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首页> 外文期刊>Journal of Computational Neuroscience >Detection of bursts in extracellular spike trains using hidden semi-Markov point process models
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Detection of bursts in extracellular spike trains using hidden semi-Markov point process models

机译:使用隐藏的半马尔可夫点过程模型检测细胞外穗序列中的爆发

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摘要

Neurons in vitro and in vivo have epochs of bursting or "up state" activity during which firing rates are dramatically elevated. Various methods of detecting bursts in extracellular spike trains have appeared in the literature, the most widely used apparently being Poisson Surprise (PS). A natural description of the phenomenon assumes (1) there are two hidden states, which we label "burst" and "non-burst," (2) the neuron evolves stochastically, switching at random between these two states, and (3) within each state the spike train follows a time-homogeneous point process. If in (2) the transitions from non-burst to burst and burst to non-burst states are memoryless, this becomes a hidden Markov model (HMM). For HMMs, the state transitions follow exponential distributions, and are highly irregular. Because observed bursting may in some cases be fairly regular-exhibitingrninter-burst intervals with small variation-we relaxed this assumption. When more general probability distributions are used to describe the state transitions the two-state point process model becomes a hidden semi-Markov model (HSMM). We developed an efficient Bayesian computational scheme to fit HSMMs to spike train data. Numerical simulations indicate the method can perform well, sometimes yielding very different results than those based on PS.
机译:体外和体内神经元具有爆发或“向上状态”活动的时期,在此期间射击速率显着提高。文献中已经出现了多种检测细胞外突波序列中爆发的方法,最广泛使用的显然是泊松突袭(Poisson Surprise,PS)。对现象的自然描述是假设(1)有两个隐藏状态,我们将其标记为“爆发”和“非爆发”,(2)神经元随机进化,在这两种状态之间随机切换,并且(3)在在每种状态下,尖峰序列都遵循时间均匀的点过程。如果在(2)中从非突发状态到突发状态和突发状态到非突发状态的转换是无记忆的,则这将成为隐藏的马尔可夫模型(HMM)。对于HMM,状态转换遵循指数分布,并且高度不规则。因为在某些情况下观察到的爆发可能是相当规则的爆发间隔,所以变化很小,因此我们放松了这一假设。当使用更一般的概率分布来描述状态转换时,两个状态的点过程模型将成为隐藏的半马尔可夫模型(HSMM)。我们开发了一种有效的贝叶斯计算方案,以使HSMM适合尖峰火车数据。数值模拟表明该方法性能良好,有时产生的结果与基于PS的结果截然不同。

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