Li Min, Zhang Lu, Yao Xiaolong, Jiang Xingyu
State Key Laboratory of Lake Science and Environment, Nanjing Institute of Geography and Limnology, Chinese Academy of Sciences.
University of the Chinese Academy of Sciences.
Anal Sci. 2017;33(11):1225-1230. doi: 10.2116/analsci.33.1225.
The emerging membrane introduction mass spectrometry technique has been successfully used to detect benzene, toluene, ethyl benzene and xylene (BTEX), while overlapped spectra have unfortunately hindered its further application to the analysis of mixtures. Multivariate calibration, an efficient method to analyze mixtures, has been widely applied. In this paper, we compared univariate and multivariate analyses for quantification of the individual components of mixture samples. The results showed that the univariate analysis creates poor models with regression coefficients of 0.912, 0.867, 0.440 and 0.351 for BTEX, respectively. For multivariate analysis, a comparison to the partial-least squares (PLS) model shows that the orthogonal partial-least squares (OPLS) regression exhibits an optimal performance with regression coefficients of 0.995, 0.999, 0.980 and 0.976, favorable calibration parameters (RMSEC and RMSECV) and a favorable validation parameter (RMSEP). Furthermore, the OPLS exhibits a good recovery of 73.86 - 122.20% and relative standard deviation (RSD) of the repeatability of 1.14 - 4.87%. Thus, MIMS coupled with the OPLS regression provides an optimal approach for a quantitative BTEX mixture analysis in monitoring and predicting water pollution.
新兴的膜引入质谱技术已成功用于检测苯、甲苯、乙苯和二甲苯(BTEX),然而不幸的是,重叠光谱阻碍了其在混合物分析中的进一步应用。多变量校准作为一种分析混合物的有效方法,已得到广泛应用。本文比较了单变量和多变量分析对混合样品中各组分的定量分析。结果表明,单变量分析建立的模型较差,BTEX的回归系数分别为0.912、0.867、0.440和0.351。对于多变量分析,与偏最小二乘法(PLS)模型的比较表明,正交偏最小二乘法(OPLS)回归表现出最佳性能,回归系数分别为0.995、0.999、0.980和0.976,校准参数(RMSEC和RMSECV)良好,验证参数(RMSEP)也良好。此外,OPLS的回收率良好,为73.86 - 122.20%,重复性的相对标准偏差(RSD)为1.14 - 4.87%。因此,膜引入质谱与OPLS回归相结合为监测和预测水污染中的BTEX混合物定量分析提供了一种最佳方法。