Chang ChihHsiang, Furukawa Takuma, Asahina Takahiro, Shimba Kenta, Kotani Kiyoshi, Jimbo Yasuhiko
Department of Precision Engineering, School of Engineering, The University of Tokyo, Tokyo, Japan.
Research Center for Advanced Science and Technology, The University of Tokyo, Tokyo, Japan.
Front Neurosci. 2022 May 23;16:873664. doi: 10.3389/fnins.2022.873664. eCollection 2022.
Brain-state alternation is important for long-term memory formation. Each brain state can be identified with a specific process in memory formation, e.g., encoding during wakefulness or consolidation during sleeping. The hippocampal-neocortical dialogue was proposed as a hypothetical framework for systems consolidation, which features different cross-frequency couplings between the hippocampus and distributed neocortical regions in different brain states. Despite evidence supporting this hypothesis, little has been reported about how information is processed with shifts in brain states. To address this gap, we developed an neocortical-hippocampal coculture model to study how activity coupling can affect connections between coupled networks. Neocortical and hippocampal neurons were cultured in two different compartments connected by a micro-tunnel structure. The network activity of the coculture model was recorded by microelectrode arrays underlying the substrate. Rhythmic bursting was observed in the spontaneous activity and electrical evoked responses. Rhythmic bursting activity in one compartment could couple to that in the other via axons passing through the micro-tunnels. Two types of coupling patterns were observed: slow-burst coupling (neocortex at 0.1-0.5 Hz and hippocampus at 1 Hz) and fast burst coupling (neocortex at 20-40 Hz and hippocampus at 4-10 Hz). The network activity showed greater synchronicity in the slow-burst coupling, as indicated by changes in the burstiness index. Network synchronicity analysis suggests the presence of different information processing states under different burst activity coupling patterns. Our results suggest that the hippocampal-neocortical coculture model possesses multiple modes of burst activity coupling between the cortical and hippocampal parts. With the addition of external stimulation, the neocortical-hippocampal network model we developed can elucidate the influence of state shifts on information processing.
脑状态交替对长期记忆形成很重要。每种脑状态都可与记忆形成中的特定过程相关联,例如清醒时的编码或睡眠时的巩固。海马体 - 新皮层对话被提出作为系统巩固的一个假设框架,其特点是在不同脑状态下,海马体与分布在新皮层的不同区域之间存在不同的交叉频率耦合。尽管有证据支持这一假设,但关于脑状态变化时信息如何处理的报道却很少。为了填补这一空白,我们开发了一种新皮层 - 海马体共培养模型,以研究活动耦合如何影响耦合网络之间的连接。新皮层和海马体神经元在通过微隧道结构相连的两个不同隔室中培养。共培养模型的网络活动通过置于底物下方的微电极阵列进行记录。在自发活动和电诱发反应中观察到节律性爆发。一个隔室中的节律性爆发活动可通过穿过微隧道的轴突与另一个隔室中的活动耦合。观察到两种耦合模式:慢爆发耦合(新皮层0.1 - 0.5赫兹,海马体1赫兹)和快爆发耦合(新皮层20 - 40赫兹,海马体4 - 10赫兹)。如爆发指数的变化所示,网络活动在慢爆发耦合中表现出更大的同步性。网络同步性分析表明,在不同的爆发活动耦合模式下存在不同的信息处理状态。我们的结果表明,海马体 - 新皮层共培养模型在皮层和海马体部分之间具有多种爆发活动耦合模式。通过添加外部刺激,我们开发的新皮层 - 海马体网络模型可以阐明状态变化对信息处理的影响。