| Literature DB >> 23796439 |
Melanie Hingle1, Donella Yoon, Joseph Fowler, Stephen Kobourov, Michael Lee Schneider, Daniel Falk, Randy Burd.
Abstract
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.Entities:
Keywords: data visualization; dietary behavior; mHealth; mobile health; social media
Mesh:
Year: 2013 PMID: 23796439 PMCID: PMC3713881 DOI: 10.2196/jmir.2613
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Frequency and timing of food hashtags over a 24-hour time period.
Figure 2Frequency and timing of behavior hashtags over a 24-hour time period.
Frequency of hashtags reported by participants (50 participants over 3 consecutive days).
| Hashtags | Frequency | ||
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| #alcohol | 41 |
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| #beverage | 198 |
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| #dairy | 221 |
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| #fat | 174 |
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| #fruit | 131 |
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| #grains | 365 |
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| #protein | 307 |
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| #sweets | 150 |
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| #vegetable | 169 |
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| #appearance | 5 |
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| #boredom | 0 |
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| #convenience | 173 |
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| #cost | 68 |
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| #culture | 14 |
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| #health | 94 |
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| #hunger | 120 |
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| #location | 79 |
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| #mood | 103 |
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| #performance | 30 |
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| #preference | 41 |
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| #social | 122 |
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| #taste | 146 |
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| #time | 109 |
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| #weather | 2 |
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| #bread | 1 |
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| #butter | 1 |
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| #carbohydrates | 2 |
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| #carbs | 4 |
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| #coffee | 1 |
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| #lotsoffat | 1 |
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| #meat | 4 |
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| #meats | 1 |
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| #2 | 1 |
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| #3- | 1 |
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| #aapl | 1 |
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| #breakfast | 1 |
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| #comfort | 1 |
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| #craving | 2 |
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| #easy | 1 |
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| #feed | 1 |
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| #friend | 1 |
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| #goingtofeelitinthemorning | 1 |
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| #habit | 2 |
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| #happy | 1 |
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| #healthy | 2 |
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| #home | 1 |
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| #leftovers | 1 |
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| #lunch | 1 |
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| #price | 1 |
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| #random | 1 |
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| #still | 1 |
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| #test | 1 |
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| #timeegg | 1 |
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| #vibestudy | 1 |
Figure 3Study-generated data collected were transformed into a co-occurrence matrix and then applied to a visually representative map. Common co-occurrence hashtags placed in a country denoted by different colors on the map. Frequency of hashtags is also shown with centrally located countries contributing to higher frequencies and peripheral countries contributing to lower frequencies of hashtags.
Figure 5Study-generated hash-tags over a 24-hour time period. Study-generated data collected were transformed into a co-occurrence matrix and then applied to a visually representative map. Common co-occurrence hashtags placed in a country denoted by different colors on the map. Frequency of hashtags is also shown with centrally located countries contributing to higher frequencies and peripheral countries contributing to lower frequencies of hashtags.
Figure 4Heat maps showing frequencies throughout a 24-hour time period for study-generated data are shown. Higher frequencies are displayed with a darker blue hue, whereas progressively lower frequencies are lighter in blue. White coloration refers to little to no frequency activity.
Figure 6Study-generated hashtags over a 24-hour time period. Heat maps showing frequencies throughout a 24-hour time period for study-generated data are shown. Higher frequencies are displayed with a darker blue hue, whereas progressively lower frequencies are lighter in blue. White coloration refers to little to no frequency activity.