Delatour Thierry, Becker Florian, Krause Julius, Romero Roman, Gruna Robin, Längle Thomas, Panchaud Alexandre
Société des Produits Nestlé S.A., Nestlé Research, Route du Jorat 57, 1000 Lausanne, Switzerland.
Fraunhofer IOSB, Fraunhofer Institute of Optronics, System Technologies and Image Exploitation, Fraunhoferstrasse 1, 76131 Karlsruhe, Germany.
Foods. 2021 Dec 29;11(1):75. doi: 10.3390/foods11010075.
With the rising trend of consumers being offered by start-up companies portable devices and applications for checking quality of purchased products, it appears of paramount importance to assess the reliability of miniaturized sensors embedded in such devices. Here, eight sensors were assessed for food fraud applications in skimmed milk powder. The performance was evaluated with dry- and wet-blended powders mimicking adulterated materials by addition of either ammonium sulfate, semicarbazide, or cornstarch in the range 0.5-10% of profit. The quality of the spectra was assessed for an adequate identification of the outliers prior to a deep assessment of performance for both non-targeted (soft independent modelling of class analogy, SIMCA) and targeted analyses (partial least square regression with orthogonal signal correction, OPLS). Here, we show that the sensors have generally difficulties in detecting adulterants at ca. 5% supplementation, and often fail in achieving adequate specificity and detection capability. This is a concern as they may mislead future users, particularly consumers, if they are intended to be developed for handheld devices available publicly in smartphone-based applications.
随着初创公司向消费者提供用于检查所购产品质量的便携式设备和应用程序的趋势不断上升,评估此类设备中嵌入的小型传感器的可靠性显得至关重要。在此,对用于脱脂奶粉食品欺诈检测应用的八个传感器进行了评估。通过添加硫酸铵、氨基脲或玉米淀粉,以0.5 - 10%的比例模拟掺假材料,用干混和湿混粉末对性能进行了评估。在对非靶向分析(类类比软独立建模,SIMCA)和靶向分析(具有正交信号校正的偏最小二乘回归,OPLS)的性能进行深入评估之前,对光谱质量进行了评估,以充分识别异常值。在此,我们表明,这些传感器通常难以检测出约5%添加量的掺假物,并且常常无法实现足够的特异性和检测能力。如果它们打算开发用于基于智能手机应用的公开可用手持设备,这是一个问题,因为它们可能会误导未来的用户,尤其是消费者。