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Brain age predicts mortality
James H. Cole, Stuart J. Ritchie, Mark E. Bastin, Maria C. Valdés Hernández, Susana Muñoz Maniega, Natalie A. Royle, Janie Corley, Alison Pattie, Sarah E. Harris, Qian Zhang, Naomi R. Wray, Paul Redmond, Riccardo E. Marioni, John M. Starr, Simon R. Cox
Molecular Psychiatry · 2017 · ▲ 878 citations
Abstract
Age-associated disease and disability are placing a growing burden on society. However, ageing does not affect people uniformly. Hence, markers of the underlying biological ageing process are needed to help identify people at increased risk of age-associated physical and cognitive impairments and ultimately, death. Here, we present such a biomarker, 'brain-predicted age', derived using structural neuroimaging. Brain-predicted age was calculated using machine-learning analysis, trained on neuroimaging data from a large healthy reference sample (N=2001), then tested in the Lothian Birth Cohort 1936 (N=669), to determine relationships with age-associated functional measures and mortality. Having a brain-predicted age indicative of an older-appearing brain was associated with: weaker grip strength, poorer lung function, slower walking speed, lower fluid intelligence, higher allostatic load and increased mortality risk. Furthermore, while combining brain-predicted age with grey matter and cerebrospinal fluid volumes (themselves strong predictors) not did improve mortality risk prediction, the combination of brain-predicted age and DNA-methylation-predicted age did. This indicates that neuroimaging and epigenetics measures of ageing can provide complementary data regarding health outcomes. Our study introduces a clinically-relevant neuroimaging ageing biomarker and demonstrates that combining distinct measurements of biological ageing further helps to determine risk of age-related deterioration and death.
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- 10.1038/mp.2017.62
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- 2026-06-09 MST
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APA
Cole, J.H., Ritchie, S.J., Bastin, M.E., Hernández, M.C.V., Maniega, S.M., Royle, N.A., Corley, J., Pattie, A., Harris, S.E., Zhang, Q., Wray, N.R., Redmond, P., Marioni, R.E., Starr, J.M., Cox, S.R., Wardlaw, J.M., Sharp, D., & Deary, I.J. (2017). Brain age predicts mortality. <em>Molecular Psychiatry</em>. https://doi.org/10.1038/mp.2017.62
Vancouver
Cole JH, Ritchie SJ, Bastin ME, Hernández MCV, Maniega SM, Royle NA, et al. Brain age predicts mortality. Molecular Psychiatry. 2017. doi:10.1038/mp.2017.62.
BibTeX
@article{james2017Braina,
title = {Brain age predicts mortality},
author = {James H. Cole and Stuart J. Ritchie and Mark E. Bastin and Maria C. Valdés Hernández and Susana Muñoz Maniega and Natalie A. Royle and Janie Corley and Alison Pattie and Sarah E. Harris and Qian Zhang and Naomi R. Wray and Paul Redmond and Riccardo E. Marioni and John M. Starr and Simon R. Cox and Joanna M. Wardlaw and David Sharp and Ian J. Deary},
journal = {Molecular Psychiatry},
year = {2017},
doi = {10.1038/mp.2017.62},
}
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