Design and Development of ‘Diet DQ Tracker’: A Smartphone Application for Augmenting Dietary Assessment
Abstract
:1. Introduction
2. Materials and Methods
2.1. Diet Diversity Indicators
2.1.1. Minimum Dietary Diversity for Women (MDD-W)
2.1.2. Infant and Young Child Feeding Practices—Minimum Dietary Diversity (IYCF-MDD)
2.1.3. Household Dietary Diversity Score (HDDS)
2.2. Diet Quality Indicator
2.2.1. SAIN, LIM
2.3. Design and Architecture of the ‘Diet DQ Tracker’
2.4. Food Database
2.5. Content Management System
2.6. Pilot Study
2.6.1. Study Sample and Recruitment
2.6.2. Dietary Assessment
2.6.3. Participant Feedback on Dietary Assessment
3. Results
3.1. Features of ‘Diet DQ Tracker’
3.1.1. Account Creation and Login
3.1.2. ‘Progress’ Page
3.1.3. ‘SAIN, LIM Recommendations’
3.1.4. ‘My Account’ Page
3.1.5. ‘Record a New Meal’ Page
3.1.6. ‘Add New Food’ Page
3.2. Comparison of DDS’s from ‘Diet DQ Tracker’ and 24 h Recall
3.3. Participant Feedback on ‘Diet DQ Tracker’ and 24 h Recall
4. Discussion
4.1. Principal Considerations
4.2. Strengths and Limitations
4.3. Related Work
4.4. Future Work
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
User Feedback on Dietary Assessments | ||||
---|---|---|---|---|
Number of Respondents | 20 (10 Female; 10 Male) | |||
1. | General statements To begin with the survey, I’d like to read a few statements regarding the dietary survey in which you agreed to participate. I will read the statements for you; please choose one of the options below. Please select, whether you strongly agree, agree, are neutral, disagree, or strongly disagree with the following statements. | Agree/Strongly agree | Neutral | Disagree/Strongly disagree |
1.1 | The Diet DQ app is easy to understand. | 19 | 1 | |
1.2 | The Diet DQ app is easy to use. | 19 | 1 | |
1.3 | The foods I usually consume were easy to find on the app. | 5 | 13 | 2 |
1.4 | Foods and beverages were recorded on the app right after consumption. | 11 | 9 | |
1.5 | Recording food items right after consumption affected my daily routine. | 1 | 7 | 12 |
1.6 | During the interview administered recall session, remembering the food items consumed the previous day was difficult. | 5 | 6 | 9 |
1.7 | Meals logged the day before were checked prior to or during the interviewer-administered recall session. | 13 | 4 | 3 |
1.8 | Recording food items in the ‘Search-as-you-type’ textbox was convenient. | 10 | 6 | 4 |
1.9 | Estimating the number of servings of a standard portion size was easy. | 6 | 5 | 9 |
1.10 | Custom recipes were frequently recorded on the Diet DQ app. | 8 | 7 | 5 |
1.11 | Recording custom recipes on the app was difficult. | 4 | 12 | 4 |
1.12 | The ‘repeat previous food’ feature was often used. | 2 | 7 | 11 |
1.13 | Graphic visualizations of the diet diversity scores were frequently accessed. | 19 | 1 | |
1.14 | The graphic visualizations prompted the consumption of diverse food groups for the purpose of achieving a higher score. | 15 | 5 | |
1.15 | SAIN, LIM recommendations for foods consumed were frequently checked. | 15 | 4 | 1 |
1.16 | SAIN, LIM recommendations prompted the consumption of healthy foods. | 16 | 4 | |
1.17 | Overall, the Diet DQ app proved to be highly satisfactory. | 18 | 2 |
1. | The Preferred Methodology | ||
1.1 | Which is your preferred methodology for dietary assessment? | App | Interview-Administered Recall |
20 | |||
Provide Yes or No answers below. Was your preferred dietary assessment methodology: | Yes/No | ||
1.2 | More convenient? | Yes (20) | |
1.3 | Easy to use? | Yes (20) | |
1.4 | Less time consuming? | Yes (20) | |
1.5 | Easy to remember? | - | |
1.6 | Portable? | Yes (20) | |
1.7 | Enjoyable to use? | Yes (20) | |
2. | Duration questions | Time (min) | |
2.1 | Approximately how long did it take to record an entire day’s food intake on the Diet DQ app? | 8.4 | |
2.2 | Approximately how long did it take to recall and inform the interviewer about the previous day’s food consumption? | 10.25 |
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Components of ‘Diet DQ Tracker’ | Description of Functionalities | |
---|---|---|
1. | ‘Progress’ page | To view the progress of the user by selecting a date To view the graphical representation of diet diversity scores by selecting ‘MDD-W’, ‘IYCF-MDD’, or ‘HDDS’ To view the visual representation over 1 week, 1 month, or 3 months by selecting ‘1 wk’, ‘1 m’, or ‘3 m’ To view the background information of indicators by clicking on ‘About MDD-W’, ‘About IYCF-MDD’, or ‘About HDDS’ To view the meals consumed on the selected date by scrolling down to ‘My meals’ To view the SAIN, LIM recommendations of foods consumed over the past week by selecting ‘SAIN-LIM Recommendations’ |
2. | ‘Record a new meal’ page | To specify the date and time of meal consumption by clicking on pre-set date/time To specify the occasion of meal consumption (breakfast, lunch, dinner, and snack) by clicking on ‘Select occasion’ To specify the food name by using the search-as-you-type box after clicking on ‘Food item’ To specify the food name from food items frequently consumed by the user by clicking on ‘Repeat previous food’ To add a new food to the database by clicking on ‘Add new food’ at the bottom of ‘Add Food’ page To add ingredients to the selected food item by clicking on ‘Add ingredient’ To specify the number of servings of the food item by clicking on ‘Select number of servings’ To specify the place of meal preparation (at home, at a restaurant, other) by clicking on ‘Select meal prepared at’ To specify the category of user (children, women, or household) who consumed the meal by clicking on ‘Select your category’ To upload the data by clicking on ‘I ate this’ |
3. | ‘My account’ page | To change the units of food portion size on the ‘Record a new meal’ page from imperial to metric by clicking on ‘Measuring units’ To send the feedback on any issue/problem/or suggestion to the research team by clicking on ‘Send feedback’ To sign out of the application by clicking on ‘Sign out’ |
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Mahal, S.S.; Kucha, C.; Kwofie, E.M.; Ngadi, M. Design and Development of ‘Diet DQ Tracker’: A Smartphone Application for Augmenting Dietary Assessment. Nutrients 2023, 15, 2901. https://doi.org/10.3390/nu15132901
Mahal SS, Kucha C, Kwofie EM, Ngadi M. Design and Development of ‘Diet DQ Tracker’: A Smartphone Application for Augmenting Dietary Assessment. Nutrients. 2023; 15(13):2901. https://doi.org/10.3390/nu15132901
Chicago/Turabian StyleMahal, Subeg Singh, Christopher Kucha, Ebenezer M. Kwofie, and Michael Ngadi. 2023. "Design and Development of ‘Diet DQ Tracker’: A Smartphone Application for Augmenting Dietary Assessment" Nutrients 15, no. 13: 2901. https://doi.org/10.3390/nu15132901
APA StyleMahal, S. S., Kucha, C., Kwofie, E. M., & Ngadi, M. (2023). Design and Development of ‘Diet DQ Tracker’: A Smartphone Application for Augmenting Dietary Assessment. Nutrients, 15(13), 2901. https://doi.org/10.3390/nu15132901