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A Comparative Study of Cluster Detection Algorithms in Protein–Protein Interaction for Drug Target Discovery and Drug Repurposing

机译:蛋白质-蛋白质相互作用中用于药物靶标发现和药物再利用的簇检测算法的比较研究

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The interactions between drugs and their target proteins induce altered expression of genes involved in complex intracellular networks. The properties of these functional network modules are critical for the identification of drug targets, for drug repurposing, and for understanding the underlying mode of action of the drug. The topological modules generated by a computational approach are defined as functional clusters. However, the functions inferred for these topological modules extracted from a large-scale molecular interaction network, such as a protein–protein interaction (PPI) network, could differ depending on different cluster detection algorithms. Moreover, the dynamic gene expression profiles among tissues or cell types causes differential functional interaction patterns between the molecular components. Thus, the connections in the PPI network should be modified by the transcriptomic landscape of specific cell lines before producing topological clusters. Here, we systematically investigated the clusters of a cell-based PPI network by using four cluster detection algorithms. We subsequently compared the performance of these algorithms for target gene prediction, which integrates gene perturbation data with the cell-based PPI network using two drug target prioritization methods, shortest path and diffusion correlation. In addition, we validated the proportion of perturbed genes in clusters by finding candidate anti-breast cancer drugs and confirming our predictions using literature evidence and cases in the ClinicalTrials.gov . Our results indicate that the Walktrap (CW) clustering algorithm achieved the best performance overall in our comparative study.
机译:药物与其靶蛋白之间的相互作用诱导了复杂细胞内网络中涉及的基因表达的改变。这些功能网络模块的属性对于确定药物靶标,进行药物再利用以及了解药物的基本作用方式至关重要。通过计算方法生成的拓扑模块被定义为功能簇。但是,从大规模分子相互作用网络(例如蛋白质-蛋白质相互作用(PPI)网络)提取的这些拓扑模块的推断功能可能会有所不同,具体取决于不同的簇检测算法。此外,组织或细胞类型之间的动态基因表达谱导致分子组分之间的功能相互作用方式不同。因此,在产生拓扑簇之前,应通过特定细胞系的转录组态势来修改PPI网络中的连接。在这里,我们通过使用四种群集检测算法系统地研究了基于单元的PPI网络的群集。随后,我们比较了这些算法对靶基因预测的性能,该算法使用两种药物靶优先排序方法,最短路径和扩散相关性将基因扰动数据与基于细胞的PPI网络集成在一起。此外,我们通过找到候选抗乳腺癌药物并使用ClinicalTrials.gov中的文献证据和案例来确认我们的预测,从而验证了簇中干扰基因的比例。我们的结果表明,Walktrap(CW)聚类算法在我们的比较研究中总体上取得了最佳性能。

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