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gpps: an ILP-based approach for inferring cancer progression with mutation losses from single cell data

机译:GPP:一种基于ILP的方法,用于从单细胞数据中具有突变损失的推断性癌症进展

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Cancer progression reconstruction is an important development stemming from the phylogenetics field. In this context, the reconstruction of the phylogeny representing the evolutionary history presents some peculiar aspects that depend on the technology used to obtain the data to analyze: Single Cell DNA Sequencing data have great specificity, but are affected by moderate false negative and missing value rates. Moreover, there has been some recent evidence of back mutations in cancer: this phenomenon is currently widely ignored. We present a new tool, gpps, that reconstructs a tumor phylogeny from Single Cell Sequencing data, allowing each mutation to be lost at most a fixed number of times. The General Parsimony Phylogeny from Single cell (gpps) tool is open source and available at https://github.com/AlgoLab/gpps . gpps provides new insights to the analysis of intra-tumor heterogeneity by proposing a new progression model to the field of cancer phylogeny reconstruction on Single Cell data.
机译:癌症进展重建是从系统发育领域源的重要发展。在这种情况下,系统发育的较进化史提供了一些依赖于用于获取数据的技术,独特的方面重建来分析:单细胞DNA测序数据有很大的特殊性,但适度的假阴性和遗漏值率影响。此外,最近患有癌症的最近突变的证据:目前广泛忽略了这种现象。我们提出了一种新的工具GPP,其从单细胞测序数据重建肿瘤系统发生,允许每个突变在最多的固定次数中丢失。来自单细胞(GPPS)工具的一般例异性系统发育是开源的,可在https://github.com/algolab/gpps上获得。 GPP通过向单细胞数据提出新的进展模型来分析肿瘤内异质性的新见解。

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