4.7 Article

Predicting brain age during typical and atypical development based on structural and functional neuroimaging

Journal

HUMAN BRAIN MAPPING
Volume 42, Issue 18, Pages 5943-5955

Publisher

WILEY
DOI: 10.1002/hbm.25660

Keywords

autism spectrum disorder; brain age prediction; developmental heterogeneity; multimodal magnetic resonance imaging; predictor weights analysis

Funding

  1. National Natural Science Foundation of China [81771451]
  2. Beijing Normal University

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Exploring typical and atypical brain developmental trajectories is crucial for understanding the mechanisms behind mental disorders deviating from normal development. A sex-specific brain age prediction model was established using various neuroimaging techniques, showing good generalization across different datasets. Autistic patients as a whole exhibited delayed development, though those with premature development showed greater severity, indicating the importance of considering individual heterogeneity in analyzing atypical brain trajectories.
Exploring typical and atypical brain developmental trajectories is very important for understanding the normal pace of brain development and the mechanisms by which mental disorders deviate from normal development. A precise and sex-specific brain age prediction model is desirable for investigating the systematic deviation and individual heterogeneity of disorders associated with atypical brain development, such as autism spectrum disorders. In this study, we used partial least squares regression and the stacking algorithm to establish a sex-specific brain age prediction model based on T1-weighted structural magnetic resonance imaging and resting-state functional magnetic resonance imaging. The model showed good generalization and high robustness on four independent datasets with different ethnic information and age ranges. A predictor weights analysis showed the differences and similarities in changes in structure and function during brain development. At the group level, the brain age gap estimation for autistic patients was significantly smaller than that for healthy controls in both the ABIDE dataset and the healthy brain network dataset, which suggested that autistic patients as a whole exhibited the characteristics of delayed development. However, within the ABIDE dataset, the premature development group had significantly higher Autism Diagnostic Observation Schedule (ADOS) scores than those of the delayed development group, implying that individuals with premature development had greater severity. Using these findings, we built an accurate typical brain development trajectory and developed a method of atypical trajectory analysis that considers sex differences and individual heterogeneity. This strategy may provide valuable clues for understanding the relationship between brain development and mental disorders.

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