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首页> 外文期刊>Analytica chimica acta >Multivariate curve resolution based chromatographic peak alignment combined with parallel factor analysis to exploit second-order advantage in complex chromatographic measurements
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Multivariate curve resolution based chromatographic peak alignment combined with parallel factor analysis to exploit second-order advantage in complex chromatographic measurements

机译:基于多元曲线分辨率的色谱峰比对结合并行因子分析,以利用复杂色谱测量中的二阶优势

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In the present contribution, a new combination of multivariate curve resolution-correlation optimized warping (MCR-COW) with trilinear parallel factor analysis (PARAFAC) is developed to exploit second-order advantage in complex chromatographic measurements. In MCR-COW, the complexity of the chromatographic data is reduced by arranging the data in a column-wise augmented matrix, analyzing using MCR bilinear model and aligning the resolved elution profiles using COW in a component-wise manner. The aligned chromatographic data is then decomposed using trilinear model of PARAFAC in order to exploit pure chromatographic and spectroscopic information. The performance of this strategy is evaluated using simulated and real high-performance liquid chromatography-diode array detection (HPLC-DAD) datasets. The obtained results showed that the MCR-COW can efficiently correct elution time shifts of target compounds that are completely overlapped by coeluted interferences in complex chromatographic data. In addition, the PARAFAC analysis of aligned chromatographic data has the advantage of unique decomposition of overlapped chromatographic peaks to identify and quantify the target compounds in the presence of interferences. Finally, to confirm the reliability of the proposed strategy, the performance of the MCR-COW-PARAFAC is compared with the frequently used methods of PARAFAC, COW-PARAFAC, multivariate curve resolution-alternating least squares (MCR-ALS), and MCR-COW-MCR. In general, in most of the cases the MCR-COW-PARAFAC showed an improvement in terms of lack of fit (LOF), relative error (RE) and spectral correlation coefficients in comparison to the PARAFAC, COW-PARAFAC, MCR-ALS and MCR-COW-MCR results.
机译:在本文稿中,开发了多变量曲线分辨率相关优化翘曲(MCR-COW)与三线性平行因子分析(PARAFAC)的新组合,以利用复杂色谱测量中的二阶优势。在MCR-COW中,色谱数据的复杂性通过将数据排列在按列扩展的矩阵中,使用MCR双线性模型进行分析以及使用COW以组分方式对齐解析的洗脱曲线来降低。然后使用PARAFAC的三线性模型分解对齐的色谱数据,以利用纯色谱和光谱信息。使用模拟的和实际的高效液相色谱-二极管阵列检测(HPLC-DAD)数据集评估此策略的性能。获得的结果表明,MCR-COW可以有效地校正目标化合物的洗脱时间偏移,这些目标化合物在复杂色谱数据中被共洗脱的干扰完全重叠。此外,对齐色谱数据的PARAFAC分析具有重叠色谱峰独特分解的优势,可在存在干扰的情况下鉴定和定量目标化合物。最后,为确认所提出策略的可靠性,将MCR-COW-PARAFAC的性能与PARAFAC,COW-PARAFAC,多元曲线分辨率-交替最小二乘(MCR-ALS)和MCR- COW-MCR。通常,在大多数情况下,与PARAFAC,COW-PARAFAC,MCR-ALS和PARAFAC相比,MCR-COW-PARAFAC在缺乏拟合(LOF),相对误差(RE)和光谱相关系数方面均有改善。 MCR-COW-MCR结果。

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