In silico prediction of chemical mechanism of action via an improved network-based inference method

  • Zengrui Wu
  • , Weiqiang Lu
  • , Dang Wu
  • , Anqi Luo
  • , Hanping Bian
  • , Jie Li
  • , Weihua Li
  • , Guixia Liu
  • , Jin Huang*
  • , Feixiong Cheng
  • , Yun Tang
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

71 Scopus citations

Abstract

Background and Purpose: Deciphering chemical mechanism of action (MoA) enables the development of novel therapeutics (e.g. drug repositioning) and evaluation of drug side effects. Development of novel computational methods for chemical MoA assessment under a systems pharmacology framework would accelerate drug discovery and development with greater efficiency and low cost. Experimental Approach: In this study, we proposed an improved network-based inference method, balanced substructure-drug-target network-based inference (bSDTNBI), to predict MoA for old drugs, clinically failed drugs and new chemical entities. Specifically, three parameters were introduced into network-based resource diffusion processes to adjust the initial resource allocation of different node types, the weighted values of different edge types and the influence of hub nodes. The performance of the method was systematically validated by benchmark datasets and bioassays. Key Results: High performance was yielded for bSDTNBI in both 10-fold and leave-one-out cross validations. A global drug-target network was built to explore MoA of anticancer drugs and repurpose old drugs for 15 cancer types/subtypes. In a case study, 27 predicted candidates among 56 commercially available compounds were experimentally validated to have binding affinities on oestrogen receptor α with IC50or EC50values ≤10 μM. Furthermore, two dual ligands with both agonistic and antagonistic activities ≤1 μM would provide potential lead compounds for the development of novel targeted therapy in breast cancer or osteoporosis. Conclusion and Implications: In summary, bSDTNBI would provide a powerful tool for the MoA assessment on both old drugs and novel compounds in drug discovery and development.

Original languageEnglish
Pages (from-to)3372-3385
Number of pages14
JournalBritish Journal of Pharmacology
Volume173
Issue number23
DOIs
StatePublished - 2016

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