根据肿瘤单细胞DNA测序数据区分线性进化和分支进化。

IF 1.7 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS
Leah L Weber, Mohammed El-Kebir
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引用次数: 4

摘要

背景:癌症起源于体细胞突变引起克隆扩增的进化过程。重建这一进化过程对治疗决策以及理解患者和癌症类型的进化模式都很有用。特别是,将肿瘤的进化过程分类为线性或分支,并了解哪些癌症类型以及哪些患者具有这些轨迹,可以为临床医生和研究人员提供有用的见解。由于当前测序技术的限制和由此产生的问题的复杂性,从单细胞DNA测序数据进行全面的癌症系统发育推断是具有挑战性的,但目前的数据可能提供足够的信号来准确地将肿瘤的进化史分类为线性或分支。结果:我们引入了线性完美系统发育翻转(LPPF)问题,作为测试进化模式的两个替代假设的一种手段,我们证明了这是np困难的。我们开发了Phyolin,它使用约束规划来解决LPPF问题。通过计算机实验和实际数据应用,我们证明了我们的方法的性能,优于竞争对手的机器学习方法。结论:根据肿瘤单细胞DNA测序数据,植藻碱是一种准确、简便、快速的方法,可用于将肿瘤的进化轨迹划分为线性或分支。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Distinguishing linear and branched evolution given single-cell DNA sequencing data of tumors.

Distinguishing linear and branched evolution given single-cell DNA sequencing data of tumors.

Distinguishing linear and branched evolution given single-cell DNA sequencing data of tumors.

Distinguishing linear and branched evolution given single-cell DNA sequencing data of tumors.

Background: Cancer arises from an evolutionary process where somatic mutations give rise to clonal expansions. Reconstructing this evolutionary process is useful for treatment decision-making as well as understanding evolutionary patterns across patients and cancer types. In particular, classifying a tumor's evolutionary process as either linear or branched and understanding what cancer types and which patients have each of these trajectories could provide useful insights for both clinicians and researchers. While comprehensive cancer phylogeny inference from single-cell DNA sequencing data is challenging due to limitations with current sequencing technology and the complexity of the resulting problem, current data might provide sufficient signal to accurately classify a tumor's evolutionary history as either linear or branched.

Results: We introduce the Linear Perfect Phylogeny Flipping (LPPF) problem as a means of testing two alternative hypotheses for the pattern of evolution, which we prove to be NP-hard. We develop Phyolin, which uses constraint programming to solve the LPPF problem. Through both in silico experiments and real data application, we demonstrate the performance of our method, outperforming a competing machine learning approach.

Conclusion: Phyolin is an accurate, easy to use and fast method for classifying an evolutionary trajectory as linear or branched given a tumor's single-cell DNA sequencing data.

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来源期刊
Algorithms for Molecular Biology
Algorithms for Molecular Biology 生物-生化研究方法
CiteScore
2.40
自引率
10.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: Algorithms for Molecular Biology publishes articles on novel algorithms for biological sequence and structure analysis, phylogeny reconstruction, and combinatorial algorithms and machine learning. Areas of interest include but are not limited to: algorithms for RNA and protein structure analysis, gene prediction and genome analysis, comparative sequence analysis and alignment, phylogeny, gene expression, machine learning, and combinatorial algorithms. Where appropriate, manuscripts should describe applications to real-world data. However, pure algorithm papers are also welcome if future applications to biological data are to be expected, or if they address complexity or approximation issues of novel computational problems in molecular biology. Articles about novel software tools will be considered for publication if they contain some algorithmically interesting aspects.
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