eLife (Feb 2022)

Charting brain growth and aging at high spatial precision

  • Saige Rutherford,
  • Charlotte Fraza,
  • Richard Dinga,
  • Seyed Mostafa Kia,
  • Thomas Wolfers,
  • Mariam Zabihi,
  • Pierre Berthet,
  • Amanda Worker,
  • Serena Verdi,
  • Derek Andrews,
  • Laura KM Han,
  • Johanna MM Bayer,
  • Paola Dazzan,
  • Phillip McGuire,
  • Roel T Mocking,
  • Aart Schene,
  • Chandra Sripada,
  • Ivy F Tso,
  • Elizabeth R Duval,
  • Soo-Eun Chang,
  • Brenda WJH Penninx,
  • Mary M Heitzeg,
  • S Alexandra Burt,
  • Luke W Hyde,
  • David Amaral,
  • Christine Wu Nordahl,
  • Ole A Andreasssen,
  • Lars T Westlye,
  • Roland Zahn,
  • Henricus G Ruhe,
  • Christian Beckmann,
  • Andre F Marquand

DOI
https://doi.org/10.7554/eLife.72904
Journal volume & issue
Vol. 11

Abstract

Read online

Defining reference models for population variation, and the ability to study individual deviations is essential for understanding inter-individual variability and its relation to the onset and progression of medical conditions. In this work, we assembled a reference cohort of neuroimaging data from 82 sites (N=58,836; ages 2–100) and used normative modeling to characterize lifespan trajectories of cortical thickness and subcortical volume. Models are validated against a manually quality checked subset (N=24,354) and we provide an interface for transferring to new data sources. We showcase the clinical value by applying the models to a transdiagnostic psychiatric sample (N=1985), showing they can be used to quantify variability underlying multiple disorders whilst also refining case-control inferences. These models will be augmented with additional samples and imaging modalities as they become available. This provides a common reference platform to bind results from different studies and ultimately paves the way for personalized clinical decision-making.

Keywords