Kim Dokyoon, Shin Hyunjung, Joung Je-Gun, Lee Su-Yeon, Kim Ju Han
BMC Syst Biol. 2013 Oct 16;7 Suppl 3(Suppl 3):S8. doi: 10.1186/1752-0509-7-S3-S8.
In computational biology, a novel knowledge has been obtained mostly by identifying 'intra-relation,' the relation between entities on a specific biological level such as from gene expression or from microRNA (miRNA) and many such researches have been successful. However, intra-relations are not fully explaining complex cancer mechanisms because the inter-relation information between different levels of genomic data is missing, e.g. miRNA and its target genes. The 'inter-relation' between different levels of genomic data can be constructed from biological experimental data as well as genomic knowledge.
Previously, we have proposed a graph-based framework that integrates with multi-layers of genomic data, copy number alteration, DNA methylation, gene expression, and miRNA expression, for the cancer clinical outcome prediction. However, the limitation of previous work was that we integrated with multi-layers of genomic data without considering of inter-relationship information between genomic features. In this paper, we propose a new integrative framework that combines genomic dataset from gene expression and genomic knowledge from inter-relation between miRNA and gene expression for the clinical outcome prediction as a pilot study.
In order to demonstrate the validity of the proposed method, the prediction of short-term/long-term survival for 82 patients in glioblastoma multiforme (GBM) was adopted as a base task. Based on our results, the accuracy of our predictive model increases because of incorporation of information fused over genomic dataset from gene expression and genomic knowledge from inter-relation between miRNA and gene expression.
In the present study, the intra-relation of gene expression was reconstructed from inter-relation between miRNA and gene expression for prediction of short-term/long-term survival of GBM patients. Our finding suggests that the utilization of external knowledge representing miRNA-mediated regulation of gene expression is substantially useful for elucidating the cancer phenotype.
在计算生物学中,新知识大多是通过识别“内部关系”获得的,即特定生物学层面上实体之间的关系,比如基因表达层面或微小RNA(miRNA)层面,许多此类研究都取得了成功。然而,内部关系并不能完全解释复杂的癌症机制,因为缺少不同层次基因组数据之间的相互关系信息,例如miRNA及其靶基因之间的信息。不同层次基因组数据之间的“相互关系”可以从生物学实验数据以及基因组知识中构建。
此前,我们提出了一个基于图的框架,该框架整合了多层基因组数据、拷贝数改变、DNA甲基化、基因表达和miRNA表达,用于癌症临床结果预测。然而,之前工作的局限性在于我们整合了多层基因组数据,却没有考虑基因组特征之间的相互关系信息。在本文中,作为一项初步研究,我们提出了一个新的整合框架,该框架将来自基因表达的基因组数据集与来自miRNA和基因表达之间相互关系的基因组知识相结合,用于临床结果预测。
为了证明所提方法的有效性,我们将预测82例多形性胶质母细胞瘤(GBM)患者的短期/长期生存情况作为基础任务。基于我们的结果,由于纳入了融合来自基因表达的基因组数据集和来自miRNA与基因表达之间相互关系所得到的基因组知识,我们预测模型的准确性有所提高。
在本研究中,通过miRNA与基因表达之间的相互关系重建了基因表达的内部关系,以预测GBM患者的短期/长期生存情况。我们的发现表明,利用代表miRNA介导的基因表达调控的外部知识对于阐明癌症表型非常有用。