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首页> 外文期刊>International journal of bioinformatics research and applications >Efficient calculation of compound similarity based on maximum common subgraphs and its application to prediction of gene transcript levels.
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Efficient calculation of compound similarity based on maximum common subgraphs and its application to prediction of gene transcript levels.

机译:基于最大共有子图的化合物相似性的高效计算及其在预测基因转录水平中的应用。

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摘要

Properties of a chemical entity, both physical and biological, are related to its structure. Since compound similarity can be used to infer properties of novel compounds, in chemoinformatics much attention has been paid to ways of calculating structural similarity. A useful metric to capture the structural similarity between compounds is the relative size of the Maximum Common Subgraph (MCS). The MCS is the largest substructure present in a pair of compounds, when represented as graphs. However, in practice it is difficult to employ such a metric, since calculation of the MCS becomes computationally intractable when it is large. We propose a novel algorithm that significantly reduces computation time for finding large MCSs, compared to a number of state-of-the-art approaches. The use of this algorithm is demonstrated in an application predicting the transcriptional response of breast cancer cell lines to different drug-like compounds, at a scale which is challenging for the most efficient MCS-algorithms to date. In this application 714 compounds were compared.
机译:化学实体的物理和生物学性质都与其结构有关。由于化合物相似性可用于推论新化合物的性质,因此在化学信息学中,人们非常重视计算结构相似性的方法。捕获化合物之间结构相似性的一个有用指标是最大公共子图(MCS)的相对大小。当以图形表示时,MCS是存在于一对化合物中的最大子结构。但是,实际上,采用这样的度量是困难的,因为当MCS大时,MCS的计算变得难以计算。我们提出了一种新颖的算法,与许多最新方法相比,该算法可大大减少查找大型MCS的计算时间。该算法的使用在预测乳腺癌细胞系对不同药物样化合物的转录反应的应用中得到了证明,其规模对于迄今为止最有效的MCS算法是具有挑战性的。在本申请中,对714种化合物进行了比较。

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