Mercator Research Group "Structure of Memory," Department of Psychology, Ruhr-University Bochum Bochum, Germany.
Front Comput Neurosci. 2013 Nov 12;7:161. doi: 10.3389/fncom.2013.00161. eCollection 2013.
The hippocampal network produces sequences of neural activity even when there is no time-varying external drive. In offline states, the temporal sequence in which place cells fire spikes correlates with the sequence of their place fields. Recent experiments found this correlation even between offline sequential activity (OSA) recorded before the animal ran in a novel environment and the place fields in that environment. This preplay phenomenon suggests that OSA is generated intrinsically in the hippocampal network, and not established by external sensory inputs. Previous studies showed that continuous attractor networks with asymmetric patterns of connectivity, or with slow, local negative feedback, can generate sequential activity. This mechanism could account for preplay if the network only represented a single spatial map, or chart. However, global remapping in the hippocampus implies that multiple charts are represented simultaneously in the hippocampal network and it remains unknown whether the network with multiple charts can account for preplay. Here we show that it can. Driven with random inputs, the model generates sequences in every chart. Place fields in a given chart and OSA generated by the network are highly correlated. We also find significant correlations, albeit less frequently, even when the OSA is correlated with a new chart in which place fields are randomly scattered. These correlations arise from random correlations between the orderings of place fields in the new chart and those in a pre-existing chart. Our results suggest two different accounts for preplay. Either an existing chart is re-used to represent a novel environment or a new chart is formed.
海马体网络在没有时变外部驱动的情况下也会产生神经活动序列。在离线状态下,位置细胞发射尖峰的时间序列与它们的位置场的序列相关。最近的实验发现,即使在动物在新环境中奔跑之前记录的离线序列活动(OSA)与该环境中的位置场之间,也存在这种相关性。这种预演现象表明,OSA 是在海马体网络中内在产生的,而不是由外部感觉输入建立的。以前的研究表明,具有不对称连接模式或具有缓慢、局部负反馈的连续吸引子网络可以产生序列活动。如果网络只表示单个空间图或图表,那么这种机制可以解释预演。然而,海马体中的全局重映射意味着多个图表同时在海马体网络中被表示,并且尚不清楚具有多个图表的网络是否可以解释预演。在这里,我们表明它可以。在随机输入的驱动下,该模型在每个图表中生成序列。给定图表中的位置场和网络生成的 OSA 高度相关。我们还发现了显著的相关性,尽管不太频繁,即使 OSA 与随机散布位置场的新图表相关。这些相关性源自新图表中位置场的排序与预先存在的图表中位置场的排序之间的随机相关性。我们的结果表明,预演有两种不同的解释。要么是重新使用现有的图表来表示新的环境,要么是形成新的图表。