空间神经调谐函数数据的鲁棒和可扩展贝叶斯分析

Kamiar Rahnama Rad, Timothy A. Machado, L. Paninski
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引用次数: 4

摘要

神经科学中一个常见的分析问题是根据感觉输入或行为输出来解释神经活动。这通常是通过将测量到的神经活动与已知的刺激或行为变量进行回归来实现的,从而为每个神经元产生“调谐函数”。不幸的是,由于这种方法单独处理神经元,它不能利用空间相邻神经元的同时测量,这些神经元通常具有相似的调谐特性。另一方面,如果相邻神经元之间的调谐存在明显的不连续,则相邻神经元之间的信息共享可能会严重降低跨空间调谐函数的估计。在本文中,我们开发了一种计算效率高的块Gibbs采样器,该采样器有效地在神经元之间汇集信息以去噪调谐函数估计,同时保留可能存在于跨空间调谐组织中的尖锐不连续。该方法是完全贝叶斯的,每次迭代的计算成本随总参数维数呈次二次增长。我们通过将此方法应用于真实和合成数据集来证明其鲁棒性和可扩展性。特别是,对脊髓数据的应用表明,所提出的方法可以显着减少准确估计调谐函数所需的实验时间。
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Robust and scalable Bayesian analysis of spatial neural tuning function data
A common analytical problem in neuroscience is the interpretation of neural activity with respect to sensory input or behavioral output. This is typically achieved by regressing measured neural activity against known stimuli or behavioral variables to produce a "tuning function" for each neuron. Unfortunately, because this approach handles neurons individually, it cannot take advantage of simultaneous measurements from spatially adjacent neurons that often have similar tuning properties. On the other hand, sharing information between adjacent neurons can errantly degrade estimates of tuning functions across space if there are sharp discontinuities in tuning between nearby neurons. In this paper, we develop a computationally efficient block Gibbs sampler that effectively pools information between neurons to de-noise tuning function estimates while simultaneously preserving sharp discontinuities that might exist in the organization of tuning across space. This method is fully Bayesian and its computational cost per iteration scales sub-quadratically with total parameter dimensionality. We demonstrate the robustness and scalability of this approach by applying it to both real and synthetic datasets. In particular, an application to data from the spinal cord illustrates that the proposed methods can dramatically decrease the experimental time required to accurately estimate tuning functions.
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