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Simultaneous Inference of Cancer Pathways and Tumor Progression from Cross-Sectional Mutation Data

机译:从横断面突变数据中同时推断出癌症途径和肿瘤进展

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>Recent cancer sequencing studies provide a wealth of somatic mutation data from a large number of patients. One of the most intriguing and challenging questions arising from this data is to determine whether the temporal order of somatic mutations in a cancer follows any common progression. Since we usually obtain only one sample from a patient, such inferences are commonly made from cross-sectional data from different patients. This analysis is complicated by the extensive variation in the somatic mutations across different patients, variation that is reduced by examining combinations of mutations in various pathways. Thus far, methods to reconstruct tumor progression at the pathway level have restricted attention to known, a priori defined pathways.>In this work we show how to simultaneously infer pathways and the temporal order of their mutations from cross-sectional data, leveraging on the exclusivity property of driver mutations within a pathway. We define the pathway linear progression model, and derive a combinatorial formulation for the problem of finding the optimal model from mutation data. We show that with enough samples the optimal solution to this problem uniquely identifies the correct model with high probability even when errors are present in the mutation data. We then formulate the problem as an integer linear program (ILP), which allows the analysis of datasets from recent studies with large numbers of samples. We use our algorithm to analyze somatic mutation data from three cancer studies, including two studies from The Cancer Genome Atlas (TCGA) on large number of samples on colorectal cancer and glioblastoma. The models reconstructed with our method capture most of the current knowledge of the progression of somatic mutations in these cancer types, while also providing new insights on the tumor progression at the pathway level.
机译:>最近的癌症测序研究提供了大量来自大量患者的体细胞突变数据。由这些数据引起的最有趣和最具挑战性的问题之一是确定癌症中体细胞突变的时间顺序是否遵循任何常见的进展。由于我们通常仅从患者那里获得一个样本,因此通常是根据不同患者的横截面数据得出这样的推论。由于不同患者之间的体细胞突变存在广泛的差异,因此这种分析变得很复杂,通过检查各种途径中的突变组合可以减少变异。到目前为止,在通路水平上重建肿瘤进展的方法已将注意力局限于已知的先验定义的通路。 >在这项工作中,我们展示了如何同时从交叉途径推断通路及其突变的时间顺序利用路径中驱动程序突变的排他性来获得截面数据。我们定义路径线性进展模型,并针对从突变数据中找到最佳模型的问题导出组合公式。我们表明,有了足够的样本,即使当突变数据中存在错误时,针对此问题的最佳解决方案也可以以高概率唯一地识别正确的模型。然后,我们将问题表示为整数线性程序(ILP),该程序可以分析来自最近研究的大量样本的数据集。我们使用我们的算法来分析来自三项癌症研究的体细胞突变数据,其中包括来自癌症基因组图谱(TCGA)的两项针对大肠癌和成胶质细胞瘤样本的研究。用我们的方法重建的模型捕获了这些癌症类型中体细胞突变进展的最新知识,同时也为通路水平上的肿瘤进展提供了新的见识。

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