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Joint analysis of transcriptional and post- transcriptional brain tumor data: searching for emergent properties of cellular systems

机译:转录和转录后脑肿瘤数据的联合分析:寻找细胞系统的新兴特性

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Background Advances in biotechnology offer a fast growing variety of high-throughput data for screening molecular activities of genomic, transcriptional, post-transcriptional and translational observations. However, to date, most computational and algorithmic efforts have been directed at mining data from each of these molecular levels (genomic, transcriptional, etc.) separately. In view of the rapid advances in technology (new generation sequencing, high-throughput proteomics) it is important to address the problem of analyzing these data as a whole, i.e. preserving the emergent properties that appear in the cellular system when all molecular levels are interacting. We analyzed one of the (currently) few datasets that provide both transcriptional and post-transcriptional data of the same samples to investigate the possibility to extract more information, using a joint analysis approach. Results We use Factor Analysis coupled with pre-established knowledge as a theoretical base to achieve this goal. Our intention is to identify structures that contain information from both mRNAs and miRNAs, and that can explain the complexity of the data. Despite the small sample available, we can show that this approach permits identification of meaningful structures, in particular two polycistronic miRNA genes related to transcriptional activity and likely to be relevant in the discrimination between gliosarcomas and other brain tumors. Conclusions This suggests the need to develop methodologies to simultaneously mine information from different levels of biological organization, rather than linking separate analyses performed in parallel.
机译:背景技术生物技术的发展提供了快速增长的各种高通量数据,用于筛选基因组,转录,转录后和翻译观察的分子活性。但是,迄今为止,大多数计算和算法工作都针对分别从这些分子水平(基因组,转录等)的每个数据中进行挖掘。鉴于技术的飞速发展(新一代测序,高通量蛋白质组学),重要的是要解决将这些数据作为一个整体进行分析的问题,即保留所有分子水平相互作用时细胞系统中出现的新兴特性。 。我们使用联合分析方法分析了(当前)提供相同样品的转录和转录后数据的少数几个数据集之一,以研究提取更多信息的可能性。结果我们将因素分析与预先建立的知识相结合作为实现此目标的理论基础。我们的目的是确定包含来自mRNA和miRNA的信息的结构,并且可以解释数据的复杂性。尽管可用的样本量很小,但我们可以证明该方法可以鉴定有意义的结构,特别是与转录活性相关的两个多顺反子miRNA基因,并且可能与胶质肉瘤和其他脑瘤的鉴别有关。结论这表明需要开发一种方法来同时从不同层次的生物组织中挖掘信息,而不是将并行进行的独立分析联系起来。

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