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MOTA: Multi-omic integrative analysis for biomarker discovery

机译:MOTA:用于生物标记物发现的多组学整合分析

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Recent advancement of omic technologies provides researchers with opportunities to search for disease biomarkers at the systems level. However, selection of biomarker candidates from a large number of molecules involved at various layers of the biological system is challenging. In this paper, we propose multi-omic integrative analysis (MOTA), a network-based method that uses information from multi-omic data to identify candidate disease biomarkers. We evaluated the performance of MOTA in selecting disease-associated molecules from four sets of multi-omic data representing three cohorts of hepatocellular carcinoma (HCC) cases and patients with liver cirrhosis. The results demonstrate that MOTA leads to selection of more biomarker candidates that shared by two different cohorts compared to traditional statistical methods. Also, the networks constructed by MOTA allow users to investigate biological significance of the selected biomarker candidates.
机译:眼科学技术的最新发展为研究人员提供了在系统水平上搜索疾病生物标志物的机会。然而,从涉及生物系统各层的大量分子中选择生物标志物候选物具有挑战性。在本文中,我们提出了多组学综合分析(MOTA),这是一种基于网络的方法,它使用来自多组学数据的信息来识别候选疾病生物标志物。我们评估了MOTA在代表三组肝细胞癌(HCC)病例和肝硬化患者的四组多组学数据中选择疾病相关分子的性能。结果表明,与传统的统计方法相比,MOTA可以选择更多的由两个不同队列共享的生物标志物。而且,由MOTA构建的网络允许用户调查所选生物标志物候选物的生物学意义。

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