CAS Key Laboratory of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institute of Nutrition and Health, Shanghai Institutes for Biological Sciences, University of Chinese Academy of Sciences, Chinese Academy of Sciences, Shanghai 200031, PR China.
CAS Key Laboratory of Nutrition, Metabolism and Food Safety, Shanghai Institute of Nutrition and Health, Shanghai Institutes for Biological Sciences, University of Chinese Academy of Sciences, Chinese Academy of Sciences, Shanghai 200031, PR China.
Food Chem. 2020 Oct 15;327:127010. doi: 10.1016/j.foodchem.2020.127010. Epub 2020 May 8.
Food adulteration is a growing concern worldwide. The collation and analysis of food adulteration cases is of immense significance for food safety regulation and research. We collected 961 cases of food adulteration between 1998 and 2019 from the literature reports and announcements released by the Chinese government. Critical molecules were manually annotated in food adulteration substances as determined by food chemists, to build the first food adulteration database in China (http://www.rxnfinder.org/FADB-China/). This database is also the first molecular-level food adulteration database worldwide. Additionally, we herein propose an in silico method for predicting potentially illegal food additives on the basis of molecular fingerprints and similarity algorithms. Using this algorithm, we predict 1919 chemicals that may be illegally added to food; these predictions can effectively assist in the discovery and prevention of emerging food adulteration.
食品掺假是一个全球性的日益严重的问题。对食品掺假案例进行整理和分析,对于食品安全监管和研究具有重要意义。我们从政府发布的文献报道和公告中收集了 1998 年至 2019 年的 961 起食品掺假案例。食品化学家对食品掺假物质中的关键分子进行了人工注释,构建了中国第一个食品掺假数据库(http://www.rxnfinder.org/FADB-China/)。该数据库也是全球首个分子水平的食品掺假数据库。此外,我们在此提出了一种基于分子指纹和相似性算法预测潜在非法食品添加剂的计算方法。使用该算法,我们预测了 1919 种可能被非法添加到食品中的化学物质;这些预测可以有效地帮助发现和预防新出现的食品掺假。