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Exploring Dietary Intake Data collected by FPQ using Unsupervised Learning

机译:探索FPQ使用无监督学习收集的膳食进口数据

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Populations in countries undergoing rapid transition are experiencing food- and nutrition-related problems. To acquire high-quality nutrition information, we need beside adequate data about food consumption, also efficient methods for the extraction of information from the collected data.Our aim was to develop a methodology for analyzing and reasoning about dietary intake data collected by a food propensity questionnaire (FPQ) and dependent 24-hour recalls (24HRs). We analysed a subset of data (about 197 participants) in the SI.Menu survey carried out in 2016/17 in Slovenia. The participants completed FPQs and 24HRs.We were able to identify four clusters. Two clusters represented participants with more healthy habits, e.g., low intake of animal fats, high breakfast frequency, and high intake of fruits and vegetables. The other two clusters represented participants with less healthy habits, e.g., high intake of animal fats, low breakfast frequency and increased BMI.The four clusters can be well separated by only four variables. This interesting discovery could lead to simplified FFQ questionnaires, which could significantly decrease the participants’ burden and could ensure participant compliance in similar studies. Having big national data set related to nutrition should ease the process of creating sustainable policies that will ultimately benefit agriculture, human health and the environment.
机译:正在进行快速过渡的国家的群体正在经历与营养相关的问题。要获得高质量的营养信息,我们需要在足够的食物消费数据旁边,还有高效的方法,用于从收集的数据中提取信息。我们的目的是开发一种方法论,用于分析和推理因食物倾向收集的饮食进口数据问卷(FPQ)和依赖24小时召回(24小时)。我们分析了斯洛文尼亚2016/17的Si.Menu调查中的数据(约197名参与者)的子集。参与者完成了FPQ和24小时。我们能够识别四个集群。两个集群代表了与更健康习惯的参与者,例如,低摄入的动物脂肪,早餐频率,以及水果和蔬菜的高摄入量。另外两个集群代表了具有较低健康习惯的参与者,例如,高摄入量的动物脂肪,低早餐频率和增加的BMI。四个集群只有四个变量很好地分开。这种有趣的发现可能导致简化的FFQ问卷调查问卷,这可能会显着降低参与者的负担,并可以确保参与者在类似研究中的遵从性。拥有与营养相关的大型国家数据集应该简化创造可持续政策的过程,最终会使农业,人类健康和环境受益。

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