Cross-sectionally Calculated Metabolic Aging Does Not Relate to Longitudinal Metabolic Changes—Support for Stratified Aging Models

Author:

Ala-Korpela Mika123ORCID,Lehtimäki Terho4,Kähönen Mika5ORCID,Viikari Jorma67,Perola Markus89ORCID,Salomaa Veikko8ORCID,Kettunen Johannes128,Raitakari Olli T101112,Mäkinen Ville-Petteri11314ORCID

Affiliation:

1. Systems Epidemiology, Faculty of Medicine, Center for Life Course Health Research, University of Oulu , Oulu 90014 , Finland

2. Biocenter Oulu, University of Oulu , Oulu 90014 , Finland

3. Faculty of Health Sciences, NMR Metabolomics Laboratory, School of Pharmacy, University of Eastern Finland , Kuopio 90014 , Finland

4. Department of Clinical Chemistry, Faculty of Medicine and Health Technology, Fimlab Laboratories, and Finnish Cardiovascular Research Center Tampere, Tampere University , Tampere 33100 , Finland

5. Department of Clinical Physiology, Faculty of Medicine and Health Technology, Tampere University Hospital, and Finnish Cardiovascular Research Center Tampere, Tampere University , Tampere 33100 , Finland

6. Department of Medicine, University of Turku , Turku 20520 , Finland

7. Division of Medicine, Turku University Hospital , Turku 20520 , Finland

8. Department of Public Health and Welfare, Finnish Institute for Health and Welfare , Helsinki 00271 , Finland

9. Estonian Genome Center, University of Tartu , Tartu 51010 , Estonia

10. Research Centre of Applied and Preventive Cardiovascular Medicine, University of Turku , Turku 20520 , Finland

11. Department of Clinical Physiology and Nuclear Medicine, Turku University Hospital , Turku 20520 , Finland

12. Centre for Population Health Research, University of Turku and Turku University Hospital , Turku 20520 , Finland

13. Computational and Systems Biology Program, Precision Medicine Theme, South Australian Health and Medical Research Institute , Adelaide, SA 5000 , Australia

14. Australian Centre for Precision Health, University of South Australia , Adelaide, SA 5000 , Australia

Abstract

Abstract Context Aging varies between individuals, with profound consequences for chronic diseases and longevity. One hypothesis to explain the diversity is a genetically regulated molecular clock that runs differently between individuals. Large human studies with long enough follow-up to test the hypothesis are rare due to practical challenges, but statistical models of aging are built as proxies for the molecular clock by comparing young and old individuals cross-sectionally. These models remain untested against longitudinal data. Objective We applied novel methodology to test if cross-sectional modeling can distinguish slow vs accelerated aging in a human population. Methods We trained a machine learning model to predict age from 153 clinical and cardiometabolic traits. The model was tested against longitudinal data from another cohort. The training data came from cross-sectional surveys of the Finnish population (n = 9708; ages 25-74 years). The validation data included 3 time points across 10 years in the Young Finns Study (YFS; n = 1009; ages 24-49 years). Predicted metabolic age in 2007 was compared against observed aging rate from the 2001 visit to the 2011 visit in the YFS dataset and correlation between predicted vs observed metabolic aging was determined. Results The cross-sectional proxy failed to predict longitudinal observations (R2 = 0.018%, P = 0.67). Conclusion The finding is unexpected under the clock hypothesis that would produce a positive correlation between predicted and observed aging. Our results are better explained by a stratified model where aging rates per se are similar in adulthood but differences in starting points explain diverging metabolic fates.

Funder

Academy of Finland

Novo Nordisk Foundation

Sigrid Jusélius Foundation

Publisher

The Endocrine Society

Subject

Biochemistry (medical),Clinical Biochemistry,Endocrinology,Biochemistry,Endocrinology, Diabetes and Metabolism

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