Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter

BackgroundIncreasing 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 mos...

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Main Authors: Hingle, Melanie, Yoon, Donella, Fowler, Joseph, Kobourov, Stephen, Schneider, Michael Lee, Falk, Daniel, Burd, Randy
Format: Article
Language:English
Published: JMIR Publications 2013-06-01
Series:Journal of Medical Internet Research
Online Access:http://www.jmir.org/2013/6/e125/
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spelling doaj-4e0a1263f88642379972969edce7794c2021-04-02T19:00:41ZengJMIR PublicationsJournal of Medical Internet Research1438-88712013-06-01156e12510.2196/jmir.2613Collection and Visualization of Dietary Behavior and Reasons for Eating Using TwitterHingle, MelanieYoon, DonellaFowler, JosephKobourov, StephenSchneider, Michael LeeFalk, DanielBurd, Randy BackgroundIncreasing 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. ObjectiveThe 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. MethodsParticipants 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. ResultsA 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. ConclusionsTwitter 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.http://www.jmir.org/2013/6/e125/
collection DOAJ
language English
format Article
sources DOAJ
author Hingle, Melanie
Yoon, Donella
Fowler, Joseph
Kobourov, Stephen
Schneider, Michael Lee
Falk, Daniel
Burd, Randy
spellingShingle Hingle, Melanie
Yoon, Donella
Fowler, Joseph
Kobourov, Stephen
Schneider, Michael Lee
Falk, Daniel
Burd, Randy
Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
Journal of Medical Internet Research
author_facet Hingle, Melanie
Yoon, Donella
Fowler, Joseph
Kobourov, Stephen
Schneider, Michael Lee
Falk, Daniel
Burd, Randy
author_sort Hingle, Melanie
title Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
title_short Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
title_full Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
title_fullStr Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
title_full_unstemmed Collection and Visualization of Dietary Behavior and Reasons for Eating Using Twitter
title_sort collection and visualization of dietary behavior and reasons for eating using twitter
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2013-06-01
description BackgroundIncreasing 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. ObjectiveThe 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. MethodsParticipants 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. ResultsA 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. ConclusionsTwitter 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.
url http://www.jmir.org/2013/6/e125/
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