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Framework for Identifying Common Aberrations in DNA Copy Number Data

机译:识别DNA拷贝数数据中常见像差的框架

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High-resolution array comparative genomic hybridization (aCGH) provides exon-level mapping of DNA aberrations in cells or tissues. Such aberrations are central to carcinogenesis and, in many cases, central to targeted therapy of the cancers. Some of the aberrations are sporadic, one-of-a-kind changes in particular tumor samples; others occur frequently and reflect common themes in cancer biology that have interpretable, causal ramifications. Hence, the difficult task of identifying and mapping common, overlapping genomic aberrations (including amplifications and deletions) across a sample set is an important one; it can provide insight for the discovery of oncogenes, tumor suppressors, and the mechanisms by which they drive cancer development.In this paper we present an efficient computational framework for identification and statistical characterization of genomic aberrations that are common to multiple cancer samples in a CGH data set. We present and compare three different algorithmic approaches within the context of that framework. Finally, we apply our methods to two datasets - a collection of 20 breast cancer samples and a panel of 60 diverse human tumor cell lines (the NCI-60). Those analyses identified both known and novel common aberrations containing cancer-related genes. The potential impact of the analytical methods is well demonstrated by new insights into the patterns of deletion of CDKN2A (p16), a tumor suppressor gene crucial for the genesis of many types of cancer.
机译:高分辨率阵列比较基因组杂交(aCGH)提供了细胞或组织中DNA畸变的外显子水平作图。这种畸变对于致癌作用至关重要,在许多情况下,对于癌症的靶向治疗也至关重要。在某些肿瘤样本中,某些像差是偶发性的一种变化。另一些则经常发生并且反映出癌症生物学中具有可解释的因果关系的共同主题。因此,在整个样本集上识别和映射常见的重叠基因组畸变(包括扩增和缺失)是一项艰巨的任务;它可以为发现癌基因,抑癌基因以及它们推动癌症发展的机制提供见解。在本文中,我们提出了一个有效的计算框架,用于鉴定和统计表征CGH中多个癌症样本常见的基因组畸变数据集。我们在该框架的上下文中介绍并比较了三种不同的算法方法。最后,我们将我们的方法应用于两个数据集-收集了20个乳腺癌样品和一组60种不同的人类肿瘤细胞系(NCI-60)。这些分析确定了已知的和新颖的包含癌症相关基因的常见像差。对CDKN2A(p16)缺失模式的新见解很好地证明了分析方法的潜在影响,CDKN2A是对许多类型癌症的发生至关重要的肿瘤抑制基因。

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