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CODEX: a normalization and copy number variation detection method for whole exome sequencing

机译:CODEX:用于整个外显子组测序的归一化和拷贝数变异检测方法

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摘要

High-throughput sequencing of DNA coding regions has become a common way of assaying genomic variation in the study of human diseases. Copy number variation (CNV) is an important type of genomic variation, but detecting and characterizing CNV from exome sequencing is challenging due to the high level of biases and artifacts. We propose CODEX, a normalization and CNV calling procedure for whole exome sequencing data. The Poisson latent factor model in CODEX includes terms that specifically remove biases due to GC content, exon capture and amplification efficiency, and latent systemic artifacts. CODEX also includes a Poisson likelihood-based recursive segmentation procedure that explicitly models the count-based exome sequencing data. CODEX is compared to existing methods on a population analysis of HapMap samples from the 1000 Genomes Project, and shown to be more accurate on three microarray-based validation data sets. We further evaluate performance on 222 neuroblastoma samples with matched normals and focus on a well-studied rare somatic CNV within the ATRX gene. We show that the cross-sample normalization procedure of CODEX removes more noise than normalizing the tumor against the matched normal and that the segmentation procedure performs well in detecting CNVs with nested structures.
机译:DNA编码区的高通量测序已成为分析人类疾病研究中基因组变异的常用方法。拷贝数变异(CNV)是基因组变异的一种重要类型,但是由于高水平的偏倚和伪影,从外显子组测序检测和表征CNV具有挑战性。我们提出了CODEX,一种用于整个外显子组测序数据的标准化和CNV调用程序。 CODEX中的Poisson潜在因子模型包括专门消除由于GC含量,外显子捕获和扩增效率以及潜在的系统性伪像引起的偏差的术语。 CODEX还包括基于Poisson似然性的递归分段程序,可对基于计数的外显子组测序数据进行显式建模。在对1000个基因组计划的HapMap样本进行人口分析时,将CODEX与现有方法进行了比较,结果显示在三个基于微阵列的验证数据集上,CODEX的准确性更高。我们进一步评估与正常人匹配的222个神经母细胞瘤样品的性能,并集中研究ATRX基因内经过充分研究的稀有体细胞CNV。我们显示,CODEX的跨样本归一化程序比针对匹配的正常对肿瘤进行归一化处理消除了更多的噪声,并且分割过程在检测具有嵌套结构的CNV方面表现良好。

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