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PNAS Plus: Leveraging protein dynamics to identify cancer mutational hotspots using 3D structures

机译:PNAS Plus:利用3D结构利用蛋白质动力学来识别癌症突变热点

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摘要

Large-scale exome sequencing of tumors has enabled the identification of cancer drivers using recurrence-based approaches. Some of these methods also employ 3D protein structures to identify mutational hotspots in cancer-associated genes. In determining such mutational clusters in structures, existing approaches overlook protein dynamics, despite its essential role in protein function. We present a framework to identify cancer driver genes using a dynamics-based search of mutational hotspot communities. Mutations are mapped to protein structures, which are partitioned into distinct residue communities. These communities are identified in a framework where residue–residue contact edges are weighted by correlated motions (as inferred by dynamics-based models). We then search for signals of positive selection among these residue communities to identify putative driver genes, while applying our method to the TCGA (The Cancer Genome Atlas) PanCancer Atlas missense mutation catalog. Overall, we predict 1 or more mutational hotspots within the resolved structures of proteins encoded by 434 genes. These genes were enriched among biological processes associated with tumor progression. Additionally, a comparison between our approach and existing cancer hotspot detection methods using structural data suggests that including protein dynamics significantly increases the sensitivity of driver detection.
机译:肿瘤的大规模外显子组测序使得能够使用基于复发的方法鉴定癌症驱动因素。这些方法中的一些还采用3D蛋白结构来识别癌症相关基因中的突变热点。在确定结构中的此类突变簇时,现有方法忽略了蛋白质动力学,尽管其在蛋白质功能中起着至关重要的作用。我们提出了一个框架,使用基于动力学的突变热点社区搜索来识别癌症驱动基因。突变被映射到蛋白质结构,该蛋白质结构被划分为不同的残基群落。在一个框架中识别这些群落,在该框架中,残基与残渣的接触边缘通过相关运动加权(由基于动力学的模型推断)。然后,在将我们的方法应用于TCGA(癌症基因组图谱)PanCancer Atlas Missense突变目录时,我们在这些残基群落中寻找阳性选择信号以鉴定推定的驱动基因。总体而言,我们预测434个基因编码的蛋白质的分辨结构中存在1个或多个突变热点。这些基因在与肿瘤进展相关的生物学过程中富集。此外,使用结构数据将我们的方法与现有的癌症热点检测方法进行比较,结果表明,包含蛋白质动力学可以大大提高驾驶员检测的敏感性。

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