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An efficient in silico screening method based on the protein-compound affinity matrix and its application to the design of a focused library for cytochrome P450 (CYP) ligands

机译:基于蛋白质-化合物亲和力矩阵的高效计算机筛选方法及其在细胞色素P450(CYP)配体聚焦库设计中的应用

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摘要

A new method has been developed to design a focused library based on available active compounds using protein-compound docking simulations. This method was applied to the design of a focused library for cytochrome P450 (CYP) ligands, not only to distinguish CYP ligands from other compounds but also to identify the putative ligands for a particular CYP. Principal component analysis (PCA) was applied to the protein-compound affinity matrix, which was obtained by thorough docking calculations between a large set of protein pockets and chemical compounds. Each compound was depicted as a point in the PCA space. Compounds that were close to the known active compounds were selected as candidate hit compounds. A machine-learning technique optimized the docking scores of the protein-compound affinity matrix to maximize the database enrichment of the known active compounds, providing an optimized focused library.
机译:已经开发了一种新方法,可以使用蛋白质-化合物对接模拟,基于可用的活性化合物设计聚焦库。该方法用于细胞色素P450(CYP)配体的聚焦文库的设计,不仅可以将CYP配体与其他化合物区分开,还可以识别特定CYP的假定配体。将主成分分析(PCA)应用于蛋白质-化合物亲和基质,该基质是通过在大量蛋白质袋和化合物之间进行彻底对接计算而获得的。每个化合物都被描述为PCA空间中的一个点。选择与已知活性化合物最接近的化合物作为候选命中化合物。机器学习技术优化了蛋白质-化合物亲和力矩阵的对接分数,以最大化已知活性化合物的数据库富集度,从而提供了优化的聚焦库。

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