首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Experimental variability and data pre-processing as factors affecting the discrimination power of some chemometric approaches (PCA, CA and a new algorithm based on linear regression) applied to ( plus /-) ESI/MS and RPLC/UV data: Application on green tea extracts
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Experimental variability and data pre-processing as factors affecting the discrimination power of some chemometric approaches (PCA, CA and a new algorithm based on linear regression) applied to ( plus /-) ESI/MS and RPLC/UV data: Application on green tea extracts

机译:实验变异性和数据预处理是影响某些化学计量学方法(PCA,CA和基于线性回归的新算法)的辨别力的因素,这些化学计量学方法适用于(加/-)ESI / MS和RPLC / UV数据:在绿茶上的应用提取物

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The influence of the experimental variability (instrumental repeatability, instrumental intermediate precision and sample preparation variability) and data pre-processing (normalization, peak alignment, background subtraction) on the discrimination power of multivariate data analysis methods (Principal Component Analysis -PCA- and Cluster Analysis -CA-) as well as a new algorithm based on linear regression was studied. Data used in the study were obtained through positive or negative ion monitoring electrospray mass spectrometry (+/-ESI/MS) and reversed phase liquid chromatography/UV spectrometric detection (RPLC/UV) applied to green tea extracts. Extractions in ethanol and heated water infusion were used as sample preparation procedures. The multivariate methods were directly applied to mass spectra and chromatograms, involving strictly a holistic comparison of shapes, without assignment of any structural identity to compounds. An alternative data interpretation based ori linear regression analysis mutually applied to data series is also discussed. Slopes, intercepts and correlation coefficients produced by the linear regression analysis applied on pairs of very large experimental data series successfully retain information resulting from high frequency instrumental acquisition rates, obviously better defining the profiles being compared. Consequently, each type of sample or comparison between samples produces in the Cartesian space an ellipsoidal volume defined by the normal variation intervals of the slope, intercept and correlation coefficient. Distances between volumes graphically illustrates (dis) similarities between compared data. The instrumental intermediate precision had the major effect on the discrimination power of the multivariate data analysis methods. Mass spectra produced through ionization from liquid state in atmospheric pressure conditions of bulk complex mixtures resulting from extracted materials of natural origins provided an excellent data basis for multivariate analysis methods, equivalent to data resulting from chromatographic separations. The alternative evaluation of very large data series based on linear regression analysis produced information equivalent to results obtained through application of PCA an CA. (C) 2016 Elsevier B.V. All rights reserved.
机译:实验变异性(仪器重复性,仪器中间精度和样品制备变异性)和数据预处理(归一化,峰比对,背景扣除)对多元数据分析方法(主成分分析-PCA-和聚类)的鉴别能力的影响研究了分析-CA-)以及基于线性回归的新算法。通过正离子或负离子监测电喷雾质谱(+/- ESI / MS)和应用于绿茶提取物的反相液相色谱/紫外光谱检测(RPLC / UV)获得了研究中使用的数据。使用乙醇提取和热水注入作为样品制备程序。多元方法直接应用于质谱和色谱图,严格地包括形状的整体比较,而没有赋予化合物任何结构同一性。还讨论了相互替代的基于数据解释的ori线性回归分析,它们相互应用于数据序列。由线性回归分析产生的斜率,截距和相关系数应用于非常大的实验数据对,成功地保留了高频仪器采集速率所产生的信息,显然可以更好地定义所比较的剖面。因此,每种类型的样本或样本之间的比较都会在笛卡尔空间中产生由斜率,截距和相关系数的正常变化间隔定义的椭圆形体积。体积之间的距离以图形方式说明了比较数据之间的相似性。仪器的中间精度对多元数据分析方法的判别能力具有主要影响。在自然条件下从大自然中提取的物质得到的大体积复杂混合物在大气压力条件下从液态离子化产生的质谱图为多元分析方法提供了极好的数据基础,相当于色谱分离得到的数据。基于线性回归分析的非常大数据系列的替代评估所产生的信息等同于通过应用PCA和CA获得的结果。 (C)2016 Elsevier B.V.保留所有权利。

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