Multiscale Comparative Connectomics
The connectome, a map of the structural and/or functional connections in the brain, provides a complex representation of the neurobiological phenotypes on which it supervenes. This information-rich data modality has the potential to transform our understanding of the relationship between patterns in...
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Zusammenfassung: | The connectome, a map of the structural and/or functional connections in the
brain, provides a complex representation of the neurobiological phenotypes on
which it supervenes. This information-rich data modality has the potential to
transform our understanding of the relationship between patterns in brain
connectivity and neurological processes, disorders, and diseases. However,
existing computational techniques used to analyze connectomes are oftentimes
insufficient for interrogating multi-subject connectomics datasets: many
current methods are either solely designed to analyze single connectomes or
leverage heuristic graph statistics that are unable to capture the complete
topology of multiscale connections between brain regions. To enable more
rigorous connectomics analysis, we introduce a set of robust and interpretable
effect size measures motivated by recent theoretical advances in random graph
models. These measures facilitate simultaneous analysis of multiple connectomes
across different scales of network topology, enabling the robust and
reproducible discovery of hierarchical brain structures that vary in relation
to phenotypic profiles. In addition to explaining the theoretical foundations
and guarantees of our algorithms, we demonstrate their superiority over current
state-of-the-art connectomics methods through extensive simulation studies and
real-data experiments. Using a set of high-resolution connectomes obtained from
genetically distinct mouse strains (including the BTBR mouse -- a standard
model of autism -- and three behavioral wild-types), we illustrate how our
methods successfully uncover latent information in multi-subject connectomics
data and yield valuable insights into the connective correlates of neurological
phenotypes that other methods do not capture. The data and code necessary to
reproduce our analyses are available at https://github.com/neurodata/MCC. |
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DOI: | 10.48550/arxiv.2011.14990 |