Tripathi Kanchan Lata, Dwivedi Vivek Dhar, Badoni Himani
Department of Biotechnology, School of Applied and Life Sciences, Uttaranchal University, Premnagar, Dehradun, 248006, India.
Saveetha Institute of Medical and Technical Sciences, Center for Global Health Research, Saveetha Medical College and Hospitals, Saveetha University, Chennai, India.
Mol Divers. 2025 Mar 24. doi: 10.1007/s11030-025-11165-y.
HER2-positive breast cancer remains a significant clinical challenge, often exhibiting resistance to standard therapies. This study applies a comprehensive in silico approach to identify the natural compounds with potential inhibitory effects on HER2, focusing on pharmacophore modeling, virtual screening, molecular dynamics (MD) simulations, and binding affinity estimation. Initially, 24 known HER2 inhibitors from the BindingDB database were analyzed using Schrödinger's Phase module to generate a pharmacophore model, highlighting one hydrophobic (H) and three aromatic rings (RRR) features essential for HER2 binding. Screening against the Coconut Database, comprising 406,076 natural compounds, yielded 60,581 hits that matched the HRRR pharmacophore. These hits underwent a rigorous docking workflow with Glide (HTVS, SP, and XP modes), narrowing the candidates to 757 compounds with high binding affinity. Further refinement using Lipinski's rule of five produced a final set of 12 compounds exhibiting drug-like properties. 500-ns MD simulations evaluated these complexes' stability and dynamic behavior, while MM-GBSA calculations confirmed strong binding affinities dominated by van der Waals and electrostatic interactions. Compounds CNP0116178, CNP0356942, and CNP0136985 demonstrated superior binding profiles compared to the reference, marking them as lead candidates for HER2 inhibition. This study underscores the efficacy of computational methods in early-stage drug discovery and highlights promising candidates for further experimental validation and optimization. These findings offer a basis for developing targeted HER2 therapies and demonstrate the potential of natural compounds in advancing breast cancer treatment.
人表皮生长因子受体2(HER2)阳性乳腺癌仍然是一个重大的临床挑战,通常对标准疗法表现出耐药性。本研究采用了一种全面的计算机模拟方法来识别对HER2具有潜在抑制作用的天然化合物,重点是药效团建模、虚拟筛选、分子动力学(MD)模拟和结合亲和力估计。最初,使用薛定谔的Phase模块对BindingDB数据库中的24种已知HER2抑制剂进行分析,以生成一个药效团模型,突出显示了一个疏水(H)和三个芳香环(RRR)特征,这些特征对于HER2结合至关重要。针对包含406,076种天然化合物的椰子数据库进行筛选,得到了60,581个与HRRR药效团匹配的命中结果。这些命中结果通过Glide(HTVS、SP和XP模式)进行了严格的对接工作流程,将候选化合物缩小到757种具有高结合亲和力的化合物。使用Lipinski五规则进行进一步优化,得到了最终的12种具有类药物性质的化合物。500纳秒的MD模拟评估了这些复合物的稳定性和动态行为,而MM-GBSA计算证实了由范德华力和静电相互作用主导的强结合亲和力。与参考化合物相比,化合物CNP0116178、CNP0356942和CNP0136985表现出优异的结合特征,使其成为HER2抑制的潜在候选药物。本研究强调了计算方法在早期药物发现中的有效性,并突出了有前景的候选药物,以供进一步的实验验证和优化。这些发现为开发靶向HER2疗法提供了基础,并证明了天然化合物在推进乳腺癌治疗方面的潜力。