Said Ridha Ben, Hanachi Riadh, Rahali Seyfeddine, Alkhalifah Mohammed A M, Alresheedi Faisal, Tangour Bahoueddine, Hochlaf Majdi
Laboratoire de Caractérisations, Applications et Modélisations des Matériaux, Faculté des Sciences de Tunis, Université Tunis El Manar, Tunis, Tunisie.
Department of Chemistry, College of Science and Arts, Qassim University, Ar Rass, Saudi Arabia.
J Comput Chem. 2021 Dec 15;42(32):2306-2320. doi: 10.1002/jcc.26761. Epub 2021 Oct 5.
Pyrazole derivatives correspond to a family of heterocycle molecules with important pharmacological and physiological applications. At present, we perform a density functional theory (DFT) calculations and a quantitative structure-activity relationship (QSAR) evaluation on a series of 1-(4,5-dihydro-1H-pyrazol-1-yl) ethan-1-one and 4,5-dihydro-1H-pyrazole-1-carbothioamide derivatives as an epidermal growth factor receptor (EGFR) inhibitory activity. We thus propose a virtual screening protocol based on a machine-learning study. This theoretical model relates the studied compounds' biological activity to their calculated physicochemical descriptors. Moreover, the linear regression function is used to validate the model via the evaluation of Q and Q parameters for external and internal validations, respectively. Our QSAR model shows a good correlation between observed activities IC and predicted ones. Our model allows us to mitigate time-consuming problems and waste chemical and biological products in the preclinical phases.
吡唑衍生物属于一类具有重要药理和生理应用的杂环分子。目前,我们对一系列1-(4,5-二氢-1H-吡唑-1-基)乙-1-酮和4,5-二氢-1H-吡唑-1-碳硫酰胺衍生物作为表皮生长因子受体(EGFR)抑制活性进行了密度泛函理论(DFT)计算和定量构效关系(QSAR)评估。因此,我们基于机器学习研究提出了一种虚拟筛选方案。该理论模型将所研究化合物的生物活性与其计算得到的物理化学描述符联系起来。此外,线性回归函数分别通过评估外部和内部验证的Q和Q参数来验证模型。我们的QSAR模型显示观察到的活性IC与预测的活性之间有良好的相关性。我们的模型使我们能够在临床前阶段减轻耗时问题以及化学和生物产品的浪费。