Institute of Neuroscience (NeuroPSI), Paris-Saclay University, Centre National de la Recherche Scientifique (CNRS), Gif-sur-Yvette, France.
PLoS Comput Biol. 2021 Sep 16;17(9):e1009416. doi: 10.1371/journal.pcbi.1009416. eCollection 2021 Sep.
Gamma oscillations are widely seen in the awake and sleeping cerebral cortex, but the exact role of these oscillations is still debated. Here, we used biophysical models to examine how Gamma oscillations may participate to the processing of afferent stimuli. We constructed conductance-based network models of Gamma oscillations, based on different cell types found in cerebral cortex. The models were adjusted to extracellular unit recordings in humans, where Gamma oscillations always coexist with the asynchronous firing mode. We considered three different mechanisms to generate Gamma, first a mechanism based on the interaction between pyramidal neurons and interneurons (PING), second a mechanism in which Gamma is generated by interneuron networks (ING) and third, a mechanism which relies on Gamma oscillations generated by pacemaker chattering neurons (CHING). We find that all three mechanisms generate features consistent with human recordings, but that the ING mechanism is most consistent with the firing rate change inside Gamma bursts seen in the human data. We next evaluated the responsiveness and resonant properties of these networks, contrasting Gamma oscillations with the asynchronous mode. We find that for both slowly-varying stimuli and precisely-timed stimuli, the responsiveness is generally lower during Gamma compared to asynchronous states, while resonant properties are similar around the Gamma band. We could not find conditions where Gamma oscillations were more responsive. We therefore predict that asynchronous states provide the highest responsiveness to external stimuli, while Gamma oscillations tend to overall diminish responsiveness.
伽马振荡广泛存在于清醒和睡眠的大脑皮层中,但这些振荡的确切作用仍存在争议。在这里,我们使用生物物理模型来研究伽马振荡如何参与传入刺激的处理。我们基于大脑皮层中发现的不同细胞类型构建了基于电导的伽马振荡网络模型。这些模型被调整为人类的细胞外单元记录,其中伽马振荡总是与异步发射模式共存。我们考虑了三种不同的产生伽马的机制,首先是基于锥体神经元和中间神经元相互作用的机制(PING),其次是由中间神经元网络产生的机制(ING),第三是依赖于起搏神经元喋喋不休产生的伽马振荡的机制(CHING)。我们发现,所有三种机制都产生了与人类记录一致的特征,但 ING 机制与人类数据中伽马爆发内的发射率变化最为一致。我们接下来评估了这些网络的响应能力和共振特性,将伽马振荡与异步模式进行对比。我们发现,对于缓慢变化的刺激和精确定时的刺激,与异步状态相比,伽马状态下的响应能力通常较低,而在伽马频段周围的共振特性相似。我们找不到伽马振荡更具响应性的条件。因此,我们预测异步状态为外部刺激提供了最高的响应能力,而伽马振荡往往整体降低响应能力。