Machine learning for predicting lifespan-extending chemical compounds

  • Diogo G. Barardo
  • , Danielle Newby
  • , Daniel Thornton
  • , Taravat Ghafourian
  • , João Pedro de Magalhães
  • , Alex A. Freitas

Research output: Contribution to journalArticlepeer-review

Abstract

Increasing age is a risk factor for many diseases; therefore developing pharmacological interventions that slow down ageing and consequently postpone the onset of many age-related diseases is highly desirable. In this work we analyse data from the DrugAge database, which contains chemical compounds and their effect on the lifespan of model organisms. Predictive models were built using the machine learning method random forests to predict whether or not a chemical compound will increase Caenorhabditis elegans' lifespan, using as features Gene Ontology (GO) terms annotated for proteins targeted by the compounds and chemical descriptors calculated from each compound's chemical structure. The model with the best predictive accuracy used both biological and chemical features, achieving a prediction accuracy of 80%. The top 20 most important GO terms include those related to mitochondrial processes, to enzymatic and immunological processes, and terms related to metabolic and transport processes. We applied our best model to predict compounds which are more likely to increase C. elegans' lifespan in the DGIdb database, where the effect of the compounds on an organism's lifespan is unknown. The top hit compounds can be broadly divided into four groups: compounds affecting mitochondria, compounds for cancer treatment, anti-inflammatories, and compounds for gonadotropinreleasing hormone therapies.

Original languageEnglish
Pages (from-to)1721-1737
Number of pages17
JournalAging
Volume9
Issue number7
DOIs
StatePublished - Jul 18 2017
Externally publishedYes

Bibliographical note

Publisher Copyright:
© Barardo et al.

ASJC Scopus Subject Areas

  • Aging
  • Cell Biology

Keywords

  • Ageing
  • Anti-ageing drugs
  • Bioinformatics
  • C. elegans
  • Longevity
  • Machine learning
  • Pharmaceutical interventions
  • Databases, Pharmaceutical
  • Caenorhabditis elegans
  • Animals
  • Longevity/drug effects
  • Machine Learning

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