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首页> 外文期刊>BioMed research international >Integration Strategy Is a Key Step in Network-Based Analysis and Dramatically Affects Network Topological Properties and Inferring Outcomes
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Integration Strategy Is a Key Step in Network-Based Analysis and Dramatically Affects Network Topological Properties and Inferring Outcomes

机译:集成策略是基于网络的分析中的关键步骤,并且会显着影响网络的拓扑属性并推断结果

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An increasing number of experiments have been designed to detect intracellular and intercellular molecular interactions. Based on these molecular interactions (especially protein interactions), molecular networks have been built for using in several typical applications, such as the discovery of new disease genes and the identification of drug targets and molecular complexes. Because the data are incomplete and a considerable number of false-positive interactions exist, protein interactions from different sources are commonly integrated in network analyses to build a stable molecular network. Although various types of integration strategies are being applied in current studies, the topological properties of the networks from these different integration strategies, especially typical applications based on these network integration strategies, have not been rigorously evaluated. In this paper, systematic analyses were performed to evaluate 11 frequently used methods using two types of integration strategies: empirical and machine learning methods. The topological properties of the networks of these different integration strategies were found to significantly differ. Moreover, these networks were found to dramatically affect the outcomes of typical applications, such as disease gene predictions, drug target detections, and molecular complex identifications. The analysis presented in this paper could provide an important basis for future network-based biological researches.
机译:已经设计了越来越多的实验来检测细胞内和细胞间的分子相互作用。基于这些分子相互作用(尤其是蛋白质相互作用),已经建立了分子网络以用于多种典型应用,例如发现新的疾病基因以及鉴定药物靶标和分子复合物。由于数据不完整且存在大量假阳性相互作用,因此通常将来自不同来源的蛋白质相互作用整合到网络分析中,以建立一个稳定的分子网络。尽管当前的研究中正在使用各种类型的集成策略,但是尚未严格评估来自这些不同集成策略的网络的拓扑特性,尤其是基于这些网络集成策略的典型应用程序。在本文中,进行了系统分析,以评估使用两种集成策略类型的11种常用方法:经验方法和机器学习方法。这些不同的集成策略的网络的拓扑属性被发现显着不同。而且,发现这些网络极大地影响了典型应用的结果,例如疾病基因预测,药物靶标检测和分子复合物鉴定。本文的分析可以为未来基于网络的生物学研究提供重要的基础。

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