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A comparative study of multi-omics integration tools for cancer driver gene identification and tumour subtyping

机译:癌症驾驶基因鉴定和肿瘤亚型多OMICS集成工具的比较研究

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摘要

Oncogenesis and cancer can arise as a consequence of a wide range of genomic aberrations including mutations, copy number alterations, expression changes and epigenetic modifications encompassing multiple omics layers. Integrating genomic, transcriptomic, proteomic and epigenomic datasets via multi-omics analysis provides the opportunity to derive a deeper and holistic understanding of the development and progression of cancer. There are two primary approaches to integrating multi-omics data: multi-staged (focused on identifying genes driving cancer) and meta-dimensional (focused on establishing clinically relevant tumour or sample classifications). A number of ready-to-use bioinformatics tools are available to perform both multi-staged and meta-dimensional integration of multi-omics data. In this study, we compared nine different integration tools using real and simulated cancer datasets. The performance of the multi-staged integration tools were assessed at the gene, function and pathway levels, while meta-dimensional integration tools were assessed based on the sample classification performance. Additionally, we discuss the influence of factors such as data representation, sample size, signal and noise on multi-omics data integration. Our results provide current and much needed guidance regarding selection and use of the most appropriate and best performing multi-omics integration tools.
机译:由于包括突变,拷贝数改变,表达变化,表达改变以及包括多个OMIC层的表达变化和表观遗传修饰,因此可以出现肿瘤发生和癌症。通过多OMICS分析整合基因组,转录组,蛋白质组学和表观胶质组织,提供了导出对癌症发展和进展的更深层次和整体理解的机会。整合多OMICS数据有两种主要方法:多阶段(重点关注识别促进癌症的基因)和元维(专注于在临床上建立相关的肿瘤或样品分类)。可以使用多个即用的生物信息系统工具来执行多个OMIC数据的多阶段和元维集成。在这项研究中,我们使用真实和模拟的癌症数据集比较了九种不同的集成工具。在基因,功能和途径水平评估多分阶段积分工具的性能,而基于样本分类性能评估元维集成工具。此外,我们讨论了数据表示,样本大小,信号和噪声等因素对多OMICS数据集成的影响。我们的结果提供了关于选择和使用最合适和最佳性能的多OMIC集成工具的当前和急需指导。

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