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Extraction of multiple pure component 1H and 13C NMR spectra from two mixtures: novel solution obtained by sparse component analysis-based blind decomposition

机译:从两种混合物中提取多个纯组分1H和13C NMR谱图:通过基于稀疏组分分析的盲分解获得的新溶液

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摘要

Sparse Component Analysis (SCA) is proposed for the blind extraction of pure component spectra from measured mixed spectra in 13C and 1H nuclear magnetic resonance (NMR) spectroscopy using two mixtures only. As opposed to independent component analysis (ICA) -based solutions that require the number of linearly independent mixtures to be greater or equal to the number of pure components, the proposed SCA-based approach to deal with the blind source separation (BSS) problem is insensitive to statistical (in)dependence among pure components. The algorithm is formulated exploiting sparseness of the pure components in the wavelet basis defined by either Morlet or Mexican hat wavelet. It is assumed that in average only one pure component exists at each coordinate in the wavelet domain. In contrast to the majority of the BSS algorithms no a priori information about the number of pure components is required because it is estimated during the clustering phase of the algorithm. The method is demonstrated on both 1H and 13C NMR experimental data of a mixture with the known pure component spectra.
机译:提出了稀疏成分分析(SCA)用于仅使用两种混合物从13C和1H核磁共振(NMR)光谱中测量的混合光谱中盲提取纯组分光谱的方法。与要求独立线性分析混合物的数量大于或等于纯组分数量的基于独立成分分析(ICA)的解决方案不同,提议的基于SCA的方法来处理盲源分离(BSS)问题是对纯组件之间的统计(不)依赖性不敏感。该算法是在Morlet或Mexican hat小波定义的小波基础上利用纯成分的稀疏性而制定的。假设在小波域的每个坐标上平均仅存在一个纯分量。与大多数BSS算法相反,不需要有关纯组分数量的先验信息,因为它是在算法的聚类阶段进行估算的。该方法在具有已知纯组分光谱的混合物的1H和13C NMR实验数据上均得到证明。

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