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Network biology methods integrating biological data for translational science

机译:整合生物学数据以进行转化科学的网络生物学方法

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摘要

The explosion of biomedical data, both on the genomic and proteomic side as well as clinical data, will require complex integration and analysis to provide new molecular variables to better understand the molecular basis of phenotype. Currently, much data exist in silos and is not analyzed in frameworks where all data are brought to bear in the development of biomarkers and novel functional targets. This is beginning to change. Network biology approaches, which emphasize the interactions between genes, proteins and metabolites provide a framework for data integration such that genome, proteome, metabolome and other -omics data can be jointly analyzed to understand and predict disease phenotypes. In this review, recent advances in network biology approaches and results are identified. A common theme is the potential for network analysis to provide multiplexed and functionally connected biomarkers for analyzing the molecular basis of disease, thus changing our approaches to analyzing and modeling genome- and proteome-wide data.
机译:基因组学和蛋白质组学方面以及临床数据方面的生物医学数据的爆炸式增长将需要复杂的整合和分析,以提供新的分子变量,以更好地理解表型的分子基础。当前,许多数据存在于孤岛中,而没有在将所有数据用于生物标志物和新型功能靶标开发的框架中进行分析。这开始改变。网络生物学方法强调基因,蛋白质和代谢物之间的相互作用,为数据整合提供了框架,因此可以共同分析基因组,蛋白质组,代谢组和其他组学数据,以了解和预测疾病表型。在这篇综述中,确定了网络生物学方法和结果的最新进展。一个共同的主题是网络分析的潜力,可以提供用于分析疾病分子基础的多重且功能连接的生物标记,从而改变了我们分析和建模全基因组和蛋白质组数据的方法。

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