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RECONSTRUCTING TUMOR PHYLOGENIES FROM HETEROGENEOUS SINGLE-CELL DATA

机译:从异质单细胞数据重建肿瘤发生

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Studies of gene expression in cancerous tumors have revealed that tumors presenting indistinguishable symptoms in the clinic can be substantially different entities at the molecular level. The ability to distinguish between these genetically distinct cancers will make possible more accurate prognoses and more finely targeted therapeutics, provided we can characterize commonly occurring cancer sub-types and the specific molecular abnormalities that produce them. We develop a new method for identifying these common tumor progression pathways by applying phylogeny inference algorithms to single-cell assays, taking advantage of information on tumor heterogeneity lost to prior microarray-based approaches. We combine this approach with expectation maximization to infer unknown parameters used in the phylogeny construction. We further develop new algorithms to merge inferred trees across different assays. We validate the expectation maximization method on simulated data and demonstrate the combined approach on a set of fluorescent in situ hybridization (FISH) data measuring cell-by-cell gene and chromosome copy numbers in a large sample of breast cancers. The results further validate the proposed computational methods by showing consistency with several previous findings on these cancers and provide novel insights into the mechanisms of tumor progression in these patients.
机译:对癌性肿瘤中的基因表达进行的研究表明,在临床上表现出难以区分的症状的肿瘤在分子水平上可能是实质上不同的实体。区分这些遗传上不同的癌症的能力将使更准确的预后和更精确的靶向治疗成为可能,只要我们能够表征常见的癌症亚型和产生它们的特定分子异常。我们开发了一种新的方法,通过将系统发育推断算法应用于单细胞测定法,利用有关先前基于微阵列方法的肿瘤异质性信息,来鉴定这些常见的肿瘤进展途径。我们将这种方法与期望最大化相结合,以推断出系统发育构建中使用的未知参数。我们进一步开发了新的算法来合并不同检测方法中的推断树。我们验证了模拟数据上的期望最大化方法,并在一套荧光原位杂交(FISH)数据上证明了该组合方法,该数据可测量大量乳腺癌样本中的逐细胞基因和染色体拷贝数。这些结果通过显示与这些癌症的一些先前发现的一致性进一步验证了所提出的计算方法,并提供了对这些患者肿瘤进展机制的新颖见解。

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