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Novel Multi-sample Scheme for Inferring Phylogenetic Markers from Whole Genome Tumor Profiles

机译:从全基因组肿瘤概况推断系统发生标记的新型多样品方案

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Computational cancer phylogenetics seeks to enumerate the temporal sequence of aberrations in tumor evolution, thereby delineating the evolution of possible tumor progression pathways, molecular subtypes and mechanisms of action. We previously developed a pipeline for constructing phylogenies describing evolution between major recurring cell types computationally inferred from whole-genome tumor profiles. The accuracy and detail of the phylogenies, however, depends on the identification of accurate, high-resolution molecular markers of progression, i.e., reproducible regions of aberration that robustly differentiate different subtypes and stages of progression. Here we present a novel hidden Markov model (HMM) scheme for the problem of inferring such phy-logenetically significant markers through joint segmentation and calling of multi-sample tumor data. Our method classifies sets of genome-wide DNA copy number measurements into a partitioning of samples into normal (diploid) or amplified at each probe. It differs from other similar HMM methods in its design specifically for the needs of tumor phylogenetics, by seeking to identify robust markers of progression conserved across a set of copy number profiles. We show an analysis of our method in comparison to other methods on both synthetic and real tumor data, which confirms its effectiveness for tumor phylogeny inference and suggests avenues for future advances.
机译:计算性癌症系统发育学力求枚举肿瘤进化中的畸变的时间顺序,从而描绘出可能的肿瘤进展途径,分子亚型和作用机制的进化。我们先前开发了用于构建系统发育的流水线,用于描述从全基因组肿瘤概况计算得出的主要复发细胞类型之间的进化。然而,系统发育的准确性和细节取决于对进展的准确,高分辨率分子标记物的鉴定,即,可分辨的可重复畸变区域,可以可靠地区分不同的亚型和进展阶段。在这里,我们提出了一种新颖的隐马尔可夫模型(HMM)方案,用于通过联合分割和调用多样本肿瘤数据来推断此类phy遗传学上显着的标记。我们的方法将全基因组DNA拷贝数测量的集合分为正常(二倍体)或在每个探针处扩增的样品。通过寻求识别在一系列拷贝数谱中保守的稳健的进展标记,它在设计上与其他类似的HMM方法不同,专门针对肿瘤系统发生学的需求。我们在合成和真实肿瘤数据上显示了与其他方法相比的分析方法,证实了其对肿瘤系统发生推断的有效性,并为未来的发展提供了途径。

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