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COMPOUND ANALYSIS VIA GRAPH KERNELS INCORPORATING CHIRALITY

机译:通过图形内核加入手性的复合分析

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High accuracy is paramount when predicting biochemical characteristics using Quantitative Structural-Property Relationships (QSPRs). Although existing graph-theoretic kernel methods combined with machine learning techniques are e.cient for QSPR model construction, they cannot distinguish topologically identical chiral compounds which often exhibit di.erent biological characteristics. In this paper, we propose a new method that extends the recently developed tree pattern graph kernel to accommodate stereoisomers. We show that Support Vector Regression (SVR) with a chiral graph kernel is useful for target property prediction by demonstrating its application to a set of human vitamin D receptor ligands currently under consideration for their potential anti-cancer e.ects.
机译:当使用定量结构 - 性质关系(QSPRS)预测生化特征时,高精度至关重要。尽管现有的图形理论内核方法与机器学习技术相结合的是QSPR模型结构,但它们不能区分拓扑相同的手性化合物,其通常表现出DI.RETEN生物学特性。在本文中,我们提出了一种新方法,该方法扩展了最近开发的树形图案图核以适应立体异构体。我们表明,具有手性图核的支持向量回归(SVR)对于目标性质预测,通过证明目前正在考虑其潜在的抗癌E.ects的一组人维生素D受体配体,可用于目标性质预测。

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