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Structural similarity and descriptor spaces for clustering and development of QSAR models.

机译:QSAR模型的聚类和开发的结构相似性和描述符空间。

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In this paper we study and analyze the behavior of different representational spaces for the clustering and building of QSAR models. Representational spaces based on fingerprint similarity, structural similarity using maximum common subgraphs (MCS) and all maximum common subgraphs (AMCS) approaches are compared against representational spaces based on structural fragments and non-isomorphic fragments (NIF), built using different molecular descriptors. Algorithms for extraction of MCS, AMCS and NIF are described and support vector machine is used for the classification of a dataset corresponding with 74 compounds of 1,4-benzoquinone derivatives. Molecular descriptors are tested in order to build QSAR models for the prediction of the antifungal activity of the dataset. Descriptors based on the consideration of graph connectivity and distances are the most appropriate for building QSAR models. Moreover, models based on approximate similarity improve the statistical of the equations thanks to combining structural similarity, nonisomorphic fragments and descriptors approaches for the creation of more robust and finer prediction equations.
机译:本文针对QSAR模型的聚类和构建,研究和分析了不同表示空间的行为。将基于指纹相似性,使用最大公共子图(MCS)和所有最大公共子图(AMCS)方法的结构相似性的表示空间与基于结构片段和使用不同分子描述符构建的非同构片段(NIF)的表示空间进行比较。描述了提取MCS,AMCS和NIF的算法,并使用支持向量机对与74种1,4-苯醌衍生物的化合物对应的数据集进行分类。测试分子描述符以建立QSAR模型以预测数据集的抗真菌活性。基于图形连通性和距离的描述符对于构建QSAR模型最合适。此外,基于近似相似性的模型通过结合结构相似性,非同构片段和描述符方法来创建更健壮和更精细的预测方程,从而改善了方程的统计性能。

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