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利用智能卡技术监测学校食堂儿童的饮食习惯:2. 一组8至11岁男孩在78天内选择的所有餐食的营养成分。

Using smart card technology to monitor the eating habits of children in a school cafeteria: 2. The nutrient contents of all meals chosen by a group of 8- to 11-year-old boys over 78 days.

作者信息

Lambert N, Plumb J, Looise B, Johnson I T, Harvey I, Wheeler C, Robinson M, Rolfe P

机构信息

Institute of Food Research, Norwich Research Park, Colney, Norwich, UK.

出版信息

J Hum Nutr Diet. 2005 Aug;18(4):255-65; quiz 267-9. doi: 10.1111/j.1365-277X.2005.00618.x.

Abstract

OBJECTIVE

The aim of the study was to test the abilities of the newly created smart card system to track the nutrient contents of foods chosen over several months by individual diners in a school cafeteria.

METHODS

From the food choice and composition of food data sets, an Access database was created encompassing 30 diners (aged 8-11 years), 78 days and eight nutrients. Data were available for a total of 1909 meals.

RESULTS

Based upon population mean values the cohort were clearly choosing meals containing higher than the recommended maximum amounts for sugar and lower than the recommended minimum amounts of fibre, iron and vitamin A. Protein and vitamin C contents of meals chosen were well above minimum requirements. Over the 1909 meals, nutrient requirements were met 41% of the time.

CONCLUSIONS

The system created was very effective at continually monitoring food choices of individual diners over limitless time. The data generated raised questions on the common practice of presenting nutrient intakes as population mean values calculated over a few days. The impact of heavily fortified foods on such studies in general is discussed.

摘要

目的

本研究旨在测试新创建的智能卡系统跟踪学校自助餐厅中个体用餐者在数月内所选食物营养成分的能力。

方法

根据食物选择和食物成分数据集,创建了一个包含30名用餐者(年龄8 - 11岁)、78天和8种营养素的Access数据库。总共获得了1909份餐食的数据。

结果

根据总体均值,该队列明显选择了含糖量高于推荐最大量、纤维、铁和维生素A含量低于推荐最小量的餐食。所选餐食的蛋白质和维生素C含量远高于最低要求。在这1909份餐食中,营养需求在41%的时间内得到满足。

结论

所创建的系统在持续无限期监测个体用餐者的食物选择方面非常有效。所生成的数据对将营养摄入量表示为几天内计算出的总体均值的常见做法提出了质疑。文中讨论了强化食品对这类研究的总体影响。

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