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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Two-Dimensional Correlation Spectroscopy (2D-COS) Variable Selection for Near-Infrared Microscopy Discrimination of Meat and Bone Meal in Compound Feed
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Two-Dimensional Correlation Spectroscopy (2D-COS) Variable Selection for Near-Infrared Microscopy Discrimination of Meat and Bone Meal in Compound Feed

机译:二维相关光谱(2D-COS)变量选择用于复合饲料中肉和骨粉的近红外显微镜鉴别

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摘要

This article presents a novel method for combining auto-peak and cross-peak information for sensitive variable selection in synchronous two-dimensional correlation spectroscopy (2D-COS). This variable selection method is then applied to the case of near-infrared (NIR) microscopy discrimination of meat and bone meal (MBM). This is of important practical value because MBM is currently banned in ruminate animal compound feed. For the 2D-COS analysis, a set of NIR spectroscopy data of compound feed samples (adulterated with varying concentrations of MBM) was pretreated using standard normal variate and detrending (SNVD) and then mapped to the 2D-COS synchronous matrix. For the auto-peak analysis, 12 main sensitive variables were identified at 6852, 6388, 6320, 5788, 5600, 5244, 4900, 4768, 4572, 4336, 4256, and 4192 cm~(-1). All these variables were assigned their specific spectral structure and chemical component. For the cross-peak analysis, these variables were divided into two groups, each group containing the six sensitive variables. This grouping resulted in a correlation between the spectral variables that was in accordance with the chemical-component content of the MBM and compound feed. These sensitive variables were then used to build a NIR microscopy discrimination model, which yielded a 97% correct classification. Moreover, this method detected the presence of MBM when its concentration was less than 1% in an adulterated compound feed sample. The concentration-dependent 2D-COS-based variable selection method developed in this study has the unique advantages of (1) introducing an interpretive aspect into variable selection, (2) substantially reducing the complexity of the computations, (3) enabling the transferability of the results to discriminant analysis, and (4) enabling the efficient compression of spectral data.
机译:本文提出了一种新颖的方法,用于结合自动峰信息和跨峰信息,用于同步二维相关光谱(2D-COS)中的敏感变量选择。然后将这种变量选择方法应用于肉和骨粉(MBM)的近红外(NIR)显微镜鉴别。这具有重要的实用价值,因为目前在反刍动物化合物饲料中禁止使用肉骨粉。对于2D-COS分析,使用标准正态变量和去趋势(SNVD)对化合物饲料样品(掺入不同浓度的MBM)的一组NIR光谱数据进行预处理,然后映射到2D-COS同步矩阵中。对于自动峰分析,在6852、6388、6320、5788、5600、5244、4900、4768、4572、4336、4256和4192 cm〜(-1)处确定了12个主要敏感变量。所有这些变量都被赋予了它们特定的光谱结构和化学成分。对于跨峰分析,将这些变量分为两组,每组包含六个敏感变量。该分组导致光谱变量之间的相关性,该光谱变量与MBM的化学成分含量和配合饲料有关。然后将这些敏感变量用于建立NIR显微镜鉴别模型,从而得出97%的正确分类。此外,该方法在掺假化合物饲料样品中浓度低于1%时检测到MBM的存在。本研究中开发的基于浓度的基于2D-COS的变量选择方法具有以下独特优势:(1)将解释性方面引入变量选择中;(2)大大降低了计算的复杂性;(3)使得将结果用于判别分析,以及(4)实现频谱数据的有效压缩。

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