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Examining Tumor Phylogeny Inference in Noisy Sequencing Data

机译:在嘈杂的测序数据中检查肿瘤的系统发育推断

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A number of methods have recently been proposed to reconstruct the evolutionary history of a tumor from noisy DNA sequencing data. We investigate when and how well these histories can be reconstructed from multi-sample bulk sequencing data when considering only single nucleotide variants (SNVs). We formalize this as the Enumeration Variant Allele Frequency Factorization Problem and provide a novel proof for an upper bound on the number of possible phylogenies consistent with a given dataset. In addition, we propose and assess two methods for increasing the robustness and performance of an existing graph based phylogenetic inference method. We apply our approaches to noisy simulated data and find that low coverage and high noise make it more difficult to identify phylogenies. We also apply our methods to both chronic lymphocytic leukemia and clear cell renal cell carcinoma datasets.
机译:最近已经提出了许多方法来从嘈杂的DNA测序数据重建肿瘤的进化史。当仅考虑单核苷酸变体(SNV)时,我们研究了何时以及如何从多样本批量测序数据中重建这些历史。我们将其形式化为“枚举变异等位基因频率分解问题”,并为与给定数据集一致的可能系统发育数目的上限提供了新颖的证据。此外,我们提出并评估了两种方法,以提高现有图的系统发育推理方法的鲁棒性和性能。我们将我们的方法应用于嘈杂的模拟数据,发现低覆盖率和高噪声使识别系统发育更加困难。我们还将我们的方法应用于慢性淋巴细胞白血病和透明细胞肾细胞癌数据集。

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