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Accurately Inferring Compliance to Five Major Food Guidelines Through Simplified Surveys: Applying Data Mining to the UK National Diet and Nutrition Survey

机译:通过简化的调查准确推断出对五种主要食品准则的遵守情况:将数据挖掘应用于英国国家饮食和营养调查

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Background: National surveys in public health nutrition commonly record the weight of every food consumed by an individual. However, if the goal is to identify whether individuals are in compliance with the 5 main national nutritional guidelines (sodium, saturated fats, sugars, fruit and vegetables, and fats), much less information may be needed. A previous study showed that tracking only 2.89% of all foods (113/3911) was sufficient to accurately identify compliance. Further reducing the data needs could lower participation burden, thus decreasing the costs for monitoring national compliance with key guidelines. Objective: This study aimed to assess whether national public health nutrition surveys can be further simplified by only recording whether a food was consumed, rather than having to weigh it. Methods: Our dataset came from a generalized sample of inhabitants in the United Kingdom, more specifically from the National Diet and Nutrition Survey 2008-2012. After simplifying food consumptions to a binary value (1 if an individual consumed a food and 0 otherwise), we built and optimized decision trees to find whether the foods could accurately predict compliance with the major 5 nutritional guidelines. Results: When using decision trees of a similar size to previous studies (ie, involving as many foods), we were able to correctly infer compliance for the 5 guidelines with an average accuracy of 80.1%. This is an average increase of 2.5 percentage points over a previous study, showing that further simplifying the surveys can actually yield more robust estimates. When we allowed the new decision trees to use slightly more foods than in previous studies, we were able to optimize the performance with an average increase of 3.1 percentage points. Conclusions: Although one may expect a further simplification of surveys to decrease accuracy, our study found that public health dietary surveys can be simplified (from accurately weighing items to simply checking whether they were consumed) while improving accuracy. One possibility is that the simplification reduced noise and made it easier for patterns to emerge. Using simplified surveys will allow to monitor public health nutrition in a more cost-effective manner and possibly decrease the number of errors as participation burden is reduced.
机译:背景:全国公共卫生营养调查通常记录个人食用的每种食物的重量。但是,如果目标是确定个人是否符合5个主要的国家营养指南(钠,饱和脂肪,糖,水果,蔬菜和脂肪),则需要的信息会少得多。先前的一项研究表明,仅跟踪所有食品中的2.89%(113/3911)即可准确识别依从性。进一步减少数据需求可以减轻参与负担,从而降低监测国家对关键准则遵守情况的成本。目的:本研究旨在评估是否仅通过记录是否食用了食物而不需要称量即可进一步简化国家公共卫生营养调查。方法:我们的数据集来自英国居民的一般样本,更具体而言,来自《 2008-2012年国家饮食与营养调查》。在将食物消耗简化为二进制值之后(如果个人食用一种食物则为1,否则为0),我们构建并优化了决策树,以发现食物是否可以准确地预测是否符合主要5种营养准则。结果:当使用与先前研究相似的决策树(即涉及尽可能多的食物)时,我们能够正确推断出5项准则的合规性,平均准确度为80.1%。与以前的研究相比,这平均增加了2.5个百分点,表明进一步简化调查实际上可以得出更可靠的估计。当我们允许新的决策树使用比以前的研究略多的食物时,我们能够优化性能,平均提高3.1个百分点。结论:尽管人们可能期望进一步简化调查以降低准确性,但我们的研究发现,可以在提高准确性的同时简化公共卫生饮食调查(从准确称量物品到简单检查它们是否食用)。一种可能性是简化可以减少噪声并使图案更容易出现。使用简化的调查将允许以更具成本效益的方式监控公共卫生营养,并可能随着参与负担的减少而减少错误的数量。

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