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Spike Inference from Calcium Imaging Using Sequential Monte Carlo Methods

机译:使用顺序蒙特卡洛方法从钙成像中得出峰值推断

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摘要

As recent advances in calcium sensing technologies facilitate simultaneously imaging action potentials in neuronal populations, complementary analytical tools must also be developed to maximize the utility of this experimental paradigm. Although the observations here are fluorescence movies, the signals of interest—spike trains and/or time varying intracellular calcium concentrations—are hidden. Inferring these hidden signals is often problematic due to noise, nonlinearities, slow imaging rate, and unknown biophysical parameters. We overcome these difficulties by developing sequential Monte Carlo methods (particle filters) based on biophysical models of spiking, calcium dynamics, and fluorescence. We show that even in simple cases, the particle filters outperform the optimal linear (i.e., Wiener) filter, both by obtaining better estimates and by providing error bars. We then relax a number of our model assumptions to incorporate nonlinear saturation of the fluorescence signal, as well external stimulus and spike history dependence (e.g., refractoriness) of the spike trains. Using both simulations and in vitro fluorescence observations, we demonstrate temporal superresolution by inferring when within a frame each spike occurs. Furthermore, the model parameters may be estimated using expectation maximization with only a very limited amount of data (e.g., ∼5–10 s or 5–40 spikes), without the requirement of any simultaneous electrophysiology or imaging experiments.
机译:随着钙传感技术的最新发展促进了同时对神经元群体的动作电位进行成像,还必须开发互补的分析工具以最大程度地利用这种实验范式。尽管此处的观察结果是荧光电影,但隐藏的目标信号(峰值序列和/或随时间变化的细胞内钙浓度)被隐藏了。由于噪声,非线性,缓慢的成像速率和未知的生物物理参数,推断这些隐藏的信号通常是有问题的。我们通过基于尖峰,钙动力学和荧光的生物物理模型开发顺序蒙特卡洛方法(粒子过滤器)来克服这些困难。我们表明,即使在简单的情况下,通过获得更好的估计值并提供误差条,粒子滤波器也优于最佳线性滤波器(即维纳滤波器)。然后,我们放松一些模型假设,以纳入荧光信号的非线性饱和度以及尖峰序列的外部刺激和尖峰历史相关性(例如耐火度)。使用模拟和体外荧光观察,我们通过推断帧中何时出现每个尖峰来证明时间超分辨率。此外,可以仅使用非常有限的数据量(例如,约5-10 s或5-40尖峰),使用期望最大化来估计模型参数,而无需任何同时的电生理或影像学实验。

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