Chemometrics, Qualimetrics and Nanosensors Group, Department of Analytical and Organic Chemistry, Rovira i Virgili University, Marcel·lí Domingo s/n, 43007 Tarragona, Spain.
Food Chem. 2014 Mar 15;147:177-81. doi: 10.1016/j.foodchem.2013.09.139. Epub 2013 Oct 4.
Two multivariate screening strategies (untargeted and targeted modelling) have been developed to compare their ability to detect food fraud. As a case study, possible adulteration of hazelnut paste is considered. Two different adulterants were studied, almond paste and chickpea flour. The models were developed from near-infrared (NIR) data coupled with soft independent modelling of class analogy (SIMCA) as a classification technique. Regarding the untargeted strategy, only unadulterated samples were modelled, obtaining 96.3% of correct classification. The prediction of adulterated samples gave errors between 5.5% and 2%. Regarding targeted modelling, two classes were modelled: Class 1 (unadulterated samples) and Class 2 (almond adulterated samples). Samples adulterated with chickpea were predicted to prove its ability to deal with non-modelled adulterants. The results show that samples adulterated with almond were mainly classified in their own class (90.9%) and samples with chickpea were classified in Class 2 (67.3%) or not in any class (30.9%), but no one only as unadulterated.
已经开发了两种多变量筛选策略(无目标和有目标建模)来比较它们检测食品欺诈的能力。作为案例研究,考虑了榛子酱可能的掺假情况。研究了两种不同的掺杂物,杏仁酱和鹰嘴豆粉。模型是从近红外(NIR)数据与软独立建模分类分析(SIMCA)作为分类技术相结合开发的。关于无目标策略,仅对未掺假的样品进行建模,正确分类率为 96.3%。对掺假样品的预测误差在 5.5%到 2%之间。关于有目标建模,对两类样品进行建模:第一类(未掺假样品)和第二类(杏仁掺假样品)。预测掺有鹰嘴豆的样品能够证明其处理非建模掺杂物的能力。结果表明,掺有杏仁的样品主要被分类到其自身的类别(90.9%),而掺有鹰嘴豆的样品被分类到第二类(67.3%)或不属于任何类别(30.9%),但没有人只被分类为未掺假。