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Profiling prediction of nuclear receptor modulators with multi-task deep learning methods: toward the virtual screening.

Jiye WangChaofeng LouGuixia LiuWeihua LiZengrui WuYun Tang
Published in: Briefings in bioinformatics (2022)
Nuclear receptors (NRs) are ligand-activated transcription factors, which constitute one of the most important targets for drug discovery. Current computational strategies mainly focus on a single target, and the transfer of learned knowledge among NRs was not considered yet. Herein we proposed a novel computational framework named NR-Profiler for prediction of potential NR modulators with high affinity and specificity. First, we built a comprehensive NR data set including 42 684 interactions to connect 42 NRs and 31 033 compounds. Then, we used multi-task deep neural network and multi-task graph convolutional neural network architectures to construct multi-task multi-classification models. To improve the predictive capability and robustness, we built a consensus model with an area under the receiver operating characteristic curve (AUC) = 0.883. Compared with conventional machine learning and structure-based approaches, the consensus model showed better performance in external validation. Using this consensus model, we demonstrated the practical value of NR-Profiler in virtual screening for NRs. In addition, we designed a selectivity score to quantitatively measure the specificity of NR modulators. Finally, we developed a freely available standalone software for users to make profiling predictions for their compounds of interest. In summary, our NR-Profiler provides a useful tool for NR-profiling prediction and is expected to facilitate NR-based drug discovery.
Keyphrases
  • drug discovery
  • deep learning
  • convolutional neural network
  • machine learning
  • neural network
  • small molecule
  • single cell
  • healthcare
  • artificial intelligence
  • clinical practice
  • electronic health record
  • structural basis