Wilting Jens, Dehning Jonas, Pinheiro Neto Joao, Rudelt Lucas, Wibral Michael, Zierenberg Johannes, Priesemann Viola
Max-Planck-Institute for Dynamics and Self-Organization, Göttingen, Germany.
Magnetoencephalography Unit, Brain Imaging Center, Johann-Wolfgang-Goethe University, Frankfurt, Germany.
Front Syst Neurosci. 2018 Nov 6;12:55. doi: 10.3389/fnsys.2018.00055. eCollection 2018.
Neural circuits are able to perform computations under very diverse conditions and requirements. The required computations impose clear constraints on their fine-tuning: a rapid and maximally informative response to stimuli in general requires decorrelated baseline neural activity. Such network dynamics is known as asynchronous-irregular. In contrast, spatio-temporal integration of information requires maintenance and transfer of stimulus information over extended time periods. This can be realized at criticality, a phase transition where correlations, sensitivity and integration time diverge. Being able to flexibly switch, or even combine the above properties in a task-dependent manner would present a clear functional advantage. We propose that cortex operates in a "reverberating regime" because it is particularly favorable for ready adaptation of computational properties to context and task. This reverberating regime enables cortical networks to interpolate between the asynchronous-irregular and the critical state by small changes in effective synaptic strength or excitation-inhibition ratio. These changes directly adapt computational properties, including sensitivity, amplification, integration time and correlation length within the local network. We review recent converging evidence that cortex operates in the reverberating regime, and that various cortical areas have adapted their integration times to processing requirements. In addition, we propose that neuromodulation enables a fine-tuning of the network, so that local circuits can either decorrelate or integrate, and quench or maintain their input depending on task. We argue that this task-dependent tuning, which we call "dynamic adaptive computation," presents a central organization principle of cortical networks and discuss first experimental evidence.
神经回路能够在非常多样的条件和需求下执行计算。所需的计算对其微调施加了明确的限制:通常,对刺激的快速且信息量最大的响应需要去相关的基线神经活动。这种网络动态被称为异步不规则。相比之下,信息的时空整合需要在较长时间段内维持和传递刺激信息。这可以在临界状态实现,临界状态是一种相变,其中相关性、敏感性和整合时间会发散。能够灵活切换,甚至以任务依赖的方式组合上述特性将具有明显的功能优势。我们提出,皮层以“回响模式”运作,因为这特别有利于计算特性根据上下文和任务进行即时适应。这种回响模式使皮层网络能够通过有效突触强度或兴奋 - 抑制比的微小变化在异步不规则状态和临界状态之间进行插值。这些变化直接调整计算特性,包括局部网络内的敏感性、放大率、整合时间和相关长度。我们综述了最近的一些趋同证据,即皮层以回响模式运作,并且各个皮层区域已经根据处理需求调整了它们的整合时间。此外,我们提出神经调节能够对网络进行微调,以便局部回路可以根据任务去相关或整合,并抑制或维持其输入。我们认为这种任务依赖的调整,我们称之为“动态自适应计算”,是皮层网络的一个核心组织原则,并讨论了初步的实验证据。