Published January 5, 2023 | Version v1
Journal article Open

Third-order motifs are sufficient to fully and uniquely characterize spatiotemporal neural network activity

  • 1. University of Chicago

Description

Neuroscientific analyses balance between capturing the brain's complexity and expressing that complexity in meaningful and understandable ways. Here we present a novel approach that fully characterizes neural network activity and does so by uniquely transforming raw signals into easily interpretable and biologically relevant metrics of network behavior. We first prove that third-order (triple) correlation describes network activity in its entirety using the triple correlation uniqueness theorem. Triple correlation quantifies the relationships among three events separated by spatial and temporal lags, which are triplet motifs. Classifying these motifs by their event sequencing leads to fourteen qualitatively distinct motif classes that embody well-studied network behaviors including synchrony, feedback, feedforward, convergence, and divergence. Within these motif classes, the summed triple correlations provide novel metrics of network behavior, as well as being inclusive of commonly used analyses. We demonstrate the power of this approach on a range of networks with increasingly obscured signals, from ideal noiseless simulations to noisy experimental data. This approach can be easily applied to any recording modality, so existing neural datasets are ripe for reanalysis. Triple correlation is an accessible signal processing tool with a solid theoretical foundation capable of revealing previously elusive information within recordings of neural networks.

Data availability

All data used is publicly available from https://doi.org/10.1038/s41597-022-01242-4.

This Github repository, https://github.com/grahamas/RasterUniqueCharacterizationCode, contains the Matlab scripts used to generate the figures in this paper and the functions used in those scripts which may in turn be used to apply our analysis to any dataset. We also provide that functionality via Julia packages used to double-check our results, linked in the same repository.

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Additional details

Identifiers

DOI
10.1038/s41598-022-27188-6
Other
oai:uchicago.tind.io:5382

Funding

National Institutes of Health
R01 NS-084142
University of Chicago
Medical Scientist Training Program Training Grant
University of Chicago
Pritzker Endowment for the Neurosciences

UChicago Information

Division(s)
Biological Sciences Division
Department(s)
Computational Neuroscience, Medicine, Neurobiology