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揭示大鼠海马体群体神经元编码所代表的空间拓扑结构。

Uncovering spatial topology represented by rat hippocampal population neuronal codes.

作者信息

Chen Zhe, Kloosterman Fabian, Brown Emery N, Wilson Matthew A

机构信息

Neuroscience Statistics Research Lab, Massachusetts General Hospital, Harvard Medical School, Boston, MA 02114, USA.

出版信息

J Comput Neurosci. 2012 Oct;33(2):227-55. doi: 10.1007/s10827-012-0384-x. Epub 2012 Feb 4.

Abstract

Hippocampal population codes play an important role in representation of spatial environment and spatial navigation. Uncovering the internal representation of hippocampal population codes will help understand neural mechanisms of the hippocampus. For instance, uncovering the patterns represented by rat hippocampus (CA1) pyramidal cells during periods of either navigation or sleep has been an active research topic over the past decades. However, previous approaches to analyze or decode firing patterns of population neurons all assume the knowledge of the place fields, which are estimated from training data a priori. The question still remains unclear how can we extract information from population neuronal responses either without a priori knowledge or in the presence of finite sampling constraint. Finding the answer to this question would leverage our ability to examine the population neuronal codes under different experimental conditions. Using rat hippocampus as a model system, we attempt to uncover the hidden "spatial topology" represented by the hippocampal population codes. We develop a hidden Markov model (HMM) and a variational Bayesian (VB) inference algorithm to achieve this computational goal, and we apply the analysis to extensive simulation and experimental data. Our empirical results show promising direction for discovering structural patterns of ensemble spike activity during periods of active navigation. This study would also provide useful insights for future exploratory data analysis of population neuronal codes during periods of sleep.

摘要

海马体群体编码在空间环境表征和空间导航中发挥着重要作用。揭示海马体群体编码的内部表征将有助于理解海马体的神经机制。例如,在过去几十年里,揭示大鼠海马体(CA1)锥体细胞在导航或睡眠期间所代表的模式一直是一个活跃的研究课题。然而,以往分析或解码群体神经元放电模式的方法都假定了位置场的知识,而位置场是事先从训练数据中估计出来的。在没有先验知识或存在有限采样约束的情况下,我们如何从群体神经元反应中提取信息,这个问题仍然不清楚。找到这个问题的答案将有助于我们在不同实验条件下研究群体神经元编码的能力。以大鼠海马体为模型系统,我们试图揭示海马体群体编码所代表的隐藏“空间拓扑结构”。我们开发了一种隐马尔可夫模型(HMM)和变分贝叶斯(VB)推理算法来实现这一计算目标,并将该分析应用于大量的模拟和实验数据。我们的实证结果为发现主动导航期间群体尖峰活动的结构模式指明了有前景的方向。这项研究也将为未来睡眠期间群体神经元编码的探索性数据分析提供有用的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0306/3974406/e9f904432a72/nihms562454f1.jpg

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