Department of Chemistry, Washington University in St. Louis, St. Louis, MO, USA; Department of Medicine, Washington University in St. Louis, St. Louis, MO, USA.
Department of Chemistry, Washington University in St. Louis, St. Louis, MO, USA; Department of Medicine, Washington University in St. Louis, St. Louis, MO, USA.
Anal Chim Acta. 2021 Mar 8;1149:338210. doi: 10.1016/j.aca.2021.338210. Epub 2021 Jan 12.
When using liquid chromatography/mass spectrometry (LC/MS) to perform untargeted metabolomics, it is common to detect thousands of features from a biological extract. Although it is impractical to collect non-chimeric MS/MS data for each in a single chromatographic run, this is generally unnecessary because most features do not correspond to unique metabolites of biological relevance. Here we show that relatively simple data-processing strategies that can be applied on the fly during acquisition of data with an Orbitrap ID-X, such as blank subtraction and well-established adduct or isotope calculations, decrease the number of features to target for MS/MS analysis by up to an order of magnitude for various types of biological matrices. We demonstrate that annotating these non-biological contaminants and redundancies in real time during data acquisition enables comprehensive MS/MS data to be acquired on each remaining feature at a single collision energy. To ensure that an appropriate collision energy is applied, we introduce a method using a series of hidden ion-trap scans in an Orbitrap ID-X to find an optimal value for each feature that can then be applied in a subsequent high-resolution Orbitrap scan. Data from 100 metabolite standards indicate that this real-time optimization of collision energies leads to more informative MS/MS patterns compared to using a single fixed collision energy alone. As a benchmark to evaluate the overall workflow, we manually annotated unique biological features by independently subjecting E. coli samples to a credentialing analysis. While credentialing led to a more rigorous reduction in feature number, on-the-fly annotation with blank subtraction on an Orbitrap ID-X did not inappropriately discard unique biological metabolites. Taken together, our results reveal that optimal fragmentation data can be obtained in a single LC/MS/MS run for >90% of the unique biological metabolites in a sample when features are annotated during acquisition and collision energies are selected by using parallel mass spectrometry detection.
当使用液相色谱/质谱联用(LC/MS)进行非靶向代谢组学分析时,通常可以从生物提取物中检测到数千个特征。尽管在单个色谱运行中收集每个特征的非嵌合 MS/MS 数据是不切实际的,但这通常是不必要的,因为大多数特征并不对应于具有生物学意义的独特代谢物。在这里,我们展示了相对简单的数据处理策略,这些策略可以在使用 Orbitrap ID-X 进行数据采集时实时应用,例如空白扣除和成熟的加合物或同位素计算,这些策略可以将需要进行 MS/MS 分析的特征数量减少到原来的十分之一,适用于各种类型的生物基质。我们证明,在数据采集过程中实时注释这些非生物污染物和冗余物,可以使每个剩余特征都能在单个碰撞能量下获得全面的 MS/MS 数据。为了确保应用适当的碰撞能量,我们引入了一种方法,即在 Orbitrap ID-X 中使用一系列隐藏的离子阱扫描来为每个特征找到最佳的碰撞能量值,然后在后续的高分辨率 Orbitrap 扫描中应用该值。来自 100 个代谢物标准品的数据表明,与单独使用单个固定碰撞能量相比,这种实时优化碰撞能量可以产生更具信息量的 MS/MS 图谱。作为评估整体工作流程的基准,我们通过独立地将 E. coli 样品进行认证分析,手动注释独特的生物特征。虽然认证分析导致特征数量的更严格减少,但在 Orbitrap ID-X 上实时进行空白扣除的注释并没有不恰当地丢弃独特的生物代谢物。总的来说,我们的结果表明,当在采集过程中注释特征并使用平行质谱检测选择碰撞能量时,在单个 LC/MS/MS 运行中可以获得超过 90%的样本中独特生物代谢物的最佳碎裂数据。