使用遗传算法寻找具有良好对接分数的分子

Casper Steinmann, Jan H. Jensen
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引用次数: 16

摘要

采用基于图的遗传算法(GA),从锌数据库中随机选择分子,针对枯草芽孢杆菌(Bacillus subtilis) chorismate mutase (CM)、人β2-肾上腺素能G蛋白偶联受体(β2AR)、DDR1激酶结构域(DDR1)和β-环糊精(BCD)四个不同的靶标,从Glide软件包中鉴定出绝对对接分数高的分子(配体)。通过结合使用功能基团过滤器和基于启发式合成可及性(SA)评分的分数修饰符,我们的方法通过从锌数据库中随机选择的8,000个分子中筛选总共400,000个分子,确定了大约500到6,000个结构多样的分子,其分数优于已知的粘合剂。从ZINC数据库中筛选25万个分子,发现了比已知结合物更多的分子,具有更好的对接分数,但CM除外,传统的筛选方法仅识别60个化合物,而GA+Filter+SA则识别出511个化合物。对于β2AR和DDR1, GA+Filter+SA方法发现对接分数低于- 9.0和- 10.0的分子明显更多。因此,GA+Filters+SA对接方法可以有效地生成大量不同的合成可达分子,并且对特定目标具有非常好的对接分数。GA+Filter+SA方法的早期版本被用于识别COVID-19主要蛋白酶的潜在结合物,并提交给COVID Moonshot项目的早期阶段,该项目是一项众包计划,旨在加速COVID抗病毒药物的开发。
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Using a genetic algorithm to find molecules with good docking scores
A graph-based genetic algorithm (GA) is used to identify molecules (ligands) with high absolute docking scores as estimated by the Glide software package, starting from randomly chosen molecules from the ZINC database, for four different targets: Bacillus subtilis chorismate mutase (CM), human β2-adrenergic G protein-coupled receptor (β2AR), the DDR1 kinase domain (DDR1), and β-cyclodextrin (BCD). By the combined use of functional group filters and a score modifier based on a heuristic synthetic accessibility (SA) score our approach identifies between ca 500 and 6,000 structurally diverse molecules with scores better than known binders by screening a total of 400,000 molecules starting from 8,000 randomly selected molecules from the ZINC database. Screening 250,000 molecules from the ZINC database identifies significantly more molecules with better docking scores than known binders, with the exception of CM, where the conventional screening approach only identifies 60 compounds compared to 511 with GA+Filter+SA. In the case of β2AR and DDR1, the GA+Filter+SA approach finds significantly more molecules with docking scores lower than −9.0 and −10.0. The GA+Filters+SA docking methodology is thus effective in generating a large and diverse set of synthetically accessible molecules with very good docking scores for a particular target. An early incarnation of the GA+Filter+SA approach was used to identify potential binders to the COVID-19 main protease and submitted to the early stages of the COVID Moonshot project, a crowd-sourced initiative to accelerate the development of a COVID antiviral.
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