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MEGSA: A Powerful and Flexible Framework for Analyzing Mutual Exclusivity of Tumor Mutations

机译:MEGSA:一个强大而灵活的框架用于分析肿瘤突变的互斥性

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摘要

The central challenges in tumor sequencing studies is to identify driver genes and pathways, investigate their functional relationships, and nominate drug targets. The efficiency of these analyses, particularly for infrequently mutated genes, is compromised when subjects carry different combinations of driver mutations. Mutual exclusivity analysis helps address these challenges. To identify mutually exclusive gene sets (MEGS), we developed a powerful and flexible analytic framework based on a likelihood ratio test and a model selection procedure. Extensive simulations demonstrated that our method outperformed existing methods for both statistical power and the capability of identifying the exact MEGS, particularly for highly imbalanced MEGS. Our method can be used for de novo discovery, for pathway-guided searches, or for expanding established small MEGS. We applied our method to the whole-exome sequencing data for 13 cancer types from The Cancer Genome Atlas (TCGA). We identified multiple previously unreported non-pairwise MEGS in multiple cancer types. For acute myeloid leukemia, we identified a MEGS with five genes (FLT3, IDH2, NRAS, KIT, and TP53) and a MEGS (NPM1, TP53, and RUNX1) whose mutation status was strongly associated with survival (p = 6.7 × 10−4). For breast cancer, we identified a significant MEGS consisting of TP53 and four infrequently mutated genes (ARID1A, AKT1, MED23, and TBL1XR1), providing support for their role as cancer drivers.
机译:肿瘤测序研究的主要挑战是识别驱动基因和途径,研究它们的功能关系,并指定药物靶标。当受试者携带不同的驱动程序突变组合时,这些分析的效率(尤其是对于不频繁突变的基因)的效率会受到影响。相互排他性分析有助于解决这些挑战。为了识别互斥的基因集(MEGS),我们基于似然比检验和模型选择程序开发了强大而灵活的分析框架。大量的仿真表明,我们的方法在统计能力和识别精确MEGS的能力方面均优于现有方法,尤其是对于高度失衡的MEGS。我们的方法可用于从头发现,路径引导搜索或扩展已建立的小型MEGS。我们将我们的方法应用于癌症基因组图谱(TCGA)的13种癌症的全外显子组测序数据。我们在多种癌症类型中鉴定了多个先前未报告的非成对的MEGS。对于急性髓细胞性白血病,我们鉴定了具有五个基因(FLT3,IDH2,NRAS,KIT和TP53)的MEGS和一个MEGS(NPM1,TP53和RUNX1),其突变状态与生存密切相关(p = 6.7×10 < sup> −4 )。对于乳腺癌,我们确定了由TP53和四个不频繁突变的基因(ARID1A,AKT1,MED23和TBL1XR1)组成的重要MEGS,为其作为癌症驱动因子的作用提供了支持。

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