NUS Graduate School for Integrative Sciences and Engineering, National University of Singapore, 117456 Singapore.
Program for Neuroscience and Behavioral Disorders, Duke-NUS Medical School, 169857 Singapore.
eNeuro. 2017 May 22;4(3). doi: 10.1523/ENEURO.0361-16.2017. eCollection 2017 May-Jun.
Humans instantly recognize a previously seen face as "familiar." To deepen our understanding of familiarity-novelty detection, we simulated biologically plausible neural network models of generic cortical microcircuits consisting of spiking neurons with random recurrent synaptic connections. NMDA receptor (NMDAR)-dependent synaptic plasticity was implemented to allow for unsupervised learning and bidirectional modifications. Network spiking activity evoked by sensory inputs consisting of face images altered synaptic efficacy, which resulted in the network responding more strongly to a previously seen face than a novel face. Network size determined how many faces could be accurately recognized as familiar. When the simulated model became sufficiently complex in structure, multiple familiarity traces could be retained in the same network by forming partially-overlapping subnetworks that differ slightly from each other, thereby resulting in a high storage capacity. Fisher's discriminant analysis was applied to identify critical neurons whose spiking activity predicted familiar input patterns. Intriguingly, as sensory exposure was prolonged, the selected critical neurons tended to appear at deeper layers of the network model, suggesting recruitment of additional circuits in the network for incremental information storage. We conclude that generic cortical microcircuits with bidirectional synaptic plasticity have an intrinsic ability to detect familiar inputs. This ability does not require a specialized wiring diagram or supervision and can therefore be expected to emerge naturally in developing cortical circuits.
人类可以立即识别之前见过的面孔为“熟悉的”。为了更深入地了解熟悉-新颖性检测,我们模拟了具有随机递归突触连接的尖峰神经元的通用皮质微电路的生物上合理的神经网络模型。实现了 NMDA 受体 (NMDAR) 依赖性突触可塑性,以允许进行无监督学习和双向修改。由面孔图像组成的感官输入引发的网络尖峰活动改变了突触效能,从而导致网络对之前看到的面孔的反应比对新面孔的反应更强烈。网络大小决定了可以准确识别多少张面孔为熟悉的。当模拟模型的结构变得足够复杂时,可以通过形成彼此略有不同的部分重叠子网来在同一个网络中保留多个熟悉的痕迹,从而实现高存储容量。Fisher 判别分析用于识别其尖峰活动可预测熟悉输入模式的关键神经元。有趣的是,随着感官暴露的延长,所选的关键神经元往往出现在网络模型的更深层,这表明网络中招募了额外的电路以进行增量信息存储。我们得出的结论是,具有双向突触可塑性的通用皮质微电路具有内在的能力来检测熟悉的输入。这种能力不需要专门的布线图或监督,因此可以预期在发育中的皮质电路中自然出现。