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Bayesian spike inference from calcium imaging data

机译:从钙成像数据得出贝叶斯峰值推断

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We present efficient Bayesian methods for extracting neuronal spiking information from calcium imaging data. The goal of our methods is to sample from the posterior distribution of spike trains and model parameters (baseline concentration, spike amplitude etc) given noisy calcium imaging data. We present discrete time algorithms where that the existence of a spike at each time bin using Gibbs methods, as well as continuous time algorithms that sample over the number of spikes and their locations at an arbitrary resolution using Metropolis-Hastings methods for point processes. We provide Rao-Blackwellized extensions that (i) marginalize over several model parameters and (ii) provide smooth estimates of the marginal spike posterior distribution in continuous time. Our methods serve as complements to standard point estimates and allow for quantification of uncertainty in estimating the underlying spike train and model parameters.
机译:我们提出了一种有效的贝叶斯方法,用于从钙成像数据中提取神经元突增信息。我们的方法的目标是从给定含噪钙成像数据的峰值序列和模型参数(基线浓度,峰值幅度等)的后验分布中取样。我们提出了离散时间算法,其中使用Gibbs方法在每个时间仓处都存在尖峰,以及使用Metropolis-Hastings方法针对点过程以任意分辨率采样尖峰的数量及其位置的连续时间算法。我们提供Rao-Blackwellized扩展,该扩展(i)在多个模型参数上边缘化,并且(ii)在连续时间内对边缘尖峰后验分布进行平滑估计。我们的方法是对标准点估计值的补充,并允许在估计潜在的峰值序列和模型参数时对不确定性进行量化。

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