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用于多拉曼光谱背景校正的协作惩罚最小二乘法

Collaborative Penalized Least Squares for Background Correction of Multiple Raman Spectra.

作者信息

Chen Long, Wu Yingwen, Li Tianjun, Chen Zhuo

机构信息

Faculty of Science and Technology, University of Macau, E11 Avenida da Universidade, Taipa, Macau.

Chemistry and Chemical Engineering, College of Biology, Hunan University, Changsha 410082, China.

出版信息

J Anal Methods Chem. 2018 Aug 29;2018:9031356. doi: 10.1155/2018/9031356. eCollection 2018.

Abstract

Although Raman spectroscopy has been widely used as a noninvasive analytical tool in various applications, backgrounds in Raman spectra impair its performance in quantitative analysis. Many algorithms have been proposed to separately correct the background spectrum by spectrum. However, in real applications, there are commonly multiple spectra collected from the close locations of a sample or from the same analyte with different concentrations. These spectra are strongly correlated and provide valuable information for more robust background correction. Herein, we propose two new strategies to remove background for a set of related spectra collaboratively. Based on weighted penalized least squares, the new approaches will use the fused weights from multiple spectra or the weights from the average spectrum to estimate the background of each spectrum in the set. Background correction results from both simulated and real experimental data demonstrate that the proposed collaborative approaches outperform traditional algorithms which process spectra individually.

摘要

尽管拉曼光谱已作为一种非侵入性分析工具在各种应用中广泛使用,但拉曼光谱中的背景会影响其定量分析性能。已经提出了许多算法来逐光谱地单独校正背景光谱。然而,在实际应用中,通常会从样品的相近位置或从具有不同浓度的同一分析物收集多个光谱。这些光谱高度相关,并为更稳健的背景校正提供有价值的信息。在此,我们提出了两种新策略来协同去除一组相关光谱的背景。基于加权惩罚最小二乘法,新方法将使用来自多个光谱的融合权重或来自平均光谱的权重来估计该组中每个光谱的背景。模拟和实际实验数据的背景校正结果表明,所提出的协同方法优于单独处理光谱的传统算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/58b1/6136554/b963bc0e5909/JAMC2018-9031356.001.jpg

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