A Machine Learning Approach for Predicting HIV Reverse Transcriptase Mutation Susceptibility of Biologically Active Compounds.

Journal: Journal of chemical information and modeling
PMID:

Abstract

HIV resistance emerging against antiretroviral drugs represents a great threat to the continued prolongation of the lifespans of HIV-infected patients. Therefore, methods capable of predicting resistance susceptibility in the development of compounds are in great need. By targeting the major reverse transcription residues Y181, K103, and L100, we used the biological activities of compounds against these enzymes and the wild-type reverse transcriptase to create Naïve Bayes Networks. Through this machine learning approach, we could predict, with high accuracy, whether a compound would be susceptible to a loss of potency due to resistance. Also, we could perfectly predict retrospectively whether compounds would be susceptible to both a K103 mutant RT and a Y181 mutant RT. In the study presented here, our method outperformed a traditional molecular mechanics approach. This method should be of broad interest beyond drug discovery efforts, and serves to expand the utility of machine learning for the prediction of physical, chemical, or biological properties using the vast information available in the literature.

Authors

  • Thomas M Kaiser
    Department of Chemistry , Emory University , 201 Dowman Drive , Atlanta , Georgia 30322 , United States.
  • Pieter B Burger
    Department of Chemistry , Emory University , 201 Dowman Drive , Atlanta , Georgia 30322 , United States.
  • Christopher J Butch
    Department of Chemistry , Emory University , 201 Dowman Drive , Atlanta , Georgia 30322 , United States.
  • Stephen C Pelly
    Department of Chemistry , Emory University , 201 Dowman Drive , Atlanta , Georgia 30322 , United States.
  • Dennis C Liotta
    Department of Chemistry , Emory University , 201 Dowman Drive , Atlanta , Georgia 30322 , United States.