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Liquid Chromatography-Mass Spectrometry (LC-MS) Derivatization-Based Methods for the Determination of Fatty Acids in Biological Samples

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MOLECULES
卷 27, 期 17, 页码 -

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MDPI
DOI: 10.3390/molecules27175717

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charge reversal; derivatization reagents; fatty acids; liquid chromatography; mass spectrometry

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Fatty acids play important roles in living organisms and mass spectrometry has become a crucial technique for their analysis. Chemical derivatization is often used to improve the ionization efficiency of fatty acids. This review summarizes the different reagents used for fatty acid derivatization and discusses their applications in liquid chromatography-mass spectrometry analysis.
Fatty acids (FAs) play pleiotropic roles in living organisms, acting as signaling molecules and gene regulators. They are present in plants and foods and may affect human health by food ingestion. As a consequence, analytical methods for their determination in biological fluids, plants and foods have attracted high interest. Undoubtedly, mass spectrometry (MS) has become an indispensable technique for the analysis of FAs. Due to the inherent poor ionization efficiency of FAs, their chemical derivatization prior to analysis is often employed. Usually, the derivatization of the FA carboxyl group aims to charge reversal, allowing detection and quantification in positive ion mode, thus, resulting in an increase in sensitivity in determination. Another approach is the derivatization of the double bond of unsaturated FAs, which aims to identify the double bond location. The present review summarizes the various classes of reagents developed for FA derivatization and discusses their applications in the liquid chromatography-MS (LC-MS) analysis of FAs in various matrices, including plasma and feces. In addition, applications for the determination of eicosanoids and fatty acid esters of hydroxy fatty acids (FAHFAs) are discussed.

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