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New methods for finding common insertion sites and co-occurring common insertion sites in transposon- and virus-based genetic screens

机译:在基于转座子和病毒的遗传筛选中寻找共同插入位点和共同出现的共同插入位点的新方法

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Insertional mutagenesis screens in mice are used to identify individual genes that drive tumor formation. In these screens, candidate cancer genes are identified if their genomic location is proximal to a common insertion site (CIS) defined by high rates of transposon or retroviral insertions in a given genomic window. In this article, we describe a new method for defining CISs based on a Poisson distribution, the Poisson Regression Insertion Model, and show that this new method is an improvement over previously described methods. We also describe a modification of the method that can identify pairs and higher orders of co-occurring common insertion sites. We apply these methods to two data sets, one generated in a transposon-based screen for gastrointestinal tract cancer genes and another based on the set of retroviral insertions in the Retroviral Tagged Cancer Gene Database. We show that the new methods identify more relevant candidate genes and candidate gene pairs than found using previous methods. Identification of the biologically relevant set of mutations that occur in a single cell and cause tumor progression will aid in the rational design of single and combinatorial therapies in the upcoming age of personalized cancer therapy.
机译:小鼠中的插入诱变筛选用于鉴定驱动肿瘤形成的单个基因。在这些筛选中,如果候选癌基因的基因组位置接近由给定基因组窗口中转座子或逆转录病毒插入的高比率所定义的共同插入位点(CIS),则可以识别候选癌基因。在本文中,我们描述了一种基于Poisson分布的CIS定义新方法,即Poisson回归插入模型,并表明该新方法是对先前描述的方法的改进。我们还描述了该方法的一种修改形式,该方法可以识别配对和更高级别的共同出现的公共插入位点。我们将这些方法应用于两个数据集,一个在基于转座子的胃肠道癌基因筛选中生成,另一个基于在逆转录病毒标记癌基因数据库中的逆转录病毒插入集。我们表明,新方法比使用以前的方法发现了更多相关的候选基因和候选基因对。鉴定在单个细胞中发生并引起肿瘤进展的生物学上相关的突变集,将有助于在个性化癌症治疗即将到来的时代合理设计单一疗法和组合疗法。

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