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Pathway Relevance Ranking for Tumor Samples through Network-Based Data Integration

机译:通过基于网络的数据集成对肿瘤样品进行通路相关性排名

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摘要

The study of cancer, a highly heterogeneous disease with different causes and clinical outcomes, requires a multi-angle approach and the collection of large multi-omics datasets that, ideally, should be analyzed simultaneously. We present a new pathway relevance ranking method that is able to prioritize pathways according to the information contained in any combination of tumor related omics datasets. Key to the method is the conversion of all available data into a single comprehensive network representation containing not only genes but also individual patient samples. Additionally, all data are linked through a network of previously identified molecular interactions. We demonstrate the performance of the new method by applying it to breast and ovarian cancer datasets from The Cancer Genome Atlas. By integrating gene expression, copy number, mutation and methylation data, the method’s potential to identify key pathways involved in breast cancer development shared by different molecular subtypes is illustrated. Interestingly, certain pathways were ranked equally important for different subtypes, even when the underlying (epi)-genetic disturbances were diverse. Next to prioritizing universally high-scoring pathways, the pathway ranking method was able to identify subtype-specific pathways. Often the score of a pathway could not be motivated by a single mutation, copy number or methylation alteration, but rather by a combination of genetic and epi-genetic disturbances, stressing the need for a network-based data integration approach. The analysis of ovarian tumors, as a function of survival-based subtypes, demonstrated the method’s ability to correctly identify key pathways, irrespective of tumor subtype. A differential analysis of survival-based subtypes revealed several pathways with higher importance for the bad-outcome patient group than for the good-outcome patient group. Many of the pathways exhibiting higher importance for the bad-outcome patient group could be related to ovarian tumor proliferation and survival.
机译:癌症是一种高度异质的疾病,其病因和临床结局不同,需要多角度研究,并且需要收集大量的多组学数据集,而理想情况下,应同时进行分析。我们提出了一种新的途径相关性排名方法,该方法能够根据肿瘤相关组学数据集的任何组合中包含的信息对途径进行优先排序。该方法的关键是将所有可用数据转换成单个综合网络表示形式,不仅包含基因,而且还包含单个患者样品。另外,所有数据都通过先前确定的分子相互作用网络链接。我们通过将其应用于《癌症基因组图谱》的乳腺癌和卵巢癌数据集,证明了该新方法的性能。通过整合基因表达,拷贝数,突变和甲基化数据,该方法具有识别不同分子亚型共有的乳腺癌发展关键途径的潜力。有趣的是,即使潜在的(epi)遗传干扰多种多样,某些途径对于不同的亚型也同样重要。除了优先考虑普遍得分较高的途径外,途径排名方法还可以识别亚型特异性途径。通常,途径的分数不能由单个突变,拷贝数或甲基化改变来驱动,而可以由遗传和表观遗传干扰的组合来驱动,从而强调了对基于网络的数据集成方法的需求。对卵巢肿瘤的分析(作为基于生存的亚型的函数)证明了该方法能够正确识别关键途径,而与肿瘤亚型无关。对以生存为基础的亚型的差异分析显示,好结果患者组的几种途径比好结果患者组具有更高的重要性。对不良结果患者组显示出更高重要性的许多途径可能与卵巢肿瘤的增殖和存活有关。

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