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ProtFus: A Comprehensive Method Characterizing Protein-Protein Interactions of Fusion Proteins

机译:ProtFus:表征融合蛋白蛋白质相互作用的一种综合方法

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摘要

Tailored therapy aims to cure cancer patients effectively and safely, based on the complex interactions between patients' genomic features, disease pathology and drug metabolism. Thus, the continual increase in scientific literature drives the need for efficient methods of data mining to improve the extraction of useful information from texts based on patients' genomic features. An important application of text mining to tailored therapy in cancer encompasses the use of mutations and cancer fusion genes as moieties that change patients' cellular networks to develop cancer, and also affect drug metabolism. Fusion proteins, which are derived from the slippage of two parental genes, are produced in cancer by chromosomal aberrations and trans-splicing. Given that the two parental proteins for predicted fusion proteins are known, we used our previously developed method for identifying chimeric protein–protein interactions (ChiPPIs) associated with the fusion proteins. Here, we present a validation approach that receives fusion proteins of interest, predicts their cellular network alterations by ChiPPI and validates them by our new method, ProtFus, using an online literature search. This process resulted in a set of 358 fusion proteins and their corresponding protein interactions, as a training set for a Naïve Bayes classifier, to identify predicted fusion proteins that have reliable evidence in the literature and that were confirmed experimentally. Next, for a test group of 1817 fusion proteins, we were able to identify from the literature 2908 PPIs in total, across 18 cancer types. The described method, ProtFus, can be used for screening the literature to identify unique cases of fusion proteins and their PPIs, as means of studying alterations of protein networks in cancers.Availability:
机译:量身定制的治疗旨在根据患者的基因组特征,疾病病理学和药物代谢之间的复杂相互作用,有效,安全地治愈癌症患者。因此,科学文献的不断增长推动了对有效数据挖掘方法的需求,以改善基于患者基因组特征从文本中提取有用信息的方法。文本挖掘在癌症的特定治疗中的重要应用包括使用突变和癌症融合基因作为改变患者细胞网络发展为癌症并影响药物代谢的部分。融合蛋白源自两个亲本基因的滑动,是通过染色体畸变和反式剪接在癌症中产生的。鉴于已知两个预测融合蛋白的亲本蛋白,我们使用我们先前开发的方法来鉴定与融合蛋白相关的嵌合蛋白-蛋白相互作用(ChiPPI)。在这里,我们提出一种验证方法,该方法可以接收感兴趣的融合蛋白,通过ChiPPI预测其细胞网络变化,并使用在线文献搜索通过我们的新方法ProtFus对其进行验证。该过程产生了一组358个融合蛋白及其对应的蛋白相互作用,作为朴素贝叶斯分类器的训练集,以鉴定预测的融合蛋白,这些融合蛋白在文献中具有可靠的证据并已通过实验证实。接下来,对于1817个融合蛋白的测试组,我们能够从文献中鉴定出18种癌症类型中总共2908个PPI。所描述的方法ProtFus可用于筛选文献,以鉴定融合蛋白及其PPI的独特病例,作为研究癌症中蛋白质网络变化的手段。

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