| Literature DB >> 24018012 |
Sylviane de Viron1, L Suzanne Suggs, Angela Brand, Herman Van Oyen.
Abstract
BACKGROUND: Social media is a recent source of health information that could disseminate new scientific research, such as the genetics of smoking.Entities:
Keywords: Internet; Web 2.0; genetics; public health genomics; smoking; social media
Mesh:
Year: 2013 PMID: 24018012 PMCID: PMC3785980 DOI: 10.2196/jmir.2653
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Screenshots of YouTube and Twitter results. (a) screenshot of YouTube; (b) screenshot of Twitter.
Figure 2Flowcharts of the post selection: YouTube, Facebook, and Twitter. (a) YouTube flow chart; (b) Facebook flow chart; (c) Twitter flow chart.
Characteristics of posts from YouTube and Twitter (P values from Pearson chi-square).
| Variables | YouTube (n=31) | Twitter (n=84) | Google (n=86) |
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| 0.19 | <.001a,b | ||||
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| Scientific publication | 0 (0.0) | 5 (6.0) | 40 (46.5) |
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| Referring to a scientific publication | 30 (96.8) | 71 (84.5) | 46 (53.5) |
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| Not referring to a scientific publication | 1 (3.2) | 8 (9.5) | 0 (0.00) |
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| <.001a,b | <.001a,b | ||||
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| Research center | 8 (25.8) | 4 (4.7) | 4 (4.7) |
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| News | 11 (35.5) | 7 (8.3) | 16 (18.6) |
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| Medical news | 10 (32.3) | 17 (20.2) | 19 (22.1) |
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| Independent user | 1 (3.2) | 38 (45.2) | 0 (0.0) |
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| Scientific database | 0 (0.0) | 0 (0.0) | 40 (46.5) |
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| Other | 1 (3.2) | 18 (21.4) | 7 (29.9) |
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| 0.18 | .003b | ||||
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| United States | 21 (70.0) | 42 (50.6) | 61 (81.3) |
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| United Kingdom | 2 (6.7) | 1 (1.2) | 7 (9.3) |
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| Canada | 1 (3.3) | 3 (3.6) | 0 (0.0) |
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| Italy | 0 (0.0) | 3 (3.6) | 1 (1.3) |
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| Other | 2 (6.5) | 14 (16.7) | 15 (17.4) |
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| Total # of days available | 876 [319; 1441] | 12.5 [5; 39] | 707 [229.5; 1950.5] | <.001a,b | <.001a,b |
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| Duration (min) | 1.61 [1.43; 2.77] | — | — | — | — |
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| Total number of viewership | 232 [64; 1037] | — | — | — | — |
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| Total number of likes for the post | 1 [0; 2] | — | — | — | — |
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| Total number of dislikes for the post | 0 [0; 1] | — | — | — | — |
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| Smoking initiation | 2 (6.5) | 15 (18.1) | 17 (19.8) | 0.12 | 0.23 |
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| Smoking addiction | 14 (45.2) | 53 (63.9) | 62 (72.1) | 0.07 | 0.03b |
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| Smoking cessation | 8 (25.8) | 23 (27.7) | 32 (37.2) | 0.84 | 0.31 |
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| Smoking-related diseases | 21 (67.7) | 29 (34.5) | 34 (39.5) | 0.001a,b | 0.005b |
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| Lung disease | 1 (4.8) | 0 (0.0) | 0 (0.0) | 0.24 | 0.22 |
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| COPD | 2 (9.5) | 5 (17.2) | 1 (3.0) | 0.44 | 0.17 |
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| Lung cancer | 12 (57.1) | 16 (55.2) | 21 (63.6) | 0.89 | 0.78 |
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| Cancer in general | 4 (19.1) | 3 (10.3) | 3 (9.1) | 0.38 | 0.52 |
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| Cardiovascular disease | 1 (4.8) | 1 (3.5) | 1 (3.0) | 0.82 | 0.95 |
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| Multiple diseases | 0 (0.0) | 1 (3.5) | 3 (9.1) | 0.39 | 0.29 |
aSignificant P values after Bonferroni-Sidak correction for multiple testing.
bSignificant P values.
cOn YouTube, there were 5 missing values, 21 on Twitter, and 2 on Google search.
dMedian values with percentiles [p25; p75] and P value from Kruskal-Wallis one-way analysis of variance.
eOnly posts referring to smoking-related diseases were used; COPD—chronic obstructive pulmonary disease.
Comparison of the posts’ content between Time 1 and 2 (P values from Pearson chi-square).
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| YouTube | |||||
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| Time 1 | Time 2 |
| Time 1 | Time 2 |
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| Smoking initiation, n (%) | 0 (0.0) | 2 (22.2) | .02a | 0 (0.0) | 15 (31.9) | <.001a,b |
| Smoking addiction, n (%) | 8 (36.4) | 6 (66.7) | .12 | 13 (36.1) | 40 (85.1) | <.001a,b |
| Smoking cessation, n (%) | 6 (27.3) | 2 (22.2) | .77 | 1 (2.8) | 22 (46.8) | <.001a,b |
| Smoking-related disease, n (%) | 17 (77.3) | 4 (44.4) | .08 | 22 (61.1) | 7 (14.6) | <.001a,b |
aSignificant P values.
bSignificant P values after Bonferroni-Sidak correction for multiple testing.
Figure 3Word clouds presenting the most used words on YouTube, Twitter, and Google. (a) word cloud including the most used words in the title of YouTube posts; (b) the most used words from the posts in Twitter; (c) the most used words in Google. Each word’s frequency is correlated with font size.