NeuroImage (Dec 2021)

Modularity maximization as a flexible and generic framework for brain network exploratory analysis

  • Farnaz Zamani Esfahlani,
  • Youngheun Jo,
  • Maria Grazia Puxeddu,
  • Haily Merritt,
  • Jacob C. Tanner,
  • Sarah Greenwell,
  • Riya Patel,
  • Joshua Faskowitz,
  • Richard F. Betzel

Journal volume & issue
Vol. 244
p. 118607

Abstract

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The modular structure of brain networks supports specialized information processing, complex dynamics, and cost-efficient spatial embedding. Inter-individual variation in modular structure has been linked to differences in performance, disease, and development. There exist many data-driven methods for detecting and comparing modular structure, the most popular of which is modularity maximization. Although modularity maximization is a general framework that can be modified and reparamaterized to address domain-specific research questions, its application to neuroscientific datasets has, thus far, been narrow. Here, we highlight several strategies in which the “out-of-the-box” version of modularity maximization can be extended to address questions specific to neuroscience. First, we present approaches for detecting “space-independent” modules and for applying modularity maximization to signed matrices. Next, we show that the modularity maximization frame is well-suited for detecting task- and condition-specific modules. Finally, we highlight the role of multi-layer models in detecting and tracking modules across time, tasks, subjects, and modalities. In summary, modularity maximization is a flexible and general framework that can be adapted to detect modular structure resulting from a wide range of hypotheses. This article highlights multiple frontiers for future research and applications.