BMC Pharmacology and Toxicology (Jan 2019)

eToxPred: a machine learning-based approach to estimate the toxicity of drug candidates

  • Limeng Pu,
  • Misagh Naderi,
  • Tairan Liu,
  • Hsiao-Chun Wu,
  • Supratik Mukhopadhyay,
  • Michal Brylinski

DOI
https://doi.org/10.1186/s40360-018-0282-6
Journal volume & issue
Vol. 20, no. 1
pp. 1 – 15

Abstract

Read online

Abstract Background The efficiency of drug development defined as a number of successfully launched new pharmaceuticals normalized by financial investments has significantly declined. Nonetheless, recent advances in high-throughput experimental techniques and computational modeling promise reductions in the costs and development times required to bring new drugs to market. The prediction of toxicity of drug candidates is one of the important components of modern drug discovery. Results In this work, we describe eToxPred, a new approach to reliably estimate the toxicity and synthetic accessibility of small organic compounds. eToxPred employs machine learning algorithms trained on molecular fingerprints to evaluate drug candidates. The performance is assessed against multiple datasets containing known drugs, potentially hazardous chemicals, natural products, and synthetic bioactive compounds. Encouragingly, eToxPred predicts the synthetic accessibility with the mean square error of only 4% and the toxicity with the accuracy of as high as 72%. Conclusions eToxPred can be incorporated into protocols to construct custom libraries for virtual screening in order to filter out those drug candidates that are potentially toxic or would be difficult to synthesize. It is freely available as a stand-alone software at https://github.com/pulimeng/etoxpred.

Keywords