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BubbleTree: an intuitive visualization to elucidate tumoral aneuploidy and clonality using next generation sequencing data

机译:BubbleTree:直观的可视化视图,可使用下一代测序数据阐明肿瘤的非整倍性和克隆性

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Tumors are characterized by properties of genetic instability, heterogeneity, and significant oligoclonality. Elucidating this intratumoral heterogeneity is challenging but important. In this study, we propose a framework, BubbleTree, to characterize the tumor clonality using next generation sequencing (NGS) data. BubbleTree simultaneously elucidates the complexity of a tumor biopsy, estimating cancerous cell purity, tumor ploidy, allele-specific copy number, and clonality and represents this in an intuitive graph. We further developed a three-step heuristic method to automate the interpretation of the BubbleTree graph, using a divide-and-conquer strategy. In this study, we demonstrated the performance of BubbleTree with comparisons to similar commonly used tools such as THetA2, ABSOLUTE, AbsCN-seq and ASCAT, using both simulated and patient-derived data. BubbleTree outperformed these tools, particularly in identifying tumor subclonal populations and polyploidy. We further demonstrated Bubble-Tree's utility in tracking clonality changes from patients' primary to metastatic tumor and dating somatic single nucleotide and copy number variants along the tumor clonal evolution. Overall, the BubbleTree graph and corresponding model is a powerful approach to provide a comprehensive spectrum of the heterogeneous tumor karyotype in human tumors. BubbleTree is R-based and freely available to the research community (https://www.bioconductor.org/packages/release/bioc/html/BubbleTree.html).
机译:肿瘤的特征是遗传不稳定,异质性和明显的寡聚性。阐明这种肿瘤内异质性具有挑战性,但很重要。在这项研究中,我们提出了一个名为BubbleTree的框架,用于使用下一代测序(NGS)数据表征肿瘤的克隆性。 BubbleTree同时阐明了肿瘤活检的复杂性,估算了癌细胞的纯度,肿瘤倍性,等位基因特异的拷贝数和克隆性,并在直观的图中表示出来。我们进一步开发了一种三步启发式方法,使用分而治之策略自动执行BubbleTree图的解释。在这项研究中,我们使用模拟数据和患者衍生数据,与类似的常用工具(如THetA2,ABSOLUTE,AbsCN-seq和ASCAT)进行比较,证明了BubbleTree的性能。 BubbleTree的性能优于这些工具,特别是在识别肿瘤亚克隆群体和多倍体方面。我们进一步证明了Bubble-Tree在跟踪从患者原发性肿瘤到转移性肿瘤的克隆性变化以及沿肿瘤克隆进化确定体细胞单核苷酸和拷贝数变异的日期方面的效用。总体而言,BubbleTree图和相应的模型是一种强大的方法,可提供人类肿瘤中异质性肿瘤核型的全面范围。 BubbleTree基于R,可免费提供给研究社区(https://www.bioconductor.org/packages/release/bioc/html/BubbleTree.html)。

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