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首页> 外文期刊>Cancers >Reverse Engineering Cancer: Inferring Transcriptional Gene Signatures from Copy Number Aberrations with ICAro
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Reverse Engineering Cancer: Inferring Transcriptional Gene Signatures from Copy Number Aberrations with ICAro

机译:逆向工程癌症:使用ICAro从拷贝数畸变推断转录基因特征。

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The characterization of a gene product function is a process that involves multiple laboratory techniques in order to silence the gene itself and to understand the resulting cellular phenotype via several omics profiling. When it comes to tumor cells, usually the translation process from in vitro characterization results to human validation is a difficult journey. Here, we present a simple algorithm to extract mRNA signatures from cancer datasets, where a particular gene has been deleted at the genomic level, ICAro. The process is implemented as a two-step workflow. The first one employs several filters in order to select the two patient subsets: the inactivated one, where the target gene is deleted, and the control one, where large genomic rearrangements should be absent. The second step performs a signature extraction via a Differential Expression analysis and a complementary Random Forest approach to provide an additional gene ranking in terms of information loss. We benchmarked the system robustness on a panel of genes frequently deleted in cancers, where we validated the downregulation of target genes and found a correlation with signatures extracted with the L1000 tool, outperforming random sampling for two out of six L1000 classes. Furthermore, we present a use case correlation with a published transcriptomic experiment. In conclusion, deciphering the complex interactions of the tumor environment is a challenge that requires the integration of several experimental techniques in order to create reproducible results. We implemented a tool which could be of use when trying to find mRNA signatures related to a gene loss event to better understand its function or for a gene-loss associated biomarker research.
机译:基因产物功能的表征是一个涉及多种实验室技术的过程,目的是使基因本身沉默并通过几个组学分析来了解所得的细胞表型。当谈到肿瘤细胞时,通常从体外表征结果到人类验证的翻译过程是艰难的旅程。在这里,我们提出了一种简单的算法,可以从癌症数据集中提取mRNA签名,其中在基因组水平ICAro中已经删除了一个特定基因。该过程分为两步实施。第一个使用多个过滤器以选择两个患者子集:灭活的一个亚型(删除了目标基因)和对照的一个亚型(应不存在较大的基因组重排)。第二步通过差异表达分析和互补的随机森林方法执行签名提取,以提供信息丢失方面的附加基因排名。我们以一组在癌症中经常删除的基因为基准,对系统的稳健性进行了基准测试,在此我们验证了靶基因的下调并发现了与L1000工具提取的特征码的相关性,优于六个L1000类中的两个的随机抽样。此外,我们提出了用例与已发表的转录组实验的相关性。总之,解密肿瘤环境的复杂相互作用是一项挑战,需要整合多种实验技术才能产生可​​再现的结果。我们实施了一种工具,该工具可用于寻找与基因丢失事件相关的mRNA签名,以更好地了解其功能或与基因缺失相关的生物标记物研究。

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