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Biological brain age prediction using machine learning on structural neuroimaging data: Multi-cohort validation against biomarkers of Alzheimer's disease and neurodegeneration stratified by sex.


ABSTRACT: Brain-age can be inferred from structural neuroimaging and compared to chronological age (brain-age delta) as a marker of biological brain aging. Accelerated aging has been found in neurodegenerative disorders like Alzheimer's disease (AD), but its validation against markers of neurodegeneration and AD is lacking. Here, imaging-derived measures from the UK Biobank dataset (N=22,661) were used to predict brain-age in 2,314 cognitively unimpaired (CU) individuals at higher risk of AD and mild cognitive impaired (MCI) patients from four independent cohorts with available biomarker data: ALFA+, ADNI, EPAD, and OASIS. Brain-age delta was associated with abnormal amyloid-β, more advanced stages (AT) of AD pathology and APOE-ε4 status. Brain-age delta was positively associated with plasma neurofilament light, a marker of neurodegeneration, and sex differences in the brain effects of this marker were found. These results validate brain-age delta as a non-invasive marker of biological brain aging in non-demented individuals with abnormal levels of biomarkers of AD and axonal injury.

SUBMITTER: Cumplido-Mayoral I 

PROVIDER: S-EPMC10181824 | biostudies-literature | 2023 Apr

REPOSITORIES: biostudies-literature

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Biological brain age prediction using machine learning on structural neuroimaging data: Multi-cohort validation against biomarkers of Alzheimer's disease and neurodegeneration stratified by sex.

Cumplido-Mayoral Irene I   García-Prat Marina M   Operto Grégory G   Falcon Carles C   Shekari Mahnaz M   Cacciaglia Raffaele R   Milà-Alomà Marta M   Lorenzini Luigi L   Ingala Silvia S   Meije Wink Alle A   Mutsaerts Henk J M M HJMM   Minguillón Carolina C   Fauria Karine K   Molinuevo José Luis JL   Haller Sven S   Chetelat Gael G   Waldman Adam A   Schwarz Adam J AJ   Barkhof Frederik F   Suridjan Ivonne I   Kollmorgen Gwendlyn G   Bayfield Anna A   Zetterberg Henrik H   Blennow Kaj K   Suárez-Calvet Marc M   Vilaplana Verónica V   Gispert Juan Domingo JD  

eLife 20230417


Brain-age can be inferred from structural neuroimaging and compared to chronological age (brain-age delta) as a marker of biological brain aging. Accelerated aging has been found in neurodegenerative disorders like Alzheimer's disease (AD), but its validation against markers of neurodegeneration and AD is lacking. Here, imaging-derived measures from the UK Biobank dataset (N=22,661) were used to predict brain-age in 2,314 cognitively unimpaired (CU) individuals at higher risk of AD and mild cogn  ...[more]

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