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Identification of Copy Number Aberrations in Breast Cancer Subtypes Using Persistence Topology

机译:使用持久性拓扑识别乳腺癌亚型中的拷贝数畸变

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摘要

DNA copy number aberrations (CNAs) are of biological and medical interest because they help identify regulatory mechanisms underlying tumor initiation and evolution. Identification of tumor-driving CNAs (driver CNAs) however remains a challenging task, because they are frequently hidden by CNAs that are the product of random events that take place during tumor evolution. Experimental detection of CNAs is commonly accomplished through array comparative genomic hybridization (aCGH) assays followed by supervised and/or unsupervised statistical methods that combine the segmented profiles of all patients to identify driver CNAs. Here, we extend a previously-presented supervised algorithm for the identification of CNAs that is based on a topological representation of the data. Our method associates a two-dimensional (2D) point cloud with each aCGH profile and generates a sequence of simplicial complexes, mathematical objects that generalize the concept of a graph. This representation of the data permits segmenting the data at different resolutions and identifying CNAs by interrogating the topological properties of these simplicial complexes. We tested our approach on a published dataset with the goal of identifying specific breast cancer CNAs associated with specific molecular subtypes. Identification of CNAs associated with each subtype was performed by analyzing each subtype separately from the others and by taking the rest of the subtypes as the control. Our results found a new amplification in 11q at the location of the progesterone receptor in the Luminal A subtype. Aberrations in the Luminal B subtype were found only upon removal of the basal-like subtype from the control set. Under those conditions, all regions found in the original publication, except for 17q, were confirmed; all aberrations, except those in chromosome arms 8q and 12q were confirmed in the basal-like subtype. These two chromosome arms, however, were detected only upon removal of three patients with exceedingly large copy number values. More importantly, we detected 10 and 21 additional regions in the Luminal B and basal-like subtypes, respectively. Most of the additional regions were either validated on an independent dataset and/or using GISTIC. Furthermore, we found three new CNAs in the basal-like subtype: a combination of gains and losses in 1p, a gain in 2p and a loss in 14q. Based on these results, we suggest that topological approaches that incorporate multiresolution analyses and that interrogate topological properties of the data can help in the identification of copy number changes in cancer.
机译:DNA拷贝数畸变(CNA)具有生物学和医学意义,因为它们有助于识别肿瘤发生和发展的调控机制。然而,确定肿瘤驱动CNA(驱动程序CNA)仍然是一项艰巨的任务,因为它们经常被CNA隐藏,而CNA是在肿瘤进化过程中发生的随机事件的产物。 CNA的实验检测通常通过阵列比较基因组杂交(aCGH)分析,然后通过监督和/或不受监督的统计方法来完成,该方法结合了所有患者的分段特征以识别驱动器CNA。在这里,我们扩展了先前提出的监督算法,用于基于数据的拓扑表示来识别CNA。我们的方法将二维(2D)点云与每个aCGH轮廓相关联,并生成一系列简单化复杂物(数学对象,概括了图的概念)。数据的这种表示方式允许以不同的分辨率对数据进行分段,并通过询问这些简单络合物的拓扑特性来识别CNA。我们在已发布的数据集上测试了我们的方法,目的是确定与特定分子亚型相关的特定乳腺癌CNA。通过与其他亚型分开分析每个亚型并以其余亚型为对照,进行与每个亚型相关的CNA的鉴定。我们的结果在Luminal A亚型的孕酮受体位置发现了11q的新扩增。仅在从对照组中去除了基底样亚型后,才发现Luminal B亚型的畸变。在这种情况下,除了17q外,所有在原始出版物中发现的区域都得到了确认;除了基底臂亚型中的第8q和12q染色体外的所有畸变均得到确认。但是,仅在删除了三个拷贝数值过大的患者时才检测到这两个染色体臂。更重要的是,我们分别在Luminal B和基底样亚型中检测到了10个和21个其他区域。大多数其他区域要么在独立的数据集上和/或使用GISTIC进行了验证。此外,我们在基底样亚型中发现了三个新的CNA:1p得失组合,2p得益组合和14q得益组合。基于这些结果,我们建议结合多分辨率分析的拓扑方法以及查询数据的拓扑特性可以帮助识别癌症中拷贝数的变化。

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