Institute for Neural Computation, Faculty of Computer Science, Ruhr University Bochum, Bochum, Germany.
International Graduate School of Neuroscience, Ruhr University Bochum, Bochum, Germany.
PLoS Comput Biol. 2023 May 12;19(5):e1011101. doi: 10.1371/journal.pcbi.1011101. eCollection 2023 May.
Representing past, present and future locations is key for spatial navigation. Indeed, within each cycle of the theta oscillation, the population of hippocampal place cells appears to represent trajectories starting behind the current position of the animal and sweeping ahead of it. In particular, we reported recently that the position represented by CA1 place cells at a given theta phase corresponds to the location where animals were or will be located at a fixed time interval into the past or future assuming the animal ran at its typical, not the current, speed through that part of the environment. This coding scheme leads to longer theta trajectories, larger place fields and shallower phase precession in areas where animals typically run faster. Here we present a mechanistic computational model that accounts for these experimental observations. The model consists of a continuous attractor network with short-term synaptic facilitation and depression that internally generates theta sequences that advance at a fixed pace. Spatial locations are then mapped onto the active units via modified Hebbian plasticity. As a result, neighboring units become associated with spatial locations further apart where animals run faster, reproducing our earlier experimental results. The model also accounts for the higher density of place fields generally observed where animals slow down, such as around rewards. Furthermore, our modeling results reveal that an artifact of the decoding analysis might be partly responsible for the observation that theta trajectories start behind the animal's current position. Overall, our results shed light on how the hippocampal code might arise from the interplay between behavior, sensory input and predefined network dynamics.
代表过去、现在和未来的位置是空间导航的关键。事实上,在每个 theta 振荡周期内,海马体位置细胞群体似乎代表了从动物当前位置后面开始并向前扫过的轨迹。特别是,我们最近报道称,在给定的 theta 相位下,CA1 位置细胞所代表的位置对应于动物在过去或未来的某个固定时间间隔内所处的位置,前提是动物以其典型速度而不是当前速度穿过环境的那部分。这种编码方案导致更长的 theta 轨迹、更大的位置场和更浅的相位超前,在动物通常跑得更快的区域。在这里,我们提出了一个机械计算模型,该模型解释了这些实验观察结果。该模型由具有短期突触易化和抑制的连续吸引子网络组成,内部生成以固定速度前进的 theta 序列。然后,通过修改后的赫布可塑性将空间位置映射到活动单元上。结果,相邻单元与动物跑得更快的更远的空间位置相关联,再现了我们之前的实验结果。该模型还解释了通常在动物减速的地方(例如在奖励周围)观察到的位置场密度较高的现象。此外,我们的建模结果表明,解码分析的一个人为因素可能部分导致观察到 theta 轨迹从动物当前位置后面开始的现象。总体而言,我们的研究结果揭示了海马体代码如何由行为、感官输入和预定义的网络动态之间的相互作用产生。