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Biological age estimation using circulating blood biomarkers. | LitMetric

Biological age estimation using circulating blood biomarkers.

Commun Biol

Humanity Inc, Humanity, 177 Huntington Ave, Ste 1700, Humanity Inc - 91556, Boston, MA, 02115, USA.

Published: October 2023

AI Article Synopsis

  • Biological age is a better indicator of health than chronological age and can be estimated using blood-based biomarkers; this study focuses on improving this estimation with machine learning.
  • Using data from over 306,000 participants, researchers developed an Elastic-Net Cox model that predicts mortality risk, achieving a higher predictive accuracy than a popular existing model (PhenoAge).
  • The study concludes that a practical method for estimating biological age, which can vary significantly from chronological age, is feasible and can be made accessible to the general public through common clinical assays.

Article Abstract

Biological age captures physiological deterioration better than chronological age and is amenable to interventions. Blood-based biomarkers have been identified as suitable candidates for biological age estimation. This study aims to improve biological age estimation using machine learning models and a feature-set of 60 circulating biomarkers available from the UK Biobank (n = 306,116). We implement an Elastic-Net derived Cox model with 25 selected biomarkers to predict mortality risk (C-Index = 0.778; 95% CI [0.767-0.788]), which outperforms the well-known blood-biomarker based PhenoAge model (C-Index = 0.750; 95% CI [0.739-0.761]), providing a C-Index lift of 0.028 representing an 11% relative increase in predictive value. Importantly, we then show that using common clinical assay panels, with few biomarkers, alongside imputation and the model derived on the full set of biomarkers, does not substantially degrade predictive accuracy from the theoretical maximum achievable for the available biomarkers. Biological age is estimated as the equivalent age within the same-sex population which corresponds to an individual's mortality risk. Values ranged between 20-years younger and 20-years older than individuals' chronological age, exposing the magnitude of ageing signals contained in blood markers. Thus, we demonstrate a practical and cost-efficient method of estimating an improved measure of Biological Age, available to the general population.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10603148PMC
http://dx.doi.org/10.1038/s42003-023-05456-zDOI Listing

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