Frontiers in Neuroscience (Sep 2022)

Incorporation of spatial- and connectivity-based cortical brain region information in regularized regression: Application to Human Connectome Project data

  • Aleksandra Steiner,
  • Kausar Abbas,
  • Kausar Abbas,
  • Damian Brzyski,
  • Kewin Pączek,
  • Timothy W. Randolph,
  • Joaquín Goñi,
  • Joaquín Goñi,
  • Joaquín Goñi,
  • Jaroslaw Harezlak

DOI
https://doi.org/10.3389/fnins.2022.957282
Journal volume & issue
Vol. 16

Abstract

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Studying the association of the brain's structure and function with neurocognitive outcomes requires a comprehensive analysis that combines different sources of information from a number of brain-imaging modalities. Recently developed regularization methods provide a novel approach using information about brain structure to improve the estimation of coefficients in the linear regression models. Our proposed method, which is a special case of the Tikhonov regularization, incorporates structural connectivity derived with Diffusion Weighted Imaging and cortical distance information in the penalty term. Corresponding to previously developed methods that inform the estimation of the regression coefficients, we incorporate additional information via a Laplacian matrix based on the proximity measure on the cortical surface. Our contribution consists of constructing a principled formulation of the penalty term and testing the performance of the proposed approach via extensive simulation studies and a brain-imaging application. The penalty term is constructed as a weighted combination of structural connectivity and proximity between cortical areas. Simulation studies mimic the real brain-imaging settings. We apply our approach to the study of data collected in the Human Connectome Project, where the cortical properties of the left hemisphere are found to be associated with vocabulary comprehension.

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