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Metabolite annotation from knowns to unknowns through knowledge-guided multi-layer metabolic networking

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中国科学院中国科学技术大学科学数据中心2026-01-10 收录
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https://sdc.ustc.edu.cn/dataDetails/cLUaOJYBQwfvTVc55-Xm
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Liquid chromatography - mass spectrometry (LC-MS) based untargeted metabolomics allows to measure both known and unknown metabolites in the metabolome. However, unknown metabolite annotation is a major challenge in untargeted metabolomics. Here, we develop an approach, namely, knowledge-guided multi-layer network (KGMN), to enable global metabolite annotation from knowns to unknowns in untargeted metabolomics. The KGMN approach integrates three-layer networks, including knowledge-based metabolic reaction network, knowledge-guided MS/MS similarity network, and global peak correlation network. To demonstrate the principle, we apply KGMN in an in vitro enzymatic reaction system and different biological sam￾ples, with ~100–300 putative unknowns annotated in each data set. Among them, >80% unknown metabolites are corroborated with in silico MS/MS tools. Finally, we validate 5 metabolites that are absent in common MS/MS libraries through repository mining and synthesis of chemical standards. Together, the KGMN approach enables efficient unknown annotations, and substantially advances the discovery of recurrent unknown metabolites for common bio￾logical samples from model organisms, towards deciphering dark matter in untargeted metabolomics.
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中国科学院上海高等研究院
创建时间:
2023-11-30
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