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A multi-labeled tree dissimilarity measure for comparing clonal trees of tumor progression

机译:用于比较肿瘤进展的克隆树的多标签树差异度量

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摘要

We introduce a new dissimilarity measure between a pair of “clonal trees”, each representing the progression and mutational heterogeneity of a tumor sample, constructed by the use of single cell or bulk high throughput sequencing data. In a clonal tree, each vertex represents a specific tumor clone, and is labeled with one or more mutations in a way that each mutation is assigned to the oldest clone that harbors it. Given two clonal trees, our multi-labeled tree dissimilarity (MLTD) measure is defined as the minimum number of mutation/label deletions, (empty) leaf deletions, and vertex (clonal) expansions, applied in any order, to convert each of the two trees to the maximum common tree. We show that the MLTD measure can be computed efficiently in polynomial time and it captures the similarity between trees of different clonal granularity well.
机译:我们在一对“克隆树”之间引入了一种新的差异性度量,每个“克隆树”均表示通过使用单细胞或大量高通量测序数据构建的肿瘤样品的进展和突变异质性。在克隆树中,每个顶点代表一个特定的肿瘤克隆,并以一个或多个突变进行标记,从而将每个突变分配给拥有该突变的最旧克隆。给定两棵无性树,我们的多标签树不相似性(MLTD)度量被定义为以任何顺序应用以转换每一个无性树的突变/标签缺失,(空)叶缺失和顶点(无性)扩展的最小数量。两棵树到最大普通树。我们表明,MLTD度量可以在多项式时间内有效地计算,并且很好地捕获了不同克隆粒度的树之间的相似性。

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