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Brain clocks capture diversity and disparities in aging and dementia across geographically diverse populations.

Authors :
Moguilner S
Baez S
Hernandez H
Migeot J
Legaz A
Gonzalez-Gomez R
Farina FR
Prado P
Cuadros J
Tagliazucchi E
Altschuler F
Maito MA
Godoy ME
Cruzat J
Valdes-Sosa PA
Lopera F
Ochoa-Gómez JF
Hernandez AG
Bonilla-Santos J
Gonzalez-Montealegre RA
Anghinah R
d'Almeida Manfrinati LE
Fittipaldi S
Medel V
Olivares D
Yener GG
Escudero J
Babiloni C
Whelan R
Güntekin B
Yırıkoğulları H
Santamaria-Garcia H
Lucas AF
Huepe D
Di Caterina G
Soto-Añari M
Birba A
Sainz-Ballesteros A
Coronel-Oliveros C
Yigezu A
Herrera E
Abasolo D
Kilborn K
Rubido N
Clark RA
Herzog R
Yerlikaya D
Hu K
Parra MA
Reyes P
García AM
Matallana DL
Avila-Funes JA
Slachevsky A
Behrens MI
Custodio N
Cardona JF
Barttfeld P
Brusco IL
Bruno MA
Sosa Ortiz AL
Pina-Escudero SD
Takada LT
Resende E
Possin KL
de Oliveira MO
Lopez-Valdes A
Lawlor B
Robertson IH
Kosik KS
Duran-Aniotz C
Valcour V
Yokoyama JS
Miller B
Ibanez A
Source :
Nature medicine [Nat Med] 2024 Dec; Vol. 30 (12), pp. 3646-3657. Date of Electronic Publication: 2024 Aug 26.
Publication Year :
2024

Abstract

Brain clocks, which quantify discrepancies between brain age and chronological age, hold promise for understanding brain health and disease. However, the impact of diversity (including geographical, socioeconomic, sociodemographic, sex and neurodegeneration) on the brain-age gap is unknown. We analyzed datasets from 5,306 participants across 15 countries (7 Latin American and Caribbean countries (LAC) and 8 non-LAC countries). Based on higher-order interactions, we developed a brain-age gap deep learning architecture for functional magnetic resonance imaging (2,953) and electroencephalography (2,353). The datasets comprised healthy controls and individuals with mild cognitive impairment, Alzheimer disease and behavioral variant frontotemporal dementia. LAC models evidenced older brain ages (functional magnetic resonance imaging: mean directional error = 5.60, root mean square error (r.m.s.e.) = 11.91; electroencephalography: mean directional error = 5.34, r.m.s.e. = 9.82) associated with frontoposterior networks compared with non-LAC models. Structural socioeconomic inequality, pollution and health disparities were influential predictors of increased brain-age gaps, especially in LAC (R² = 0.37, F² = 0.59, r.m.s.e. = 6.9). An ascending brain-age gap from healthy controls to mild cognitive impairment to Alzheimer disease was found. In LAC, we observed larger brain-age gaps in females in control and Alzheimer disease groups compared with the respective males. The results were not explained by variations in signal quality, demographics or acquisition methods. These findings provide a quantitative framework capturing the diversity of accelerated brain aging.<br />Competing Interests: Competing interests: The authors declare no competing interests.<br /> (© 2024. The Author(s).)

Details

Language :
English
ISSN :
1546-170X
Volume :
30
Issue :
12
Database :
MEDLINE
Journal :
Nature medicine
Publication Type :
Academic Journal
Accession number :
39187698
Full Text :
https://doi.org/10.1038/s41591-024-03209-x