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Computational Method for Estimating DNA Copy Numbers in Normal Samples Cancer Cell Lines and Solid Tumors Using Array Comparative Genomic Hybridization

机译:使用阵列比较基因组杂交估算正常样品癌细胞系和实体瘤中DNA拷贝数的计算方法

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摘要

Genomic copy number variations are a typical feature of cancer. These variations may influence cancer outcomes as well as effectiveness of treatment. There are many computational methods developed to detect regions with deletions and amplifications without estimating actual copy numbers (CN) in these regions. We have developed a computational method capable of detecting regions with deletions and amplifications as well as estimating actual copy numbers in these regions. The method is based on determining how signal intensity from different probes is related to CN, taking into account changes in the total genome size, and incorporating into analysis contamination of the solid tumors with benign tissue. Hidden Markov Model is used to obtain the most likely CN solution. The method has been implemented for Affymetrix 500K GeneChip arrays and Agilent 244K oligonucleotide arrays. The results of CN analysis for normal cell lines, cancer cell lines, and tumor samples are presented. The method is capable of detecting copy number alterations in tumor samples with up to 80% contamination with benign tissue. Analysis of 178 cancer cell lines reveals multiple regions of common homozygous deletions and strong amplifications encompassing known tumor suppressor genes and oncogenes as well as novel cancer related genes.
机译:基因组拷贝数变异是癌症的典型特征。这些差异可能会影响癌症结局以及治疗效果。已经开发出许多计算方法来检测具有缺失和扩增的区域,而无需估计这些区域中的实际拷贝数(CN)。我们已经开发出一种计算方法,该方法能够检测具有缺失和扩增的区域以及估计这些区域中的实际拷贝数。该方法基于确定来自不同探针的信号强度与CN的关系,并考虑到总基因组大小的变化,并将良性组织对实体瘤的污染纳入分析之中。隐马尔可夫模型用于获得最可能的CN解决方案。该方法已针对Affymetrix 500K GeneChip阵列和Agilent 244K寡核苷酸阵列实施。给出了正常细胞系,癌细胞系和肿瘤样品的CN分析结果。该方法能够检测出良性组织污染高达80%的肿瘤样品中的拷贝数变化。对178个癌细胞系的分析揭示了多个纯合纯合缺失和强大扩增的区域,其中包括已知的肿瘤抑制基因和癌基因以及与癌症相关的新基因。

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