Comparative analysis of machine learning algorithms on the microbial strain-specific AMP prediction.

Journal: Briefings in bioinformatics
Published Date:

Abstract

The evolution of drug-resistant pathogenic microbial species is a major global health concern. Naturally occurring, antimicrobial peptides (AMPs) are considered promising candidates to address antibiotic resistance problems. A variety of computational methods have been developed to accurately predict AMPs. The majority of such methods are not microbial strain specific (MSS): they can predict whether a given peptide is active against some microbe, but cannot accurately calculate whether such peptide would be active against a particular MS. Due to insufficient data on most MS, only a few MSS predictive models have been developed so far. To overcome this problem, we developed a novel approach that allows to improve MSS predictive models (MSSPM), based on properties, computed for AMP sequences and characteristics of genomes, computed for target MS. New models can perform predictions of AMPs for MS that do not have data on peptides tested on them. We tested various types of feature engineering as well as different machine learning (ML) algorithms to compare the predictive abilities of resulting models. Among the ML algorithms, Random Forest and AdaBoost performed best. By using genome characteristics as additional features, the performance for all models increased relative to models relying on AMP sequence-based properties only. Our novel MSS AMP predictor is freely accessible as part of DBAASP database resource at http://dbaasp.org/prediction/genome.

Authors

  • Boris Vishnepolsky
    Ivane Beritashvili Center of Experimental Biomedicine , Tbilisi 0160 , Georgia.
  • Maya Grigolava
    Ivane Beritashvili Center of Experimental Biomedicine , Tbilisi 0160 , Georgia.
  • Grigol Managadze
    Ivane Beritashvili Center of Experimental Biomedicine , Tbilisi 0160 , Georgia.
  • Andrei Gabrielian
    Office of Cyber Infrastructure and Computational Biology, National Institute of Allergy and Infectious Diseases , National Institutes of Health , Bethesda , Maryland 20892 , United States.
  • Alex Rosenthal
    Office of Cyber Infrastructure and Computational Biology, National Institute of Allergy and Infectious Diseases , National Institutes of Health , Bethesda , Maryland 20892 , United States.
  • Darrell E Hurt
    Office of Cyber Infrastructure and Computational Biology, National Institute of Allergy and Infectious Diseases , National Institutes of Health , Bethesda , Maryland 20892 , United States.
  • Michael Tartakovsky
    Office of Cyber Infrastructure and Computational Biology, National Institute of Allergy and Infectious Diseases , National Institutes of Health , Bethesda , Maryland 20892 , United States.
  • Malak Pirtskhalava
    Ivane Beritashvili Center of Experimental Biomedicine , Tbilisi 0160 , Georgia.