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首页> 外文期刊>PLoS Computational Biology >Inferring Clonal Composition from Multiple Sections of a Breast Cancer
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Inferring Clonal Composition from Multiple Sections of a Breast Cancer

机译:从乳腺癌的多个部位推断克隆组成

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Cancers arise from successive rounds of mutation and selection, generating clonal populations that vary in size, mutational content and drug responsiveness. Ascertaining the clonal composition of a tumor is therefore important both for prognosis and therapy. Mutation counts and frequencies resulting from next-generation sequencing (NGS) potentially reflect a tumor's clonal composition; however, deconvolving NGS data to infer a tumor's clonal structure presents a major challenge. We propose a generative model for NGS data derived from multiple subsections of a single tumor, and we describe an expectation-maximization procedure for estimating the clonal genotypes and relative frequencies using this model. We demonstrate, via simulation, the validity of the approach, and then use our algorithm to assess the clonal composition of a primary breast cancer and associated metastatic lymph node. After dividing the tumor into subsections, we perform exome sequencing for each subsection to assess mutational content, followed by deep sequencing to precisely count normal and variant alleles within each subsection. By quantifying the frequencies of 17 somatic variants, we demonstrate that our algorithm predicts clonal relationships that are both phylogenetically and spatially plausible. Applying this method to larger numbers of tumors should cast light on the clonal evolution of cancers in space and time.
机译:癌症源于连续几轮的突变和选择,产生了大小,突变含量和药物反应性各异的克隆种群。因此,确定肿瘤的克隆组成对于预后和治疗都是重要的。下一代测序(NGS)产生的突变计数和频率可能反映了肿瘤的克隆组成。然而,对NGS​​数据进行反卷积以推断出肿瘤的克隆结构提出了一项重大挑战。我们为来自单个肿瘤多个子部分的NGS数据提出了一个生成模型,并描述了使用该模型估算克隆基因型和相对频率的期望最大化程序。通过仿真,我们证明了该方法的有效性,然后使用我们的算法来评估原发性乳腺癌和相关转移淋巴结的克隆组成。将肿瘤分为小节后,我们对每个小节进行外显子组测序以评估突变含量,然后进行深度测序以精确计数每个小节中的正常和变异等位基因。通过量化17种体细胞变异的频率,我们证明了我们的算法可预测系统发生和空间上合理的克隆关系。将这种方法应用于更大数量的肿瘤,应该可以揭示癌症在空间和时间上的克隆演变。

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