Practical Model Selection for Prospective Virtual Screening.

Journal: Journal of chemical information and modeling
Published Date:

Abstract

Virtual (computational) high-throughput screening provides a strategy for prioritizing compounds for experimental screens, but the choice of virtual screening algorithm depends on the data set and evaluation strategy. We consider a wide range of ligand-based machine learning and docking-based approaches for virtual screening on two protein-protein interactions, PriA-SSB and RMI-FANCM, and present a strategy for choosing which algorithm is best for prospective compound prioritization. Our workflow identifies a random forest as the best algorithm for these targets over more sophisticated neural network-based models. The top 250 predictions from our selected random forest recover 37 of the 54 active compounds from a library of 22,434 new molecules assayed on PriA-SSB. We show that virtual screening methods that perform well on public data sets and synthetic benchmarks, like multi-task neural networks, may not always translate to prospective screening performance on a specific assay of interest.

Authors

  • Shengchao Liu
    Department of Computer Sciences , University of Wisconsin-Madison , Madison , Wisconsin 53706 , United States.
  • Moayad Alnammi
    Department of Computer Sciences , University of Wisconsin-Madison , Madison , Wisconsin 53706 , United States.
  • Spencer S Ericksen
  • Andrew F Voter
    Department of Biomolecular Chemistry , University of Wisconsin School of Medicine and Public Health , Madison , Wisconsin 53706 , United States.
  • Gene E Ananiev
    Small Molecule Screening Facility , University of Wisconsin Carbone Cancer Center , Madison , Wisconsin 53792 , United States.
  • James L Keck
    Department of Biomolecular Chemistry , University of Wisconsin School of Medicine and Public Health , Madison , Wisconsin 53706 , United States.
  • F Michael Hoffmann
  • Scott A Wildman
  • Anthony Gitter
    Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison, Madison, WI, USA gitter@biostat.wisc.edu.