Charting Brain Growth and Aging at High Spatial Precision

Abstract
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 use 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=1,985), 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.
Competing Interest Statement
CFB is director and shareholder of SBGNeuro Ltd. OAA is a consultant for HealthLytix and received speakers honorarium from Lundbeck and Sunovion. HGR received speakers honorarium from Lundbeck and Janssen. The other authors report no conflicts of interest.
Footnotes
author affiliations updated.
https://github.com/predictive-clinical-neuroscience/braincharts
Subject Area
- Biochemistry (13697)
- Bioengineering (10429)
- Bioinformatics (33140)
- Biophysics (17097)
- Cancer Biology (14166)
- Cell Biology (20097)
- Clinical Trials (138)
- Developmental Biology (10860)
- Ecology (16008)
- Epidemiology (2067)
- Evolutionary Biology (20334)
- Genetics (13392)
- Genomics (18628)
- Immunology (13740)
- Microbiology (32149)
- Molecular Biology (13380)
- Neuroscience (70019)
- Paleontology (526)
- Pathology (2188)
- Pharmacology and Toxicology (3741)
- Physiology (5860)
- Plant Biology (12020)
- Synthetic Biology (3365)
- Systems Biology (8163)
- Zoology (1841)




