Consistent Estimation of Complete Neuronal Connectivity in Large Neuronal Populations Using Sparse Shotgun Neuronal Activity Sampling

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Date

2016

Authors

Mishchenko, Yuriy

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Volume Title

Publisher

Springer

Open Access Color

HYBRID

Green Open Access

Yes

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No
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Abstract

We investigate the properties of recently proposed shotgun sampling approach for the common inputs problem in the functional estimation of neuronal connectivity. We study the asymptotic correctness, the speed of convergence, and the data size requirements of such an approach. We show that the shotgun approach can be expected to allow the inference of complete connectivity matrix in large neuronal populations under some rather general conditions. However, we find that the posterior error of the shotgun connectivity estimator grows quickly with the size of unobserved neuronal populations, the square of average connectivity strength, and the square of observation sparseness. This implies that the shotgun connectivity estimation will require significantly larger amounts of neuronal activity data whenever the number of neurons in observed neuronal populations remains small. We present a numerical approach for solving the shotgun estimation problem in general settings and use it to demonstrate the shotgun connectivity inference in the examples of simulated synfire and weakly coupled cortical neuronal networks.

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Keywords

Functional connectivity, Neuronal circuit reconstruction, Calcium imaging, Neuronal population activity, Central-Limit-Theorem, Dependent Random-Variables, Maximum-Likelihood, Spike Trains, In-Vivo, Microscopy, Framework, Inference, Network, Input, Neurons, Models, Neurological, Nerve Net, neuronal circuit reconstruction, calcium imaging, Neural biology, neuronal population activity, Computational methods in Markov chains, functional connectivity, Applications of statistics to biology and medical sciences; meta analysis

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Citation

WoS Q

Q3

Scopus Q

Q4
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N/A

Source

Journal of Computatıonal Neuroscıence

Volume

41

Issue

2

Start Page

157

End Page

184
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