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A Novel Graph-based Algorithm to Infer Recurrent Copy Number Variations in Cancer

机译:一种新颖的基于图的算法来推断癌症中的经常性拷贝数变异

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摘要

Many cancers have been linked to copy number variations (CNVs) in the genomic DNA. Although there are existing methods to analyze CNVs from individual samples, cancer-causing genes are more frequently discovered in regions where CNVs are common among tumor samples, also known as recurrent CNVs. Integrating multiple samples and locating recurrent CNV regions remain a challenge, both computationally and conceptually. We propose a new graph-based algorithm for identifying recurrent CNVs using the maximal clique detection technique. The algorithm has an optimal solution, which means all maximal cliques can be identified, and guarantees that the identified CNV regions are the most frequent and that the minimal regions have been delineated among tumor samples. The algorithm has successfully been applied to analyze a large cohort of breast cancer samples and identified some breast cancer-associated genes and pathways.
机译:许多癌症与基因组DNA中的拷贝数变异(CNV)相关。尽管存在分析单个样品中CNV的方法,但在肿瘤样品中CNV常见的区域(也称为复发性CNV)中,更常发现致癌基因。无论是从计算上还是从概念上来说,整合多个样本并确定复发性CNV区域仍然是一个挑战。我们提出了一种基于图的新算法,该算法使用最大派系检测技术来识别复发性CNV。该算法具有最佳解决方案,这意味着可以识别所有最大集团,并确保在肿瘤样本中确定的CNV区域最频繁,并且最小区域已被描绘出来。该算法已成功应用于分析大量的乳腺癌样本,并确定了一些与乳腺癌相关的基因和途径。

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