在现有代谢网络的背景下分析LC/MS代谢分析数据。

Tianwei Yu, Yun Bai
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引用次数: 8

摘要

代谢谱分析是对生命系统中低分子量代谢物的无偏检测和定量。它在生物学和转化研究中迅速发展,有助于阐明疾病机制,环境化学监测,生物标志物检测和健康结果预测。实验和计算技术的最新发展使得越来越多的已知代谢物可以从复杂的样品中检测和定量。随着代谢网络覆盖范围的提高,从系统角度检查代谢分析数据已经变得可行,即在途径和基因组尺度代谢网络的背景下解释数据并进行统计推断。近年来,该领域已经发展了许多方法,但在算法和数据库方面仍有很大的改进空间。本文综述了几种基于代谢网络的代谢谱数据分析方法。
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Analyzing LC/MS metabolic profiling data in the context of existing metabolic networks.

Metabolic profiling is the unbiased detection and quantification of low molecular-weight metabolites in a living system. It is rapidly developing in biological and translational research, contributing to disease mechanism elucidation, environmental chemical surveillance, biomarker detection, and health outcome prediction. Recent developments in experimental and computational technology allow more and more known metabolites to be detected and quantified from complex samples. As the coverage of the metabolic network improves, it has become feasible to examine metabolic profiling data from a systems perspective, i.e. interpreting the data and performing statistical inference in the context of pathways and genome-scale metabolic networks. Recently a number of methods have been developed in this area, and much improvement in algorithms and databases are still needed. In this review, we survey some methods for the analysis of metabolic profiling data based on metabolic networks.

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