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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >Metabolic profiles to define the genome: can we hear the phenotypes?
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Metabolic profiles to define the genome: can we hear the phenotypes?

机译:定义基因组的代谢谱:我们能听到表型吗?

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There is an increased reliance on genetically modified organisms as a functional genomic tool to elucidate the role of genes and their protein products. Despite this, many models do not express the expected phenotype thought to be associated with the gene or protein. There is thus an increased need to further define the phenotype resultant from a genetic modification to understand how the transcriptional or proteomic network may conspire to alter the expected phenotype. This is best typified by the description of the silent phenotype in genetic manipulations of yeast. High-resolution proton nuclear magnetic resonance (H-1 NMR) spectroscopy provides an ideal mechanism for the profiling of metabolites within biofluids, tissue extracts or, with recent advances, intact tissues. These metabolic datasets can be readily mined using a range of pattern recognition techniques, including hierarchical cluster analysis, principal components analysis, partial least squares and neural networks, with the combined approach being termed metabolomics. This review describes the application of NMR-based metabolomics or metabonomics to genetic and chemical interventions in a number of different species, demonstrating the versatility of such an approach, as well as suggesting how it may be integrated with other 'omic' technologies.
机译:人们越来越依赖转基因生物作为功能基因组学工具来阐明基因及其蛋白质产物的作用。尽管如此,许多模型仍未表达预期与基因或蛋白质相关的表型。因此,越来越需要进一步定义由遗传修饰产生的表型,以了解转录或蛋白质组网络如何合谋改变预期的表型。酵母基因操作中沉默表型的描述最能代表这一点。高分辨率质子核磁共振波谱(H-1 NMR)为生物流体,组织提取物或完整组织中代谢物的谱分析提供了理想的机制。这些代谢数据集可以使用一系列模式识别技术轻松地进行挖掘,包括层次聚类分析,主成分分析,偏最小二乘和神经网络,这种组合方法称为代谢组学。这篇综述描述了基于NMR的代谢组学或代谢组学在许多不同物种的遗传和化学干预中的应用,证明了这种方法的多功能性,并暗示了它如何与其他“组学”技术整合。

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