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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >CONDEL: Detecting Copy Number Variation and Genotyping Deletion Zygosity from Single Tumor Samples Using Sequence Data
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CONDEL: Detecting Copy Number Variation and Genotyping Deletion Zygosity from Single Tumor Samples Using Sequence Data

机译:条件:使用序列数据检测单个肿瘤样本的拷贝数变异和基因分型删除Zygosity

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摘要

Characterizing copy number variations (CNVs) from sequenced genomes is a both feasible and cost-effective way to search for driver genes in cancer diagnosis. A number of existing algorithms for CNV detection only explored part of the features underlying sequence data and copy number structures, resulting in limited performance. Here, we describe CONDEL, a method for detecting CNVs from single tumor samples using high-throughput sequence data. CONDEL utilizes a novel statistic in combination with a peel-off scheme to assess the statistical significance of genome bins, and adopts a Bayesian approach to infer copy number gains, losses, and deletion zygosity based on statistical mixture models. We compare CONDEL to six peer methods on a large number of simulation datasets, showing improved performance in terms of true positive and false positive rates, and further validate CONDEL on three real datasets derived from the 1000 Genomes Project and the EGA archive. CONDEL obtained higher consistent results in comparison with other three single sample-based methods, and exclusively identified a number of CNVs that were previously associated with cancers. We conclude that CONDEL is a powerful tool for detecting copy number variations on single tumor samples even if these are sequenced at low-coverage.
机译:表征来自测序基因组的拷贝数变型(CNV)是寻找癌症诊断中的驾驶基因的可行和经济有效的方法。仅用于CNV检测的许多现有算法仅探讨了依据序列数据和复制数字结构的特征的一部分,从而产生有限的性能。这里,我们描述了使用高吞吐量序列数据从单肿瘤样本中检测CNV的方法。条形由结合剥离方案利用新颖的统计来评估基因组箱的统计学意义,并采用基于统计混合模型推断出拷贝数收益,损失和缺失的差异的差异。我们在大量仿真数据集中比较了六个对等方法,在真正的正面和假阳性率方面显示出改善的性能,并进一步验证了从1000个基因组项目和EGA存档的三个真实数据集上验证了条形。与其他三种基于单一样品的方法相比,该否则获得的一致性结果较高,并且专门鉴定了先前与癌症相关的许多CNV。我们得出结论,即使在低覆盖范围内测序,条件是检测单个肿瘤样本上的拷贝数变异的强大工具。

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