Secilmis Deniz, Begzati Arjana, Grankvist Nina, Roci Irena, Watrous Jeramie, Majithia Amit R, Smith Gordon I, Klein Samuel, Jain Mohit, Nilsson Roland
Cardiovascular Medicine Unit, Department of Medicine (Solna), Karolinska Institutet, Stockholm, Sweden.
Division of Cardiovascular Medicine, Karolinska University Hospital, Stockholm, Sweden.
bioRxiv. 2025 Apr 8:2025.04.07.647691. doi: 10.1101/2025.04.07.647691.
Modern mass spectrometry-based metabolomics is a key technology for biomedicine, enabling discovery and quantification of a wide array of biomolecules critical for human physiology. Yet, only a fraction of human metabolites have been structurally determined, and the majority of features in typical metabolomics data remain unknown. To date, metabolite identification relies largely on comparing MS fragmentation patterns against known standards, related compounds or predicted spectra. Here, we propose an orthogonal approach to identification of endogenous metabolites, based on mass isotopomer distributions (MIDs) measured in an isotope-labeled reference material. We introduce a computational measure of pairwise distance between metabolite MIDs that allows identifying novel metabolites by their similarity to previously known peaks. Using cell material labeled with 20 individual C tracers, this method identified 62% of all unknown peaks, including previously never seen metabolites. Importantly, MID-based identification is highly complementary to MS-based methods in that MIDs reflect the biochemical origin of metabolites, and therefore also yields insight into their synthesis pathways, while MS spectra mainly reflect structural features. Accordingly, our method performed best for small molecules, while MS-based identification was stronger on lipids and complex natural products. Among the metabolites discovered was trimethylglycyl-lysine, a novel amino acid derivative that is altered in human muscle tissue after intensive lifestyle treatment. MID-based annotation using isotope-labeled reference materials enables identification of novel endogenous metabolites, extending the reach of mass spectrometry-based metabolomics.
现代基于质谱的代谢组学是生物医学的一项关键技术,能够发现和定量分析对人体生理至关重要的多种生物分子。然而,只有一小部分人类代谢物的结构已被确定,典型代谢组学数据中的大多数特征仍然未知。迄今为止,代谢物鉴定主要依赖于将质谱碎片模式与已知标准品、相关化合物或预测光谱进行比较。在此,我们提出一种基于在同位素标记参考物质中测量的质量同位素异构体分布(MID)来鉴定内源性代谢物的正交方法。我们引入了一种代谢物MID之间成对距离的计算方法,该方法允许通过与先前已知峰的相似性来鉴定新的代谢物。使用用20种单个碳示踪剂标记的细胞材料,该方法鉴定出了所有未知峰的62%,包括以前从未见过的代谢物。重要的是,基于MID的鉴定与基于质谱的方法具有高度互补性,因为MID反映了代谢物的生化来源,因此也能深入了解它们的合成途径,而质谱光谱主要反映结构特征。因此,我们的方法对小分子的效果最佳,而基于质谱的鉴定在脂质和复杂天然产物方面更强。发现的代谢物中有三甲基甘氨酰赖氨酸,这是一种新型氨基酸衍生物,在强化生活方式治疗后人体肌肉组织中会发生变化。使用同位素标记参考物质进行基于MID的注释能够鉴定新的内源性代谢物,扩展了基于质谱的代谢组学的范围。