用于药物虚拟筛选的图小波对齐核。

Aaron M. Smalter, Jun Huan, G. Lushington
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引用次数: 5

摘要

本文介绍了一种新的图分类算法,并论证了其在药物设计中的有效性。在我们的方法中,我们使用图来模拟化学结构,并应用图的小波分析来创建捕获图局部拓扑的特征。我们设计了一个新的图核函数,利用所创建的特征来构建化学品的预测模型。我们称这种新的图核为图小波对齐核。我们使用一组化学结构-活性预测基准评估了小波对准核的有效性。我们的结果表明,使用核函数产生的性能概况与现有的最先进的化学分类方法相当,有时甚至超过。此外,我们的结果还表明,小波函数的使用显著降低了图核计算的计算成本,速度提高了10倍以上。
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Graph wavelet alignment kernels for drug virtual screening.
In this paper we introduce a novel graph classification algorithm and demonstrate its efficacy in drug design. In our method, we use graphs to model chemical structures and apply a wavelet analysis of graphs to create features capturing graph local topology. We design a novel graph kernel function to utilize the created feature to build predictive models for chemicals. We call the new graph kernel a graph wavelet-alignment kernel. We have evaluated the efficacy of the wavelet-alignment kernel using a set of chemical structure-activity prediction benchmarks. Our results indicate that the use of the kernel function yields performance profiles comparable to, and sometimes exceeding that of the existing state-of-the-art chemical classification approaches. In addition, our results also show that the use of wavelet functions significantly decreases the computational costs for graph kernel computation with more than 10 fold speed up.
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