首页> 外文期刊>Analytica chimica acta >Two dimensional assisted liquid chromatography - a chemometric approach to improve accuracy and precision of quantitation in liquid chromatography using 2D separation, dual detectors, and multivariate curve resolution
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Two dimensional assisted liquid chromatography - a chemometric approach to improve accuracy and precision of quantitation in liquid chromatography using 2D separation, dual detectors, and multivariate curve resolution

机译:二维辅助液相色谱-一种化学计量学方法,可使用2D分离,双检测器和多变量曲线分辨率提高液相色谱定量分析的准确性和精密度

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Comprehensive two-dimensional liquid chromatography (LC x LC) is rapidly evolving as the preferred method for the analysis of complex biological samples owing to its much greater resolving power compared to conventional one-dimensional (1D-LC). While its enhanced resolving power makes this method appealing, it has been shown that the precision of quantitation in LC x LC is generally not as good as that obtained with 1D-LC. The poorer quantitative performance of LC x LC is due to several factors including but not limited to the undersampling of the first dimension and the dilution of analytes during transit from the first dimension (D-1) column to the second dimension (D-2) column, and the larger relative background signals. A new strategy, 2D assisted liquid chromatography (2DALC), is presented here. 2DALC makes use of a diode array detector placed at the end of each column, producing both multivariate D-1 and two-dimensional (2D) chromatograms. The increased resolution of the analytes provided by the addition of a second dimension of separation enables the determination of analyte absorbance spectra from the D-2 detector signal that are relatively pure and can be used to initiate the treatment of data from the first dimension detector using multivariate curve resolution-alternating least squares (MCR-ALS). In this way, the approach leverages the strengths of both separation methods in a single analysis: the 2D detector data is used to provide relatively pure analyte spectra to the MCR-ALS algorithm, and the final quantitative results are obtained from the resolved D-1 chromatograms, which has a much higher sampling rate and lower background signal than obtained in conventional single detector LC x LC, to obtain accurate and precise quantitative results. It is shown that 2DALC is superior to both single detector selective or comprehensive LC x LC and 1D-LC for quantitation of compounds that appear as severely overlapped peaks in the D-1 chromatogram - this is especially true in the case of untargeted analyses. We also anticipate that 2DALC will provide superior quantitation in targeted analyses in which unknown interfering compounds overlap with the targeted compound(s). When peaks are significantly overlapped in the first dimension, 2DALC can decrease the error of quantitation (i.e., improve the accuracy by up to 14-fold compared to 1D-LC and up to 3.8-fold compared to LC x LC with a single multivariate detector). The degree of improvement in performance varies depending upon the degree of peak overlap in each dimension and the selectivities of the spectra with respect to one another and the background, as well as the extent of analyte dilution prior to the D-2 column. (C) 2014 Elsevier B.V. All rights reserved.
机译:综合二维液相色谱法(LC x LC)迅速发展为分析复杂生物样品的首选方法,因为它的分辨率比传统的一维液相色谱法(1D-LC)大得多。尽管其增强的分离能力使该方法具有吸引力,但已证明LC x LC中的定量精度通常不如1D-LC获得的精度高。 LC x LC较差的定量性能是由于多种因素引起的,包括但不限于第一维的欠采样和从第一维(D-1)色谱柱到第二维(D-2)的分析物的稀释度列和较大的相对背景信号。本文介绍了一种新的策略,即2D辅助液相色谱(2DALC)。 2DALC使用放置在每列末尾的二极管阵列检测器,可生成多元D-1和二维(2D)色谱图。通过增加第二维分离度可提高分析物的分离度,从而能够从D-2检测器信号确定相对纯净的分析物吸收光谱,并可用于使用以下方法启动来自第一维检测器的数据处理:多元曲线分辨率-最小二乘(MCR-ALS)。通过这种方式,该方法在一次分析中利用了两种分离方法的优势:二维检测器数据用于向MCR-ALS算法提供相对纯净的分析物光谱,最终的定量结果是从解析的D-1中获得的色谱图具有比常规单检测器LC x LC更高的采样率和更低的背景信号,从而获得准确而精确的定量结果。结果表明,对于定量在D-1色谱图中出现严重重叠峰的化合物,2DALC优于单检测器选择性色谱柱或全面LC x LC和1D-LC色谱柱-在非目标分析的情况下尤其如此。我们还预期2DALC在未知干扰化合物与目标化合物重叠的目标分析中将提供优异的定量。当一维峰明显重叠时,2DALC可以减少定量误差(即,使用一台多变量检测器,与1D-LC相比,其准确度最高可提高14倍,与LC x LC相比,最高可提高3.8倍) )。性能的改善程度取决于每个维度上的峰重叠程度以及光谱相对于彼此和背景的选择性以及D-2色谱柱之前分析物稀释的程度。 (C)2014 Elsevier B.V.保留所有权利。

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