posted on 2021-12-21, 15:10authored byDonghui Huo, Shiyu Wang, Yue Kong, Zijian Qin, Aixia Yan
The epidermal growth factor receptor
(EGFR) signaling pathway plays
an important role in cell growth, proliferation, differentiation,
and other physiological processes, which makes the EGFR a promising
target for anticancer therapies. The discovery of novel EGFR inhibitors
may provide a solution to the problem of drug resistance. In this
work, we performed a ligand-based virtual screening (LBVS) protocol
for finding novel EGFR inhibitors from a 5.3 million compound library.
First, the 3D shape-based similarity was used to obtain structurally
novel EGFR inhibitors. In this study, we tried three queries; two
were crystal structures and one was generated from deep generative
models of graphs (DGMG). Next, we have built four structure–activity
relationship (SAR) models and three quantitative structure–activity
relationship (QSAR) models based on an SVM method for further screening
of highly active EGFR inhibitors. Experimental validations led to
the identification of nine hits out of 18 tested compounds. Among
them, hit 1, hit 5, and hit 6 had IC50 values around 80
nM against EGFR whose interactions with EGFR were further investigated
by molecular dynamics simulations.