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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Ranking differential hubs in gene co-expression networks
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Ranking differential hubs in gene co-expression networks

机译:在基因共表达网络中对差异中心进行排名

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Identifying the genes that change their expressions between two conditions (such as normal versus cancer) is a crucial task that can help in understanding the causes of diseases. Differential networking has emerged as a powerful approach to detect the changes in network structures and to identify the differentially connected genes among two networks. However, existing differential network-based methods primarily depend on pairwise comparisons of the genes based on their connectivity. Therefore, these methods cannot capture the essential topological changes in the network structures. In this paper, we propose a novel algorithm, DiffRank, which ranks the genes based on their contribution to the differences between the two networks. To achieve this goal, we define two novel structural scoring measures: a local structure measure (differential connectivity) and a global structure measure (differential betweenness centrality). These measures are optimized by propagating the scores through the network structure and then ranking the genes based on these propagated scores. We demonstrate the effectiveness of DiffRank on synthetic and real datasets. For the synthetic datasets, we developed a simulator for generating synthetic differential scale-free networks, and we compared our method with existing methods. The comparisons show that our algorithm outperforms these existing methods. For the real datasets, we apply the proposed algorithm on several gene expression datasets and demonstrate that the proposed method provides biologically interesting results.
机译:鉴定在两种疾病(例如正常与癌症)之间改变其表达的基因是一项至关重要的任务,可以帮助您了解疾病的原因。差异网络已经成为检测网络结构变化并识别两个网络之间差异连接的基因的有力方法。但是,现有的基于差异网络的方法主要取决于基于基因的连通性对基因进行成对比较。因此,这些方法不能捕获网络结构中的基本拓扑变化。在本文中,我们提出了一种新颖的算法DiffRank,该算法根据基因对两个网络之间差异的贡献来对基因进行排名。为了实现此目标,我们定义了两种新颖的结构评分方法:局部结构度量(差异连接性)和全局结构度量(差异中间性)。通过在网络结构中传播分数,然后基于这些传播的分数对基因进行排名,可以优化这些措施。我们证明了DiffRank在合成和真实数据集上的有效性。对于合成数据集,我们开发了一个用于生成合成差分无标度网络的模拟器,并将我们的方法与现有方法进行了比较。比较表明,我们的算法优于这些现有方法。对于真实的数据集,我们将提出的算法应用于几个基因表达数据集,并证明了提出的方法提供了生物学上有趣的结果。

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