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Identification of chemogenomic features from drug-target interaction networks using interpretable classifiers

机译:使用可解释的分类器从药物-靶标相互作用网络识别化学基因组学特征

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Motivation: Drug effects are mainly caused by the interactions between drug molecules and their target proteins including primary targets and off-targets. Identification of the molecular mechanisms behind overall drug-target interactions is crucial in the drug design Results: We develop a classifier-based approach to identify chemogenomic features (the underlying associations between drug chemical substructures and protein domains) that are involved in drug-target interaction networks. We propose a novel algorithm for extracting informative chemogenomic features by using L-1 regularized classifiers over the tensor product space of possible drug-target pairs. It is shown that the proposed method can extract a very limited number of chemogenomic features without loosing the performance of predicting drug-target interactions and the extracted features are biologically meaningful. The extracted substructure-domain association network enables us to suggest ligand chemical fragments specific for each protein domain and ligand core substructures important for a wide range of protein families.CT 11th European Conference on Computational Biology (ECCB) / Conference of the Intelligent Systems in Molecular Biology (ISMB)CY SEP 09-12, 2012CL Basel, SWITZERLANDSP Swiss Inst Bioinformat (SIB)
机译:动机:药物作用主要是由药物分子与其靶蛋白(包括主要靶标和脱靶标)之间的相互作用引起的。结果:我们开发了一种基于分类器的方法来识别参与药物-靶标相互作用的化学基因组特征(药物化学亚结构和蛋白质结构域之间的潜在关联),这是确定药物-靶标整体相互作用背后的分子机制的关键。网络。我们提出了一种通过在可能的药物靶标对的张量积空间上使用L-1正则化分类器来提取信息化学基因组特征的新颖算法。结果表明,提出的方法可以提取非常有限数量的化学基因组特征,而不会降低预测药物-靶标相互作用的性能,并且提取的特征具有生物学意义。提取的亚结构域关联网络使我们能够提出针对每个蛋白结构域的配体化学片段和对广泛的蛋白家族重要的配体核心亚结构.CT第11届欧洲计算生物学会议(ECCB)/分子智能系统会议生物学(ISMB)CY SEP 09-12,2012年瑞士巴塞尔CL瑞士生物技术信息研究所(SIB)

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