Structure-based virtual screening for PDL1 dimerizers: Evaluating generic scoring functions

IF 2.7 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY Current Research in Structural Biology Pub Date : 2022-01-01 DOI:10.1016/j.crstbi.2022.06.002
Viet-Khoa Tran-Nguyen , Saw Simeon , Muhammad Junaid , Pedro J. Ballester
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引用次数: 3

Abstract

The interaction between PD1 and its ligand PDL1 has been shown to render tumor cells resistant to apoptosis and promote tumor progression. An innovative mechanism to inhibit the PD1/PDL1 interaction is PDL1 dimerization induced by small-molecule PDL1 binders. Structure-based virtual screening is a promising approach to discovering such small-molecule PD1/PDL1 inhibitors. Here we investigate which type of generic scoring functions is most suitable to tackle this problem. We consider CNN-Score, an ensemble of convolutional neural networks, as the representative of machine-learning scoring functions. We also evaluate Smina, a commonly used classical scoring function, and IFP, a top structural fingerprint similarity scoring function. These three types of scoring functions were evaluated on two test sets sharing the same set of small-molecule PD1/PDL1 inhibitors, but using different types of inactives: either true inactives (molecules with no in vitro PD1/PDL1 inhibition activity) or assumed inactives (property-matched decoy molecules generated from each active). On both test sets, CNN-Score performed much better than Smina, which in turn strongly outperformed IFP. The fact that the latter was the case, despite precluding any possibility of exploiting decoy bias, demonstrates the predictive value of CNN-Score for PDL1. These results suggest that re-scoring Smina-docked molecules with CNN-Score is a promising structure-based virtual screening method to discover new small-molecule inhibitors of this therapeutic target.

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基于结构的PDL1二聚体虚拟筛选:评估通用评分功能
PD1与其配体PDL1之间的相互作用已被证明可使肿瘤细胞抵抗凋亡并促进肿瘤进展。抑制PD1/PDL1相互作用的创新机制是由小分子PDL1结合物诱导PDL1二聚化。基于结构的虚拟筛选是发现小分子PD1/PDL1抑制剂的一种很有前途的方法。在这里,我们研究哪种类型的通用评分函数最适合解决这个问题。我们考虑卷积神经网络的集合CNN-Score作为机器学习评分函数的代表。我们还评估了常用的经典评分函数Smina和顶级结构指纹相似性评分函数IFP。这三种类型的评分函数在两个测试集上进行评估,这些测试集共享同一组小分子PD1/PDL1抑制剂,但使用不同类型的失活性物:真正的失活性物(体外没有PD1/PDL1抑制活性的分子)或假设的失活性物(由每种活性物产生的属性匹配的诱饵分子)。在两个测试集上,CNN-Score的表现都比Smina好得多,而后者又大大优于IFP。尽管排除了利用诱饵偏差的任何可能性,但后者的情况证明了CNN-Score对PDL1的预测价值。这些结果表明,用CNN-Score对smina对接的分子进行重新评分是一种很有前途的基于结构的虚拟筛选方法,可以发现这种治疗靶点的新小分子抑制剂。
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CiteScore
4.60
自引率
0.00%
发文量
33
审稿时长
104 days
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