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Leveraging Spatial Variation in Tumor Purity for Improved Somatic Variant Calling of Archival Tumor Only Samples

机译:利用肿瘤纯度的空间变异性来改善仅存档肿瘤样本的体细胞变异调用

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摘要

Archival tumor samples represent a rich resource of annotated specimens for translational genomics research. However, standard variant calling approaches require a matched normal sample from the same individual, which is often not available in the retrospective setting, making it difficult to distinguish between true somatic variants and individual-specific germline variants. Archival sections often contain adjacent normal tissue, but this tissue can include infiltrating tumor cells. As existing comparative somatic variant callers are designed to exclude variants present in the normal sample, a novel approach is required to leverage adjacent normal tissue with infiltrating tumor cells for somatic variant calling. Here we present lumosVar 2.0, a software package designed to jointly analyze multiple samples from the same patient, built upon our previous single sample tumor only variant caller lumosVar 1.0. The approach assumes that the allelic fraction of somatic variants and germline variants follow different patterns as tumor content and copy number state change. lumosVar 2.0 estimates allele specific copy number and tumor sample fractions from the data, and uses a to model to determine expected allelic fractions for somatic and germline variants and to classify variants accordingly. To evaluate the utility of lumosVar 2.0 to jointly call somatic variants with tumor and adjacent normal samples, we used a glioblastoma dataset with matched high and low tumor content and germline whole exome sequencing data (for true somatic variants) available for each patient. Both sensitivity and positive predictive value were improved when analyzing the high tumor and low tumor samples jointly compared to analyzing the samples individually or in-silico pooling of the two samples. Finally, we applied this approach to a set of breast and prostate archival tumor samples for which tumor blocks containing adjacent normal tissue were available for sequencing. Joint analysis using lumosVar 2.0 detected several variants, including known cancer hotspot mutations that were not detected by standard somatic variant calling tools using the adjacent tissue as presumed normal reference. Together, these results demonstrate the utility of leveraging paired tissue samples to improve somatic variant calling when a constitutional sample is not available.
机译:档案肿瘤样品代表了丰富的注释标本资源,可用于转化基因组学研究。但是,标准变体检出方法需要来自同一个体的匹配的正常样品,这在回顾性环境中通常不可用,因此很难区分真正的体细胞变体和个体特异性种系变体。档案切片通常包含相邻的正常组织,但是该组织可以包括浸润的肿瘤细胞。由于现有的比较体细胞变体呼叫者被设计为排除正常样品中存在的变体,因此需要一种新颖的方法来利用浸润肿瘤细胞的邻近正常组织进行体细胞变体呼叫。在这里,我们介绍lumosVar 2.0,该软件包旨在共同分析来自同一患者的多个样本,该软件包基于我们以前的单个样本肿瘤唯一变异调用者lumosVar 1.0建立。该方法假定体细胞变体和种系变体的等位基因部分遵循不同的模式,如肿瘤含量和拷贝数状态变化。 lumosVar 2.0可从数据中估算等位基因特异性拷贝数和肿瘤样本分数,并使用进行建模以确定体细胞和种系变体的预期等位基因分数,并相应地对变体进行分类。为了评估lumosVar 2.0与肿瘤和邻近正常样本联合调用体细胞变体的效用,我们使用了胶质母细胞瘤数据集,该数据集具有匹配的高和低肿瘤含量,以及每个患者可用的种系全外显子组测序数据(对于真正的体细胞变体)。与单独分析样品或两种样品进行计算机内合并相比,联合分析高肿瘤和低肿瘤样品时,灵敏度和阳性预测值均得到改善。最后,我们将这种方法应用于一组乳房和前列腺档案肿瘤样品,其中包含相邻正常组织的肿瘤块可用于测序。使用lumosVar 2.0进行的联合分析检测到了多种变体,包括已知的癌症热点突变,而标准的体细胞变体调用工具没有使用相邻的组织作为假定的正常参照来检测这些突变。总之,这些结果证明了当组织样本不可用时,利用配对的组织样本来改善体细胞变异的功能。

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