CBSF: A New Empirical Scoring Function for Docking Parameterized by Weights of Neural Network

R. Syrlybaeva, M. Talipov
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引用次数: 0

Abstract

Abstract A new CBSF empirical scoring function for the estimation of binding energies between proteins and small molecules is proposed in this report. The final score is obtained as a sum of three energy terms calculated using descriptors based on a simple counting of the interacting protein-ligand atomic pairs. All the required weighting coefficients for this method were derived from a pretrained neural network. The proposed method demonstrates a high accuracy and reproduces binding energies of protein-ligand complexes from the CASF-2016 test set with a standard deviation of 2.063 kcal/mol (1.511 log units) and an average error of 1.682 kcal/mol (1.232 log units). Thus, CBSF has a significant potential for the development of rapid and accurate estimates of the protein-ligand interaction energies.
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CBSF:一种新的基于神经网络权值的对接经验评分函数
摘要本文提出了一种新的CBSF经验评分函数,用于估计蛋白质和小分子之间的结合能。最终得分是根据相互作用的蛋白质-配体原子对的简单计数,使用描述符计算的三个能量项的总和。该方法所需的所有加权系数都是从预先训练的神经网络中导出的。所提出的方法证明了高精度,并再现了来自CASF-2016测试集的蛋白质-配体复合物的结合能,标准偏差为2.063 kcal/mol(1.511 log单位),平均误差为1.682 kca/mol(1.232 log单位)。因此,CBSF在快速准确估计蛋白质-配体相互作用能方面具有重要潜力。
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来源期刊
Computational and Mathematical Biophysics
Computational and Mathematical Biophysics Mathematics-Mathematical Physics
CiteScore
2.50
自引率
0.00%
发文量
8
审稿时长
30 weeks
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