Department of Nutritional Sciences, College of Natural Sciences, The University of Texas at Austin, Austin, TX 78712, USA.
Department of Pediatrics, Dell Medical School, The University of Texas at Austin, Austin, TX 78723, USA.
Molecules. 2021 Oct 15;26(20):6246. doi: 10.3390/molecules26206246.
Fatty acid profiling on gas chromatography-mass spectrometry (GC-MS) platforms is typically performed offline by manually derivatizing and analyzing small batches of samples. A GC-MS system with a fully integrated robotic autosampler can significantly improve sample handling, standardize data collection, and reduce the total hands-on time required for sample analysis. In this study, we report an optimized high-throughput GC-MS-based methodology that utilizes trimethyl sulfonium hydroxide (TMSH) as a derivatization reagent to convert fatty acids into fatty acid methyl esters. An automated online derivatization method was developed, in which the robotic autosampler derivatizes each sample individually and injects it into the GC-MS system in a high-throughput manner. This study investigated the robustness of automated TMSH derivatization by comparing fatty acid standards and lipid extracts, derivatized manually in batches and online automatically from four biological matrices. Automated derivatization improved reproducibility in 19 of 33 fatty acid standards, with nearly half of the 33 confirmed fatty acids in biological samples demonstrating improved reproducibility when compared to manually derivatized samples. In summary, we show that the online TMSH-based derivatization methodology is ideal for high-throughput fatty acid analysis, allowing rapid and efficient fatty acid profiling, with reduced sample handling, faster data acquisition, and, ultimately, improved data reproducibility.
气相色谱-质谱联用仪(GC-MS)平台上的脂肪酸分析通常通过手动衍生和分析小批量样品进行离线分析。具有完全集成的自动进样器的 GC-MS 系统可以显著改善样品处理、标准化数据采集并减少样品分析所需的总人工操作时间。在这项研究中,我们报告了一种经过优化的基于高通量 GC-MS 的方法,该方法利用三甲基氢氧化硫(TMSH)作为衍生化试剂将脂肪酸转化为脂肪酸甲酯。开发了一种自动化在线衍生化方法,其中自动进样器对每个样品进行单独衍生化,并以高通量的方式将其注入 GC-MS 系统。本研究通过比较脂肪酸标准品和脂质提取物、手动分批衍生化和从四个生物基质中在线自动衍生化,研究了自动化 TMSH 衍生化的稳健性。在 33 种脂肪酸标准品中,有 19 种脂肪酸的自动化衍生化提高了重现性,与手动衍生化样品相比,近一半的生物样品中的 33 种确认脂肪酸的重现性得到了提高。总之,我们表明,基于在线 TMSH 的衍生化方法非常适合高通量脂肪酸分析,允许快速有效地进行脂肪酸分析,减少样品处理、更快地获取数据,并最终提高数据重现性。