Computer Systems Department, Jožef Stefan Institute, Ljubljana 1000, Slovenia.
National Institute for Public Health and the Environment (RIVM), Bilthoven 3720, The Netherlands.
Nutrients. 2018 Mar 30;10(4):433. doi: 10.3390/nu10040433.
This paper identifies the requirements for computer-supported food matching, in order to address not only national and European but also international current related needs and represents an integrated research contribution of the FP7 EuroDISH project. The available classification and coding systems and the specific problems of food matching are summarized and a new concept for food matching based on optimization methods and machine-based learning is proposed. To illustrate and test this concept, a study has been conducted in four European countries (i.e., Germany, The Netherlands, Italy and the UK) using different classification and coding systems. This real case study enabled us to evaluate the new food matching concept and provide further recommendations for future work. In the first stage of the study, we prepared subsets of food consumption data described and classified using different systems, that had already been manually matched with national food composition data. Once the food matching algorithm was trained using this data, testing was performed on another subset of food consumption data. Experts from different countries validated food matching between consumption and composition data by selecting best matches from the options given by the matching algorithm without seeing the result of the previously made manual match. The evaluation of study results stressed the importance of the role and quality of the food composition database as compared to the selected classification and/or coding systems and the need to continue compiling national food composition data as eating habits and national dishes still vary between countries. Although some countries managed to collect extensive sets of food consumption data, these cannot be easily matched with food composition data if either food consumption or food composition data are not properly classified and described using any classification and coding systems. The study also showed that the level of human expertise played an important role, at least in the training stage. Both sets of data require continuous development to improve their quality in dietary assessment.
本文确定了计算机支持的食物匹配的要求,以解决不仅是国家和欧洲,而且是国际上当前相关的需求,并代表了 FP7 EuroDISH 项目的综合研究贡献。总结了可用的分类和编码系统以及食物匹配的具体问题,并提出了一种基于优化方法和基于机器的学习的新的食物匹配概念。为了说明和测试这个概念,在四个欧洲国家(德国、荷兰、意大利和英国)进行了一项研究,使用了不同的分类和编码系统。这个真实案例研究使我们能够评估新的食物匹配概念,并为未来的工作提供进一步的建议。在研究的第一阶段,我们使用不同的系统准备了使用不同系统描述和分类的食物消费数据子集,这些数据已经与国家食物成分数据进行了手动匹配。一旦使用这些数据训练了食物匹配算法,就在另一组食物消费数据上进行了测试。来自不同国家的专家通过从匹配算法提供的选项中选择最佳匹配,而无需查看先前进行的手动匹配的结果,验证了消费和成分数据之间的食物匹配。研究结果的评估强调了食物成分数据库的作用和质量的重要性,与所选分类和/或编码系统相比,以及继续编制国家食物成分数据的必要性,因为饮食习惯和国家菜肴仍然在国家之间有所不同。尽管一些国家设法收集了广泛的食物消费数据集,但如果食物消费或食物成分数据没有使用任何分类和编码系统进行适当的分类和描述,则这些数据集难以与食物成分数据匹配。该研究还表明,人类专业知识水平至少在培训阶段发挥了重要作用。这两组数据都需要不断发展,以提高其在饮食评估中的质量。