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A novel, customizable and optimizable parameter method using spherical harmonics for molecular shape similarity comparisons

机译:一种使用球谐函数进行分子形状相似性比较的新颖,可定制和可优化的参数方法

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摘要

A novel molecular shape similarity comparison method, namely SHeMS, derived from spherical harmonic (SH) expansion, is presented in this study. Through weight optimization using genetic algorithms for a customized reference set, the optimal combination of weights for the translationally and rotationally invariant (TRI) SH shape descriptor, which can specifically and effectively distinguish overall and detailed shape features according to the molecular surface, is obtained for each molecule. This method features two key aspects: firstly, the SH expansion coefficients from different bands are weighted to calculate similarity, leading to a distinct contribution of overall and detailed features to the final score, and thus can be better tailored for each specific system under consideration. Secondly, the reference set for optimization can be totally configured by the user, which produces great flexibility, allowing system-specific and customized comparisons. The directory of useful decoys (DUD) database was adopted to validate and test our method, and principal component analysis (PCA) reveals that SH descriptors for shape comparison preserve sufficient information to separate actives from decoys. The results of virtual screening indicate that the proposed method based on optimal SH descriptor weight combinations represents a great improvement in performance over original SH (OSH) and ultra-fast shape recognition (USR) methods, and is comparable to many other popular methods. Through combining efficient shape similarity comparison with SH expansion method, and other aspects such as chemical and pharmacophore features, SHeMS can play a significant role in this field and can be applied practically to virtual screening by means of similarity comparison with 3D shapes of known active compounds or the binding pockets of target proteins.
机译:这项研究提出了一种新的分子形状相似性比较方法,即从球谐(SH)扩展得到的SHeMS。通过使用遗传算法对定制参考集进行权重优化,获得了平移和旋转不变(TRI)SH形状描述符的权重的最佳组合,可以根据分子表面具体有效地区分整体和详细的​​形状特征,从而获得每个分子。该方法具有两个关键方面:首先,对来自不同频带的SH扩展系数进行加权以计算相似度,从而导致整体和详细特征对最终得分的明显贡献,从而可以针对所考虑的每个特定系统更好地进行定制。其次,用于优化的参考集可以由用户完全配置,这产生了很大的灵活性,允许特定于系统的和自定义的比较。采用了有用诱饵(DUD)数据库目录来验证和测试我们的方法,主成分分析(PCA)显示,用于形状比较的SH描述符保留了足够的信息以将活性成分与诱饵分开。虚拟筛选的结果表明,基于最佳SH描述符权重组合的拟议方法相对于原始SH(OSH)和超快速形状识别(USR)方法在性能上有了很大的提高,并且可以与许多其他流行方法相提并论。通过将有效的形状相似度比较与SH扩展方法以及其他方面(例如化学和药效团特征)结合起来,SHeMS可以在该领域发挥重要作用,并且可以通过与已知活性化合物的3D形状进行相似度比较将其实际应用于虚拟筛选或靶蛋白的结合口袋。

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