Division of Physiological Chemistry 2, Department of Medical Biochemistry and Biophysics, Karolinska Institutet , Stockholm SE 17177, Sweden.
Agilent Technologies , Cheadle, Cheshire U.K.
Anal Chem. 2017 Aug 1;89(15):7933-7942. doi: 10.1021/acs.analchem.7b00925. Epub 2017 Jul 12.
High-resolution mass spectrometry (HRMS)-based metabolomics approaches have made significant advances. However, metabolite identification is still a major challenge with significant bottleneck in translating metabolomics data into biological context. In the current study, a liquid chromatography (LC)-HRMS metabolomics method was developed using an all ion fragmentation (AIF) acquisition approach. To increase the specificity in metabolite annotation, four criteria were considered: (i) accurate mass (AM), (ii) retention time (RT), (iii) MS/MS spectrum, and (iv) product/precursor ion intensity ratios. We constructed an in-house mass spectral library of 408 metabolites containing AMRT and MS/MS spectra information at four collision energies. The percent relative standard deviations between ion ratios of a metabolite in an analytical standard vs sample matrix were used as an additional metric for establishing metabolite identity. A data processing method for targeted metabolite screening was then created, merging m/z, RT, MS/MS, and ion ratio information for each of the 413 metabolites. In the data processing method, the precursor ion and product ion were considered as the quantifier and qualifier ion, respectively. We also included a scheme to distinguish coeluting isobaric compounds by selecting a specific product ion as the quantifier ion instead of the precursor ion. An advantage of the current AIF approach is the concurrent collection of full scan data, enabling identification of metabolites not included in the database. Our data acquisition strategy enables a simultaneous mixture of database-dependent targeted and nontargeted metabolomics in combination with improved accuracy in metabolite identification, increasing the quality of the biological information acquired in a metabolomics experiment.
基于高分辨率质谱(HRMS)的代谢组学方法取得了重大进展。然而,代谢物的鉴定仍然是一个主要的挑战,在将代谢组学数据转化为生物学背景方面存在着显著的瓶颈。在本研究中,开发了一种基于液相色谱(LC)-高分辨率质谱(HRMS)的代谢组学方法,采用全离子碎裂(AIF)采集方法。为了提高代谢物注释的特异性,考虑了四个标准:(i)精确质量(AM),(ii)保留时间(RT),(iii)MS/MS 谱,和(iv)产物/前体离子强度比。我们构建了一个包含 408 种代谢物的内部质谱库,其中包含 AMRT 和在四种碰撞能量下的 MS/MS 谱信息。将代谢物在分析标准品与样品基质中的离子比的相对标准偏差(%)用作建立代谢物身份的附加指标。然后创建了一种针对靶向代谢物筛选的数据处理方法,合并了 413 种代谢物中的 m/z、RT、MS/MS 和离子比信息。在数据处理方法中,将前体离子和产物离子分别视为定量离子和定性离子。我们还包括一种通过选择特定产物离子作为定量离子而不是前体离子来区分共洗脱等摩尔化合物的方案。当前 AIF 方法的一个优点是可以同时采集全扫描数据,从而可以鉴定数据库中未包含的代谢物。我们的数据采集策略能够同时进行依赖数据库的靶向和非靶向代谢组学分析,同时提高代谢物鉴定的准确性,从而提高代谢组学实验中获得的生物学信息的质量。