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Comparative assessment of strategies to identify similar ligand-binding pockets in proteins

机译:鉴定蛋白质中类似配体结合口袋的策略的比较评估

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Detecting similar ligand-binding sites in globally unrelated proteins has a wide range of applications in modern drug discovery, including drug repurposing, the prediction of side effects, and drug-target interactions. Although a number of techniques to compare binding pockets have been developed, this problem still poses significant challenges. We evaluate the performance of three algorithms to calculate similarities between ligand-binding sites, APoc, SiteEngine, and G-LoSA. Our assessment considers not only the capabilities to identify similar pockets and to construct accurate local alignments, but also the dependence of these alignments on the sequence order. We point out certain drawbacks of previously compiled datasets, such as the inclusion of structurally similar proteins, leading to an overestimated performance. To address these issues, a rigorous procedure to prepare unbiased, high-quality benchmarking sets is proposed. Further, we conduct a comparative assessment of techniques directly aligning binding pockets to indirect strategies employing structure-based virtual screening with AutoDock Vina and rDock. Thorough benchmarks reveal that G-LoSA offers a fairly robust overall performance, whereas the accuracy of APoc and SiteEngine is satisfactory only against easy datasets. Moreover, combining various algorithms into a meta-predictor improves the performance of existing methods to detect similar binding sites in unrelated proteins by 5–10%. All data reported in this paper are freely available at https://osf.io/6ngbs/ .
机译:在全球不相关的蛋白质中检测相似的配体结合位点在现代药物发现中具有广泛的应用,包括药物再利用,副作用预测和药物-靶标相互作用。尽管已经开发了许多用于比较装订袋的技术,但是该问题仍然构成重大挑战。我们评估三种算法的性能,以计算配体结合位点,APoc,SiteEngine和G-LoSA之间的相似性。我们的评估不仅考虑了识别相似口袋和构建准确的局部比对的能力,而且还考虑了这些比对对序列顺序的依赖性。我们指出了先前编译的数据集的某些缺点,例如包含结构相似的蛋白质,从而导致性能被高估。为了解决这些问题,提出了一种严格的程序来准备无偏的,高质量的基准测试集。此外,我们对使用AutoDock Vina和rDock进行基于结构的虚拟筛选的直接将结合口袋与间接策略对齐的技术进行了比较评估。全面的基准测试表明,G-LoSA提供了相当强大的整体性能,而APoc和SiteEngine的准确性仅在简单数据集的情况下才令人满意。此外,将各种算法结合到元预测器中,可以将检测无关蛋白质中相似结合位点的现有方法的性能提高5-10%。本文中报告的所有数据均可从https://osf.io/6ngbs/免费获得。

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