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首页> 外文期刊>Microchemical Journal: Devoted to the Application of Microtechniques in all Branches of Science >Independent component analysis and multivariate curve resolution to improve spectral interpretation of complex spectroscopic data sets: Application to infrared spectra of marine organic matter aggregates
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Independent component analysis and multivariate curve resolution to improve spectral interpretation of complex spectroscopic data sets: Application to infrared spectra of marine organic matter aggregates

机译:独立成分分析和多变量曲线分辨率,以改善复杂光谱数据集的光谱解释:在海洋有机物质聚集体的红外光谱中的应用

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The aim of this study is the identification of the most reliable multivariate technique for an efficient structural characterization of complex IR data sets. Different samples of organic matter (OM) aggregates were chosen as an object of investigation. In fact, the simultaneous presence of different biomolecules such as carbohydrates proteins and lipids makes difficult the interpretation and the comparison of the most significant fractions and structures, which describe the mechanisms of OM aggregation. With this aim, we collected the FTIR spectra of several samples of normal and anomalous size aggregates of organic matter and then submitted them to independent component analysis (ICA) by means of the algorithms fast independent component analysis (FastICA), joint approximate diagonalization of eigenmatrices (JADE), mutual information least dependent component analysis (MILCA) as well as to multivariate curve resolution alternate least squares (MCR-ALS). Among ICA algorithms, the MILCA was the most efficient because it always allowed a good spectra resolution and a higher number of significant and chemically interpretable components than the FastICA and the JADE algorithms, avoiding in addition the presence of some spectral ambiguities often observed when the two last ICA algorithms were applied. For the examined spectral sets, MCR-ALS gave comparable results with MILCA in terms of the number of identified components and for the exclusion of spectral ambiguities, though we observed some differences between MILCA and MCR-ALS. For instance, MCR-ALS spectra generally resulted more resolved than MILCA ones for all spectral sets, supporting the reduction of the spectral noise, but for one specific spectral set, it showed some misleading spectra, not observed in the corresponding MILCA treatment.
机译:这项研究的目的是确定最可靠的多元技术,以对复杂的红外数据集进行有效的结构表征。选择了不同的有机质(OM)聚集体样品作为研究对象。实际上,不同生物分子(如碳水化合物,蛋白质和脂质)的同时存在使得难以解释和比较最重要的馏分和结构,从而描述了OM聚集的机制。为此,我们收集了几个正常和异常大小的有机质聚集体样品的FTIR光谱,然后通过快速独立成分分析(FastICA),特征矩阵联合近似对角化等算法将其提交至独立成分分析(ICA)。 (JADE),互信息最小相关成分分析(MILCA)以及多元曲线分辨率交替最小二乘法(MCR-ALS)。在ICA算法中,MILCA是最有效的,因为与FastICA和JADE算法相比,它始终具有良好的光谱分辨率和更多的重要且可化学解释的组分,另外还避免了这两种方法经常观察到的光谱模糊性最后应用了ICA算法。对于所检查的光谱集,尽管我们观察到了MILCA和MCR-ALS之间的某些差异,但在识别出的组分数量以及排除光谱歧义方面,MCR-ALS与MILCA的结果相当。例如,对于所有光谱集,MCR-ALS光谱通常比MILCA光谱更分辨,支持降低光谱噪声,但是对于一个特定光谱集,它显示了一些误导性光谱,在相应的MILCA处理中未观察到。

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