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A systematic method to evaluate the dietary intake data coding process used in the research setting

机译:评估研究环境中使用的膳食进气数据编码过程的系统方法

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Accurate dietary intake data are the basis for investigating diet-disease relationships. Data coding is a critical step of generating dietary intake data for analyses in nutrition research. However, there is currently no systematic method for assessing dietary intake data coding process. The aim of this study was to explore discrepancies in dietary intake data coding process through source data verification. A 1% random sample of paper based diet history records (source data) from participants (n = 377) in a registered clinical trial was extracted as a pilot audit to explore potential discrepancy types. Another 10% random sample (n = 38) of baseline dietary source data from the same trial was extracted developing the method. All items listed in the source data underwent a 100% manual verification check with food output data from FoodWorks software applied to the piloted discrepancy types. The identified discrepancies were categorized into food groups based on modified major groups of AUSNUT 2011-13. Free vegetables, meat, savory sauces and condiments, as well as cereals were found to be more prone to coding discrepancies than other food groups. A more detailed dietary intake data coding protocol is required prior to dietary data collection and coding process to ensure data coding quality.
机译:准确的膳食进气数据是调查饮食关系的基础。数据编码是在营养研究中产生饮食进气数据的关键步骤。然而,目前没有系统的评估膳食进气数据编码过程的系统方法。本研究的目的是通过源数据验证探讨膳食进口数据编码过程的差异。提取注册临床试验中的参与者(n = 377)的1%随机的纸饮食历史记录(源数据)作为试验审核,以探索潜在的差异类型。提取来自同一试验的基线膳食源数据的另外10%随机样品(n = 38)显影方法。源数据中列出的所有项目都接受了100%的手动验证检查,其中来自食品厂软件的食品输出数据应用于导向差异类型。根据AUSNUT 2011-13的修改主要群体,鉴定的差异被分类为食品群体。发现免费蔬菜,肉类,咸味酱和调味品以及谷物更容易获得比其他食物群体的差异。在膳食数据收集和编码过程之前需要更详细的膳食进气数据编码协议,以确保数据编码质量。

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