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Classifying cancer genome aberrations by their mutually exclusive effects on transcription

机译:通过它们对转录的互斥效应对癌症基因组畸变进行分类

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Malignant tumors are typically caused by a conglomeration of genomic aberrations—including point mutations, small insertions, small deletions, and large copy-number variations. In some cases, specific chemotherapies and targeted drug treatments are effective against tumors that harbor certain genomic aberrations. However, predictive aberrations (biomarkers) have not been identified for many tumor types and treatments. One way to address this problem is to examine the downstream, transcriptional effects of genomic aberrations and to identify characteristic patterns. Even though two tumors harbor different genomic aberrations, the transcriptional effects of those aberrations may be similar. These patterns could be used to inform treatment choices. We used data from 9300 tumors across 25 cancer types from The Cancer Genome Atlas. We used supervised machine learning to evaluate our ability to distinguish between tumors that had mutually exclusive genomic aberrations in specific genes. An ability to accurately distinguish between tumors with aberrations in these genes suggested that the genes have a relatively different downstream effect on transcription, and vice versa. We compared these findings against prior knowledge about signaling networks and drug responses. Our analysis recapitulates known relationships in cancer pathways and identifies gene pairs known to predict responses to the same treatments. For example, in lung adenocarcinomas, gene-expression profiles from tumors with somatic aberrations in EGFR or MET were negatively correlated with each other, in line with prior knowledge that MET amplification causes resistance to EGFR inhibition. In breast carcinomas, we observed high similarity between PTEN and PIK3CA, which play complementary roles in regulating cellular proliferation. In a pan-cancer analysis, we found that genomic aberrations in BRAF and VHL exhibit downstream effects that are clearly distinct from other genes. We show that transcriptional data offer promise as a way to group genomic aberrations according to their downstream effects, and these groupings recapitulate known relationships. Our approach shows potential to help pharmacologists and clinical trialists narrow the search space for candidate gene/drug associations, including for rare mutations, and for identifying potential drug-repurposing opportunities.
机译:恶性肿瘤通常是由基因组畸变的聚集引起的,包括点突变,小插入,小缺失和大拷贝数变异。在某些情况下,特定的化学疗法和靶向药物治疗可有效治疗具有某些基因组异常的肿瘤。但是,尚未针对许多肿瘤类型和治疗方法识别出预测性像差(生物标记物)。解决此问题的一种方法是检查基因组畸变的下游转录效应并鉴定特征模式。即使两个肿瘤具有不同的基因组畸变,这些畸变的转录效应也可能相似。这些模式可用于告知治疗选择。我们使用了来自The Cancer Genome Atlas的25种癌症类型中9300种肿瘤的数据。我们使用监督机器学习来评估我们区分在特定基因中具有互斥的基因组异常的肿瘤的能力。准确区分这些基因中有畸变的肿瘤的能力表明,这些基因对转录的下游影响相对不同,反之亦然。我们将这些发现与有关信号网络和药物反应的现有知识进行了比较。我们的分析概括了癌症途径中的已知关系,并鉴定了已知可预测对相同治疗反应的基因对。例如,在肺腺癌中,与MET扩增引起对EGFR抑制产生抗性的先验知识一致,EGFR或MET中具有体细胞畸变的肿瘤的基因表达谱彼此呈负相关。在乳腺癌中,我们观察到PTEN和PIK3CA之间高度相似,它们在调节细胞增殖中起互补作用。在全癌分析中,我们发现BRAF和VHL中的基因组畸变表现出明显不同于其他基因的下游效应。我们表明,转录数据有望根据其下游效应对基因组畸变进行分组,而这些分组概括了已知的关系。我们的方法显示出潜力,可以帮助药理学家和临床试验人员缩小候选基因/药物关联的搜索空间,包括罕见突变,并确定潜在的重新利用药物的机会。

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