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Precise inference of copy number alterations in tumor samples from SNP arrays

机译:从SNP阵列精确推断肿瘤样品中的拷贝数变化

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摘要

>Motivation: The accurate detection of copy number alterations (CNAs) in human genomes is important for understanding susceptibility to cancer and mechanisms of tumor progression. CNA detection in tumors from single nucleotide polymorphism (SNP) genotyping arrays is a challenging problem due to phenomena such as aneuploidy, stromal contamination, genomic waves and intra-tumor heterogeneity, issues that leading methods do not optimally address.>Results: Here we introduce methods and software (PennCNV-tumor) for fast and accurate CNA detection using signal intensity data from SNP genotyping arrays. We estimate stromal contamination by applying a maximum likelihood approach over multiple discrete genomic intervals. By conditioning on signal intensity across the genome, our method accounts for both aneuploidy and genomic waves. Finally, our method uses a hidden Markov model to integrate multiple sources of information, including total and allele-specific signal intensity at each SNP, as well as physical maps to make posterior inferences of CNAs. Using real data from cancer cell-lines and patient tumors, we demonstrate substantial improvements in accuracy and computational efficiency compared with existing methods.>Availability: Source code, documentation and example datasets are freely available at .>Contact: or >Supplementary information: are available at Bioinformatics online.
机译:>动机:准确检测人类基因组中的拷贝数变化(CNA)对于了解癌症易感性和肿瘤进展机制至关重要。由于非整倍性,基质污染,基因组波和肿瘤内异质性等现象,导致无法通过单核苷酸多态性(SNP)基因分型阵列检测肿瘤中的CNA是一个具有挑战性的问题。>结果:< / strong>在这里,我们介绍使用来自SNP基因分型阵列的信号强度数据进行快速,准确的CNA检测的方法和软件(PennCNV-tumor)。我们通过对多个离散的基因组间隔应用最大似然方法来估计基质污染。通过调节整个基因组的信号强度,我们的方法可以解决非整倍性和基因组波的问题。最后,我们的方法使用隐藏的马尔可夫模型来集成多种信息源,包括每个SNP处的总信号强度和等位基因特有的信号强度,以及用于对CNA进行后验推断的物理图谱。使用来自癌细胞系和患者肿瘤的真实数据,我们证明了与现有方法相比,准确性和计算效率有了显着提高。>可用性:源代码,文档和示例数据集可从以下位置免费获得。>联系人:或>补充信息:可在在线生物信息学中获得。

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