Finding Needles in a Haystack: Determining Key Molecular Descriptors Associated with the Blood-brain Barrier Entry of Chemical Compounds Using Machine Learning.

Journal: Molecular informatics
Published Date:

Abstract

In this paper we used two sets of calculated molecular descriptors to predict blood-brain barrier (BBB) entry of a collection of 415 chemicals. The set of 579 descriptors were calculated by Schrodinger and TopoCluj software. Polly and Triplet software were used to calculate the second set of 198 descriptors. Following this, modelling and a two-deep, repeated external validation method was used for QSAR formulation. Results show that both sets of descriptors individually and their combination give models of reasonable prediction accuracy. We also uncover the effectiveness of a variable selection approach, by showing that for one of our descriptor sets, the top 5 % predictors in terms of random forest variable importance are able to provide a better performing model than the model with all predictors. The top influential descriptors indicate important aspects of molecular structural features that govern BBB entry of chemicals.

Authors

  • Subhabrata Majumdar
    University of Florida Informatics Institute, 432 Newell Dr, CISE Bldg E251, Gainesville, FL 32611, USA.
  • Subhash C Basak
    Department of Chemistry and Biochemistry, University of Minnesota, 246 Chemistry Building, 1039 University Drive, Duluth, MN 55812, USA.
  • Claudiu N Lungu
    Department of Chemistry, Babes-Bolyai University, Strada Arany János 11, Cluj-Napoca, 400028, Romania.
  • Mircea V Diudea
    Department of Chemistry, Babes-Bolyai University, Strada Arany János 11, Cluj-Napoca, 400028, Romania.
  • Gregory D Grunwald
    Natural Resources Research Institute, University of Minnesota, 5013 Miller Trunk Highway, Duluth, MN 55811, USA.