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The Feasibility of Using Near Infrared Spectroscopy for Rapid Discrimination of Aged Shiitake Mushroom (Lentinula edodes) after Long-Term Storage

机译:在长期储存后使用近红外光谱法利用近红外光谱法的可行性,储存后昔日(Lentinula Codode)

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摘要

Long-term storage can largely degrade the taste and quality of dried shiitake mushroom (Lentinula edodes). This paper aimed at developing a rapid method for discrimination of the regular and aged shiitake by near infrared (NIR) spectroscopic analysis and chemometrics. Regular (n=197) and aged (n=133) samples of shiitake were collected from six main producing areas in two successive years (2013 and 2014). NIR reflectance spectra (4000–12000 cm−1) were measured with finely ground powders. Different data preprocessing method including smoothing, taking second-order derivatives (D2), and standard normal variate (SNV) were investigated to reduce the unwanted spectral variations. Partial least squares discriminant analysis (PLSDA) and least squares support vector machine (LS-SVM) were used to develop classification models. The results indicate that SNV and D2 can largely enhance the classification accuracy. The best sensitivity, specificity, and accuracy of classification were 0.967, 0.953, and 0.961 obtained by SNV-LS-SVM and 0.933, 0.930, and 0.932 obtained by SNV-PLSDA, respectively. Moreover, the low model complexity and the high accuracy in predicting objects produced in different years demonstrate that the classification models had a good generalization performance.
机译:长期储存可能在很大程度上降低干香菇(Lentinula edodes)的味道和质量。本文旨在通过近红外(NIR)光谱分析和化学测量学,开发一种快速的方法,用于判断常规和老年人的雌克的临界。在连续几年(2013年和2014年)中,从六个主要产区收集常规(n = 197)和年龄(n = 133)样品。用细地粉末测量NIR反射光谱(4000-12000cm-1)。研究包括平滑,采用二阶衍生物(D2)和标准正常变化(SNV)的不同数据预处理方法,以减少不需要的光谱变化。局部最小二乘判别分析(PLSDA)和最小二乘支持向量机(LS-SVM)用于开发分类模型。结果表明,SNV和D2可以在很大程度上提高分类精度。分类的最佳敏感性,特异性和准确性为0.967,0.953和0.961,分别通过SNV-PLSDA获得的0.933,0.930和0.932获得。此外,低模型复杂性和预测不同年份的物体的高精度证明了分类模型具有良好的概率性能。

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