LAQV@REQUIMTE/Faculty of Sciences, University of Porto, Rua do Campo Alegre, s/n, 4169-007 Porto, Portugal.
Int J Mol Sci. 2021 Apr 11;22(8):3944. doi: 10.3390/ijms22083944.
AKT, is a serine/threonine protein kinase comprising three isoforms-namely: AKT1, AKT2 and AKT3, whose inhibitors have been recognized as promising therapeutic targets for various human disorders, especially cancer. In this work, we report a systematic evaluation of multi-target Quantitative Structure-Activity Relationship (mt-QSAR) models to probe AKT' inhibitory activity, based on different feature selection algorithms and machine learning tools. The best predictive linear and non-linear mt-QSAR models were found by the genetic algorithm-based linear discriminant analysis (GA-LDA) and gradient boosting (Xgboost) techniques, respectively, using a dataset containing 5523 inhibitors of the AKT isoforms assayed under various experimental conditions. The linear model highlighted the key structural attributes responsible for higher inhibitory activity whereas the non-linear model displayed an overall accuracy higher than 90%. Both these predictive models, generated through internal and external validation methods, were then used for screening the Asinex kinase inhibitor library to identify the most potential virtual hits as pan-AKT inhibitors. The virtual hits identified were then filtered by stepwise analyses based on reverse pharmacophore-mapping based prediction. Finally, results of molecular dynamics simulations were used to estimate the theoretical binding affinity of the selected virtual hits towards the three isoforms of enzyme AKT. Our computational findings thus provide important guidelines to facilitate the discovery of novel AKT inhibitors.
AKT 是一种丝氨酸/苏氨酸蛋白激酶,由三个同工酶组成:AKT1、AKT2 和 AKT3,其抑制剂已被认为是治疗各种人类疾病(尤其是癌症)的有前途的治疗靶点。在这项工作中,我们报告了基于不同特征选择算法和机器学习工具对多靶定量构效关系(mt-QSAR)模型进行 AKT 抑制活性的系统评估。通过基于遗传算法的线性判别分析(GA-LDA)和梯度提升(Xgboost)技术,分别使用包含在各种实验条件下测定的 AKT 同工酶的 5523 种抑制剂的数据集,找到了最佳预测线性和非线性 mt-QSAR 模型。线性模型突出了负责更高抑制活性的关键结构属性,而非线性模型显示出高于 90%的整体准确性。这两个通过内部和外部验证方法生成的预测模型随后用于筛选 Asinex 激酶抑制剂库,以确定最有潜力的虚拟命中作为泛 AKT 抑制剂。然后,根据基于反向药效团映射的预测进行逐步分析,对鉴定出的虚拟命中进行过滤。最后,使用分子动力学模拟的结果来估计所选虚拟命中与酶 AKT 的三个同工酶的理论结合亲和力。因此,我们的计算结果为发现新型 AKT 抑制剂提供了重要的指导。