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Inferring models of multiscale copy number evolution for single-tumor phylogenetics

机译:单肿瘤系统发育的多尺度拷贝数进化推断模型

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摘要

>Motivation: Phylogenetic algorithms have begun to see widespread use in cancer research to reconstruct processes of evolution in tumor progression. Developing reliable phylogenies for tumor data requires quantitative models of cancer evolution that include the unusual genetic mechanisms by which tumors evolve, such as chromosome abnormalities, and allow for heterogeneity between tumor types and individual patients. Previous work on inferring phylogenies of single tumors by copy number evolution assumed models of uniform rates of genomic gain and loss across different genomic sites and scales, a substantial oversimplification necessitated by a lack of algorithms and quantitative parameters for fitting to more realistic tumor evolution models.>Results: We propose a framework for inferring models of tumor progression from single-cell gene copy number data, including variable rates for different gain and loss events. We propose a new algorithm for identification of most parsimonious combinations of single gene and single chromosome events. We extend it via dynamic programming to include genome duplications. We implement an expectation maximization (EM)-like method to estimate mutation-specific and tumor-specific event rates concurrently with tree reconstruction. Application of our algorithms to real cervical cancer data identifies key genomic events in disease progression consistent with prior literature. Classification experiments on cervical and tongue cancer datasets lead to improved prediction accuracy for the metastasis of primary cervical cancers and for tongue cancer survival.>Availability and implementation: Our software (FISHtrees) and two datasets are available at .>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:系统发生算法已开始在癌症研究中广泛用于重构肿瘤进展的进化过程。为肿瘤数据开发可靠的系统发育,需要癌症演化的定量模型,其中包括肿瘤演化所依赖的异常遗传机制,例如染色体异常,并允许肿瘤类型与个体患者之间存在异质性。以前通过拷贝数进化来推断单个肿瘤的系统发生的工作假设模型是跨不同基因组位点和尺度的一致的基因组增益和丢失率模型,由于缺乏适合更现实的肿瘤进化模型的算法和定量参数,因此大大简化了该过程。 >结果:我们提出了一个框架,用于从单细胞基因拷贝数数据推断出肿瘤进展模型,包括针对不同得失事件的可变比率。我们提出了一种用于识别单基因和单染色体事件的最简约组合的新算法。我们通过动态编程将其扩展为包括基因组重复。我们实施一种期望最大化(EM)的方法来估计与树重建同时发生的突变特异性和肿瘤特异性事件发生率。我们的算法在实际宫颈癌数据中的应用可以确定与现有文献一致的疾病进展中的关键基因组事件。宫颈癌和舌癌数据集的分类实验可提高对原发性宫颈癌转移和舌癌生存率的预测准确性。>可用性和实现:我们的软件(FISHtrees)和两个数据集可在。 strong>联系方式: >补充信息:可从生物信息学在线获得。

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