Wang Gangqi, van den Berg Bernard M, Kostidis Sarantos, Pinkham Kelsey, Jacobs Marleen E, Liesz Arthur, Giera Martin, Rabelink Ton J
Children's Hospital of Fudan University and the Shanghai Key Laboratory of Medical Epigenetics, Institutes of Biomedical Sciences, Fudan University, Shanghai, China.
Department of Internal Medicine (Nephrology) & Einthoven Laboratory of Vascular and Regenerative Medicine, Leiden University Medical Center, Leiden, The Netherlands.
Nat Metab. 2025 Aug 5. doi: 10.1038/s42255-025-01340-8.
Mass spectrometry imaging (MSI) has become a cornerstone of spatial biology research. However, various factors that are intrinsic to the technology limit the quantitative capacity of MSI-based spatial metabolomics and thus reliable interpretation. Here we developed an improved quantitative MSI workflow, based on isotopically C-labelled yeast extract as internal standards, to overcome these pitfalls. Using brain and kidney tissue, we demonstrate that this approach allows for quantification of more than 200 metabolic features. Applying our workflow to a stroke model allowed us to not only map metabolic remodelling of the infarct and peri-infarct area over time, but also discover hitherto unnoted remote metabolic remodelling in the histologically unaffected ipsilateral sensorimotor cortex. At day 7 post-stroke, increased levels of neuroprotective lysine and reduced excitatory glutamate levels were found when compared with the contralateral cortex. By day 28 post-stroke, lysine and glutamate levels appeared normal, while decreased precursor pools of uridine diphosphate N-acetylglucosamine and linoleate persisted that were previously linked to vulnerability. Importantly, traditional normalization strategies not using internal standards were unable to visualize these differences. Using C-labelled yeast extracts as a normalization strategy establishes a paradigm in quantitative MSI-based spatial metabolomics that greatly enhances reliability and interpretive strength.
质谱成像(MSI)已成为空间生物学研究的基石。然而,该技术本身的各种因素限制了基于MSI的空间代谢组学的定量能力,从而影响了可靠的解读。在此,我们开发了一种改进的定量MSI工作流程,以同位素碳标记的酵母提取物作为内标,来克服这些缺陷。利用脑和肾组织,我们证明这种方法能够对200多种代谢特征进行定量。将我们的工作流程应用于中风模型,不仅使我们能够绘制梗死灶和梗死周围区域随时间的代谢重塑图谱,还能发现组织学上未受影响的同侧感觉运动皮层中迄今未被注意到的远程代谢重塑。在中风后第7天,与对侧皮层相比,发现神经保护剂赖氨酸水平升高,兴奋性谷氨酸水平降低。到中风后第28天,赖氨酸和谷氨酸水平似乎恢复正常,而尿苷二磷酸N - 乙酰葡糖胺和亚油酸的前体池持续减少,这些前体池之前与易损性有关。重要的是,不使用内标的传统归一化策略无法显示这些差异。使用碳标记的酵母提取物作为归一化策略,在基于定量MSI的空间代谢组学中建立了一种范例,极大地提高了可靠性和解读力度。