Artificial intelligence in virtual screening: Models versus experiments.

Journal: Drug discovery today
Published Date:

Abstract

A typical drug discovery project involves identifying active compounds with significant binding potential for selected disease-specific targets. Experimental high-throughput screening (HTS) is a traditional approach to drug discovery, but is expensive and time-consuming when dealing with huge chemical libraries with billions of compounds. The search space can be narrowed down with the use of reliable computational screening approaches. In this review, we focus on various machine-learning (ML) and deep-learning (DL)-based scoring functions developed for solving classification and ranking problems in drug discovery. We highlight studies in which ML and DL models were successfully deployed to identify lead compounds for which the experimental validations are available from bioassay studies.

Authors

  • N Arul Murugan
    Department of Computer Science, School of Electrical Engineering and Computer Science, KTH Royal Institute of Technology, Stockholm, S-10044, Sweden; Department of Computational Biology, Indraprastha Institute of Information Technology, New Delhi, 110020, India. Electronic address: arul.murugan@iiitd.ac.in.
  • Gnana Ruba Priya
    Department of Computational Biology, Indraprastha Institute of Information Technology, New Delhi, 110020, India.
  • G Narahari Sastry
    College of Pharmaceutical Sciences, Dayananda Sagar University, Bengaluru, 78, India.
  • Stefano Markidis
    Advanced Computation and Data Sciences Division, CSIR-North East Institute of Science and Technology, Jorhat, Assam, 785006, India.