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

机译:BAMSE:多个样品中肿瘤系统发育推论的贝叶斯模型选择

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Intra-tumor heterogeneity is known to contribute to cancer complexity and drug resistance. Understanding the number of distinct subclones and the evolutionary relationships between them is scientifically and clinically very important and still a challenging problem. In this paper, we present BAMSE (BAyesian Model Selection for tumor Evolution), a new probabilistic method for inferring subclonal history and lineage tree reconstruction of heterogeneous tumor samples. BAMSE uses somatic mutation read counts as input and can leverage multiple tumor samples accurately and efficiently. In the first step, possible clusterings of mutations into subclones are scored and a user defined number are selected for further analysis. In the next step, for each of these candidates, a list of trees describing the evolutionary relationships between the subclones is generated. These trees are sorted by their posterior probability. The posterior probability is calculated using a Bayesian model that integrates prior belief about the number of subclones, the composition of the tumor and the process of subclonal evolution. BAMSE also takes the sequencing error into account. We benchmarked BAMSE against state of the art software using simulated datasets. In this work we developed a flexible and fast software to reconstruct the history of a tumor's subclonal evolution using somatic mutation read counts across multiple samples. BAMSE software is implemented in Python and is available open source under GNU GLPv3 at https://github.com/HoseinT/BAMSE .
机译:已知肿瘤内的异质性有助于癌症复杂性和耐药性。了解他们之间的不同子轴的数量和它们之间的进化关系在科学上和临床上非常重要,仍然是一个具有挑战性的问题。在本文中,我们呈现了BAMSE(蜂窝成型对肿瘤演化的选择),一种新的概率方法,用于推断非均相肿瘤样品的亚克群历史和谱系重建。 BAMSE使用体细胞突变读数作为输入,可以精确且有效地利用多个肿瘤样品。在第一步中,评分突变的可能突变集群被评分,并且选择用户定义的数量以进一步分析。在下一步中,对于这些候选者中的每一个,生成描述子句之间的进化关系的树列表。这些树木由它们的后验概率进行排序。后验概率是使用贝叶斯模型计算的,该模型整合了关于亚克隆的数量,肿瘤的组成和亚克隆的过程。 BAMSE也会考虑序列错误。我们使用模拟数据集对抗ART软件状态的BAMSE。在这项工作中,我们开发了一种灵活和快速的软件,可以使用多个样本的体细胞突变读数重建肿瘤的厚度演化的历史。 BAMSE软件是在Python中实现的,可在HTTPS://github.com/hoseint/bamse下获得GNU GLPV3下的开源。

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