From dynamics to links: a sparse reconstruction of the topology of a neural network
Giacomo Aletti, Davide Lonardoni, Giovanni Naldi, Thierry Nieus

TL;DR
This paper introduces a new method for reconstructing neural network topology from voltage recordings, leveraging the assumption of sparse connectivity to improve understanding of neural interactions.
Contribution
The paper presents a novel sparse reconstruction technique for neural network connectivity from voltage data, advancing beyond traditional spike train correlation methods.
Findings
Method outperforms cross-correlation in identifying connections
Effective in sparse network topologies
Provides more accurate connectivity maps
Abstract
One major challenge in neuroscience is the identification of interrelations between signals reflecting neural activity and how information processing occurs in the neural circuits. At the cellular and molecular level, mechanisms of signal transduction have been studied intensively and a better knowledge and understanding of some basic processes of information handling by neurons has been achieved. In contrast, little is known about the organization and function of complex neuronal networks. Experimental methods are now available to simultaneously monitor electrical activity of a large number of neurons in real time. Then, the qualitative and quantitative analysis of the spiking activity of individual neurons is a very valuable tool for the study of the dynamics and architecture of the neural networks. Such activity is not due to the sole intrinsic properties of the individual neural…
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