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Network alignment and similarity reveal atlas-based topological differences in structural connectomes
The interactions between different brain regions can be modeled as a graph, called connectome, whose nodes correspond to parcels from a predefined brain atlas. The edges of the graph encode the strength of the axonal connectivity between regions of the atlas that can be estimated via diffusion magne...
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Published in: | Network neuroscience (Cambridge, Mass.) Mass.), 2021, Vol.5 (3), p.711-733 |
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Main Authors: | , , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that cite this one |
Online Access: | Get full text |
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Summary: | The interactions between different brain regions can be modeled as a graph,
called connectome, whose nodes correspond to parcels from a predefined brain
atlas. The edges of the graph encode the strength of the axonal connectivity
between regions of the atlas that can be estimated via diffusion magnetic
resonance imaging (MRI) tractography. Herein, we aim to provide a novel
perspective on the problem of choosing a suitable atlas for structural
connectivity studies by assessing how robustly an atlas captures the network
topology across different subjects in a homogeneous cohort. We measure this
robustness by assessing the alignability of the connectomes, namely the
possibility to retrieve graph matchings that provide highly similar graphs. We
introduce two novel concepts. First, the graph Jaccard index (GJI), a graph
similarity measure based on the well-established Jaccard index between sets; the
GJI exhibits natural mathematical properties that are not satisfied by previous
approaches. Second, we devise WL-align, a new technique for aligning connectomes
obtained by adapting the Weisfeiler-Leman (WL) graph-isomorphism test. We
validated the GJI and WL-align on data from the Human Connectome Project
database, inferring a strategy for choosing a suitable parcellation for
structural connectivity studies. Code and data are publicly available.
An important part of our current understanding of the structure of the human
brain relies on the concept of brain network, which is obtained by looking at
how different brain regions are connected with each other. In this paper we
present a strategy for choosing a suitable parcellation of the brain for
structural connectivity studies by making use of the concepts of network
alignment and similarity. To do so, we design a novel similarity measure between
weighted networks called graph Jaccard index, and a new network alignment
technique called WL-align. By assessing the possibility to retrieve graph
matchings that provide highly similar graphs, we show that morphology- and
structure-based atlases define brain networks that are more topologically robust
across a wide range of resolutions. |
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ISSN: | 2472-1751 2472-1751 |
DOI: | 10.1162/netn_a_00199 |