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Efficient Shotgun Inference of Neural Connectivity from Highly Sub-sampled Activity Data

机译:从高度二次采样的活动数据中进行神经连接的有效散弹枪推断

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摘要

Inferring connectivity in neuronal networks remains a key challenge in statistical neuroscience. The “common input” problem presents a major roadblock: it is difficult to reliably distinguish causal connections between pairs of observed neurons versus correlations induced by common input from unobserved neurons. Available techniques allow us to simultaneously record, with sufficient temporal resolution, only a small fraction of the network. Consequently, naive connectivity estimators that neglect these common input effects are highly biased. This work proposes a “shotgun” experimental design, in which we observe multiple sub-networks briefly, in a serial manner. Thus, while the full network cannot be observed simultaneously at any given time, we may be able to observe much larger subsets of the network over the course of the entire experiment, thus ameliorating the common input problem. Using a generalized linear model for a spiking recurrent neural network, we develop a scalable approximate expected loglikelihood-based Bayesian method to perform network inference given this type of data, in which only a small fraction of the network is observed in each time bin. We demonstrate in simulation that the shotgun experimental design can eliminate the biases induced by common input effects. Networks with thousands of neurons, in which only a small fraction of the neurons is observed in each time bin, can be quickly and accurately estimated, achieving orders of magnitude speed up over previous approaches.
机译:推断神经元网络中的连接性仍然是统计神经科学中的关键挑战。 “公共输入”问题提出了一个主要的障碍:很难可靠地区分成对观察到的神经元之间的因果关系与未观察到的神经元的共同输入所引起的相关性。可用的技术使我们能够以足够的时间分辨率同时记录网络的一小部分。因此,忽略这些常见输入效应的幼稚连通性估计量存在很大偏差。这项工作提出了一种“ shot弹枪”实验设计,在该设计中,我们以串行方式简要观察了多个子网。因此,虽然无法在任何给定时间同时观察到整个网络,但我们可以在整个实验过程中观察到更大的网络子集,从而缓解了常见的输入问题。使用针对尖峰递归神经网络的广义线性模型,我们针对给定的这种类型的数据开发了可伸缩的基于对数似然的近似贝叶斯似然估计的贝叶斯方法来执行网络推断,其中在每个时间仓中仅观察到一小部分网络。我们在仿真中证明了shot弹枪的实验设计可以消除常见输入效应引起的偏差。具有数千个神经元的网络(其中每个时间仓中仅观察到一小部分神经元)可以快速而准确地估算出来,与以前的方法相比,可以实现数量级的加速。

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