Applied Sciences (Sep 2022)

NMR Spectroscopy Combined with Machine Learning Approaches for Age Prediction in Healthy and Parkinson’s Disease Cohorts through Metabolomic Fingerprints

  • Giovanna Maria Dimitri,
  • Gaia Meoni,
  • Leonardo Tenori,
  • Claudio Luchinat,
  • Pietro Lió

DOI
https://doi.org/10.3390/app12188954
Journal volume & issue
Vol. 12, no. 18
p. 8954

Abstract

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Biological aging can be affected by several factors such as drug treatments and pathological conditions. Metabolomics can help in the estimation of biological age by analyzing the differences between predicted and actual chronological age in different subjects. In this paper, we compared three different and well-known machine learning approaches—SVM, ElasticNet, and PLS—to build a model based on the 1H-NMR metabolomic data of serum samples, able to predict chronological age in control individuals. Then, we tested these models in two pathological cohorts of de novo and advanced PD patients. The discrepancies observed between predicted and actual age in patients are interpreted as a sign of a (pathological) biological aging process.

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