Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
Overview
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Background: Increasing an individual's awareness and understanding of their dietary habits and reasons for eating may help facilitate positive dietary changes. Mobile technologies allow individuals to record diet-related behavior in real time from any location; however, the most popular software applications lack empirical evidence supporting their efficacy as health promotion tools.
Objective: The purpose of this study was to test the feasibility and acceptability of a popular social media software application (Twitter) to capture young adults' dietary behavior and reasons for eating. A secondary aim was to visualize data from Twitter using a novel analytic tool designed to help identify relationships among dietary behaviors, reasons for eating, and contextual factors.
Methods: Participants were trained to record all food and beverages consumed over 3 consecutive days (2 weekdays and 1 weekend day) using their mobile device's native Twitter application. A list of 24 hashtags (#) representing food groups and reasons for eating were provided to participants to guide reporting (eg, #protein, #mood). Participants were encouraged to annotate hashtags with contextual information using photos, text, and links. User experience was assessed through a combination of email reports of technical challenges and a 9-item exit survey. Participant data were captured from the public Twitter stream, and frequency of hashtag occurrence and co-occurrence were determined. Contextual data were further parsed and qualitatively analyzed. A frequency matrix was constructed to identify food and behavior hashtags that co-occurred. These relationships were visualized using GMap algorithmic mapping software.
Results: A total of 50 adults completed the study. In all, 773 tweets including 2862 hashtags (1756 foods and 1106 reasons for eating) were reported. Frequently reported food groups were #grains (n=365 tweets), #dairy (n=221), and #protein (n=307). The most frequently cited reasons for eating were #social (activity) (n=122), #taste (n=146), and #convenience (n=173). Participants used a combination of study-provided hash tags and their own hash tags to describe behavior. Most rated Twitter as easy to use for the purpose of reporting diet-related behavior. "Maps" of hash tag occurrences and co-occurrences were developed that suggested time-varying diet and behavior patterns.
Conclusions: Twitter combined with an analytical software tool provides a method for capturing real-time food consumption and diet-related behavior. Data visualization may provide a method to identify relationships between dietary and behavioral factors. These findings will inform the design of a study exploring the use of social media and data visualization to identify relationships between food consumption, reasons for engaging in specific food-related behaviors, relevant contextual factors, and weight and health statuses in diverse populations.
Roy R, Gontijo de Castro T, Haszard J, Egli V, Te Morenga L, Teunissen L Nutrients. 2021; 13(11).
PMID: 34836172 PMC: 8617873. DOI: 10.3390/nu13113917.
Melo G, Lima S, M Dos Santos Chagas C, Nakano E, Toral N BMJ Open. 2020; 10(10):e038896.
PMID: 33115898 PMC: 7594362. DOI: 10.1136/bmjopen-2020-038896.
Liu Y, Wu S, Lin S, Chen C, Lin Y, Chen H JMIR Mhealth Uhealth. 2020; 8(4):e14543.
PMID: 32347805 PMC: 7221647. DOI: 10.2196/14543.
Maugeri A, Barchitta M Nutrients. 2019; 11(11).
PMID: 31703374 PMC: 6893429. DOI: 10.3390/nu11112696.
Mobile Ecological Momentary Diet Assessment Methods for Behavioral Research: Systematic Review.
Schembre S, Liao Y, OConnor S, Hingle M, Shen S, Hamoy K JMIR Mhealth Uhealth. 2018; 6(11):e11170.
PMID: 30459148 PMC: 6280032. DOI: 10.2196/11170.