A Consensus Approach to Infer Tumor Evolutionary Histories

Kiya W. Govek, Camden Sikes, Layla Oesper
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引用次数: 30

Abstract

Inspired by recent efforts to model cancer evolution with phylogenetic trees, we consider the problem of finding a consensus tumor evolution tree from a set of conflicting input trees. In contrast to traditional phylogenetic trees, the tumor trees we consider contain features such as mutation labels on internal vertices (in addition to the leaves) and allow multiple mutations to label a single vertex. We describe several distance measures between these tumor trees and present an algorithm to solve the consensus problem called GraPhyC. Our approach uses a weighted directed graph where vertices are sets of mutations and edges are weighted using a function that depends on the number of times a parental relationship is observed between their constituent mutations in the set of input trees. We find a minimum weight spanning arborescence in this graph and prove that the resulting tree minimizes the total distance to all input trees for one of our presented distance measures. We evaluate our GraPhyC method using both simulated and real data. On simulated data we show that our method outperforms a baseline method at finding an appropriate representative tree. Using a set of tumor trees derived from both whole-genome and deep sequencing data from a Chronic Lymphocytic Leukemia patient we find that our approach identifies a tree not included in the set of input trees, but that contains characteristics supported by other reported evolutionary reconstructions of this tumor.
推断肿瘤进化史的共识方法
受最近用系统发育树模拟癌症进化的努力的启发,我们考虑了从一组相互冲突的输入树中找到一致的肿瘤进化树的问题。与传统的系统发育树相比,我们考虑的肿瘤树包含诸如内部顶点(除了叶子)上的突变标签等特征,并允许多个突变标记单个顶点。我们描述了这些肿瘤树之间的几种距离度量,并提出了一种算法来解决称为GraPhyC的共识问题。我们的方法使用加权有向图,其中顶点是突变集,边缘使用一个函数加权,该函数取决于输入树集中它们的组成突变之间观察到的父级关系的次数。我们在这个图中找到了一个最小权值,并证明了生成的树对于我们给出的距离度量之一使到所有输入树的总距离最小。我们使用模拟数据和真实数据来评估我们的GraPhyC方法。在模拟数据上,我们表明我们的方法在寻找合适的代表性树方面优于基线方法。使用一组来自慢性淋巴细胞白血病患者的全基因组和深度测序数据的肿瘤树,我们发现我们的方法识别了一棵不包括在输入树集中的树,但它包含了其他报道的该肿瘤的进化重建所支持的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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