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Identification of Genomic Aberrations in Cancer Subclones from Heterogeneous Tumor Samples

机译:从异质肿瘤样品中癌症亚克隆的基因组畸变的鉴定。

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摘要

Tumor samples are usually heterogeneous, containing admixture of more than one kind of tumor subclones. Studies of genomic aberrations from heterogeneous tumor data are hindered by the mixed signal of tumor subclone cells. Most of the existing algorithms cannot distinguish contributions of different subclones from the measured single nucleotide polymorphism (SNP) array signals, which may cause erroneous estimation of genomic aberrations. Here, we have introduced a computational method, Cancer Heterogeneity Analysis from SNP-array Experiments (CHASE), to automatically detect subclone proportions and genomic aberrations from heterogeneous tumor samples. Our method is based on HMM, and incorporates EM algorithm to build a statistical model for modeling mixed signal of multiple tumor subclones. We tested the proposed approach on simulated datasets and two real datasets, and the results show that the proposed method can efficiently estimate tumor subclone proportions and recovery the genomic aberrations.
机译:肿瘤样品通常是异质的,包含多种肿瘤亚克隆的混合物。来自异质肿瘤数据的基因组畸变的研究被肿瘤亚克隆细胞的混合信号所阻碍。大多数现有算法无法从测量的单核苷酸多态性(SNP)阵列信号中区分出不同亚克隆的贡献,这可能会导致对基因组像差的错误估计。在这里,我们介绍了一种计算方法,即来自SNP阵列实验(CHASE)的癌症异质性分析,可从异质肿瘤样品中自动检测亚克隆比例和基因组畸变。我们的方法基于HMM,并结合EM算法以建立一个统计模型来建模多个肿瘤亚克隆的混合信号。我们在模拟数据集和两个真实数据集上测试了该方法,结果表明该方法可以有效地估计肿瘤亚克隆的比例并恢复基因组畸变。

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