Laboratory of Computational Systems Biology, School of Sciences, Pontifical Catholic University of Rio Grande do Sul (PUCRS), Av. Ipiranga, 6681, Porto Alegre, RS 90619-900, Brazil; Graduate Program in Cellular and Molecular Biology, The Pontifical Catholic University of Rio Grande do Sul (PUCRS), Av. Ipiranga, 6681, Porto Alegre, RS 90619-900, Brazil.
Laboratory of Computational Systems Biology, School of Sciences, Pontifical Catholic University of Rio Grande do Sul (PUCRS), Av. Ipiranga, 6681, Porto Alegre, RS 90619-900, Brazil.
Biophys Chem. 2018 Apr;235:1-8. doi: 10.1016/j.bpc.2018.01.004. Epub 2018 Feb 1.
Cyclin-dependent kinase (CDK) is an interesting biological macromolecule due to its role in cell cycle progression, transcription control, and neuronal development, to mention the most studied biological activities. Furthermore, the availability of hundreds of structural studies focused on the intermolecular interactions of CDK with competitive inhibitors makes possible to develop computational models to predict binding affinity, where the atomic coordinates of binary complexes involving CDK and ligands can be used to train a machine learning model. The present work is focused on the development of new machine learning models to predict binding affinity for CDK. The CDK-targeted machine learning models were compared with classical scoring functions such as MolDock, AutoDock 4, and Vina Scores. The overall performance of our CDK-targeted scoring function was higher than the previously mentioned scoring functions, which opens the possibility of increasing the reliability of virtual screening studies focused on CDK.
细胞周期蛋白依赖性激酶 (CDK) 是一种有趣的生物大分子,因为它在细胞周期进程、转录控制和神经元发育中发挥作用,仅举最受研究的生物学活性而言。此外,由于有数百项结构研究集中于 CDK 与竞争性抑制剂的分子间相互作用,因此可以开发计算模型来预测结合亲和力,其中涉及 CDK 和配体的二元复合物的原子坐标可用于训练机器学习模型。本工作专注于开发用于预测 CDK 结合亲和力的新机器学习模型。将 CDK 靶向的机器学习模型与经典评分函数(如 MolDock、AutoDock 4 和 Vina Scores)进行了比较。我们的 CDK 靶向评分函数的整体性能优于上述评分函数,这为增加专注于 CDK 的虚拟筛选研究的可靠性提供了可能性。