首页> 外文会议>Bioinformatics and Biomedicine, 2009. BIBM '09 >Accurate Estimation of Genomic Deletions and Normal Cell Contamination by Bayesian Analysis of Mixtures
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Accurate Estimation of Genomic Deletions and Normal Cell Contamination by Bayesian Analysis of Mixtures

机译:通过混合物的贝叶斯分析准确估算基因组缺失和正常细胞污染

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Copy number change is an important form of structural variation in human genomes. Somatic copy number alterations can cause the acquisition of oncogenes and loss of tumor suppressor genes in tumorigenesis. Recent development of SNP array technology facilitates studies on copy number changes in a genome-wide scale with high resolution. However, tumor samples often consist of mixed cancer and normal cells. Such tissue heterogeneity poses as a serious hurdle to analyzing copy number changes and could confound subsequent marker identification and diagnostic classification rooted in specific cells. We report here a statistically-principled in silico approach to accurately estimate genomic deletions and normal tissue contamination, and accordingly recover the true copy number profile in cancer cells. We tested the proposed method on three simulation and one real datasets and obtained highly promising results validated by the ground truth and figure of merit. We expect this newly developed method to be a useful tool in routine copy number analysis of heterogeneous tissues.
机译:拷贝数变化是人类基因组中结构变异的重要形式。体细胞拷贝数的改变可导致致癌基因的获得和肿瘤发生中肿瘤抑制基因的丢失。 SNP阵列技术的最新发展促进了高分辨率全基因组范围内拷贝数变化的研究。但是,肿瘤样本通常由混合的癌细胞和正常细胞组成。这种组织异质性构成了分析拷贝数变化的严重障碍,并可能混淆随后扎根于特定细胞的标记物识别和诊断分类。我们在此报告一种以统计学为基础的计算机模拟方法,可准确估算基因组缺失和正常组织污染,并相应地恢复癌细胞中的真实拷贝数。我们在3个模拟和1个真实数据集上测试了该方法,并获得了非常有前途的结果,该结果已被地面真实性和品质因数验证。我们希望这种新开发的方法将成为异质组织常规拷贝数分析中的有用工具。

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