Predicting physiological aging rates from a range of quantitative traits using machine learning.

Journal: Aging
PMID:

Abstract

It is widely thought that individuals age at different rates. A method that measures "physiological age" or physiological aging rate independent of chronological age could therefore help elucidate mechanisms of aging and inform an individual's risk of morbidity and mortality. Here we present machine learning frameworks for inferring individual physiological age from a broad range of biochemical and physiological traits including blood phenotypes (e.g., high-density lipoprotein), cardiovascular functions (e.g., pulse wave velocity) and psychological traits (e.g., neuroticism) as main groups in two population cohorts SardiNIA (~6,100 participants) and InCHIANTI (~1,400 participants). The inferred physiological age was highly correlated with chronological age (R2 > 0.8). We further defined an individual's physiological aging rate (PAR) as the ratio of the predicted physiological age to the chronological age. Notably, PAR was a significant predictor of survival, indicating an effect of aging rate on mortality. Our trait-based PAR was correlated with DNA methylation-based epigenetic aging score (r = 0.6), suggesting that both scores capture a common aging process. PAR was also substantially heritable (h2~0.3), and a subsequent genome-wide association study of PAR identified significant associations with two genetic loci, one of which is implicated in telomerase activity. Our findings support PAR as a proxy for an underlying whole-body aging mechanism. PAR may thus be useful to evaluate the efficacy of treatments that target aging-related deficits and controllable epidemiological factors.

Authors

  • Eric D Sun
    Longitudinal Studies Section, Translational Gerontology Branch, National Institute on Aging, Baltimore, MD 21224, USA.
  • Yong Qian
  • Richard Oppong
    Longitudinal Studies Section, Translational Gerontology Branch, National Institute on Aging, Baltimore, MD 21224, USA.
  • Thomas J Butler
    Longitudinal Studies Section, Translational Gerontology Branch, National Institute on Aging, Baltimore, MD 21224, USA.
  • Jesse Zhao
    Longitudinal Studies Section, Translational Gerontology Branch, National Institute on Aging, Baltimore, MD 21224, USA.
  • Brian H Chen
    Department of Epidemiology, The Herbert Wertheim School of Public Health and Human Longevity Science, UC San Diego, La Jolla, CA 92093, USA.
  • Toshiko Tanaka
    Longitudinal Studies Section, Translational Gerontology Branch, National Institute on Aging, Baltimore, MD 21224, USA.
  • Jian Kang
    Institute of Respiratory Disease, The First Hospital of China Medical University, Shenyang, China.
  • Carlo Sidore
    Istituto di Ricerca Genetica e Biomedica, Consiglio Nazionale delle Ricerche, Monserrato, Italy.
  • Francesco Cucca
    Istituto di Ricerca Genetica e Biomedica, Consiglio Nazionale delle Ricerche, Monserrato, Italy.
  • Stefania Bandinelli
    Geriatric Unit, Azienda Sanitaria di Firenze, Florence, Italy.
  • Gonçalo R Abecasis
    Department of Biostatistics, University of Michigan, Ann Arbor, MI 48109, USA.
  • Myriam Gorospe
    Laboratory of Genetics and Genomics, National Institute on Aging, Baltimore, MD 21224, USA.
  • Luigi Ferrucci
    Translational Gerontology Branch, Longitudinal Studies Section, National Institute on Aging, National Institutes of Health, MedStar Harbor Hospital, 3001 S. Hanover Street, Baltimore, MD, USA.
  • David Schlessinger
    Laboratory of Genetics and Genomics, National Institute on Aging, Baltimore, MD 21224, USA.
  • Ilya Goldberg
    Intramural Research Program, National Institutes on Aging, Baltimore, MD 21224-6825.
  • Jun Ding
    Hubei Shendi Agricultural Science and Trade Co., Ltd. Shendi Industrial Park, Jingshan Economic Development Zone, 431899 Jingmen, PR China; Jingshan Animal Disease Prevention and Control Center, 431899 Jingmen, PR China.