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通过领域和计算方法开发用于癌症治疗的新型CDK9和CYP3A4抑制剂。

Development of novel CDK9 and CYP3A4 inhibitors for cancer therapy through field and computational approaches.

作者信息

Alsfouk Aisha A, Faris Abdelmoujoud, Cacciatore Ivana, Alnajjar Radwan

机构信息

Department of Pharmaceutical Sciences, College of Pharmacy, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia.

LIMAS, Department of Chemical Sciences, Faculty of Sciences Dhar El Mahraz, Sidi Mohamed Ben Abdellah University, Fez, Morocco.

出版信息

Front Chem. 2024 Oct 21;12:1473398. doi: 10.3389/fchem.2024.1473398. eCollection 2024.

Abstract

Cyclin-dependent kinase 9 (CDK9) and cytochrome P450 3A4 (CYP3A4) have emerged as promising targets in the development of anticancer drugs, presenting a consistent challenge in the quest for potent inhibitors. CDK9 inhibitors can selectively target fast-growing cancer cells by disrupting transcription elongation, which in turn hinders the production of proteins essential for cell cycle progression and survivaŚ. Understanding how CYP3A4 metabolizes specific chemotherapy drugs allows for personalized treatment plans, optimizing drug dosages according to a patient's metabolic profile. Since many cancer patients undergo combination therapies, and CYP3A4 is vital in drug metabolism, its inhibition or induction by one drug can alter the plasma levels of others, potentially leading to treatment failure or increased toxicity. Therefore, managing CYP3A4 activity is critical for effective cancer treatment. Employing a range of computational methodologies, this study systematically investigated the binding mechanisms of pyrimidine derivatives against CDK9 and CYP3A4. The field-based model demonstrated high values (0.99), with Q (0.66), demonstrating its ability to predict inhibitory activity against the target of this study. The screening process followed in this work led to the discovery of powerful new inhibitor compounds. Of the 15 new compounds designed, three have a high affinity with the target (ranging from -8 to -9 kcal/mol kcal/mol) and were singled out through docking filtration for more detailed investigation. As well as, a reference compound with a substantial pIC value of 8.4, serving as the foundation for the development of the new compounds, was included for comparative analysis. To elucidate the essential features of CDK9 and CYP3A4 inhibitor design, a comparative analysis was conducted between 3D-QSAR-generated contours and molecular docking conformations of ligands. Molecular dynamics simulations were carried out for a duration of 100 ns on selected docked complexes, specifically those involving novel compounds with CDK9 and CYP3A4 enzymes. Additionally, the binding free energy for these complexes was assessed using the MM/PBSA method, which evaluates the free energy landscape of protein-ligand interactions. The results of MM/PBSA highlighted the strength of the new compounds in enhancing interactions with the target protein, which favors the results of molecular docking and MD simulation. These insights contribute to a deeper understanding of the mechanisms underlying CDK9 and CYP3A4 inhibition, offering potential avenues for the development of innovative and effective CDK9 inhibitors.

摘要

细胞周期蛋白依赖性激酶9(CDK9)和细胞色素P450 3A4(CYP3A4)已成为抗癌药物开发中很有前景的靶点,在寻找强效抑制剂方面一直是一项具有挑战性的任务。CDK9抑制剂可通过破坏转录延伸来选择性地靶向快速生长的癌细胞,进而阻碍细胞周期进程和生存所必需的蛋白质的产生。了解CYP3A4如何代谢特定的化疗药物有助于制定个性化的治疗方案,根据患者的代谢情况优化药物剂量。由于许多癌症患者接受联合治疗,且CYP3A4在药物代谢中至关重要,一种药物对其的抑制或诱导作用会改变其他药物的血浆水平,可能导致治疗失败或毒性增加。因此,控制CYP3A4的活性对于有效的癌症治疗至关重要。本研究采用一系列计算方法,系统地研究了嘧啶衍生物与CDK9和CYP3A4的结合机制。基于场的模型显示出较高的值(0.99),Q值为0.66,表明其能够预测对本研究靶点的抑制活性。本研究采用的筛选过程发现了强大的新型抑制剂化合物。在设计的15种新化合物中,有3种与靶点具有高亲和力(范围为-8至-9千卡/摩尔),并通过对接筛选挑选出来进行更详细的研究。此外,还纳入了一种pIC值为8.4的参考化合物,作为新化合物开发的基础,用于比较分析。为了阐明CDK9和CYP3A4抑制剂设计的基本特征,对3D-QSAR生成的轮廓与配体的分子对接构象进行了比较分析。对选定的对接复合物进行了100纳秒的分子动力学模拟,特别是那些涉及新型化合物与CDK9和CYP3A4酶的复合物。此外,使用MM/PBSA方法评估了这些复合物的结合自由能,该方法评估蛋白质-配体相互作用的自由能态势。MM/PBSA的结果突出了新化合物增强与靶蛋白相互作用的强度,这与分子对接和MD模拟的结果一致。这些见解有助于更深入地了解CDK9和CYP3A4抑制的潜在机制,为开发创新有效的CDK9抑制剂提供了潜在途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a6a0/11532072/69e8baa317ff/fchem-12-1473398-g001.jpg

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