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Integration of multiple heterogeneous omics data

机译:整合多种异构组学数据

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Integration of different genomic profiles is challenging to understand complex diseases in a multi-view manner. Computational method is needed to preserve useful information of data types as well as correct bias. Thus, we proposed a novel framework pattern fusion analysis (PFA), to fuse the local sample patterns into a global pattern of patients with respect to the underlying data, by adaptively aligning the information in each type of biological data. In particular, PFA can adjust the distinct data types and achieve more robust sample pattern within different profiles. To validate the effectiveness of PFA, we tested PFA on various synthetic datasets and found that PFA is able to effectively capture the intrinsic clustering structure than the state-of-the-art integrative methods, such as moCluster, iClusterPlus and SNF. Moreover, in a case study on kidney cancer, PFA not only identified the multi-way feature modules among the prior-known disease associated genes, methylations and miRNAs, but also outperformed in cancer subtypes identification and could get effective clinical prognosis prediction. Totally, PFA not only provides new insights on the more holistic & systems-level sample pattern, but also supplies a new way for selecting more informative types of biological data.
机译:不同基因组曲线的整合挑战以多视图方式理解复杂的疾病。需要计算方法来保留数据类型的有用信息以及正确的偏置。因此,我们提出了一种新颖的框架模式融合分析(PFA),通过自适应地对准每种类型的生物数据中的信息,使本地样本模式融合到患者的全局模式。特别是,PFA可以调整不同的数据类型并在不同的配置文件中实现更强大的样本模式。为了验证PFA的有效性,我们在各种合成数据集上测试了PFA,发现PFA能够有效地捕获内部聚类结构,而不是最先进的整合方法,例如MOCLUSTER,ICLUSTPLUS和SNF。此外,在肾癌的情况下,PFA不仅鉴定了先前已知的疾病相关基因,甲基和miRNA中的多元特征模块,而且在癌症亚型鉴定中也表现出显得有效的临床预后预测。完全,PFA不仅为更全面的和系统级样本模式提供了新的见解,而且还提供了一种选择更新类型的生物数据类型的新方法。

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