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首页> 外文期刊>Spectrochimica acta, Part A. Molecular and biomolecular spectroscopy >Parametric-scaling optimization of pretreatment methods for the determination of trace/quasi-trace elements based on near infrared spectroscopy
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Parametric-scaling optimization of pretreatment methods for the determination of trace/quasi-trace elements based on near infrared spectroscopy

机译:基于近红外光谱法测定痕量/准痕量元素的预处理方法的参数缩放优化

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This work proposes a parametric-scaling strategy to optimize the pretreatments of near infrared (NIR) spectroscopic data, so as to cope with the difficulty of NIR technology in detecting trace or quasi-trace elements. This novel strategy helps enhancing the signal to noise ratio and contributes to extracting features from the raw spectrum, so that the information corresponding to the trace elements could be detected much easier. However, due to the complexity of NIR data, it is difficult to comprehensively evaluate and compare the performance of different pretreatment methods, especially when multiple target components are determined simultaneously. For this reason, we create some comprehensive model indicators to define the goodness of pretreatments in simultaneous multiple detection of trace elements. In this paper two near infrared data sets have been investigated, one is used to determinate the key indices in the primary screening of thalassemia and the other one is used to detect the heavy metal pollutants in farmland soil. Results show that the proposed parametric-scaling optimization strategy can improve the effect of pretreatments in the determination of trace/quasi-trace elements, and the model performance with the optimized pretreated data is significantly superior to that with the raw data. The optimized Savitzky-Golay smoother (SGS) keeps its merits in the real data examples. Especially, the newly emerged methods optical path length estimation and correction (OPLEC) and Whittaker smoother (WTK), as well as their parametric-scaling modified methods, show their advantages in the comparison with other pretreatments. According to the results of our experiments, they have shown promising potential in the NIR rapid analysis of trace/quasi-trace elements in the field of biomedical science and agricultural science. This is expected to be tested for other analytes with larger variation. (c) 2019 Elsevier B.V. All rights reserved.
机译:这项工作提出了参数化缩放策略,以优化近红外(NIR)光谱数据的预处理,从而应对鼻腔技术检测痕量或准痕量元素的难度。这种新的策略有助于提高信噪比并有助于从原始频谱提取特征,从而可以更容易地检测到与跟踪元件对应的信息。然而,由于NIR数据的复杂性,难以全面评估和比较不同预处理方法的性能,尤其是当同时确定多个目标分量时。因此,我们创建了一些全面的模型指标,以定义同时多次检测跟踪元素的预处理的良好。在本文中,已经研究了两个近红外数据集,用于确定初级筛查的主要索引,另一个用于检测农田土壤中的重金属污染物。结果表明,所提出的参数化优化策略可以提高预处理在确定痕量/准痕量元件中的效果,并且使用优化的预处理数据的模型性能明显优于原始数据。优化的Savitzky-Golay更顺畅(SGS)在实际数据示例中保持其优点。特别是,新出现的方法光路长度估计和校正(OPLEC)和WHittaker更光滑(WTK)以及它们的参数缩放改性方法,并在与其他预处理的比较中展示了它们的优点。根据我们的实验结果,他们在生物医学科学与农业科学领域的痕量/准痕量元素迅速分析中显示了有希望的潜力。这预计将对具有较大变异的其他分析物进行测试。 (c)2019 Elsevier B.v.保留所有权利。

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