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A comparison of graph- and kernel-based –omics data integration algorithms for classifying complex traits

机译:基于图和核的组学数据集成算法对复杂特征进行分类的比较

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摘要

BackgroundHigh-throughput sequencing data are widely collected and analyzed in the study of complex diseases in quest of improving human health. Well-studied algorithms mostly deal with single data source, and cannot fully utilize the potential of these multi-omics data sources. In order to provide a holistic understanding of human health and diseases, it is necessary to integrate multiple data sources. Several algorithms have been proposed so far, however, a comprehensive comparison of data integration algorithms for classification of binary traits is currently lacking.
机译:背景技术高通量测序数据被广泛收集并分析复杂疾病以寻求改善人类健康的研究。经过深入研究的算法通常只处理单个数据源,无法充分利用这些多组学数据源的潜力。为了提供对人类健康和疾病的整体了解,有必要整合多个数据源。迄今为止,已经提出了几种算法,但是,目前尚缺乏用于二进制特征分类的数据集成算法的全面比较。

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