Northwest Metabolomics Research Center, Department of Anesthesiology and Pain Medicine, University of Washington, 850 Republican Street, Seattle, Washington 98109, United States.
Public Health Sciences Division, Fred Hutchinson Cancer Research Center, Seattle, Washington 98109, United States.
Anal Chem. 2021 Sep 7;93(35):12001-12010. doi: 10.1021/acs.analchem.1c02041. Epub 2021 Aug 26.
The urine metabolome constitutes a rich source of functional information reflecting physiological states that are influenced by distinct conditions and biological stresses, such as responses to drug treatments or disease manifestations. Although global liquid chromatography-mass spectrometry (MS) profiling provides the most comprehensive measurement of metabolites in complex biological samples, annotation remains a challenge, and computational approaches are necessary to translate the molecular composition into biological knowledge. Here, we investigated the use of tandem MS-based enhanced molecular networks (MolNetEnhancer) to improve the metabolite annotation of urine extracts. The samples ( = 10) were analyzed by hydrophilic interaction chromatography-quadrupole time-of-flight mass spectrometry in both electrospray ionization (ESI) modes. Consistent with other common data preprocessing software, the use of Progenesis QI led to the annotation of up to 20 metabolites based on MS2 library searches, showing a high fragmentation score (cosine similarity ≥ 0.7), that is, ∼2% of mass features containing MS2 spectra. Molecular networking based on library matching resulted in the annotation of up to 62 urinary compounds. Using a combination of unsupervised substructure discovery (MS2LDA), the tool network annotation propagation (NAP), and ClassyFire chemical ontology, embedded in a multilayered molecular network by MolNetEnhancer, we were able to expand the chemical characterization to ∼50% of the data set. The integrative approach led to the annotation of 275 compounds at the metabolomics standards initiative (MSI) confidence level 2, as well as 459 and 578 urinary metabolites (MSI level 3) in both negative and positive ESI modes, respectively. The exhaustive MS2-based annotation outperformed similar studies applied to larger cohorts while offering the discovery of metabolites not identified by the MS2 library search. This is the first work that effectively integrates orthogonal annotation methods and MS2-based fragmentation studies to improve metabolite annotation in urine samples.
尿液代谢组构成了一个丰富的功能信息来源,反映了受不同条件和生物应激影响的生理状态,例如对药物治疗或疾病表现的反应。虽然全局液相色谱-质谱 (MS) 分析可提供对复杂生物样本中代谢物的最全面测量,但注释仍然是一个挑战,并且需要计算方法将分子组成转化为生物知识。在这里,我们研究了使用基于串联 MS 的增强分子网络 (MolNetEnhancer) 来改善尿液提取物的代谢物注释。使用亲水相互作用色谱-四极杆飞行时间质谱在电喷雾电离 (ESI) 模式下分析了 = 10 个样本。与其他常见的数据预处理软件一致,Progenesis QI 的使用导致基于 MS2 库搜索注释了多达 20 种代谢物,表现出较高的碎裂分数(余弦相似度≥0.7),即包含 MS2 光谱的质量特征的约 2%。基于库匹配的分子网络导致注释了多达 62 种尿化合物。使用无监督子结构发现 (MS2LDA)、工具网络注释传播 (NAP) 和 ClassyFire 化学本体的组合,将 MolNetEnhancer 嵌入多层分子网络中,我们能够将化学表征扩展到数据集的约 50%。综合方法使 MSI 置信度 2 级的代谢组学标准倡议 (MSI) 注释了 275 种化合物,以及分别在负和正 ESI 模式下注释了 459 和 578 种尿代谢物 (MSI 水平 3)。基于 MS2 的详尽注释优于应用于更大队列的类似研究,同时还发现了 MS2 库搜索未识别的代谢物。这是首次有效整合正交注释方法和基于 MS2 的碎裂研究来改善尿液样本中代谢物注释的工作。