Chemokine Receptors-Structure-Based Virtual Screening Assisted by Machine Learning

Pharmaceutics. 2023 Feb 3;15(2):516. doi: 10.3390/pharmaceutics15020516.

Abstract

Chemokines modulate the immune response by regulating the migration of immune cells. They are also known to participate in such processes as cell-cell adhesion, allograft rejection, and angiogenesis. Chemokines interact with two different subfamilies of G protein-coupled receptors: conventional chemokine receptors and atypical chemokine receptors. Here, we focused on the former one which has been linked to many inflammatory diseases, including: multiple sclerosis, asthma, nephritis, and rheumatoid arthritis. Available crystal and cryo-EM structures and homology models of six chemokine receptors (CCR1 to CCR6) were described and tested in terms of their usefulness in structure-based drug design. As a result of structure-based virtual screening for CCR2 and CCR3, several new active compounds were proposed. Known inhibitors of CCR1 to CCR6, acquired from ChEMBL, were used as training sets for two machine learning algorithms in ligand-based drug design. Performance of LightGBM was compared with a sequential Keras/TensorFlow model of neural network for these diverse datasets. A combination of structure-based virtual screening with machine learning allowed to propose several active ligands for CCR2 and CCR3 with two distinct compounds predicted as CCR3 actives by all three tested methods: Glide, Keras/TensorFlow NN, and LightGBM. In addition, the performance of these three methods in the prediction of the CCR2/CCR3 receptor subtype selectivity was assessed.

Keywords: CCR2; CCR3; G protein-coupled receptors; Glide; LightGBM; TensorFlow; cheminformatics; chemokine receptors; drug discovery; gradient-boosting machine; machine learning; molecular docking; neural network; virtual screening.

Grants and funding

This research was funded by the National Science Centre in Poland, grant number 2020/39/B/NZ2/00584 and the APC was funded by University of Warsaw.