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A data-driven approach for constructing mutation categories for mutational signature analysis

机译:一种用于构建变形类别的突变签名分析的数据驱动方法

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Mutational processes shape the genomes of cancer patients and their understanding has important applications in diagnosis and treatment. Current modeling of mutational processes by identifying their characteristic signatures views each base substitution in a limited context of a single flanking base on each side. This context definition gives rise to 96 categories of mutations that have become the standard in the field, even though wider contexts have been shown to be informative in specific cases. Here we propose a data-driven approach for constructing a mutation categorization for mutational signature analysis. Our approach is based on the assumption that tumor cells that are exposed to similar mutational processes, show similar expression levels of DNA damage repair genes that are involved in these processes. We attempt to find a categorization that maximizes the agreement between mutation and gene expression data, and show that it outperforms the standard categorization over multiple quality measures. Moreover, we show that the categorization we identify generalizes to unseen data from different cancer types, suggesting that mutation context patterns extend beyond the immediate flanking bases.
机译:突变过程造成癌症患者的基因组及其理解在诊断和治疗中具有重要应用。通过识别其特征签名来观看突变过程的当前建模在每侧的单个侧翼基座的有限上下文中观看每个基础替换。这种上下文定义产生了96类已经成为现场标准的突变,即使在特定情况下被证明是更广泛的环境。在这里,我们提出了一种数据驱动方法,用于构建变型签名分析的突变分类。我们的方法是基于暴露于类似突变过程的肿瘤细胞,显示出与这些过程中涉及的DNA损伤修复基因的类似表达水平。我们试图找到一个分类,最大化突变和基因表达数据之间的协议,并表明它优于多种质量措施的标准分类。此外,我们表明,我们识别我们识别的分类以从不同癌症类型中取消看不见的数据,这表明突变上下文模式延伸超出立即侧翼底座。

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