Automated design and optimization of multitarget schizophrenia drug candidates by deep learning

Eur J Med Chem. 2020 Oct 15:204:112572. doi: 10.1016/j.ejmech.2020.112572. Epub 2020 Jul 12.

Abstract

Complex neuropsychiatric diseases such as schizophrenia require drugs that can target multiple G protein-coupled receptors (GPCRs) to modulate complex neuropsychiatric functions. Here, we report an automated system comprising a deep recurrent neural network (RNN) and a multitask deep neural network (MTDNN) to design and optimize multitarget antipsychotic drugs. The system has successfully generated novel molecule structures with desired multiple target activities, among which high-ranking compound 3 was synthesized, and demonstrated potent activities against dopamine D2, serotonin 5-HT1A and 5-HT2A receptors. Hit expansion based on the MTDNN was performed, 6 analogs of compound 3 were evaluated experimentally, among which compound 8 not only exhibited specific polypharmacology profiles but also showed antipsychotic effect in animal models with low potential for sedation and catalepsy, highlighting their suitability for further preclinical studies. The approach can be an efficient tool for designing lead compounds with multitarget profiles to achieve the desired efficacy in the treatment of complex neuropsychiatric diseases.

Keywords: Automated drug design; Multitarget antipsychotic drugs; Multitask deep neural network; Recurrent neural network; Schizophrenia.

MeSH terms

  • Animals
  • Automation
  • Deep Learning*
  • Drug Discovery / methods*
  • Mice
  • Molecular Targeted Therapy*
  • Receptor, Serotonin, 5-HT1A / metabolism
  • Receptor, Serotonin, 5-HT2A / metabolism
  • Receptors, Dopamine D2 / metabolism
  • Schizophrenia / drug therapy*
  • Schizophrenia / metabolism

Substances

  • Receptor, Serotonin, 5-HT2A
  • Receptors, Dopamine D2
  • Receptor, Serotonin, 5-HT1A