Chemistry Department, Shiraz University, Shiraz, Iran.
Chemistry Department, Shiraz University, Shiraz, Iran.
Food Chem. 2024 Oct 30;456:139973. doi: 10.1016/j.foodchem.2024.139973. Epub 2024 Jun 3.
A paper-based sensor array consisting of eight nanoclusters (NCs) combined with multivariate analysis was used as a rapid method for the determination of animal sources of milk; goat, camel, sheep and cow. It was also used to detect and quantify three adulterants including sodium hypochlorite, hydrogen peroxide and formaldehyde in milk. The changes in fluorescence intensity of the NCs were quantified using a smartphone when the sensor array was immersed in the milk samples. The device generated a specific colorimetric signature for milk samples from different animals and for different adulterants. This allowed simultaneous identification of animal and adulterant sources with 100% accuracy. The device was found to be capable of accurately measuring the level of contaminants with a detection limit as low as 0.01% using partial least squares regression. In conclusion, a paper-based optical tongue device has been developed for the detection of adulterants in milk with point-of-need capability.
一种基于纸张的传感器阵列,由八个纳米簇(NCs)组成,并结合多元分析,被用作快速确定牛奶动物来源的方法;山羊、骆驼、绵羊和牛。它还用于检测和定量牛奶中的三种掺杂物,包括次氯酸钠、过氧化氢和甲醛。当传感器阵列浸入牛奶样品中时,使用智能手机定量测量 NCs 的荧光强度变化。该设备为来自不同动物和不同掺杂物的牛奶样品生成特定的比色特征。这使得能够同时以 100%的准确度识别动物和掺杂物来源。该设备被发现能够使用偏最小二乘回归准确测量低至 0.01%的污染物水平。总之,已经开发出一种基于纸张的光学舌设备,用于即时检测牛奶中的掺杂物。