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Penalized discriminant analysis for the detection of wild-grown and cultivated Ganoderma lucidum using Fourier transform infrared spectroscopy

机译:傅里叶变换红外光谱法检测野生和栽培灵芝的处罚判别分析

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An effective and simple analytical method using Fourier transform infrared (FTIR) spectroscopy to distinguish wild-grown high-quality Ganoderma lucidum (G. lucidum) from cultivated one is of essential importance for its quality assurance and medicinal value estimation. Commonly used chemical and analytical methods using full spectrum are not so effective for the detection and interpretation due to the complex system of the herbal medicine. In this study, two penalized discriminant analysis models, penalized linear discriminant analysis (PLDA) and elastic net (Elnet),using FTIR spectroscopy have been explored for the purpose of discrimination and interpretation. The classification performances of the two penalized models have been compared with two widely used multivariate methods, principal component discriminant analysis (PCDA) and partial least squares discriminant analysis (PLSDA). The Elnet model involving a combination of L-1 and L-2 norm penalties enabled an automatic selection of a small number of informative spectral absorption bands and gave an excellent classification accuracy of 99% for discrimination between spectra of wild-grown and cultivated G. lucidum. Its classification performance was superior to that of the PLDA model in a pure L-1 setting and outperformed the PCDA and PLSDA models using full wavelength. The well-performed selection of informative spectral features leads to substantial reduction in model complexity and improvement of classification accuracy, and it is particularly helpful for the quantitative interpretations of the major chemical constituents of G. lucidum regarding its anti-cancer effects. (C) 2016 Elsevier B.V. All rights reserved.
机译:使用傅立叶变换红外(FTIR)光谱法从种植的野生灵芝中区分出野生的优质灵芝(G. lucidum)的有效而简单的分析方法,对于其质量保证和药用价值评估至关重要。由于草药的复杂系统,使用全光谱的常用化学和分析方法对检测和解释不太有效。在这项研究中,为区分和解释目的,已经探索了两种使用FTIR光谱的惩罚判别分析模型,即惩罚线性判别分析(PLDA)和弹性网(Elnet)。两种惩罚模型的分类性能已与两种广泛使用的多元方法进行了比较,主成分判别分析(PCDA)和偏最小二乘判别分析(PLSDA)。 Elnet模型涉及L-1和L-2范数罚分的组合,能够自动选择少量有用的光谱吸收带,并为区分野生G和栽培G的光谱提供了99%的出色分类精度。透明。在纯L-1环境下,其分类性能优于PLDA模型,并且在全波长下优于PCDA和PLSDA模型。信息光谱特征的良好选择导致模型复杂性的大幅降​​低和分类准确性的提高,并且对于灵芝的主要化学成分的抗癌作用的定量解释特别有用。 (C)2016 Elsevier B.V.保留所有权利。

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