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首页> 外文期刊>The Plant Cell >Systematic structural characterization of metabolites in Arabidopsis via candidate substrate-product pair networks.
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Systematic structural characterization of metabolites in Arabidopsis via candidate substrate-product pair networks.

机译:通过候选底物-产物对网络对拟南芥中代谢物的系统结构表征。

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摘要

Plant metabolomics is increasingly used for pathway discovery and to elucidate gene function. However, the main bottleneck is the identification of the detected compounds. This is more pronounced for secondary metabolites as many of their pathways are still underexplored. Here, an algorithm is presented in which liquid chromatography-mass spectrometry profiles are searched for pairs of peaks that have mass and retention time differences corresponding with those of substrates and products from well-known enzymatic reactions. Concatenating the latter peak pairs, called candidate substrate-product pairs (CSPP), into a network displays tentative (bio)synthetic routes. Starting from known peaks, propagating the network along these routes allows the characterization of adjacent peaks leading to their structure prediction. As a proof-of-principle, this high-throughput cheminformatics procedure was applied to the Arabidopsis thaliana leaf metabolome where it allowed the characterization of the structures of 60% of the profiled compounds. Moreover, based on searches in the Chemical Abstract Service database, the algorithm led to the characterization of 61 compounds that had never been described in plants before. The CSPP-based annotation was confirmed by independent MSn experiments. In addition to being high throughput, this method allows the annotation of low-abundance compounds that are otherwise not amenable to isolation and purification. This method will greatly advance the value of metabolomics in systems biology.
机译:植物代谢组学越来越多地用于途径发现和阐明基因功能。但是,主要瓶颈是所检测化合物的鉴定。对于次级代谢产物而言,这更为明显,因为其许多途径仍未得到充分研究。在此,提出了一种算法,其中搜索液相色谱-质谱图以寻找成对的峰,这些峰的质量和保留时间差异与底物和众所周知的酶促反应产物的质量和保留时间差异相对应。将后面的峰对(称为候选底物产物对(CSPP))连接到网络中,可显示临时的(生物)合成路线。从已知峰开始,沿着这些路径传播网络可以表征相邻峰,从而预测其结构。作为原理的证明,该高通量化学信息学方法应用于拟南芥叶代谢组,可表征60%的特征化合物。此外,基于化学文摘社数据库中的搜索,该算法还可以表征以前从未在植物中描述过的61种化合物。通过独立的MS n 实验确认了基于CSPP的注释。除了高通量之外,该方法还可以注释那些不适合分离和纯化的低丰度化合物。这种方法将大大提高代谢组学在系统生物学中的价值。

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