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首页> 外文期刊>Public Health Nutrition >Identifying small groups of foods that can predict achievement of key dietary recommendations: data mining of the UK National Diet and Nutrition Survey, 2008–12
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Identifying small groups of foods that can predict achievement of key dietary recommendations: data mining of the UK National Diet and Nutrition Survey, 2008–12

机译:识别可以预测关键饮食建议实现的小食品群:英国国家饮食与营养调查,2008–12年的数据挖掘

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Abstract Objective Many dietary assessment methods attempt to estimate total food and nutrient intake. If the intention is simply to determine whether participants achieve dietary recommendations, this leads to much redundant data. We used data mining techniques to explore the number of foods that intake information was required on to accurately predict achievement, or not, of key dietary recommendations. Design We built decision trees for achievement of recommendations for fruit and vegetables, sodium, fat, saturated fat and free sugars using data from a national dietary surveillance data set. Decision trees describe complex relationships between potential predictor variables (age, sex and all foods listed in the database) and outcome variables (achievement of each of the recommendations). Setting UK National Diet and Nutrition Survey (NDNS, 2008a€“12). Subjects The analysis included 4156 individuals. Results Information on consumption of 113 out of 3911 (3 %) foods, plus age and sex was required to accurately categorize individuals according to all five recommendations. The best trade-off between decision tree accuracy and number of foods included occurred at between eleven (for fruit and vegetables) and thirty-two (for fat, plus age) foods, achieving an accuracy of 72 % (for fat) to 83 % (for fruit and vegetables), with similar values for sensitivity and specificity. Conclusions Using information on intake of 113 foods, it is possible to predict with 72a€“83 % accuracy whether individuals achieve key dietary recommendations. Substantial further research is required to make use of these findings for dietary assessment.
机译:摘要目的多种饮食评估方法试图估算食物和营养摄入总量。如果仅是要确定参与者是否达到饮食建议,这将导致大量冗余数据。我们使用数据挖掘技术来探索需要多少摄入量信息才能准确预测关键饮食建议的成败。设计我们使用国家饮食监测数据集的数据构建了决策树,以实现对水果和蔬菜,钠,脂肪,饱和脂肪和游离糖的建议。决策树描述了潜在预测变量(年龄,性别和数据库中列出的所有食物)与结果变量(各项建议的实现)之间的复杂关系。制定英国国家饮食和营养调查(NDNS,2008a-12)。受试者分析包括4156个人。结果需要提供有关3911种食品(3%)中113种的消费信息,以及年龄和性别,才能根据所有五项建议对个人进行准确分类。决策树的准确性与所含食物的数量之间的最佳权衡发生在11种(水果和蔬菜)和32种(对于脂肪,加上年龄)食物之间,准确度达到72%(对于脂肪)至83% (用于水果和蔬菜),其敏感性和特异性值相似。结论利用有关113种食物摄入量的信息,可以以72%至83%的准确性预测个人是否达到关键的饮食建议。需要进行大量的进一步研究才能利用这些发现进行饮食评估。

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