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Identification of cancer fusion drivers using network fusion centrality

机译:使用网络融合中心度识别癌症融合驱动程序

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摘要

>Summary: Gene fusions are being discovered at an increasing rate using massively parallel sequencing technologies. Prioritization of cancer fusion drivers for validation cannot be performed using traditional single-gene based methods because fusions involve portions of two partner genes. To address this problem, we propose a novel network analysis method called fusion centrality that is specifically tailored for prioritizing gene fusions. We first propose a domain-based fusion model built on the theory of exon/domain shuffling. The model leads to a hypothesis that a fusion is more likely to be an oncogenic driver if its partner genes act like hubs in a network because the fusion mutation can deregulate normal functions of many other genes and their pathways. The hypothesis is supported by the observation that for most known cancer fusion genes, at least one of the fusion partners appears to be a hub in a network, and even for many fusions both partners appear to be hubs. Based on this model, we construct fusion centrality, a multi-gene-based network metric, and use it to score fusion drivers. We show that the fusion centrality outperforms other single gene-based methods. Specifically, the method successfully predicts most of 38 newly discovered fusions that had validated oncogenic importance. To our best knowledge, this is the first network-based approach for identifying fusion drivers.>Availability: Matlab code implementing the fusion centrality method is available upon request from the corresponding authors.>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>摘要:使用大规模并行测序技术发现基因融合的速度越来越快。无法使用传统的基于单基因的方法对癌症融合驱动程序进行优先排序以进行验证,因为融合涉及两个伙伴基因的一部分。为了解决这个问题,我们提出了一种新颖的网络分析方法,称为融合中心性,专门针对基因融合的优先级而量身定制。我们首先提出基于外显子/域改组理论的基于域的融合模型。该模型得出的假设是,如果融合蛋白的伴侣基因像网络中的集线器一样起作用,那么融合蛋白更可能是致癌的驱动因素,因为融合突变会破坏许多其他基因及其途径的正常功能。该假设得到以下观察的支持:对于大多数已知的癌症融合基因,至少一个融合伙伴似乎是网络中的集线器,甚至对于许多融合,两个伙伴都似乎是集线器。基于此模型,我们构建融合中心性(一种基于多基因的网络指标),并使用它来对融合驱动程序进行评分。我们表明,融合中心性优于其他基于单基因的方法。具体而言,该方法成功地预测了38个新发现的融合物中的大多数,这些融合已验证了致癌性。据我们所知,这是用于识别融合驱动程序的第一种基于网络的方法。>可用性:可根据相应作者的要求提供实现融合中心性方法的Matlab代码。>联系方式: >补充信息:可从在线生物信息学获得。

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