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BAMSE: Bayesian model selection for tumor phylogeny inference among multiple tumor samples

机译:BAMSE:在多个肿瘤样本中进行肿瘤系统发生推断的贝叶斯模型选择

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Intra-tumor heterogeneity is believed to be a major source of confounding analysis and treatment resistance. In this research we introduce BAMSE, a Bayesian model based tool for intra-tumor heterogeneity analysis of bulk tumor sequencing results across multiple samples. BAMSE takes as input a list of somatic mutations and their corresponding reference and variant read counts, clusters these mutations into sub-clones and outputs a list of high probability evolutionary trees, each representing a scenario for clonal evolution of the tumor. We use a Hierarchical Uniform Prior for clustering of mutations into subclones and a uniform prior over tree topologies describing the evolutionary relations between them. This way, all configurations that have equal number of subclones are assigned equal prior, leading to an unbiased model selection. We show that for this model, to calculate the posterior for a model with K subclones, we need to calculate an integral over a K-1 simplex. These integrals are calculated numerically using a series of convolutions, allowing fast and accurate calculation of the posterior probability. Finally, for the selected high-probable models, we use convex optimization to determine the maximum likelihood cell fraction for each subclone. Both synthetic and experimental data are used to benchmark BAMSE against existing tools for analysis of intra-tumor heterogeneity of bulk samples. Unbiased model selection, accurate calculation of subclonal cell fractions and short runtimes are the main advantages of BAMSE. We will extend BAMSE to account for copy number variations in a future work. BAMSE is available at https://github.com/HoseinT/BAMSE.
机译:肿瘤内异质性被认为是混淆分析和治疗抗性的主要来源。在这项研究中,我们介绍了BAMSE,这是一种基于贝叶斯模型的工具,可用于对多个样品中的大块肿瘤测序结果进行肿瘤内异质性分析。 BAMSE将体细胞突变及其相应的参考和变异阅读计数列表作为输入,将这些突变聚类为亚克隆,并输出高概率进化树列表,每个树代表肿瘤的克隆进化情况。我们使用层次统一先验将突变聚类为亚克隆,并使用树结构之上的先验统一描述它们之间的进化关系。这样,所有具有相等数量的子克隆的配置都被分配了相同的优先级,从而实现了无偏向的模型选择。我们表明,对于该模型,要计算具有K个亚克隆的模型的后验,我们需要计算K-1个单纯形的积分。这些积分是使用一系列卷积以数值方式计算的,从而可以快速而准确地计算后验概率。最后,对于选定的高概率模型,我们使用凸优化来确定每个子克隆的最大似然单元分数。合成数据和实验数据均用于对照现有工具对BAMSE进行基准测试,以用于分析大量样品的肿瘤内异质性。 BAMSE的主要优点是无偏模型选择,亚克隆细胞组分的准确计算和较短的运行时间。我们将扩展BAMSE,以在以后的工作中解决副本数量的变化。 BAMSE可从https://github.com/HoseinT/BAMSE获得。

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