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High-dimensional Ageome Representations of Biological Aging across Functional Modules.

Publication ,  Journal Article
Ying, K; Tyshkovskiy, A; Chen, Q; Latorre-Crespo, E; Zhang, B; Liu, H; Matei-Dediu, B; Poganik, JR; Moqri, M; Kirschne, K; Lasky-Su, J; Gladyshev, VN
Published in: bioRxiv
September 21, 2024

The aging process involves numerous molecular changes that lead to functional decline and increased disease and mortality risk. While epigenetic aging clocks have shown accuracy in predicting biological age, they typically provide single estimates for the samples and lack mechanistic insights. In this study, we challenge the paradigm that aging can be sufficiently described with a single biological age estimate. We describe Ageome, a computational framework for measuring the epigenetic age of thousands of molecular pathways simultaneously in mice and humans. Ageome is based on the premise that an organism's overall biological age can be approximated by the collective ages of its functional modules, which may age at different rates and have different biological ages. We show that, unlike conventional clocks, Ageome provides a high-dimensional representation of biological aging across cellular functions, enabling comprehensive assessment of aging dynamics within an individual, in a population, and across species. Application of Ageome to longevity intervention models revealed distinct patterns of pathway-specific age deceleration. Notably, cell reprogramming, while rejuvenating cells, also accelerated aging of some functional modules. When applied to human cohorts, Ageome demonstrated heterogeneity in predictive power for mortality risk, and some modules showed better performance in predicting the onset of age-related diseases, especially cancer, compared to existing clocks. Together, the Ageome framework offers a comprehensive and interpretable approach for assessing aging, providing insights into mechanisms and targets for intervention.

Duke Scholars

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

September 21, 2024

Location

United States
 

Citation

APA
Chicago
ICMJE
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Ying, K., Tyshkovskiy, A., Chen, Q., Latorre-Crespo, E., Zhang, B., Liu, H., … Gladyshev, V. N. (2024). High-dimensional Ageome Representations of Biological Aging across Functional Modules. BioRxiv. https://doi.org/10.1101/2024.09.17.613599
Ying, Kejun, Alexander Tyshkovskiy, Qingwen Chen, Eric Latorre-Crespo, Bohan Zhang, Hanna Liu, Benyamin Matei-Dediu, et al. “High-dimensional Ageome Representations of Biological Aging across Functional Modules.BioRxiv, September 21, 2024. https://doi.org/10.1101/2024.09.17.613599.
Ying K, Tyshkovskiy A, Chen Q, Latorre-Crespo E, Zhang B, Liu H, et al. High-dimensional Ageome Representations of Biological Aging across Functional Modules. bioRxiv. 2024 Sep 21;
Ying, Kejun, et al. “High-dimensional Ageome Representations of Biological Aging across Functional Modules.BioRxiv, Sept. 2024. Pubmed, doi:10.1101/2024.09.17.613599.
Ying K, Tyshkovskiy A, Chen Q, Latorre-Crespo E, Zhang B, Liu H, Matei-Dediu B, Poganik JR, Moqri M, Kirschne K, Lasky-Su J, Gladyshev VN. High-dimensional Ageome Representations of Biological Aging across Functional Modules. bioRxiv. 2024 Sep 21;

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

September 21, 2024

Location

United States