Glasgow Polyomics, University of Glasgow , Glasgow , UK.
Laboratory of Biochemistry, Wageningen University and Research Centre , Wageningen , Netherlands.
Front Bioeng Biotechnol. 2015 Mar 9;3:26. doi: 10.3389/fbioe.2015.00026. eCollection 2015.
Metabolite annotation and identification are primary challenges in untargeted metabolomics experiments. Rigorous workflows for reliable annotation of mass features with chemical structures or compound classes are needed to enhance the power of untargeted mass spectrometry. High-resolution mass spectrometry considerably improves the confidence in assigning elemental formulas to mass features in comparison to nominal mass spectrometry, and embedding of fragmentation methods enables more reliable metabolite annotations and facilitates metabolite classification. However, the analysis of mass fragmentation spectra can be a time-consuming step and requires expert knowledge. This study demonstrates how characteristic fragmentations, specific to compound classes, can be used to systematically analyze their presence in complex biological extracts like urine that have undergone untargeted mass spectrometry combined with data dependent or targeted fragmentation. Human urine extracts were analyzed using normal phase liquid chromatography (hydrophilic interaction chromatography) coupled to an Ion Trap-Orbitrap hybrid instrument. Subsequently, mass chromatograms and collision-induced dissociation and higher-energy collisional dissociation (HCD) fragments were annotated using the freely available MAGMa software. Acylcarnitines play a central role in energy metabolism by transporting fatty acids into the mitochondrial matrix. By filtering on a combination of a mass fragment and neutral loss designed based on the MAGMa fragment annotations, we were able to classify and annotate 50 acylcarnitines in human urine extracts, based on high-resolution mass spectrometry HCD fragmentation spectra at different energies for all of them. Of these annotated acylcarnitines, 31 are not described in HMDB yet and for only 4 annotated acylcarnitines the fragmentation spectra could be matched to reference spectra. Therefore, we conclude that the use of mass fragmentation filters within the context of untargeted metabolomics experiments is a valuable tool to enhance the annotation of small metabolites.
代谢物注释和鉴定是无靶代谢组学实验的主要挑战。需要严格的工作流程来可靠地注释具有化学结构或化合物类别的质量特征,以增强无靶质谱的功能。与标称质谱相比,高分辨率质谱极大地提高了为质量特征分配元素公式的置信度,并且嵌入碎裂方法可以实现更可靠的代谢物注释并促进代谢物分类。然而,质量碎裂谱的分析可能是一个耗时的步骤,并且需要专业知识。本研究展示了如何使用特定于化合物类别的特征碎裂来系统地分析它们在经过无靶质谱与数据依赖或靶向碎裂相结合的复杂生物提取物(如尿液)中的存在。使用正相液相色谱(亲水相互作用色谱)将人尿提取物与离子阱轨道混合仪器耦合。随后,使用免费提供的 MAGMa 软件注释质量色谱图和碰撞诱导解离和更高能量碰撞解离(HCD)碎片。酰基辅酶 A 在通过将脂肪酸转运到线粒体基质中来发挥核心作用的能量代谢中发挥作用。通过基于 MAGMa 片段注释设计的质量片段和中性损失的组合进行过滤,我们能够基于所有酰基辅酶 A 的不同能量的高分辨率质谱 HCD 碎裂谱对人尿提取物中的 50 种酰基辅酶 A 进行分类和注释。在注释的酰基辅酶 A 中,有 31 种尚未在 HMDB 中描述,并且只有 4 种注释的酰基辅酶 A 的碎裂谱可以与参考谱匹配。因此,我们得出结论,在无靶代谢组学实验中使用质量碎裂过滤器是增强小代谢物注释的有价值工具。