ASSET Technology Centre, Institute for Global Food Security, School of Biological Sciences, Queen's University Belfast, Northern Ireland, United Kingdom.
Central Institute of Medicinal and Aromatic Plants, P.O. CIMAP, Kukrail Picnic Spot Road, Lucknow, Utter Pradesh 226015, India.
Food Chem. 2022 Aug 30;386:132738. doi: 10.1016/j.foodchem.2022.132738. Epub 2022 Mar 18.
The COVID-19 pandemic has impacted the food industry and consumers, with production gaps, shipping delays, and changes in supply and demand leading to an increased risk of food fraud. Rice has a high probability for adulteration by food fraudsters, being a staple commodity for more than half the global population, making the assessment of geographical origins of rice for authenticity important in terms of protecting businesses and consumers. In this study, we describe ICP-MS elemental profiling coupled with elementomic modelling to identify the geographical indications of Indian, Chinese, and Vietnamese rice. A PLS-DA model exhibited good discrimination (R = 0.8393, Q = 0.7673, accuracy = 1.0). Data-driven soft independent modelling of class analogy (dd-SIMCA) and K-nearest neighbours (K-NN) models have good sensitivity (98%) and specificity (100%).
新冠疫情对食品行业和消费者造成了影响,生产缺口、运输延误以及供需变化导致食品欺诈风险增加。大米是全球一半以上人口的主食,很容易被食品欺诈者掺假,因此评估大米的地理来源对于保护企业和消费者的真实性非常重要。在本研究中,我们描述了电感耦合等离子体质谱(ICP-MS)元素分析与元素组学建模相结合,以鉴定印度、中国和越南大米的地理标志。PLS-DA 模型表现出良好的区分能力(R=0.8393,Q=0.7673,准确率=1.0)。数据驱动的类相似性软独立建模(dd-SIMCA)和 K-最近邻(K-NN)模型具有良好的灵敏度(98%)和特异性(100%)。