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Multi-omics Data and Analytics Integration in Ovarian Cancer

机译:卵巢癌的多组学数据和分析集成

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Cancer, which involves the dysregulation of genes via multiple mechanisms, is unlikely to be fully explained by a single data type. By combining different "omes", researchers can increase the discovery of novel bio-molecular associations with disease-related phenotypes. Investigation of functional relations among genes associated with the same disease condition may further help to develop more accurate disease-relevant prediction models. In this work, we present an integrative framework called Data & Analytic Integrator (DAI), to explore the relationship between different omics via different mathematical formulations and algorithms. In particular, we investigate the combinatorial use of molecular knowledge identified from omics integration methods netDx, iDRW and SSL, by fusing the derived aggregated similarity matrices and by exploiting these in a semi-supervised learner. The analysis workflows were applied to real-life data for ovarian cancer and underlined the benefits of joint data and analytic integration.
机译:涉及通过多种机制使基因失调的癌症,不可能由单一数据类型完全解释。通过组合不同的“基因组”,研究人员可以增加与疾病相关表型的新型生物分子关联的发现。对与相同疾病状况相关的基因之间的功能关系的研究可能进一步有助于开发更准确的疾病相关预测模型。在这项工作中,我们提出了一个称为数据与分析集成器(DAI)的集成框架,以通过不同的数学公式和算法探索不同的组学之间的关系。特别是,我们通过融合派生的聚集相似性矩阵并在半监督学习者中利用它们,研究了从组学集成方法netDx,iDRW和SSL中识别出的分子知识的组合使用。分析工作流程已应用于卵巢癌的现实生活数据,并强调了联合数据和分析整合的好处。

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