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High-confidence assessment of functional impact of human mitochondrial non-synonymous genome variations by APOGEE.

Stefano CastellanaCaterina FusilliGianluigi MazzoccoliTommaso BiaginiDaniele CapocefaloMassimo CarellaAngelo Luigi VescoviTommaso Mazza
Published in: PLoS computational biology (2017)
24,189 are all the possible non-synonymous amino acid changes potentially affecting the human mitochondrial DNA. Only a tiny subset was functionally evaluated with certainty so far, while the pathogenicity of the vast majority was only assessed in-silico by software predictors. Since these tools proved to be rather incongruent, we have designed and implemented APOGEE, a machine-learning algorithm that outperforms all existing prediction methods in estimating the harmfulness of mitochondrial non-synonymous genome variations. We provide a detailed description of the underlying algorithm, of the selected and manually curated training and test sets of variants, as well as of its classification ability.
Keyphrases
  • machine learning
  • mitochondrial dna
  • copy number
  • endothelial cells
  • deep learning
  • amino acid
  • oxidative stress
  • induced pluripotent stem cells
  • pluripotent stem cells
  • big data
  • cystic fibrosis