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Prediction of chronological and biological age from laboratory data
Author(s) -
Luke Sagers,
Luke Melas-Kyriazi,
Chirag J. Patel,
Arjun K. Manrai
Publication year - 2020
Publication title -
aging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 90
ISSN - 1945-4589
DOI - 10.18632/aging.102900
Subject(s) - biomarker , cohort , medicine , population , demography , age groups , biological age , limiting , biomarker discovery , gerontology , biology , genetics , proteomics , gene , mechanical engineering , environmental health , sociology , engineering
Aging has pronounced effects on blood laboratory biomarkers used in the clinic. Prior studies have largely investigated one biomarker or population at a time, limiting a comprehensive view of biomarker variation and aging across different populations. Here we develop a supervised machine learning approach to study aging using 356 blood biomarkers measured in 67,563 individuals across diverse populations. Our model predicts age with a mean absolute error (MAE), or average magnitude of prediction errors, in held-out data of 4.76 years and an R 2 value of 0.92. Age prediction was highly accurate for the pediatric cohort (MAE = 0.87, R 2 = 0.94) but inaccurate for ages 65+ (MAE = 4.30, R 2 = 0.25). Variability was observed in which biomarkers carry predictive power across age groups, genders, and race/ethnicity groups, and novel candidate biomarkers of aging were identified for specific age ranges (e.g. Vitamin E, ages 18-44). We show that predictors for one age group may fail to generalize to other groups and investigate non-linearity in biomarkers near adulthood. As populations worldwide undergo major demographic changes, it is increasingly important to catalogue biomarker variation across age groups and discover new biomarkers to distinguish chronological and biological aging.

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