Abstract LB019: Trisicell: Scalable Tumor Phylogeny Reconstruction and Validation Reveals Developmental Origin and Therapeutic Impact of Intratumoral Heterogeneity

F. Mehrabadi, S. Malikić, Kerrie L. Marie, Eva Pérez-Guijarro, Erfan Sadeqi Azer, Howard H. Yang, Can Kızılkale, Charli Gruen, Huaitian Liu, C. Marcelus, A. Buluç, Funda Ergün, M. Lee, G. Merlino, Chi-Ping Day, S. C. Sahinalp
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引用次数: 0

Abstract

Emerging sets of single-cell sequencing data makes it appealing to apply existing tumor phylogeny reconstruction methods to analyze associated intratumor heterogeneity. Unfortunately, tumor phylogeny inference is an NP-hard problem and existing principled methods typically fail to scale up to handle thousands of cells and mutations observed in emerging single-cell data sets. Even though there are greedy heuristics to build hierarchical clustering of cells and mutations, they suffer from well-documented issues in accuracy. Additionally even when “optimal” solutions are feasible, existing approaches only provide a single “most likely” tree to depict the evolutionary processes that may result in an observed collection of cells and mutations. To make matters worse, the vast majority of single-cell sequencing data sets are transcriptomic and as a result, suffer from considerable variation in coverage across mutational loci. In this paper, we introduce Trisicell, a computational toolkit for scalable tumor phylogeny reconstruction and validation from single-cell genomic, exomic or transcriptomic sequencing data. Trisicell has three components: (i) Trisicell-DnC, a new tumor phylogeny reconstruction method from genotype matrices derived from single-cell data, (ii) Trisicell-ConT a new algorithm for constructing the consensus for two or more tumor phylogenies - which may be built through the use of different data types on the same set of cells, or built through the use of different methods on the same data, and (iii) Trisicell-PF, a new partition function method for assessing the likelihood of any user-defined subtree/set of cells to be seeded by a given set of mutations in the phylogeny. Collectively, these tools provide means of identifying and validating robust portions of a tumor phylogeny, offering the ability to focus on the most important (sub)clones and the genomic alterations that seed the associated clonal expansion. We applied Trisicell to a panel of clonal sublines derived from single-cells of a parental mouse melanoma model on which we performed both whole exome and whole transcriptome sequencing. The tumor phylogenies of the clonal sublines built on exomic and transcriptomic mutations by Trisicell-DnC, were shown by Trisicell-ConT to be highly similar and the subtrees comprised of phenotypically similar clonal sublines were shown to be strongly associated by Trisicell-PF to their seeding mutations. In addition, we applied Trisicell to single-cell whole transcriptome sequencing data from a tumor derived from the same parental melanoma cell line, which was subjected to anti-CTLA-4 immunotherapy. The phylogenies generated from both studies featured distinct subtrees, strongly associated with phenotypes including cell differentiation status, tumor growth and therapeutic response. These results suggest that Trisicell can be used for scalable tumor phylogeny reconstruction and validation through both single-cell and clonal-subline sequencing data, which may reveal strong phenotypic associations. In particular, they suggest that the developmental status and phenotypic intratumoral heterogeneity of melanoma originates from observable subclonal variation. Citation Format: Farid Rashidi Mehrabadi, Salem Malikic, Kerrie L. Marie, Eva Perez-Guijarro, Erfan Sadeqi Azer, Howard H. Yang, Can Kizilkale, Charli Gruen, Huaitian Liu, Christina Marcelus, Aydin Buluc, Funda Ergun, Maxwell P. Lee, Glenn Merlino, Chi-Ping Day, S. Cenk Sahinalp. Trisicell: Scalable Tumor Phylogeny Reconstruction and Validation Reveals Developmental Origin and Therapeutic Impact of Intratumoral Heterogeneity [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. Philadelphia (PA): AACR; Cancer Res 2021;81(13_Suppl):Abstract nr LB019.
摘要LB019:三细胞:可扩展肿瘤系统发育重建和验证揭示肿瘤内异质性的发育起源和治疗影响
新出现的单细胞测序数据集使得应用现有的肿瘤系统发育重建方法来分析相关的肿瘤内异质性具有吸引力。不幸的是,肿瘤系统发育推断是一个np难题,现有的原则方法通常无法扩展到处理新兴单细胞数据集中观察到的数千个细胞和突变。尽管存在贪婪的启发式方法来构建细胞和突变的分层聚类,但它们在准确性方面存在众所周知的问题。此外,即使“最优”解决方案是可行的,现有的方法也只能提供一个单一的“最可能”树来描述可能导致观察到的细胞集合和突变的进化过程。更糟糕的是,绝大多数单细胞测序数据集都是转录组的,因此,在突变位点的覆盖范围上存在相当大的差异。在本文中,我们介绍了Trisicell,这是一个计算工具包,用于从单细胞基因组,外显子组或转录组测序数据进行可扩展的肿瘤系统发育重建和验证。Trisicell有三个组成部分:(i) Trisicell-DnC,一种新的基于单细胞数据的基因型矩阵的肿瘤系统发育重建方法,(ii) Trisicell-ConT,一种用于构建两个或多个肿瘤系统发育共识的新算法,可以通过在同一组细胞上使用不同的数据类型来构建,或者通过在同一数据上使用不同的方法来构建,以及(iii) Trisicell-PF,一种新的配分函数方法,用于评估任何用户定义的子树/细胞集被系统发育中给定的一组突变所播种的可能性。总的来说,这些工具提供了识别和验证肿瘤系统发育稳健部分的方法,提供了关注最重要(亚)克隆和为相关克隆扩增提供种子的基因组改变的能力。我们将Trisicell应用于来自亲代小鼠黑色素瘤模型单细胞的克隆亚系,并对其进行了全外显子组和全转录组测序。由Trisicell-DnC构建的外显组和转录组突变的克隆亚系的肿瘤系统发育与Trisicell-ConT显示高度相似,由表型相似的克隆亚系组成的亚树与Trisicell-PF显示的种子突变密切相关。此外,我们将Trisicell应用于来自同一亲本黑色素瘤细胞系的肿瘤的单细胞全转录组测序数据,该肿瘤接受抗ctla -4免疫治疗。两项研究产生的系统发育特征不同的亚树,与表型密切相关,包括细胞分化状态、肿瘤生长和治疗反应。这些结果表明,通过单细胞和克隆亚系测序数据,Trisicell可以用于可扩展的肿瘤系统发育重建和验证,这可能揭示出强烈的表型关联。特别是,他们认为黑色素瘤的发育状态和表型瘤内异质性源于可观察到的亚克隆变异。引文格式:Farid Rashidi Mehrabadi, Salem Malikic, Kerrie L. Marie, Eva perez - gujarro, Erfan Sadeqi Azer, Howard H. Yang, Can Kizilkale, Charli Gruen,刘怀天,Christina Marcelus, Aydin Buluc, Funda Ergun, Maxwell P. Lee, Glenn Merlino, Chi-Ping Day, S. Cenk Sahinalp。三细胞:可扩展的肿瘤系统发育重建和验证揭示了肿瘤内异质性的发育起源和治疗影响[摘要]。见:美国癌症研究协会2021年年会论文集;2021年4月10日至15日和5月17日至21日。费城(PA): AACR;癌症杂志,2021;81(13 -增刊):摘要nr LB019。
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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