International Research Center for Neurointelligence (WPI-IRCN), The University of Tokyo, Tokyo, Japan.
PLoS Comput Biol. 2023 Oct 13;19(10):e1011554. doi: 10.1371/journal.pcbi.1011554. eCollection 2023 Oct.
Sensory areas of cortex respond more strongly to infrequent stimuli when these violate previously established regularities, a phenomenon known as deviance detection (DD). Previous modeling work has mainly attempted to explain DD on the basis of synaptic plasticity. However, a large fraction of cortical neurons also exhibit firing rate adaptation, an underexplored potential mechanism. Here, we investigate DD in a spiking neuronal network model with two types of short-term plasticity, fast synaptic short-term depression (STD) and slower threshold adaptation (TA). We probe the model with an oddball stimulation paradigm and assess DD by evaluating the network responses. We find that TA is sufficient to elicit DD. It achieves this by habituating neurons near the stimulation site that respond earliest to the frequently presented standard stimulus (local fatigue), which diminishes the response and promotes the recovery (global fatigue) of the wider network. Further, we find a synergy effect between STD and TA, where they interact with each other to achieve greater DD than the sum of their individual effects. We show that this synergy is caused by the local fatigue added by STD, which inhibits the global response to the frequently presented stimulus, allowing greater recovery of TA-mediated global fatigue and making the network more responsive to the deviant stimulus. Finally, we show that the magnitude of DD strongly depends on the timescale of stimulation. We conclude that highly predictable information can be encoded in strong local fatigue, which allows greater global recovery and subsequent heightened sensitivity for DD.
皮层的感觉区域对违反先前建立的规则的不频繁刺激反应更强烈,这种现象称为偏差检测 (DD)。以前的建模工作主要试图基于突触可塑性来解释 DD。然而,很大一部分皮层神经元也表现出放电率适应,这是一种尚未充分探索的潜在机制。在这里,我们在具有两种类型的短期可塑性的尖峰神经元网络模型中研究 DD,即快速突触短期抑制 (STD) 和较慢的阈值适应 (TA)。我们用一种异常刺激范式来探测模型,并通过评估网络响应来评估 DD。我们发现 TA 足以引起 DD。它通过使最接近刺激部位的神经元习惯对经常出现的标准刺激(局部疲劳)的反应,从而降低响应并促进更广泛的网络的恢复(全局疲劳)来实现这一点。此外,我们发现 STD 和 TA 之间存在协同效应,它们相互作用以实现比其各自效应之和更大的 DD。我们表明,这种协同作用是由 STD 引起的局部疲劳引起的,它抑制了对经常出现的刺激的全局反应,从而允许 TA 介导的全局疲劳的更大恢复,并使网络对偏差刺激更敏感。最后,我们表明 DD 的幅度强烈取决于刺激的时间尺度。我们得出结论,高度可预测的信息可以用强局部疲劳来编码,这允许更大的全局恢复,随后对 DD 更敏感。