经科学如何与技术和理论一起发展,以提高我们对大脑的理解提供一个典范。