利用未识别代谢特征进行关键途径发现:非靶向代谢组学中的化学分类驱动网络分析。
Leveraging Unidentified Metabolic Features for Key Pathway Discovery: Chemical Classification-driven Network Analysis in Untargeted Metabolomics.
机构信息
CAS Key Laboratory of Separation Science for Analytical Chemistry, Dalian Institute of Chemical Physics, Chinese Academy of Sciences, Dalian 116023, P. R. China.
University of Chinese Academy of Sciences, Beijing 100049, P. R. China.
出版信息
Anal Chem. 2024 Feb 27;96(8):3409-3418. doi: 10.1021/acs.analchem.3c04591. Epub 2024 Feb 14.
Untargeted metabolomics using liquid chromatography-electrospray ionization-high-resolution tandem mass spectrometry (UPLC-ESI-MS/MS) provides comprehensive insights into the dynamic changes of metabolites in biological systems. However, numerous unidentified metabolic features limit its utilization. In this study, a novel approach, the Chemical Classification-driven Molecular Network (CCMN), was proposed to unveil key metabolic pathways by leveraging hidden information within unidentified metabolic features. The method was demonstrated by using the herbivore-induced metabolic response in corn silk as a case study. Untargeted metabolomics analysis using UPLC-MS/MS was performed on wild corn silk and two genetically modified lines (pre- and postinsect treatment). Global annotation initially identified 256 (ESI) and 327 (ESI) metabolites. MS/MS-based classifications predicted 1939 (ESI) and 1985 (ESI) metabolic features into the chemical classes. CCMNs were then constructed using metabolic features shared classes, which facilitated the structure- or class annotation for completely unknown metabolic features. Next, 844/713 significantly decreased and 1593/1378 increased metabolites in ESI/ESI modes were defined in response to insect herbivory, respectively. Method validation on a spiked maize sample demonstrated an overall class prediction accuracy rate of 95.7%. Potential key pathways were prescreened by a hypergeometric test using both structure- and class-annotated differential metabolites. Subsequently, CCMN was used to deeply amend and uncover the pathway metabolites deeply. Finally, 8 key pathways were defined, including phenylpropanoid (C-C), flavonoid, octadecanoid, diterpenoid, lignan, steroid, amino acid/small peptide, and monoterpenoid. This study highlights the effectiveness of leveraging unidentified metabolic features. CCMN-based key pathway analysis reduced the bias in conventional pathway enrichment analysis. It provides valuable insights into complex biological processes.
基于液相色谱-电喷雾电离-高分辨串联质谱(UPLC-ESI-MS/MS)的非靶向代谢组学可以全面了解生物系统中代谢物的动态变化。然而,大量未被识别的代谢特征限制了其应用。在本研究中,提出了一种新的方法——化学分类驱动的分子网络(CCMN),通过利用未被识别的代谢特征中的隐藏信息来揭示关键代谢途径。该方法通过以玉米花丝的草食性诱导代谢反应为例进行了验证。使用 UPLC-MS/MS 对野生玉米花丝和两种基因改良线(昆虫处理前后)进行了非靶向代谢组学分析。全局注释最初鉴定出 256 个(ESI)和 327 个(ESI)代谢物。基于 MS/MS 的分类预测了 1939 个(ESI)和 1985 个(ESI)代谢特征进入化学类别。然后,使用共享类别的代谢特征构建了 CCMN,这便于对完全未知的代谢特征进行结构或类别注释。接下来,在 ESI/ESI 模式下,分别有 844/713 个代谢物显著减少,1593/1378 个代谢物增加,以响应昆虫取食。在添加的玉米样品上进行的方法验证表明,总体类预测准确率为 95.7%。使用结构和类别注释的差异代谢物,通过超几何检验预先筛选出潜在的关键途径。随后,使用 CCMN 对途径代谢物进行深入修正和揭示。最后,定义了 8 个关键途径,包括苯丙烷(C-C)、类黄酮、十八碳烯酸、二萜、木脂素、类固醇、氨基酸/小肽和单萜。本研究强调了利用未被识别的代谢特征的有效性。基于 CCMN 的关键途径分析减少了传统途径富集分析的偏差。它为复杂的生物过程提供了有价值的见解。