4.7 Article

Predicting brain age from functional connectivity in symptomatic and preclinical Alzheimer disease

期刊

NEUROIMAGE
卷 256, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2022.119228

关键词

Brain aging; Alzheimer disease; Resting-state functional connectivity; fMRI; Machine learning

资金

  1. National Institutes of Health [P01-AG026276, P01-AG03991, P30 AG0 66444, 5-R01-AG052550-03, 5-R01-AG057680-03, 1-R01-AG067505-01, 1S10RR022984-01A1]
  2. Paula and Rodger O. Riney Fund
  3. Daniel J. Brennan MD Fund
  4. Dominantly Inherited Alzheimer's Network (DIAN) - National Institute on Aging (NIA) [U19AG032438]
  5. German Center for Neurode-generative Diseases (DZNE)
  6. Institute for Neurological Research Fleni
  7. Research and Development Grants for Dementia from Japan Agency for Medical Research and Development
  8. AMED
  9. Korea Health Technology R&D Project through the Korea Health Industry Development Institute (KHIDI)

向作者/读者索取更多资源

This study examines the differences in FC-predicted brain age among symptomatic Alzheimer's disease (AD), preclinical AD, and controls. The results show that FC-predicted brain age is significantly older in symptomatic AD and significantly younger in preclinical AD compared to controls. There is minimal correspondence between age-related networks and AD-related networks.
Brain-predicted age quantifies apparent brain age compared to normative neuroimaging trajectories. Advanced brain-predicted age has been well established in symptomatic Alzheimer disease (AD), but is underexplored in preclinical AD. Prior brain-predicted age studies have typically used structural MRI, but resting-state functional connectivity (FC) remains underexplored. Our model predicted age from FC in 391 cognitively normal, amyloid-negative controls (ages 18-89). We applied the trained model to 145 amyloid-negative, 151 preclinical AD, and 156 symptomatic AD participants to test group differences. The model accurately predicted age in the training set. FC-predicted brain age gaps (FC-BAG) were significantly older in symptomatic AD and significantly younger in preclinical AD compared to controls. There was minimal correspondence between networks predictive of age and AD. Elevated FC-BAG may reflect network disruption during symptomatic AD. Reduced FC-BAG in preclinical AD was opposite to the expected direction, and may reflect a biphasic response to preclinical AD pathology or may be driven by inconsistency between age-related vs. AD-related networks. Overall, FC-predicted brain age may be a sensitive AD biomarker.

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