首页> 外文期刊>Analytical and bioanalytical chemistry >Comparison of performance of partial least squares regression, secured principal component regression, and modified secured principal component regression for determination of human serum albumin, gamma-globulin and glucose in buffer solutions and in
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Comparison of performance of partial least squares regression, secured principal component regression, and modified secured principal component regression for determination of human serum albumin, gamma-globulin and glucose in buffer solutions and in

机译:比较偏最小二乘回归,安全主成分回归和改进的安全主成分回归在缓冲溶液中和溶液中测定人血清白蛋白,γ-球蛋白和葡萄糖的性能

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摘要

The performances of three multivariate analysis methods-partial least squares (PLS) regression, secured principal component regression (sPCR) and modified secured principal component regression (msPCR)-are compared and tested for the determination of human serum albumin (HSA), gamma-globulin, and glucose in phosphate buffer solutions and blood glucose quantification by near-infrared (NIR) spectroscopy. Results from the application of PLS, sPCR and msPCR are presented, showing that the three methods can determine the concentrations of HSA, gamma-globulin and glucose in phosphate buffer solutions almost equally well provided that the prediction samples contain the same spectral information as the calibration samples. On the other hand, when some potential spectral features appear in new measurements, sPCR and msPCR outperform PLS significantly. The reason for this is that such spectral features are not included during calibration, which leads to a degradation in PLS prediction performance, while sPCR and msPCR can improve their predictions for the concentrations of the analytes by removing the uncalibrated features from the original spectra. This point is demonstrated by successfully applying sPCR and msPCR to in vivo blood glucose measurements. This work therefore shows that sPCR and msPCR may provide possible alternatives to PLS in cases where some uncalibrated spectral features are present in measurements used for concentration prediction.
机译:比较并测试了三种多元分析方法的性能-偏最小二乘(PLS)回归,安全主成分回归(sPCR)和改良安全主成分回归(msPCR)-用于测定人血清白蛋白(HSA),γ-磷酸盐缓冲溶液中的球蛋白和葡萄糖,并通过近红外(NIR)光谱对血糖进行定量。给出了应用PLS,sPCR和msPCR的结果,表明只要预测样品包含与校准相同的光谱信息,这三种方法就可以确定磷酸盐缓冲溶液中HSA,γ-球蛋白和葡萄糖的浓度几乎相同。样品。另一方面,当新测量中出现某些潜在的光谱特征时,sPCR和msPCR的性能明显优于PLS。这样做的原因是,在校准期间不包括此类光谱特征,这会导致PLS预测性能下降,而sPCR和msPCR可以通过从原始光谱中删除未校准的特征来改善对分析物浓度的预测。通过将sPCR和msPCR成功应用于体内血糖测量可以证明这一点。因此,这项工作表明,在用于浓度预测的测量中存在一些未校准的光谱特征的情况下,sPCR和msPCR可能提供PLS的替代方案。

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