Box Marc, Jones Matt W, Whiteley Nick
Bristol Centre for Complexity Sciences, University of Bristol, Bristol, UK.
School of Physiology and Pharmacology, University of Bristol, Bristol, UK.
J Comput Neurosci. 2016 Dec;41(3):339-366. doi: 10.1007/s10827-016-0621-9. Epub 2016 Sep 13.
We present a hidden Markov model that describes variation in an animal's position associated with varying levels of activity in action potential spike trains of individual place cell neurons. The model incorporates a coarse-graining of position, which we find to be a more parsimonious description of the system than other models. We use a sequential Monte Carlo algorithm for Bayesian inference of model parameters, including the state space dimension, and we explain how to estimate position from spike train observations (decoding). We obtain greater accuracy over other methods in the conditions of high temporal resolution and small neuronal sample size. We also present a novel, model-based approach to the study of replay: the expression of spike train activity related to behaviour during times of motionlessness or sleep, thought to be integral to the consolidation of long-term memories. We demonstrate how we can detect the time, information content and compression rate of replay events in simulated and real hippocampal data recorded from rats in two different environments, and verify the correlation between the times of detected replay events and of sharp wave/ripples in the local field potential.
我们提出了一种隐马尔可夫模型,该模型描述了与单个位置细胞神经元动作电位尖峰序列中不同活动水平相关的动物位置变化。该模型纳入了位置的粗粒化,我们发现这比其他模型对系统的描述更为简洁。我们使用顺序蒙特卡罗算法对模型参数进行贝叶斯推断,包括状态空间维度,并解释如何根据尖峰序列观测值估计位置(解码)。在高时间分辨率和小神经元样本量的条件下,我们比其他方法获得了更高的准确性。我们还提出了一种基于模型的新颖方法来研究重放:即在静止或睡眠期间与行为相关的尖峰序列活动的表达,这被认为是长期记忆巩固所不可或缺的。我们展示了如何在从处于两种不同环境的大鼠记录的模拟和真实海马体数据中检测重放事件的时间、信息内容和压缩率,并验证检测到的重放事件时间与局部场电位中的尖波/涟漪时间之间的相关性。