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探索双迹二维(2T2D)相关光谱法,作为一种通过突出样品两个独立光谱中的异步特征来提高判别分析准确性的有效方法。

Exploring two-trace two-dimensional (2T2D) correlation spectroscopy as an effective approach to improve accuracy of discriminant analysis by highlighting asynchronous features in two separate spectra of a sample.

作者信息

Sohng Woosuk, Eum Changhwan, Chung Hoeil

机构信息

Department of Chemistry and Research Institute for Convergence of Basic Science, Hanyang University, Seoul, 04763, Republic of Korea.

Department of Chemistry and Research Institute for Convergence of Basic Science, Hanyang University, Seoul, 04763, Republic of Korea.

出版信息

Anal Chim Acta. 2021 Apr 1;1152:338255. doi: 10.1016/j.aca.2021.338255. Epub 2021 Jan 28.

Abstract

This study aims to demonstrate two-trace two-dimensional (2T2D) correlation spectroscopy as an effective tool for improving the accuracy of discriminant analysis. Because 2T2D correlation analysis allows sensitive capturing of asynchronous spectral behaviors between two compared spectra of a sample, the subsequent asynchronous correlation features are expected to reveal more sample-to-sample characteristics and discriminants than the original spectral feature. Initially, near-infrared (NIR) spectroscopic authentication of pure olive oil was performed using the spectra collected at 20 °C and 41 °C. When the 2T2D slice spectra of the samples were used for the discriminant analysis, the authentication accuracy reached to 100%, while became degraded in the cases of using the spectra collected either at 20 °C or 41 °C. Furthermore, a simple strategy of utilizing the average spectrum of one sample group as the reference spectrum in the 2T2D correlation analysis was proposed for two-group discrimination and evaluated for the NIR identification of the geographical origins of agricultural products (milk vetch root (MVR) and perilla seed samples). Because the average spectrum of one sample group was used for comparison, dissimilar constituent compositions of the samples in another group were better observed, thereby improving the accuracy of discrimination of the geographical origins of the samples in both cases. The overall results demonstrated that 2T2D correlation analysis is effective for highlighting the minute asynchronous spectral features of a sample and can be expanded for diverse vibrational spectroscopy-based discriminant analyses.

摘要

本研究旨在证明双迹二维(2T2D)相关光谱法是提高判别分析准确性的有效工具。由于2T2D相关分析能够灵敏地捕捉样品两个比较光谱之间的异步光谱行为,因此预期后续的异步相关特征比原始光谱特征能揭示更多的样品间特征和判别因素。最初,使用在20℃和41℃收集的光谱对纯橄榄油进行近红外(NIR)光谱鉴别。当将样品的2T2D切片光谱用于判别分析时,鉴别准确率达到100%,而在使用在20℃或41℃收集的光谱时鉴别准确率会降低。此外,提出了一种在2T2D相关分析中利用一个样品组的平均光谱作为参考光谱进行两组判别的简单策略,并对农产品(黄芪根(MVR)和紫苏籽样品)地理来源的近红外鉴别进行了评估。由于使用一个样品组的平均光谱进行比较,能更好地观察另一组样品中不同的成分组成,从而提高了两种情况下样品地理来源判别的准确率。总体结果表明,2T2D相关分析对于突出样品微小的异步光谱特征是有效的,并且可扩展用于基于各种振动光谱的判别分析。

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