Oncological drug discovery: AI meets structure-based computational research

Drug Discov Today. 2022 Jun;27(6):1661-1670. doi: 10.1016/j.drudis.2022.03.005. Epub 2022 Mar 14.

Abstract

The integration of machine learning and structure-based methods has proven valuable in the past as a way to prioritize targets and compounds in early drug discovery. In oncological research, these methods can be highly beneficial in addressing the diversity of neoplastic diseases portrayed by the different hallmarks of cancer. Here, we review six use case scenarios for integrated computational methods, namely driver prediction, computational mutagenesis, (off)-target prediction, binding site prediction, virtual screening, and allosteric modulation analysis. We address the heterogeneity of integration approaches and individual methods, while acknowledging their current limitations and highlighting their potential to bring drugs for personalized oncological therapies to the market faster.

Keywords: Artificial intelligence; Cancer; Hallmarks of cancer; Machine learning; Structure-based drug design.

Publication types

  • Review
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Artificial Intelligence*
  • Drug Discovery* / methods
  • Machine Learning