Banjare Lomash, Murmu Anjali, Pandey Nilesh Kumar, Matore Balaji Wamanrao, Banjare Purusottam, Bhattacharya Arijit, Gayen Shovanlal, Singh Jagadish, Roy Partha Pratim
Laboratory of Drug Discovery and Ecotoxicology, Department of Pharmacy, Guru Ghasidas Vishwavidyalaya (A Central University), Bilaspur, 495009 India.
Laboratory of Drug Design and Discovery, Department of Pharmaceutical Technology, Jadavpur University, Kolkata, 700032 India.
In Silico Pharmacol. 2024 Oct 19;12(2):92. doi: 10.1007/s40203-024-00266-5. eCollection 2024.
Due to the high toxicity, poor efficacy and resistance associated with current anti-breast cancer drugs, there's growing interest in natural products (NPs) for their potential anti-cancer properties. Computational modelling of NPs to identify key structural features can aid in developing novel natural inhibitors. In this study, we developed statistically significant QSAR models based on NPs from the NPACT database, which have shown potential anticancer activity against the MCF-7 cancer cell lines. All the developed QSAR models were statistically robust, meeting both internal ( = 0.666-0.669, = 0.657-0.660, = 0.636-0.638) and external ( = 0.686-0.714, = 0.830-0.847) validation criteria. Consequently, they were utilized to virtually screen a series of NPs from the COCONUT database in the search for novel natural inhibitors. Molecular docking studies were conducted on the identified compounds against the human HER2 protein (PDB ID: 3PP0), which is a crucial target in breast cancer. Molecular docking analysis demonstrated that compounds 4608 and 2710 achieved the highest docking scores, with CDOCKER interaction energies of -72.67 kcal/mol and - 72.63 kcal/mol respectively. Compounds 4608 and 2710 were identified as the most promising candidates upon performing triplicate 100 ns MD simulation study using the CHARMM36 force field. DFT studies was performed to evaluate their stability and reactivity as potential drug molecules. This research contributes to the development of new natural inhibitors for breast cancer.
The online version contains supplementary material available at 10.1007/s40203-024-00266-5.
由于目前抗乳腺癌药物存在高毒性、疗效不佳和耐药性等问题,人们对具有潜在抗癌特性的天然产物(NPs)的兴趣日益浓厚。对天然产物进行计算建模以确定关键结构特征有助于开发新型天然抑制剂。在本研究中,我们基于NPACT数据库中的天然产物开发了具有统计学意义的QSAR模型,这些天然产物已显示出对MCF - 7癌细胞系具有潜在的抗癌活性。所有开发的QSAR模型在统计学上都很稳健,满足内部( = 0.666 - 0.669, = 0.657 - 0.660, = 0.636 - 0.638)和外部( = 0.686 - 0.714, = 0.830 - 0.847)验证标准。因此,它们被用于虚拟筛选COCONUT数据库中的一系列天然产物,以寻找新型天然抑制剂。对鉴定出的化合物针对人HER2蛋白(PDB ID:3PP0)进行了分子对接研究,该蛋白是乳腺癌中的一个关键靶点。分子对接分析表明,化合物4608和2710获得了最高的对接分数,CDOCKER相互作用能分别为 - 72.67 kcal/mol和 - 72.63 kcal/mol。使用CHARMM36力场进行一式三份的100 ns分子动力学模拟研究后,化合物4608和2710被确定为最有前途的候选物。进行了密度泛函理论(DFT)研究以评估它们作为潜在药物分子的稳定性和反应性。这项研究有助于开发新的乳腺癌天然抑制剂。
在线版本包含可在10.1007/s40203 - 024 - 00266 - 5获取的补充材料。