基于SOMPLS的多靶点构效关系可视化及化学解释

清 長谷川, 船津 公人
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引用次数: 2

摘要

在定量构效关系(QSAR)中,偏最小二乘(PLS)是一种特别有趣的统计方法。由于PLS在QSAR数据集上的成功应用,PLS已经发展到能够处理与复杂数据结构相关的更多需求。特别是,专注于可视化和化学解释的PLS变体在多目标结构-活性关系建模中非常可取。在本文中,我们采用自组织PLS (SOMPLS)方法来预测对三种丝氨酸蛋白酶受体(凝血酶、胰蛋白酶和Xa因子)的多重抑制活性。Volsurf描述符被用作化学描述符。从SOMPLS分析中,我们可以大致了解每种丝氨酸蛋白酶蛋白所必需的化学特征。它们的化学特征可以通过x射线晶体结构和相应的排列残留物成功验证。
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Visualization and Chemical Interpretation of Multi-Target Structure-Activity Relationships Using SOMPLS
In quantitative structure-activity relationships (QSAR), partial least squares (PLS) are of particular interest as a statistical method. Since successful applications of PLS to QSAR data set, PLS has evolved for coping with more demands associated with complex data structures. Especially, PLS variants focusing on visualization and chemical interpretation are highly desirable in modeling multi-target structure-activity relationships. In this paper, we employed the self-organized PLS (SOMPLS) approach to predict multiple inhibitory activities against three serine protease receptors (Thrombin, Trypsin and Factor Xa). Volsurf descriptors were used as chemical descriptors. From the SOMPLS analysis, we could catch rough trends about what chemical features are essential to each serine protease protein. Their chemical features could be successfully validated from X-ray crystal structures and the corresponding alignment residues.
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Journal of Computer Aided Chemistry
Journal of Computer Aided Chemistry CHEMISTRY, MULTIDISCIPLINARY-
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