Bryant Avila, Pedro Augusto, David Phillips, Tommaso Gili, Manuel Zimmer, Hernán A. Makse
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Symmetries and synchronization from whole-neural activity in {\it C. elegans} connectome: Integration of functional and structural networks
Understanding the dynamical behavior of complex systems from their underlying
network architectures is a long-standing question in complexity theory.
Therefore, many metrics have been devised to extract network features like
motifs, centrality, and modularity measures. It has previously been proposed
that network symmetries are of particular importance since they are expected to
underly the synchronization of a system's units, which is ubiquitously observed
in nervous system activity patterns. However, perfectly symmetrical structures
are difficult to assess in noisy measurements of biological systems, like
neuronal connectomes. Here, we devise a principled method to infer network
symmetries from combined connectome and neuronal activity data. Using nervous
system-wide population activity recordings of the \textit{C.elegans} backward
locomotor system, we infer structures in the connectome called fibration
symmetries, which can explain which group of neurons synchronize their
activity. Our analysis suggests functional building blocks in the animal's
motor periphery, providing new testable hypotheses on how descending
interneuron circuits communicate with the motor periphery to control behavior.
Our approach opens a new door to exploring the structure-function relations in
other complex systems, like the nervous systems of larger animals.