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A Hybrid Least Squares and Principal Component Analysis Algorithm for Raman Spectroscopy

机译:拉曼光谱的混合最小二乘和主成分分析算法

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摘要

Raman spectroscopy is a powerful technique for detecting and quantifying analytes in chemical mixtures. A critical part of Raman spectroscopy is the use of a computer algorithm to analyze the measured Raman spectra. The most commonly used algorithm is the classical least squares method, which is popular due to its speed and ease of implementation. However, it is sensitive to inaccuracies or variations in the reference spectra of the analytes (compounds of interest) and the background. Many algorithms, primarily multivariate calibration methods, have been proposed that increase robustness to such variations. In this study, we propose a novel method that improves robustness even further by explicitly modeling variations in both the background and analyte signals. More specifically, it extends the classical least squares model by allowing the declared reference spectra to vary in accordance with the principal components obtained from training sets of spectra measured in prior characterization experiments. The amount of variation allowed is constrained by the eigenvalues of this principal component analysis. We compare the novel algorithm to the least squares method with a low-order polynomial residual model, as well as a state-of-the-art hybrid linear analysis method. The latter is a multivariate calibration method designed specifically to improve robustness to background variability in cases where training spectra of the background, as well as the mean spectrum of the analyte, are available. We demonstrate the novel algorithm’s superior performance by comparing quantitative error metrics generated by each method. The experiments consider both simulated data and experimental data acquired from in vitro solutions of Raman-enhanced gold-silica nanoparticles.
机译:拉曼光谱法是一种用于检测和定量化学混合物中分析物的强大技术。拉曼光谱的关键部分是使用计算机算法来分析测得的拉曼光谱。最常用的算法是经典的最小二乘法,由于其速度快且易于实现,因此很受欢迎。但是,它对分析物(目标化合物)和背景的参考光谱的不准确或变化敏感。已经提出了许多算法,主要是多元校准方法,这些算法提高了这种变化的鲁棒性。在这项研究中,我们提出了一种新颖的方法,该方法可通过对背景信号和分析物信号的变化进行显式建模来进一步提高鲁棒性。更具体地说,它通过允许声明的参考光谱根据从在先的表征实验中测量的光谱训练集获得的主成分而变化,从而扩展了经典最小二乘模型。允许的变化量受此主成分分析的特征值约束。我们将新算法与具有低阶多项式残差模型的最小二乘方法以及最新的混合线性分析方法进行了比较。后者是一种多变量校准方法,专门设计用于在背景的训练光谱以及分析物的平均光谱可用的情况下提高对背景变化的鲁棒性。通过比较每种方法产生的定量误差指标,我们证明了该新算法的优越性能。实验考虑了模拟数据和从拉曼增强金二氧化硅纳米粒子的体外溶液中获得的实验数据。

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