将 1,2,3-三唑衍生物作为前列腺癌有效抑制剂的计算研究与毒物研究

IF 0.9 4区 化学 Q4 CHEMISTRY, MULTIDISCIPLINARY Russian Journal of General Chemistry Pub Date : 2024-10-29 DOI:10.1134/S1070363224090238
Y. Koubi, Y. Moukhliss, O. Abdessadak, M. Alaqarbeh, M. A. Ajanaa, H. Maghat, T. Lakhlifi, M. Bouachrine
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引用次数: 0

摘要

前列腺癌是一种众所周知的疾病,近年来备受关注。为了改进和提出具有抗癌活性的新化合物,必须通过创新和可靠的方法(如计算小分子发现方法)来确定新的拟议制剂。为此,我们采用静态方法对作为抗增殖类似物的二取代 1,2,3-三唑衍生物进行了三维-QSAR 和分子对接研究,以找到合适的模型。该研究基于比较分子场分析(CoMFA)和比较分子相似性指数分析(CoMSIA)建立了三维-QSAR 模型。CoMFA 模型(Q2 = 0.696,R2 = 0.992,R = 0.985)和 CoMSIA 模型(Q2 = 0.582,R2 = 0.992,R = 0.984)的统计系数获得了最佳模型。为了确定模型的预测能力,我们需要计算测试集的 k、Roy、Golbraikh 和 Tropsha 参数,以及训练集的 y、SEE 和 t-F 随机检验参数。Docking 的结果表明,氨基酸(PDB; 3 ERT)Asp351、Leu384、Arg394、Phe404、Leu346、Leu525 和 Thr347 在抗癌活性方面具有重要意义。研究人员对 CoMFA 模型的立体和静电场轮廓进行了研究,以进一步确定研究结果。研究提出了四种新的抗增殖药剂,通过 ADMET 和毒物团方法证明了它们的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Computational Investigation with Toxicophore Study of 1,2,3-Triazole Derivatives as an Effective Inhibitor Against Prostate Cancer

Prostate cancer is a well-known disease that has gained significant attention in recent years. To improve and suggest new compounds with anticancer activity, it has become essential to identify new proposed agents through innovative and reliable methods such as computational small molecule discovery methods. In this regard, 3D-QSAR and Molecular Docking studies have been conducted on disubstituted 1,2,3-triazole derivatives as antiproliferative analogs, using static methods to find the right model. The study established 3D-QSAR model based on Comparative Molecular Field Analysis (CoMFA) and Comparative Molecular Similarity Index Analysis (CoMSIA). The best model was obtained with CoMFA model (Q2 = 0.696, R2 = 0.992, R = 0.985) and CoMSIA model (Q2 = 0.582, R2 = 0.992, R = 0.984) statistical coefficients. To determine the predictive power of the model, we need to calculate the parameters of k, Roy, Golbraikh, and Tropsha for the test set and the y, SEE, and t-F randomization tests for the training set. Docking’s results suggest that amino acids (PDB; 3 ERT), Asp351, Leu384, Arg394, Phe404, Leu346, Leu525, and Thr347, have a significant interest in anticancer activity. The CoMFA model’s steric and electrostatic field contours were studied to determine the results further. The study suggests four new antiproliferative agents that have demonstrated reliability through ADMET and toxicophore methods.

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来源期刊
CiteScore
1.40
自引率
22.20%
发文量
252
审稿时长
2-4 weeks
期刊介绍: Russian Journal of General Chemistry is a journal that covers many problems that are of general interest to the whole community of chemists. The journal is the successor to Russia’s first chemical journal, Zhurnal Russkogo Khimicheskogo Obshchestva (Journal of the Russian Chemical Society ) founded in 1869 to cover all aspects of chemistry. Now the journal is focused on the interdisciplinary areas of chemistry (organometallics, organometalloids, organoinorganic complexes, mechanochemistry, nanochemistry, etc.), new achievements and long-term results in the field. The journal publishes reviews, current scientific papers, letters to the editor, and discussion papers.
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