首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Detection of melamine and sucrose as adulterants in milk powder using near-infrared spectroscopy with DD-SIMCA as one-class classifier and MCR-ALS as a means to provide pure profiles of milk and of both adulterants with forensic evidence: A short communication
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Detection of melamine and sucrose as adulterants in milk powder using near-infrared spectroscopy with DD-SIMCA as one-class classifier and MCR-ALS as a means to provide pure profiles of milk and of both adulterants with forensic evidence: A short communication

机译:用DD-SIMCA用近红外光谱作为单级分类器和MCR-ALS作为单级分类器和MCR-ALS的掺杂剂中的三聚氰胺和蔗糖作为一种方法,以提供纯牛奶和掺杂剂的掺杂剂:短期通信

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摘要

The present short communication reports a promising analytical method for authentication of milk based on first-order near-infrared (NIR) spectroscopic data coupled to data driven soft independent modeling of class analogy (DD-SIMCA). This one-class classifier was able to correctly classify all samples of genuine milk powder as members of the target class from samples of milk powder adulterated with melamine and sucrose in a concentration range of 0.8-2% (w/w) and 1-3% (w/w), respectively. Multivariate curve resolution - alternating least-squares (MCR-ALS) was applied as a complementary chemometric model to DD-SIMCA aimed at retrieving pure profiles, allowing to identify the chemical composition of samples properly attributed in the target class or not, providing further investigation from forensic point of view. In order to extend the prime focus of the present report, which was aimed at developing an appropriate chemometric model for authentication purposes, the quantification analysis was also performed. This was done by successful bilinear data decomposition of NIR spectra into pure profiles for the contributing components contained in the system studied (milk and adulterants), allowing to quantify analytes with strong overlapping profiles, even in the presence of an uncalibrated interferent, as demonstrated in this short communication using MCR-ALS under various constraints in order to decrease the rotational ambiguity.
机译:本短期通信报告了基于一阶近红外(NIR)光谱数据耦合到数据驱动的类比(DD-SIMCA)的数据驱动的软独立建模的牛奶的认证的有希望的分析方法。这种单级分类器能够将所有原装奶粉样品正确分类为从含有三聚氰胺和蔗糖的牛奶粉样品的靶阶层的靶等级的成员,浓度范围为0.8-2%(w / w)和1-3 %(w / w)分别。多变量曲线分辨率 - 交替的最小二乘(MCR-ALS)作为互补化学计量模型施加到旨在检索纯型材的DD-SIMCA,允许鉴定在目标类别中适当归因的样品的化学成分,提供进一步的调查从法医的角度来看。为了扩展本报告的主要重点,该报告旨在开发用于认证目的的适当化学计量模型,还进行了量化分析。这是通过成功的BILINEAR数据分解NIR SPECTRA成纯曲线来完成的,用于研究(牛奶和掺杂剂)所含的有助于组分,允许量化具有强烈重叠型材的分析物,即使在存在未校准的干扰的情况下,如图所示这种短信在各种约束下使用MCR-ALS,以减少旋转模糊性。

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