Granato Daniel, Putnik Predrag, Kovačević Danijela Bursać, Santos Jânio Sousa, Calado Verônica, Rocha Ramon Silva, Cruz Adriano Gomes Da, Jarvis Basil, Rodionova Oxana Ye, Pomerantsev Alexey
Dept. of Food Engineering, State Univ. of Ponta Grossa, Av. Carlos Cavalcanti, 4748, 84030-900, Ponta Grossa, Brazil.
Faculty of Food Technology and Biotechnology, Univ. of Zagreb, Pierottijeva 6, 10000, Zagreb, Croatia.
Compr Rev Food Sci Food Saf. 2018 May;17(3):663-677. doi: 10.1111/1541-4337.12341. Epub 2018 Mar 30.
In the last decade, the use of multivariate statistical techniques developed for analytical chemistry has been adopted widely in food science and technology. Usually, chemometrics is applied when there is a large and complex dataset, in terms of sample numbers, types, and responses. The results are used for authentication of geographical origin, farming systems, or even to trace adulteration of high value-added commodities. In this article, we provide an extensive practical and pragmatic overview on the use of the main chemometrics tools in food science studies, focusing on the effects of process variables on chemical composition and on the authentication of foods based on chemical markers. Pattern recognition methods, such as principal component analysis and cluster analysis, have been used to associate the level of bioactive components with in vitro functional properties, although supervised multivariate statistical methods have been used for authentication purposes. Overall, chemometrics is a useful aid when extensive, multiple, and complex real-life problems need to be addressed in a multifactorial and holistic context. Undoubtedly, chemometrics should be used by governmental bodies and industries that need to monitor the quality of foods, raw materials, and processes when high-dimensional data are available. We have focused on practical examples and listed the pros and cons of the most used chemometric tools to help the user choose the most appropriate statistical approach for analysis of complex and multivariate data.
在过去十年中,为分析化学开发的多元统计技术在食品科学与技术领域得到了广泛应用。通常,当存在大量复杂数据集时,就样本数量、类型和响应而言,会应用化学计量学。其结果用于地理来源、种植系统的认证,甚至用于追踪高附加值商品的掺假情况。在本文中,我们对食品科学研究中主要化学计量学工具的使用提供了广泛的实践和务实概述,重点关注过程变量对化学成分的影响以及基于化学标志物的食品认证。模式识别方法,如主成分分析和聚类分析,已被用于将生物活性成分的水平与体外功能特性相关联,尽管监督多元统计方法已用于认证目的。总体而言,当需要在多因素和整体背景下解决广泛、多样且复杂的实际问题时,化学计量学是一种有用的辅助工具。毫无疑问,当有高维数据可用时,政府机构和需要监测食品、原材料和加工过程质量的行业应该使用化学计量学。我们专注于实际例子,并列出了最常用化学计量学工具的优缺点,以帮助用户为复杂多元数据的分析选择最合适的统计方法。