Department of Electrical, Electronic, and Information Engineering "Guglielmo Marconi", University of Bologna, Cesena, Italy.
Front Neural Circuits. 2024 Jun 14;18:1326609. doi: 10.3389/fncir.2024.1326609. eCollection 2024.
Gamma oscillations nested in a theta rhythm are observed in the hippocampus, where are assumed to play a role in sequential episodic memory, i.e., memorization and retrieval of events that unfold in time. In this work, we present an original neurocomputational model based on neural masses, which simulates the encoding of sequences of events in the hippocampus and subsequent retrieval by exploiting the theta-gamma code. The model is based on a three-layer structure in which individual Units oscillate with a gamma rhythm and code for individual features of an episode. The first layer (working memory in the prefrontal cortex) maintains a cue in memory until a new signal is presented. The second layer (CA3 cells) implements an auto-associative memory, exploiting excitatory and inhibitory plastic synapses to recover an entire episode from a single feature. Units in this layer are disinhibited by a theta rhythm from an external source (septum or Papez circuit). The third layer (CA1 cells) implements a hetero-associative net with the previous layer, able to recover a sequence of episodes from the first one. During an encoding phase, simulating high-acetylcholine levels, the network is trained with Hebbian (synchronizing) and anti-Hebbian (desynchronizing) rules. During retrieval (low-acetylcholine), the network can correctly recover sequences from an initial cue using gamma oscillations nested inside the theta rhythm. Moreover, in high noise, the network isolated from the environment simulates a mind-wandering condition, randomly replicating previous sequences. Interestingly, in a state simulating sleep, with increased noise and reduced synapses, the network can "dream" by creatively combining sequences, exploiting features shared by different episodes. Finally, an irrational behavior (erroneous superimposition of features in various episodes, like "delusion") occurs after pathological-like reduction in fast inhibitory synapses. The model can represent a straightforward and innovative tool to help mechanistically understand the theta-gamma code in different mental states.
在海马体中观察到嵌套在 theta 节律中的伽马振荡,它们被认为在顺序情节记忆中发挥作用,即记忆和检索按时间展开的事件。在这项工作中,我们提出了一个基于神经质量的原始神经计算模型,该模型利用 theta-gamma 码模拟海马体中事件序列的编码和随后的检索。该模型基于三层结构,其中单个单元以伽马节律振荡并对情节的单个特征进行编码。第一层(前额叶皮层的工作记忆)将提示保留在记忆中,直到出现新信号。第二层(CA3 细胞)实现了自联想记忆,利用兴奋性和抑制性可塑突触从单个特征中恢复整个情节。该层中的单元通过来自外部源(隔区或帕佩兹回路)的 theta 节律被去抑制。第三层(CA1 细胞)与前一层实现异联想网络,能够从前一个网络恢复一系列情节。在编码阶段,模拟高乙酰胆碱水平,网络通过赫布(同步)和反赫布(去同步)规则进行训练。在检索(低乙酰胆碱)期间,网络可以使用嵌套在 theta 节律中的伽马振荡正确地从初始提示中恢复序列。此外,在高噪声下,与环境隔离的网络模拟心不在焉的状态,随机复制以前的序列。有趣的是,在模拟睡眠的状态下,增加噪声并减少突触,网络可以通过创造性地组合序列,利用不同情节之间共享的特征来“做梦”。最后,在病理性减少快速抑制性突触后,会出现不合理的行为(在不同情节中错误地叠加特征,如“妄想”)。该模型可以作为一种简单而创新的工具,有助于在不同心理状态下从机制上理解 theta-gamma 码。