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LowMACA: exploiting protein family analysis for the identification of rare driver mutations in cancer

机译:LowMACA:利用蛋白质家族分析来鉴定癌症中罕见的驱动基因突变

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摘要

BackgroundThe increasing availability of resequencing data has led to a better understanding of the most important genes in cancer development. Nevertheless, the mutational landscape of many tumor types is heterogeneous and encompasses a long tail of potential driver genes that are systematically excluded by currently available methods due to the low frequency of their mutations. We developed LowMACA (Low frequency Mutations Analysis via Consensus Alignment), a method that combines the mutations of various proteins sharing the same functional domains to identify conserved residues that harbor clustered mutations in multiple sequence alignments. LowMACA is designed to visualize and statistically assess potential driver genes through the identification of their mutational hotspots.
机译:背景技术重新测序数据的可用性不断提高,导致人们对癌症发展中最重要的基因有了更好的了解。然而,许多肿瘤类型的突变态势是异质的,并且包含潜在驱动基因的长尾巴,由于其突变的频率较低,这些潜在驱动基因被当前可用的方法系统地排除了。我们开发了LowMACA(通过共有序列比对进行低频突变分析),该方法结合了共享相同功能域的各种蛋白质的突变,以鉴定在多个序列比对中具有簇状突变的保守残基。 LowMACA旨在通过识别潜在的驱动基因突变热点来对其进行可视化和统计评估。

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