Login / Signup

Antimicrobial peptide similarity and classification through rough set theory using physicochemical boundaries.

Kyle BooneKyle CamardaPaulette SpencerCandan Tamerler
Published in: BMC bioinformatics (2018)
We developed rule sets that define physicochemical boundaries which allow us to directly classify the active sequences from inactive peptides. Existing classification methods are either sequence-order insensitive or length-dependent, whereas our method generates the rule sets that combine order-sensitive descriptors with length-independent descriptors. The method provides comparable or improved performance to currently available methods. Discovering the boundaries of physicochemical properties may lead to a new understanding of peptide similarity.
Keyphrases
  • deep learning
  • machine learning
  • amino acid