Development and validation of an electronic application (FoodEapp) to assess the dietary intake of adults in Karachi, Pakistan

Umber S Khan , Maira Mubashir , Tansheet Jawad , Iqbal Azam , Amna R Siddiqui , Romaina Iqbal
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Abstract

Background

Under and over-nutrition-related health conditions are highly prevalent in Pakistan. Dietary data are required to understand the challenges of over and undernutrition in Pakistan.

Objective

The purpose of the study was to develop and validate a FoodEapp application (FoodEapp) for field staff with no formal education in nutrition (unskilled) to accurately collect 24-hour (24HR) dietary recall (DR) data to assess the dietary intake of adults in Karachi, Pakistan.

Method

We designed a novel FoodEapp application for unskilled data collectors to collect 24HR DR data. We validated the FoodEapp against the conventional 24HR DR method in rural and urban Karachi. We compared the mean intake of total energy (kcal), macronutrients, and micronutrients, reported through both methods using Pearson Correlation and Intraclass Correlation (ICC). We also used Bland Altman analysis to assess the agreement between the methods.

Results

We found a high correlation between the two methods for total energy (ρ = 0.88, p-value < 0.001), protein (g) (ρ = 0.81, p-value < 0.001), total lipids (g) (ρ = 0.74, p-value < 0.001), and carbohydrates (g) (ρ = 0.68, p-value < 0.001). Bland Altman's analysis showed good agreement in all the nutrients between the two methods.

Conclusions

FoodEapp has good validity and can be used to assess the dietary intake of the adult population in Karachi by non-nutritionists. This study may help overcome the limitation of dietary data collection and facilitate the researchers to conduct larger dietary surveys in Pakistan.

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开发和验证电子应用程序(FoodEapp),以评估巴基斯坦卡拉奇成年人的膳食摄入量
背景在巴基斯坦,与营养不足和营养过剩有关的健康状况非常普遍。需要膳食数据来了解巴基斯坦营养过剩和营养不良的挑战。目的本研究的目的是为没有受过正规营养教育(非熟练)的现场工作人员开发和验证FoodEapp应用程序(FoodEapp),以准确收集24小时(24HR)膳食回忆(DR)数据,评估卡拉奇成年人的膳食摄入量,巴基斯坦。方法我们为不熟练的数据采集器设计了一个新的FoodEapp应用程序来收集24HR DR数据。我们在卡拉奇农村和城市验证了FoodEapp与传统24HR DR方法的对比。我们使用Pearson相关性和类内相关性(ICC)比较了两种方法报告的总能量(kcal)、常量营养素和微量营养素的平均摄入量。我们还使用Bland-Altman分析来评估两种方法之间的一致性。结果两种方法的总能量(ρ=0.88,p值<;0.001)、蛋白质(g)(ρ=0.81,p值<;0.001),总脂质(g),ρ=0.74,p值>;0.001)和碳水化合物(g)之间存在高度相关性。结论FoodEapp具有良好的有效性,可用于非营养学家评估卡拉奇成年人群的膳食摄入量。这项研究可能有助于克服饮食数据收集的局限性,并有助于研究人员在巴基斯坦进行更大规模的饮食调查。
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来源期刊
CiteScore
5.90
自引率
0.00%
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0
审稿时长
10 weeks
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