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Quantitatively integrating molecular structure and bioactivity profile evidence into drug-target relationship analysis

机译:定量整合分子结构和生物活性谱证据到药物-靶标关系分析中

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Background Public resources of chemical compound are in a rapid growth both in quantity and the types of data-representation. To comprehensively understand the relationship between the intrinsic features of chemical compounds and protein targets is an essential task to evaluate potential protein-binding function for virtual drug screening. In previous studies, correlations were proposed between bioactivity profiles and target networks, especially when chemical structures were similar. With the lack of effective quantitative methods to uncover such correlation, it is demanding and necessary for us to integrate the information from multiple data sources to produce an comprehensive assessment of the similarity between small molecules, as well as quantitatively uncover the relationship between compounds and their targets by such integrated schema. Results In this study a multi-view based clustering algorithm was introduced to quantitatively integrate compound similarity from both bioactivity profiles and structural fingerprints. Firstly, a hierarchy clustering was performed with the fused similarity on 37 compounds curated from PubChem. Compared to clustering in a single view, the overall common target number within fused classes has been improved by using the integrated similarity, which indicated that the present multi-view based clustering is more efficient by successfully identifying clusters with its members sharing more number of common targets. Analysis in certain classes reveals that mutual complement of the two views for compound description helps to discover missing similar compound when only single view was applied. Then, a large-scale drug virtual screen was performed on 1267 compounds curated from Connectivity Map (CMap) dataset based on the fused similarity, which obtained a better ranking result compared to that of single-view. These comprehensive tests indicated that by combining different data representations; an improved assessment of target-specific compound similarity can be achieved. Conclusions Our study presented an efficient, extendable and quantitative computational model for integration of different compound representations, and expected to provide new clues to improve the virtual drug screening from various pharmacological properties. Scripts, supplementary materials and data used in this study are publicly available at http://lifecenter.sgst.cn/fusion/ webcite .
机译:背景技术化合物的公共资源的数量和数据表示类型都在迅速增长。全面了解化合物的内在特征与蛋白质靶标之间的关系是评估虚拟药物筛选潜在的蛋白质结合功能的一项基本任务。在先前的研究中,特别是在化学结构相似的情况下,提出了生物活性谱与目标网络之间的相关性。由于缺乏有效的定量方法来揭示这种相关性,因此我们需要并有必要整合来自多个数据源的信息以对小分子之间的相似性进行全面评估,并定量地揭示化合物与其化合物之间的关系。这样的集成模式确定目标。结果在本研究中,引入了一种基于多视图的聚类算法,以从生物活性谱和结构指纹中定量整合化合物相似性。首先,对从PubChem精选的37种化合物进行了融合相似性的层次聚类。与单个视图中的聚类相比,融合类中的整体公共目标数量已通过使用集成相似性得到了改善,这表明通过成功地识别成员与其成员共享更多公共数量的聚类,当前基于多视图的聚类更加有效。目标。在某些类别中的分析表明,当仅应用单个视图时,两个用于化合物描述的视图的相互补充有助于发现缺失的相似化合物。然后,基于融合相似度,对从连通图(CMap)数据集策划的1267种化合物进行了大规模药物虚拟筛选,与单视图相比,获得了更好的排名结果。这些综合测试表明,通过组合不同的数据表示;可以实现对目标特异性化合物相似性的改进评估。结论我们的研究提出了一种有效,可扩展和定量的计算模型,用于集成不同化合物表示形式,并有望为改进从各种药理特性进行虚拟药物筛选提供新的线索。本研究中使用的脚本,补充材料和数据可从http://lifecenter.sgst.cn/fusion/webcite上公开获得。

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