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首页> 外文期刊>Journal of molecular recognition: JMR >An application of CIFAP CIFAP for predicting the binding affinity of Chk1 Chk1 inhibitors derived from 2‐aminothiazole‐4‐carboxamide
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An application of CIFAP CIFAP for predicting the binding affinity of Chk1 Chk1 inhibitors derived from 2‐aminothiazole‐4‐carboxamide

机译:CiFap CiFap用于预测CHK1 CHK1抑制剂衍生自2-氨基噻唑-4-甲酰胺的结合亲和力

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摘要

Abstract Investigation of protein‐ligand interactions obtained from experiments has a crucial part in the design of newly discovered and effective drugs. Analyzing the data extracted from known interactions could help scientists to predict the binding affinities of promising ligands before conducting experiments. The objective of this study is to advance the CIFAP (compressed images for affinity prediction) method, which is relevant to a protein‐ligand model, identifying 2D electrostatic potential images by separating the binding site of protein‐ligand complexes and using the images for predicting the computational affinity information represented by pIC 50 values. The CIFAP method has 2 phases, namely, data modeling and prediction. In data modeling phase, the separated 3D structure of the binding pocket with the ligand inside is fitted into an electrostatic potential grid box, which is then compressed through 3 orthogonal directions into three 2D images for each protein‐ligand complex. Sequential floating forward selection technique is performed for acquiring prediction patterns from the images. In the prediction phase, support vector regression (SVR) and partial least squares regression are used for testing the quality of the CIFAP method for predicting the binding affinity of 45 CHK1 inhibitors derived from 2‐aminothiazole‐4‐carboxamide. The results show that the CIFAP method using both support vector regression and partial least squares regression is very effective for predicting the binding affinities of CHK1‐ligand complexes with low‐error values and high correlation. As a future work, the results could be improved by working on the pose of the ligands inside the grid.
机译:摘要从实验中获得的蛋白质 - 配体相互作用的研究具有新发现和有效药物的设计中的关键部分。分析从已知相互作用提取的数据可以帮助科学家预测在进行实验之前预测有前途配体的结合亲和力。本研究的目的是推进与蛋白质 - 配体模型相关的CiFap(用于亲和预测)方法,通过将蛋白质 - 配体复合物的结合位点分离并使用用于预测的图像来识别2D静电潜在图像由PIC 50值表示的计算亲和力信息。 CIFAP方法具有2个阶段,即数据建模和预测。在数据建模阶段中,具有配体内部的粘合口的分离的3D结构装配到静电电位栅箱中,然后将通过3正交方向压缩为每个蛋白质配体络合物的三个2D图像。执行顺序浮动前向选择技术,用于从图像获取预测模式。在预测阶段,支持向量回归(SVR)和部分最小二乘回归用于测试CiFaP方法的质量,用于预测来自2-氨基噻唑-4-甲酰胺的45个CHK1抑制剂的结合亲和力。结果表明,使用支持向量回归和部分最小二乘回归的CiFap方法对于预测具有低误差值和高相关性的CHK1-配体复合物的结合亲和力非常有效。作为未来的工作,通过在网格内的配体的姿势上工作可以改善结果。

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