Deconinck E, Sokeng Djiogo C A, Courselle P
Division of Food, Medicines and Consumer Safety, Section Medicines and Health Care Products, Scientific Institute of Public Health (WIV-ISP), J. Wytsmanstraat 14, B-1050 Brussels, Belgium.
Division of Food, Medicines and Consumer Safety, Section Medicines and Health Care Products, Scientific Institute of Public Health (WIV-ISP), J. Wytsmanstraat 14, B-1050 Brussels, Belgium.
J Pharm Biomed Anal. 2017 Sep 5;143:48-55. doi: 10.1016/j.jpba.2017.05.032. Epub 2017 May 20.
Plant food supplements are gaining popularity, resulting in a broader spectrum of available products and an increased consumption. Next to the problem of adulteration of these products with synthetic drugs the presence of regulated or toxic plants is an important issue, especially when the products are purchased from irregular sources. This paper focusses on this problem by using specific chromatographic fingerprints for five targeted plants and chemometric classification techniques in order to extract the important information from the fingerprints and determine the presence of the targeted plants in plant food supplements in an objective way. Two approaches were followed: (1) a multiclass model, (2) 2-class model for each of the targeted plants separately. For both approaches good classification models were obtained, especially when using SIMCA and PLS-DA. For each model, misclassification rates for the external test set of maximum one sample could be obtained. The models were applied to five real samples resulting in the identification of the correct plants, confirmed by mass spectrometry. Therefore chromatographic fingerprinting combined with chemometric modelling can be considered interesting to make a more objective decision on whether a regulated plant is present in a plant food supplement or not, especially when no mass spectrometry equipment is available. The results suggest also that the use of a battery of 2-class models to screen for several plants is the approach to be preferred.
植物性食品补充剂越来越受欢迎,这导致了更多种类的产品可供选择,其消费量也在增加。除了这些产品被合成药物掺假的问题外,受管制植物或有毒植物的存在也是一个重要问题,尤其是当这些产品从非正规渠道购买时。本文通过使用五种目标植物的特定色谱指纹图谱和化学计量分类技术来关注这个问题,以便从指纹图谱中提取重要信息,并客观地确定植物性食品补充剂中目标植物的存在情况。采用了两种方法:(1)多类模型,(2)分别针对每种目标植物的二类模型。对于这两种方法,都获得了良好的分类模型,尤其是使用SIMCA和PLS-DA时。对于每个模型,外部测试集的误分类率最多为一个样本。这些模型应用于五个实际样品,结果通过质谱法确认了正确植物的鉴定。因此,色谱指纹图谱结合化学计量建模对于更客观地判断植物性食品补充剂中是否存在受管制植物是很有意义的,特别是在没有质谱设备的情况下。结果还表明,使用一组二类模型来筛选多种植物是更可取的方法。