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首页> 外文期刊>LWT-Food Science & Technology >NIR spectroscopy-multivariate analysis for rapid authentication, detection and quantification of common plant adulterants in saffron (Crocus sativus L.) stigmas
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NIR spectroscopy-multivariate analysis for rapid authentication, detection and quantification of common plant adulterants in saffron (Crocus sativus L.) stigmas

机译:NIR光谱 - 多变量分析,用于快速认证,藏红花(番红花Sativus L.)柱头的普通植物掺杂物的检测和定量

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摘要

The presented work discusses the development of a rapid and precise analytical protocol using near infrared spectroscopy combined with multivariate data analysis to authenticate, detect and quantify most of the commonly encountered plant adulterants used in fraud of saffron stigmas including safflower, pomegranate fruit peel, calendula flower, paprika, curcuma, hibiscus, saffron stamens and exhaustively-extracted saffron stigmas. A Soft Independent Modelling of Class Analogies (SIMCA) model was constructed for authentication of saffron stigmas with 100% sensitivity and a Partial Least Squares-Discriminant Analysis (PLS-DA) model was successfully utilized for correct discrimination of unadulterated and intentionally adulterated saffron samples as it showed 100% sensitivity and 99% specificity. Quantitation of the amount of each individual adulterant was achieved through construction of partial least squares regression (PLSR) models accompanied by variable importance to projection (VIP) method for variable selection which revealed that bands in the spectral ranges 6000-5800 cm(-1) followed by 4600-4200 cm(-1) and 5400-5000 cm(-1) were the most important for correct prediction with detection limits as low as 1%. The models performance was tested using internal and external validation sets indicating their reliability in providing a useful quality assessment tool for saffron in an attempt to prevent its fraud.
机译:本工作探讨了使用近红外光谱的快速和精确分析协议的开发,结合​​多变量数据分析,以进行认证,检测和量化藏红花柱头欺诈中的大多数常见的植物掺杂物,包括红花,石榴果皮,金盏花花,辣椒粉,姜黄,芙蓉,藏红花雄蕊和疏忽藏红花柱。构建了类模拟(SIMCA)模型的软独立建模,用于藏红花柱的认证,具有100%的灵敏度,并且成功地利用了局部最小二乘判别分析(PLS-DA)模型,用于正确辨别毫不掩盖和故意掺杂的藏红花样本它显示出100%的灵敏度和99%的特异性。通过构造部分最小二乘回归(PLSR)模型来实现每个单独的掺杂剂的量,伴随着变量选择的投影(VIP)方法,这显示光谱范围6000-5800cm(-1)中的频带其次是4600-4200 cm(-1)和5400-5000cm(-1)对于正确的预测,检测限为低至1%,最重要。使用内部和外部验证集测试模型性能,指示其可靠性为藏红花提供有用的质量评估工具,以防止其欺诈。

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