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Incorporating inter-relationships between different levels of genomic data into cancer clinical outcome prediction

机译:将不同水平的基因组数据之间的相互关系纳入癌症临床结果预测中

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In order to improve our understanding of cancer and develop multi-layered theoretical models for the underlying mechanism, it is essential to have enhanced understanding of the interactions between multiple levels of genomic data that contribute to tumor formation and progression. Although there exist recent approaches such as a graph-based framework that integrates multi-omics data including copy number alteration, methylation, gene expression, and miRNA data for cancer clinical outcome prediction, most of previous methods treat each genomic data as independent and the possible interplay between them is not explicitly incorporated to the model. However, cancer is dysregulated by multiple levels in the biological system through genomic, epigenomic, transcriptomic, and proteomic level. Thus, genomic features are likely to interact with other genomic features in the different genomic levels. In order to deepen our knowledge, it would be desirable to incorporate such inter-relationship information when integrating multi-omics data for cancer clinical outcome prediction. In this study, we propose a new graph-based framework that integrates not only multi-omics data but inter-relationship between them for better elucidating cancer clinical outcomes. In order to highlight the validity of the proposed framework, serous cystadenocarcinoma data from TCGA was adopted as a pilot task. The proposed model incorporating inter-relationship between different genomic features showed significantly improved performance compared to the model that does not consider inter-relationship when integrating multi-omics data. For the pair between miRNA and gene expression data, the model integrating miRNA, for example, gene expression, and inter-relationship between them with an AUC of 0.8476 (REI) outperformed the model combining miRNA and gene expression data with an AUC of 0.8404. Similar results were also obtained for other pairs between different levels of genomic data. Integration of different levels of data and inter-relationship between them can aid in extracting new biological knowledge by drawing an integrative conclusion from many pieces of information collected from diverse types of genomic data, eventually leading to more effective screening strategies and alternative therapies that may improve outcomes.
机译:为了提高我们对癌症的理解并开发用于潜在机制的多层理论模型,必须对导致肿瘤形成和进展的多种水平的基因组数据之间的相互作用有更深入的了解。尽管最近有一些方法,例如基于图的框架,该框架集成了包括拷贝数变化,甲基化,基因表达和miRNA数据在内的多组学数据,用于癌症临床结果预测,但是大多数以前的方法将每个基因组数据视为独立且可能的它们之间的相互作用没有明确地纳入模型。但是,通过基因组,表观基因组,转录组和蛋白质组学水平,癌症在生物系统中受到多种水平的失调。因此,基因组特征可能与不同基因组水平的其他基因组特征相互作用。为了加深我们的知识,在整合用于癌症临床结果预测的多组学数据时,希望包含这种相互关系信息。在这项研究中,我们提出了一个基于图的新框架,该框架不仅集成了多组学数据,而且还集成了它们之间的相互关系,以更好地阐明癌症的临床结果。为了突出所提出框架的有效性,采用了来自TCGA的浆液性囊腺癌数据作为试验任务。与在集成多组学数据时不考虑相互关系的模型相比,所提出的包含不同基因组特征之间的相互关系的模型显示出显着改善的性能。对于miRNA和基因表达数据之间的配对,将miRNA(例如基因表达)以及它们之间的相互关系与AUC为0.8476(REI)进行整合的模型优于将miRNA和基因表达数据与AUC为0.8404的模型。对于不同水平的基因组数据之间的其他对,也获得了相似的结果。通过从各种类型的基因组数据收集的许多信息中得出综合结论,可以整合不同级别的数据以及它们之间的相互关系,从而有助于提取新的生物学知识,最终导致更有效的筛查策略和替代疗法,可能会改善结果。

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