QSAR, Molecular Docking & ADMET Studies of Pyrrolo[2,3-d] Pyrimidine Derivatives as CDK4 Inhibitors for the Treatment of Cancer

Shital Patil, Varsha A. Patil, Kalyani Asgonkar, Vrushali Randive, Indrani Mahadik
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Abstract

Background:: Cancer is caused by dysregulation of the cell cycle, which results in abnormal proliferation and the inability of cells to differentiate or die. Cyclins and cyclin-dependent kinases (CDK4) inhibitors are drugs that target a specific enzyme, CDK4 that controls cell cycle progression in cancer. Aim & Objective:: The aim of this study is to obtain an optimized pharmacophore of pyrrolo[2,3-d] pyrimidine as a CDK4 inhibitor using QSAR studies. This aids in determining the link between structure and activity in newly developed chemical entities (NCE’s). To perform molecular docking and ADMET analysis to determine the binding affinity and drug-likeness of NCE’s. Materials and Methods:: The Multiple linear regression approach (MLR) method was utilised to generate the QSAR Model using the programme QSARINS v.2.2.4. For molecular docking, the Autodock vina software was employed. While the Swiss ADME and ToxiM online tools were used to predict toxicity. Results and Discussion:: The best models generated for 2D QSAR had correlation coefficients of R2= 0.9247 & Q2= 0.924 and for 3D QSAR, coefficients were R2 = 0.9297 and Q2 = 0.876. A novel series of 68 derivatives was designed based on QSAR investigations. Molecule C-58 has shown maximum binding affinity in molecular docking as compared to the standard Ribociclib. result: For 2D QSAR, the best models produced has correlation coefficients of R2= 0.9247 and Q2= 0.924. The 3D-QSAR model obtained with R2= 0.9297 and Q2 = 0.876. Based on QSAR studies, a new series of 68 derivatives was generated Conclusion:: Fifteen compounds have shown potential as CDK4 inhibitors based on docking studies, pharmacokinetic behavior and toxicity profile. The maximum binding affinity was demonstrated by molecule C-58. other: N/A
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QSAR:分子对接吡咯[2,3-d]嘧啶衍生物作为CDK4抑制剂治疗癌症的ADMET研究
背景:癌症是由细胞周期失调引起的,导致细胞增殖异常,无法分化或死亡。细胞周期蛋白和细胞周期蛋白依赖性激酶(CDK4)抑制剂是针对一种控制癌症细胞周期进程的特定酶CDK4的药物。的目标,目的:本研究的目的是通过QSAR研究获得吡咯[2,3-d]嘧啶作为CDK4抑制剂的最佳药效团。这有助于确定新开发的化学实体(NCE)的结构和活性之间的联系。通过分子对接和ADMET分析确定NCE的结合亲和力和药物相似性。材料和方法:采用多元线性回归方法(MLR)方法,使用程序QSARINS v.2.2.4生成QSAR模型。分子对接采用Autodock vina软件。而瑞士ADME和ToxiM在线工具用于预测毒性。结果与讨论:二维QSAR最佳模型的相关系数R2= 0.9247;Q2= 0.924,三维QSAR系数R2 = 0.9297, Q2= 0.876。在QSAR研究的基础上,设计了一系列新的68个衍生物。与标准Ribociclib相比,分子C-58在分子对接中显示出最大的结合亲和力。结果:二维QSAR最佳模型的相关系数为R2= 0.9247, Q2= 0.924。得到3D-QSAR模型,R2= 0.9297, Q2 = 0.876。结论:基于对接研究、药代动力学行为和毒性分析,15个化合物显示出作为CDK4抑制剂的潜力。分子C-58显示出最大的结合亲和力。其他:N / A
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