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A Boolean-based systems biology approach to predict novel genes associated with cancer: Application to colorectal cancer

机译:基于布尔的系统生物学方法预测与癌症相关的新基因:在大肠癌中的应用

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Background Cancer has remarkable complexity at the molecular level, with multiple genes, proteins, pathways and regulatory interconnections being affected. We introduce a systems biology approach to study cancer that formally integrates the available genetic, transcriptomic, epigenetic and molecular knowledge on cancer biology and, as a proof of concept, we apply it to colorectal cancer. Results We first classified all the genes in the human genome into cancer-associated and non-cancer-associated genes based on extensive literature mining. We then selected a set of functional attributes proven to be highly relevant to cancer biology that includes protein kinases, secreted proteins, transcription factors, post-translational modifications of proteins, DNA methylation and tissue specificity. These cancer-associated genes were used to extract 'common cancer fingerprints' through these molecular attributes, and a Boolean logic was implemented in such a way that both the expression data and functional attributes could be rationally integrated, allowing for the generation of a guilt-by-association algorithm to identify novel cancer-associated genes. Finally, these candidate genes are interlaced with the known cancer-related genes in a network analysis aimed at identifying highly conserved gene interactions that impact cancer outcome. We demonstrate the effectiveness of this approach using colorectal cancer as a test case and identify several novel candidate genes that are classified according to their functional attributes. These genes include the following: 1) secreted proteins as potential biomarkers for the early detection of colorectal cancer (FXYD1, GUCA2B, REG3A); 2) kinases as potential drug candidates to prevent tumor growth (CDC42BPB, EPHB3, TRPM6); and 3) potential oncogenic transcription factors (CDK8, MEF2C, ZIC2). Conclusion We argue that this is a holistic approach that faithfully mimics cancer characteristics, efficiently predicts novel cancer-associated genes and has universal applicability to the study and advancement of cancer research.
机译:背景技术癌症在分子水平上具有显着的复杂性,多种基因,蛋白质,途径和调节性相互影响都受到影响。我们引入了一种系统生物学方法来研究癌症,该方法正式整合了有关癌症生物学的现有遗传学,转录组学,表观遗传学和分子学知识,作为概念证明,我们将其应用于结直肠癌。结果基于广泛的文献挖掘,我们首先将人类基因组中的所有基因分为癌症相关基因和非癌症相关基因。然后,我们选择了一组与癌症生物学高度相关的功能属性,包括蛋白激酶,分泌蛋白,转录因子,蛋白的翻译后修饰,DNA甲基化和组织特异性。这些与癌症相关的基因被用来通过这些分子属性提取“常见的癌症指纹”,并且以可以合理整合表达数据和功能属性的方式实施布尔逻辑,从而产生内-感。关联算法识别新型癌症相关基因。最后,这些候选基因在网络分析中与已知的与癌症相关的基因交织在一起,旨在鉴定影响癌症结果的高度保守的基因相互作用。我们证明了使用结直肠癌作为测试案例的这种方法的有效性,并确定了几种根据其功能属性分类的新候选基因。这些基因包括:1)分泌的蛋白作为大肠癌早期检测的潜在生物标志物(FXYD1,GUCA2B,REG3A); 2)激酶作为预防肿瘤生长的潜在候选药物(CDC42BPB,EPHB3,TRPM6); 3)潜在的致癌转录因子(CDK8,MEF2C,ZIC2)。结论我们认为,这是一种全面的方法,可以忠实地模拟癌症特征,有效地预测与癌症相关的新基因,并且在癌症研究和发展中具有普遍适用性。

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