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首页> 外文期刊>Nature Communications >Accurate spike estimation from noisy calcium signals for ultrafast three-dimensional imaging of large neuronal populations in vivo
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Accurate spike estimation from noisy calcium signals for ultrafast three-dimensional imaging of large neuronal populations in vivo

机译:从嘈杂的钙信号中准确估算出尖峰,可用于体内大型神经元群体的超快速三维成像

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摘要

Extracting neuronal spiking activity from large-scale two-photon recordings remains challenging, especially in mammals in vivo , where large noises often contaminate the signals. We propose a method, MLspike, which returns the most likely spike train underlying the measured calcium fluorescence. It relies on a physiological model including baseline fluctuations and distinct nonlinearities for synthetic and genetically encoded indicators. Model parameters can be either provided by the user or estimated from the data themselves. MLspike is computationally efficient thanks to its original discretization of probability representations; moreover, it can also return spike probabilities or samples. Benchmarked on extensive simulations and real data from seven different preparations, it outperformed state-of-the-art algorithms. Combined with the finding obtained from systematic data investigation (noise level, spiking rate and so on) that photonic noise is not necessarily the main limiting factor, our method allows spike extraction from large-scale recordings, as demonstrated on acousto-optical three-dimensional recordings of over 1,000 neurons in vivo .
机译:从大规模的两光子记录中提取神经突刺活性仍然具有挑战性,特别是在体内哺乳动物中,那里的大噪声经常污染信号。我们提出了一种方法MLspike,它可以返回最可能的钙离子荧光峰值序列。它依赖于生理模型,包括基线波动和合成和遗传编码指标的明显非线性。模型参数可以由用户提供,也可以根据数据本身进行估算。由于MLspike最初将概率表示离散化,因此计算效率高。此外,它还可以返回尖峰概率或样本。它以广泛的仿真和来自七个不同准备工作的真实数据为基准,其性能优于最先进的算法。结合从系统数据研究中获得的发现(噪声水平,尖峰率等),光子噪声不一定是主要限制因素,我们的方法允许从大规模记录中提取尖峰信号,如在声光三维图中所展示的在体内记录了1000多个神经元。

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