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首页> 外文期刊>BMC Bioinformatics >A simplicial complex-based approach to unmixing tumor progression data
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A simplicial complex-based approach to unmixing tumor progression data

机译:基于简单复杂度的方法来分解肿瘤进展数据

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Background Tumorigenesis is an evolutionary process by which tumor cells acquire mutations through successive diversification and differentiation. There is much interest in reconstructing this process of evolution due to its relevance to identifying drivers of mutation and predicting future prognosis and drug response. Efforts are challenged by high tumor heterogeneity, though, both within and among patients. In prior work, we showed that this heterogeneity could be turned into an advantage by computationally reconstructing models of cell populations mixed to different degrees in distinct tumors. Such mixed membership model approaches, however, are still limited in their ability to dissect more than a few well-conserved cell populations across a tumor data set. Results We present a method to improve on current mixed membership model approaches by better accounting for conserved progression pathways between subsets of cancers, which imply a structure to the data that has not previously been exploited. We extend our prior methods, which use an interpretation of the mixture problem as that of reconstructing simple geometric objects called simplices, to instead search for structured unions of simplices called simplicial complexes that one would expect to emerge from mixture processes describing branches along an evolutionary tree. We further improve on the prior work with a novel objective function to better identify mixtures corresponding to parsimonious evolutionary tree models. We demonstrate that this approach improves on our ability to accurately resolve mixtures on simulated data sets and demonstrate its practical applicability on a large RNASeq tumor data set. Conclusions Better exploiting the expected geometric structure for mixed membership models produced from common evolutionary trees allows us to quickly and accurately reconstruct models of cell populations sampled from those trees. In the process, we hope to develop a better understanding of tumor evolution as well as other biological problems that involve interpreting genomic data gathered from heterogeneous populations of cells.
机译:背景肿瘤发生是肿瘤细胞通过连续的多样化和分化而获得突变的进化过程。由于重建与识别突变的驱动因素以及预测未来的预后和药物反应的相关性,人们对重建这一进化过程非常感兴趣。然而,在患者内和患者之间,高异质性挑战了努力。在先前的工作中,我们表明通过计算重建不同肿瘤中不同程度混合的细胞群体模型,可以将这种异质性转化为优势。但是,这种混合成员模型方法在整个肿瘤数据集中解剖多个保守性较高的细胞群体的能力仍然受到限制。结果我们提出了一种方法,可以通过更好地说明癌症子集之间的保守进展途径来改进当前的混合成员模型方法,这暗示着以前没有被利用的数据结构。我们扩展了先前的方法,该方法使用对混合问题的解释,即重构称为单纯形的简单几何对象,来搜索称为单纯形复杂物的结构化联合,即人们希望从描述沿着进化树的分支的混合过程中出现。我们使用新颖的目标函数进一步完善了先前的工作,以更好地识别与简约进化树模型相对应的混合物。我们证明这种方法提高了我们在模拟数据集上准确解析混合物的能力,并证明了其在大型RNASeq肿瘤数据集上的实际适用性。结论更好地利用常见进化树产生的混合成员模型的预期几何结构,可以使我们快速而准确地重建从这些树中采样的细胞群体模型。在此过程中,我们希望对肿瘤的发展以及其他生物学问题有更好的了解,这些生物学问题涉及解释从异质细胞群体收集的基因组数据。

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