Biologically informed deep learning for explainable epigenetic clocks.

Journal: Scientific reports
PMID:

Abstract

Ageing is often characterised by progressive accumulation of damage, and it is one of the most important risk factors for chronic disease development. Epigenetic mechanisms including DNA methylation could functionally contribute to organismal aging, however the key functions and biological processes may govern ageing are still not understood. Although age predictors called epigenetic clocks can accurately estimate the biological age of an individual based on cellular DNA methylation, their models have limited ability to explain the prediction algorithm behind and underlying key biological processes controlling ageing. Here we present XAI-AGE, a biologically informed, explainable deep neural network model for accurate biological age prediction across multiple tissue types. We show that XAI-AGE outperforms the first-generation age predictors and achieves similar results to deep learning-based models, while opening up the possibility to infer biologically meaningful insights of the activity of pathways and other abstract biological processes directly from the model.

Authors

  • Aurel Prosz
    Danish Cancer Institute, Copenhagen, Denmark.
  • Orsolya Pipek
    Department of Physics of Complex Systems, ELTE Eötvös Loránd University, Budapest, Hungary.
  • Judit Börcsök
    Danish Cancer Institute, Copenhagen, Denmark.
  • Gergely Palla
    Department of Biological Physics, ELTE Eötvös Loránd University, Budapest, Hungary.
  • Zoltan Szallasi
    Danish Cancer Institute, Copenhagen, Denmark.
  • Sandor Spisak
    Institute of Enzymology, HUN-REN Research Centre for Natural Sciences, Budapest, Hungary. spisak.sandor@ttk.hu.
  • István Csabai
    Department of Physics of Complex Systems, Eötvös Loránd University, Budapest, Hungary.