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Development of the knowledge-based and empirical combined scoring algorithm (KECSA) to score protein-ligand interactions

机译:基于知识和经验的组合评分算法(KECSA)的开发以对蛋白质-配体相互作用进行评分

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摘要

We describe a novel knowledge-based protein-ligand scoring function that employs a new definition for the reference state, allowing us to relate a statistical potential to a Lennard-Jones (LJ) potential. In this way, the LJ potential parameters were generated from protein-ligand complex structural data contained in the Protein Databank (PDB). Forty-nine (49) types of atomic pairwise interactions were derived using this method, which we call the knowledge-based and empirical combined scoring algorithm (KECSA). Two validation benchmarks were introduced to test the performance of KECSA. The first validation benchmark included two test sets that address the training set and enthalpy/entropy of KECSA. The second validation benchmark suite included two large-scale and five small-scale test sets, to compare the reproducibility of KECSA, with respect to two empirical score functions previously developed in our laboratory (LISA and LISA+), as well as to other well-known scoring methods. Validation results illustrate that KECSA shows improved performance in all test sets when compared with other scoring methods, especially in its ability to minimize the root mean square error (RMSE). LISA and LISA+ displayed similar performance using the correlation coefficient and Kendall τ as the metric of quality for some of the small test sets. Further pathways for improvement are discussed for which would allow KECSA to be more sensitive to subtle changes in ligand structure.
机译:我们描述了一种新颖的基于知识的蛋白质-配体评分功能,该功能采用了对参考状态的新定义,从而使我们能够将统计势与伦纳德·琼斯(LJ)势相关。以这种方式,LJ潜在参数是根据蛋白质数据库(PDB)中包含的蛋白质-配体复杂结构数据生成的。使用这种方法导出了四十九(49)种原子成对相互作用,我们将其称为基于知识和经验的组合评分算法(KECSA)。引入了两个验证基准来测试KECSA的性能。第一个验证基准包括两个测试集,分别针对KECSA的训练集和焓/熵。第二个验证基准套件包括两个大型和五个小型测试集,用于比较KECSA的可重复性,相对于我们实验室先前开发的两个经验评分函数(LISA和LISA +),以及其他已知的计分方法。验证结果表明,与其他评分方法相比,KECSA在所有测试集上均表现出改进的性能,尤其是在最小化均方根误差(RMSE)的能力方面。对于某些小型测试集,使用相关系数和Kendallτ作为质量指标,LISA和LISA +表现出相似的性能。讨论了进一步的改进途径,这些途径将使KECSA对配体结构的细微变化更加敏感。

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