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Extended Multiplicative Signal Correction Based Model Transfer for Raman Spectroscopy in Biological Applications

机译:基于乘法信号校正的生物应用中拉曼光谱的模型转移

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摘要

The chemometric analysis of Raman spectra of biological materials is hampered by spectral variations due to the instrumental setup that overlay the subtle biological changes of interest. Thus, an established statistical model may fail when applied to Raman spectra of samples acquired with a different device. Therefore, model transfer strategies are essential. Herein we report a model transfer approach based on extended multiplicative signal correction (EMSC). As opposed to existing model transfer methods, the EMSC based approach does not require group information on the secondary data sets, thus no extra measurements are required. The proposed model-transfer approach is a preprocessing procedure and can be combined with any method for regression and classification. The performance of EMSC as a model transfer method was demonstrated with a data set of Raman spectra of three Bacillus bacteria spore species (B. mycoides, B. subtilis, and B. thuringiensis), which were acquired on four Raman spectrometers. A three-group classification by partial least-squares discriminant analysis (PLS-DA) with leave-one-device-out external cross-validation (LODCV) was performed. The mean sensitivities of the prediction on the independent device were considerably improved by the EMSC method. Besides the mean sensitivity, the model transferability was additionally benchmarked by the newly defined numeric markers: (1) relative Pearsons correlation coefficient and (2) relative Fishers discriminant ratio. We show that these markers have led to consistent conclusions compared to the mean sensitivity of the classification. The advantage of our defined markers is that the evaluation is more effective and objective, because it is independent of the classification models.
机译:由于乐器设置,生物材料的拉曼光谱的化学计量分析受到乐谱变化的阻碍,这些仪器设置覆盖了兴趣的微妙生物学变化。因此,当应用于用不同设备获取的样本的拉曼光谱时,建立的统计模型可能失败。因此,模型转移策略至关重要。这里,我们报告了一种基于扩展乘法信号校正(EMSC)的模型传递方法。与现有的模型传输方法相反,基于EMSC的方法不需要对辅助数据集的组信息,因此不需要额外的测量。所提出的模型转移方法是预处理过程,可以与任何回归和分类的方法组合。作为模型转移方法的EMSC的性能用三个芽孢杆菌孢子物种的拉曼光谱(B. mycoides,B.枯草芽孢杆菌和B. thuringiensis)进行了数据集,该数据集在四个拉曼光谱仪上获得。通过部分最小二乘判别分析(PLS-DA)的三组分类进行了休假 - 一个设备输出外部交叉验证(LODCV)。通过EMSC方法显着改善了独立装置上预测的平均敏感性。除了平均敏感性外,模型可转移性另外由新定义的数标记基准测试:(1)相对培养梨子相关系数和(2)相对渔民判别比率。我们表明,与分类的平均敏感性相比,这些标记导致了一致的结论。我们定义标记的优势在于评估更有效和目标,因为它与分类模型无关。

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  • 来源
    《Analytical chemistry》 |2018年第16期|共9页
  • 作者单位

    Friedrich Schiller Univ Jena Inst Phys Chem Helmholtzweg 4 D-07743 Jena Germany;

    Norwegian Univ Life Sci Fac Sci &

    Technol POB 5003 NO-1432 As Norway;

    Norwegian Univ Life Sci Fac Sci &

    Technol POB 5003 NO-1432 As Norway;

    Friedrich Schiller Univ Jena Inst Phys Chem Helmholtzweg 4 D-07743 Jena Germany;

    Friedrich Schiller Univ Jena Inst Phys Chem Helmholtzweg 4 D-07743 Jena Germany;

    Friedrich Schiller Univ Jena Inst Phys Chem Helmholtzweg 4 D-07743 Jena Germany;

    Friedrich Schiller Univ Jena Inst Phys Chem Helmholtzweg 4 D-07743 Jena Germany;

    Friedrich Schiller Univ Jena Inst Phys Chem Helmholtzweg 4 D-07743 Jena Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

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