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首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Free amino acids in African indigenous vegetables: Analysis with improved hydrophilic interaction ultra-high performance liquid chromatography tandem mass spectrometry and interactive machine learning
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Free amino acids in African indigenous vegetables: Analysis with improved hydrophilic interaction ultra-high performance liquid chromatography tandem mass spectrometry and interactive machine learning

机译:非洲土着蔬菜中的游离氨基酸:分析亲水性相互作用超高效液相色谱串联质谱和交互式机器学习

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摘要

A hydrophilic interaction (HILIC) ultra-high performance liquid chromatography (UHPLC) with triple quadrupole tandem mass spectrometry (MS/MS) method was developed and validated for the quantification of 21 free amino acids (AAs). Compared to published reports, our method renders collectively improved sensitivity with lower limit of quantification (LLOQ) at 0.5-42.19 ng/mL with 0.3 mu L injection volume (or equivalently 0.15-12.6 pg injected on column), robust linear range from LLOQ up to 3521-5720 ng/mL (or 1056 1716 pg on column) and a high throughput with total time of 6 min per sample, as well as easier experimental setup, less maintenance and higher adaptation flexibility. Ammonium formate in the mobile phase, though commonly used in HILIC, was found unnecessary in our experimental setup, and its removal from mobile phase was key for significant improvement in sensitivity (4-74 times higher than with 5 mM ammonium formate). Addition of 10 (or up to100 mM) hydrochloric acid (HCl) in the sample diluent was crucial to keep response linearity for basic amino acids of histidine, lysine and arginine. Different HCl concentration (10-100 mM) in sample diluent also excreted an effect on detection sensitivity, and it is of importance to keep the final prepared sample and calibrators in the same HCl level. Leucine and isoleucine were distinguished using different transitions. Validated at seven concentration levels, accuracy was bound within 75-125%, matrix effect generally within 90-110%, and precision error mostly below 2.5%. Using this newly developed method, the free amino acids were then quantified in a total of 544 African indigenous vegetables (AIVs) samples from African nightshades (AN), Ethiopian mustards (EM), amaranths (AM) and spider plants (SP), comprising a total of 8 identified species and 43 accessions, cultivated and harvested in USA, Kenya and Tanzania over several years, 2013-2018. The AN, EM, AM and SP were distinguished based on free AAs profile using machine learning methods (ML) including principle component analysis, discriminant analysis, naive Bayes, elastic net-regularized logistic regression, random forest and support vector machine, with prediction accuracy achieved at ca. 83-97% on the test set (train/test ratio at 7/3). An interactive ML platform was constructed using R Shiny at https://boyuan.shinyapps.io/AIV_Classifier/ for modeling train-test simulation and category prediction of unknown AIV sample(s). This new method presents a robust and rapid approach to quantifying free amino acids in plants for use in evaluating plants, biofortification, botanical authentication, safety, adulteration and with applications to nutrition, health and food product development. (C) 2020 Elsevier B.V. All rights reserved.
机译:建立了亲水相互作用(HILIC)超高效液相色谱(UHPLC)和三重四极串联质谱(MS/MS)方法,并验证了该方法用于21种游离氨基酸(AAs)的定量。与已发表的报告相比,我们的方法整体提高了灵敏度,定量下限(LLOQ)为0.5-42.19 ng/mL,进样量为0.3μL(或相当于0.15-12.6 pg的柱上进样量),LLOQ的线性范围为3521-5720 ng/mL(或1056 1716 pg的柱上进样量),高通量,每个样品的总时间为6 min,以及更容易的实验设置、更少的维护和更高的适应灵活性。流动相中的甲酸铵虽然在HILIC中常用,但在我们的实验装置中被发现是不必要的,从流动相中去除甲酸铵是显著提高灵敏度的关键(比5 mM甲酸铵高4-74倍)。在样品稀释剂中添加10(或高达100 mM)盐酸(HCl)对于保持组氨酸、赖氨酸和精氨酸的碱性氨基酸的响应线性至关重要。样品稀释剂中不同的HCl浓度(10-100 mM)也会对检测灵敏度产生影响,因此,将最终制备的样品和校准品保持在相同的HCl水平非常重要。亮氨酸和异亮氨酸使用不同的转换进行区分。在七个浓度水平下验证,准确度在75-125%范围内,基质效应一般在90-110%范围内,精密度误差大多低于2.5%。然后,使用这种新开发的方法,从非洲夜来香(AN)、埃塞俄比亚野马(EM)、苋菜(AM)和蜘蛛植物(SP)的544份非洲本土蔬菜(AIV)样本中对游离氨基酸进行了量化,这些样本包括2013-2018年在美国、肯尼亚和坦桑尼亚种植和收获的8个已鉴定物种和43份材料。使用机器学习方法(ML),包括主成分分析、判别分析、朴素贝叶斯、弹性网络正则化logistic回归、随机森林和支持向量机,基于自由原子吸收光谱轮廓区分AN、EM、AM和SP,在测试集(训练/测试比为7/3)上的预测精度达到约83-97%。使用R Shinny at构建了一个交互式ML平台https://boyuan.shinyapps.io/AIV_Classifier/用于模拟未知AIV样本的列车试验仿真和类别预测。这一新方法提供了一种可靠、快速的方法来量化植物中的游离氨基酸,用于评估植物、生物强化、植物认证、安全性、掺假,并应用于营养、健康和食品开发。(C) 2020爱思唯尔B.V.版权所有。

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