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用于从海马体CA1记录中解码空间表征的功能连接模型。

Functional connectivity models for decoding of spatial representations from hippocampal CA1 recordings.

作者信息

Posani Lorenzo, Cocco Simona, Ježek Karel, Monasson Rémi

机构信息

Laboratoire de Physique Statistique, Ecole Normale Supérieure and CNRS UMR 8550, PSL Research, Paris Sorbonne UPMC, 24 rue Lhomond, 75005, Paris, France.

Laboratory of Experimental Neurophysiology, Biomedical Center, Faculty of Medicine in Pilsen, Charles University in Prague, alej Svobody 1655/76, 32300, Pilsen, Czech Republic.

出版信息

J Comput Neurosci. 2017 Aug;43(1):17-33. doi: 10.1007/s10827-017-0645-9. Epub 2017 May 8.

Abstract

Hippocampus stores spatial representations, or maps, which are recalled each time a subject is placed in the corresponding environment. Across different environments of similar geometry, these representations show strong orthogonality in CA3 of hippocampus, whereas in the CA1 subfield a considerable overlap between the maps can be seen. The lower orthogonality decreases reliability of various decoders developed in an attempt to identify which of the stored maps is active at the moment. Especially, the problem with decoding emerges with a need to analyze data at high temporal resolution. Here, we introduce a functional-connectivity-based decoder, which accounts for the pairwise correlations between the spiking activities of neurons in each map and does not require any positional information, i.e. any knowledge about place fields. We first show, on recordings of hippocampal activity in constant environmental conditions, that our decoder outperforms existing decoding methods in CA1. Our decoder is then applied to data from teleportation experiments, in which an instantaneous switch between the environment identity triggers a recall of the corresponding spatial representation . We test the sensitivity of our approach on the transition dynamics between the respective memory states (maps). We find that the rate of spontaneous state shifts (flickering) after a teleportation event is increased not only within the first few seconds as already reported, but this instability is sustained across much longer (> 1 min.) periods.

摘要

海马体存储空间表征或地图,每当一个主体被置于相应环境中时,这些表征就会被唤起。在几何形状相似的不同环境中,这些表现在海马体的CA3区域表现出很强的正交性,而在CA1子区域,可以看到地图之间有相当大的重叠。较低的正交性降低了为识别当前哪个存储地图处于激活状态而开发的各种解码器的可靠性。特别是,在需要以高时间分辨率分析数据时,解码问题就会出现。在这里,我们引入了一种基于功能连接的解码器,它考虑了每个地图中神经元放电活动之间的成对相关性,并且不需要任何位置信息,即任何关于位置场的知识。我们首先在恒定环境条件下的海马体活动记录中表明,我们的解码器在CA1区域优于现有的解码方法。然后,我们将我们的解码器应用于瞬移实验的数据,在瞬移实验中,环境身份的瞬间切换会触发相应空间表征的唤起。我们测试了我们的方法对各个记忆状态(地图)之间转换动态的敏感性。我们发现,瞬移事件后自发状态转换(闪烁)的速率不仅在最初几秒内如已报道的那样增加,而且这种不稳定性会在更长(>1分钟)的时间段内持续。

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