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Bioinformatics Knowledge Map for Analysis of Beta-Catenin Function in Cancer

机译:生物信息学知识图谱分析癌症中β-连环蛋白的功能

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摘要

Given the wealth of bioinformatics resources and the growing complexity of biological information, it is valuable to integrate data from disparate sources to gain insight into the role of genes/proteins in health and disease. We have developed a bioinformatics framework that combines literature mining with information from biomedical ontologies and curated databases to create knowledge “maps” of genes/proteins of interest. We applied this approach to the study of beta-catenin, a cell adhesion molecule and transcriptional regulator implicated in cancer. The knowledge map includes post-translational modifications (PTMs), protein-protein interactions, disease-associated mutations, and transcription factors co-activated by beta-catenin and their targets and captures the major processes in which beta-catenin is known to participate. Using the map, we generated testable hypotheses about beta-catenin biology in normal and cancer cells. By focusing on proteins participating in multiple relation types, we identified proteins that may participate in feedback loops regulating beta-catenin transcriptional activity. By combining multiple network relations with PTM proteoform-specific functional information, we proposed a mechanism to explain the observation that the cyclin dependent kinase CDK5 positively regulates beta-catenin co-activator activity. Finally, by overlaying cancer-associated mutation data with sequence features, we observed mutation patterns in several beta-catenin PTM sites and PTM enzyme binding sites that varied by tissue type, suggesting multiple mechanisms by which beta-catenin mutations can contribute to cancer. The approach described, which captures rich information for molecular species from genes and proteins to PTM proteoforms, is extensible to other proteins and their involvement in disease.
机译:鉴于丰富的生物信息学资源和日益复杂的生物信息,整合来自不同来源的数据以深入了解基因/蛋白质在健康和疾病中的作用非常有价值。我们已经开发了一个生物信息学框架,该框架将文献挖掘与来自生物医学本体论和精选数据库的信息相结合,以创建目标基因/蛋白质的知识“图谱”。我们将这种方法用于研究β-catenin,一种与癌症有关的细胞粘附分子和转录调节因子。知识图谱包括翻译后修饰(PTM),蛋白质-蛋白质相互作用,疾病相关的突变以及被β-catenin及其靶标共同激活的转录因子,并捕获了已知β-catenin参与的主要过程。使用该图,我们在正常细胞和癌细胞中生成了有关β-catenin生物学的可检验假说。通过专注于参与多种关系类型的蛋白质,我们确定了可能参与调节β-catenin转录活性的反馈环的蛋白质。通过将多个网络关系与PTM蛋白形式的特定功能信息相结合,我们提出了一种机制来解释细胞周期蛋白依赖性激酶CDK5积极调节β-catenin共激活因子活性这一现象。最后,通过将与癌症相关的突变数据与序列特征相叠加,我们观察到了多个β-cateninPTM位点和PTM酶结合位点的突变模式,这些位点随组织类型而变化,表明β-catenin突变可导致癌症的多种机制。所描述的方法捕获了从基因和蛋白质到PTM蛋白质形式的分子种类的丰富信息,可扩展为其他蛋白质及其在疾病中的参与。

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