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Comparative evaluation of extraction methods for simultaneous mass-spectrometric analysis of complex lipids and primary metabolites from human blood plasma

机译:同时提取人血浆中复杂脂质和主要代谢物的萃取方法的比较评价

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摘要

Metabolomic results on human blood plasma largely depend on the sample preparation protocols employed for protein precipitation and metabolite extraction. Five different extraction methods were examined, which can be grouped into two categories, liquid-liquid extraction and protein precipitation methods, including long-standing protocols such as the Folch extraction and Bligh-Dyer extraction in comparison to modern methods such as the Matyash protocol and two global metabolite extraction methods. Extracts were subjected to analysis of blood plasma lipids and primary metabolites by using chip-based direct infusion nanoelectrospray tandem mass spectrometry and gas chromatography coupled to timeof-flight mass spectrometry, respectively. Optimal extraction schemes were evaluated based on the number of identified metabolites, extraction efficiency, compound diversity, reproducibility, and convenience for high-throughput sample preparations. Results showed that Folch and Matyash methods were equally valid and robust for lipidomic assessments while primary metabolites were better assessed by the protein precipitation methods with organic solvent mixtures.
机译:在人血浆上的代谢组学结果在很大程度上取决于用于蛋白质沉淀和代谢物提取的样品制备方案。研究了五种不同的提取方法,可将其分为两类:液-液提取和蛋白质沉淀法,包括长期使用的方案(如Folch提取和Bligh-Dyer提取)与现代方法(如Matyash方案和两种全局代谢物提取方法。通过分别使用基于芯片的直接输注纳米电喷雾串联质谱和气相色谱-飞行时间质谱,对提取物进行血浆脂质和主要代谢产物的分析。基于鉴定出的代谢物的数量,提取效率,化合物多样性,可再现性以及高通量样品制备的便利性,对最佳提取方案进行了评估。结果表明,Folch和Matyash方法对于脂质组学评估同样有效且可靠,而通过有机溶剂混合物的蛋白质沉淀法可以更好地评估主要代谢产物。

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