Panicker Pooja S, Melge Anu R, Biswas Lalitha, Keechilat Pavithran, Mohan Chethampadi G
Centre for Nanosciences and Molecular Medicine, Amrita Institute of Medical Sciences and Research Centre, Amrita University, Kochi, Kerala, India.
Chem Biol Drug Des. 2017 Oct;90(4):629-636. doi: 10.1111/cbdd.12977. Epub 2017 May 3.
Present work elucidates identification of next generation inhibitors for clinically relevant mutations of epidermal growth factor receptor (EGFR) using structure-based bioactive pharmacophore modeling followed by virtual screening (VS) techniques. Three-dimensional (3D) pharmacophore models of EGFR and its different mutants were generated. This includes seven 3D pharmacophoric points with three different chemical features (descriptors), that is, one hydrogen bond donor, three hydrogen bond acceptors and three aromatic rings. Pharmacophore models were validated using decoy dataset, Receiver operating characteristic plot, and external dataset compounds. The robust, bioactive 3D e-pharmacophore models were then used for VS of four different small compound databases: FDA approved, investigational, anticancer, and bioactive compounds collections of Selleck Chemicals. CUDC101 a multitargeted kinase inhibitor showed highest binding free energy and 3D pharmacophore fit value than the well known EGFR inhibitors, Gefitinib and Erlotinib. Further, we obtained ML167 as the second best hit on VS from bioactive database showing high binding energy and pharmacophore fit value with respect to EGFR receptor and its mutants. Optimistically, presented drug discovery based on the computational study serves as a foundation in identifying and designing of more potent EGFR next-generation kinase inhibitors and warrants further experimental studies to fight against lung cancer.
目前的工作阐明了使用基于结构的生物活性药效团建模及虚拟筛选(VS)技术来鉴定针对表皮生长因子受体(EGFR)临床相关突变的下一代抑制剂。生成了EGFR及其不同突变体的三维(3D)药效团模型。这包括具有三种不同化学特征(描述符)的七个3D药效团点,即一个氢键供体、三个氢键受体和三个芳香环。使用诱饵数据集、受试者工作特征图和外部数据集化合物对药效团模型进行了验证。然后将稳健的、具有生物活性的3D电子药效团模型用于四个不同的小分子化合物数据库的虚拟筛选:美国食品药品监督管理局(FDA)批准的、正在研究的、抗癌的以及Selleck Chemicals的生物活性化合物集合。多靶点激酶抑制剂CUDC101显示出比著名的EGFR抑制剂吉非替尼和厄洛替尼更高的结合自由能和3D药效团拟合值。此外,我们从生物活性数据库中获得了ML167作为虚拟筛选的第二佳命中物,它相对于EGFR受体及其突变体显示出高结合能和药效团拟合值。乐观地说,基于计算研究提出的药物发现为鉴定和设计更有效的EGFR下一代激酶抑制剂奠定了基础,并值得进一步开展实验研究以对抗肺癌。