| Literature DB >> 33052130 |
Kahlia McCausland1, Bruce Maycock2, Tama Leaver3, Katharina Wolf4, Becky Freeman5, Jonine Jancey1.
Abstract
BACKGROUND: As the majority of Twitter content is publicly available, the platform has become a rich data source for public health surveillance, providing insights into emergent phenomena, such as vaping. Although there is a growing body of literature that has examined the content of vaping-related tweets, less is known about the people who generate and disseminate these messages and the role of e-cigarette advocates in the promotion of these devices.Entities:
Keywords: Twitter; content analysis; e-cigarette; electronic cigarettes; electronic nicotine delivery systems; infodemiology; infoveillance; public health; social media; vaping
Mesh:
Year: 2020 PMID: 33052130 PMCID: PMC7593865 DOI: 10.2196/17543
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Sentiment of data.
| Sentiment | Year | Total (N=4432), n (%) | |||
| 2012 (N=570), n (%) | 2014 (N=1196), n (%) | 2016 (N=1377), n (%) | 2018 (N=1289), n (%) | ||
| Positive | 515 (90.35) | 1041 (87.04) | 1197 (86.93) | 1001 (77.66) | 3754 (84.70) |
| Neutral | 36 (6.32) | 69 (5.77) | 96 (6.97) | 125 (9.70) | 326 (7.36) |
| Negative | 19 (3.33) | 86 (7.19) | 84 (6.10) | 163 (12.65) | 352 (7.94) |
Twitter user category.
| User category | Year | Total (N=4432), n (%) | |||
| 2012 (N=570), n (%) | 2014 (N=1196), n (%) | 2016 (N=1377), n (%) | 2018 (N=1289), n (%) | ||
| Vape retailer or manufacturer | 147 (25.79) | 451 (37.71) | 310 (22.51) | 253 (19.63) | 1161 (26.20) |
| General public | 164 (28.77) | 303 (25.33) | 286 (20.77) | 326 (25.29) | 1079 (24.35) |
| E-cigarette advocate | 89 (15.61) | 235 (19.65) | 439 (31.88) | 275 (21.33) | 1038 (23.42) |
| News or media source | 1 (0.18) | 22 (1.84) | 48 (3.49) | 147 (11.40) | 218 (4.92) |
| Suspected bot | 104 (18.25) | 54 (4.54) | 46 (3.34) | 3 (0.23) | 207 (4.67) |
| Other | 36 (6.32) | 58 (4.85) | 73 (5.30) | 34 (2.64) | 201 (4.54) |
| Public health professional, researcher, or academic | 2 (0.35) | 11 (0.92) | 35 (2.54) | 127 (9.85) | 175 (3.95) |
| Account not active or user suspended | 13 (2.28) | 46 (3.85) | 73 (5.30) | 24 (1.86) | 156 (3.52) |
| Consumer advocacy group | 13 (2.28) | 1 (0.83) | 33 (2.40) | 50 (3.88) | 97 (2.19) |
| Health or scientific group | 0 (0) | 6 (0.50) | 22 (1.60) | 34 (2.64) | 62 (1.40) |
| Medical doctor, nurse, or group | 1 (0.18) | 7 (0.59) | 6 (0.44) | 8 (0.62) | 22 (0.50) |
| Government or politician | 0 (0) | 2 (0.17) | 6 (0.44) | 8 (0.62) | 16 (0.36) |
Twitter user category and sentiment of data.
| User category | Sentiment | Total, n (%) | ||
| Positive, n (%) | Neutral, n (%) | Negative, n (%) | ||
| Vape retailer or manufacturer | 1158 (99.74) | 0 (0) | 3 (0.26) | 1161 (26.20) |
| Consumer advocacy group | 95 (97.94) | 1 (1.03) | 1 (1.03) | 97 (2.19) |
| E-cigarette advocate | 1007 (97.01) | 23 (2.22) | 8 (0.77) | 1038 (23.42) |
| Suspected bot | 185 (89.37) | 13 (6.28) | 9 (4.35) | 207 (4.67) |
| General public | 845 (78.31) | 115 (10.66) | 119 (11.03) | 1079 (24.35) |
| Other | 150 (74.63) | 27 (13.43) | 24 (11.94) | 201 (4.54) |
| Public health professional, researcher, or academic | 106 (60.57) | 18 (10.29) | 51 (29.14) | 175 (3.95) |
| Government or politician | 9 (56.25) | 1 (6.25) | 6 (37.50) | 16 (0.36) |
| Health or scientific group | 19 (30.65) | 11 (17.74) | 32 (51.61) | 62 (1.40) |
| News or media source | 48 (22.02) | 97 (44.50) | 73 (33.49) | 218 (4.92) |
| Medical doctor, nurse, or group | 3 (13.64) | 7 (31.82) | 12 (54.55) | 22 (0.50) |
| Account not active or user suspended | 129 (82.69) | 13 (8.33) | 14 (8.97) | 156 (3.52) |
| Total | 3754 (84.70) | 326 (7.36) | 352 (7.94) | 4432 (100) |
The 10 most prevalent themes.
| Tweet content | Year | Total (N=4432), n (%) | ||||
| 2012 (N=570), n (%) | 2014 (N=1196), n (%) | 2016 (N=1377), n (%) | 2018 (N=1289), n (%) | |||
|
| 268 (47.02) | 685 (57.27) | 633 (45.97) | 436 (33.82) | 2040 (46.03) | |
|
| Price promotion | 77 (28.73) | 80 (11.68) | 152 (24.01) | 88 (20.18) | 397 (19.46) |
| Brand name | 124 (21.75) | 302 (25.25) | 448 (32.53) | 364 (28.24) | 1238 (27.93) | |
| E-cigarette use or intent | 76 (13.33) | 254 (21.24) | 358 (26.00) | 282 (21.88) | 970 (21.89) | |
|
| 105 (18.42) | 182 (15.23) | 136 (9.88) | 293 (22.75) | 716 (16.16) | |
|
| Positive | 100 (95.24) | 176 (96.70) | 130 (95.59) | 274 (93.52) | 680 (94.97) |
|
| Negative | 1 (0.95) | 4 (2.20) | 2 (1.45) | 13 (4.44) | 20 (2.79) |
|
| Neutral | 4 (3.81) | 2 (1.14) | 4 (2.94) | 6 (2.05) | 16 (2.24) |
|
| 67 (11.75) | 161 (13.46) | 139 (10.09) | 314 (24.38) | 681 (15.37) | |
|
| Positive | 51 (76.12) | 114 (70.81) | 91 (65.47) | 198 (63.06) | 454 (66.66) |
|
| Negative | 10 (14.93) | 36 (22.36) | 36 (25.90) | 101 (32.17) | 183 (26.87) |
|
| Neutral | 6 (8.96) | 11 (6.83) | 12 (8.63) | 15 (4.77) | 44 (6.46) |
| Retailer name | 78 (13.68) | 234 (19.57) | 136 (9.88) | 201 (15.61) | 649 (14.64) | |
| Flavor | 39 (6.84) | 145 (12.12) | 139 (10.09) | 184 (14.29) | 507 (11.44) | |
|
| 6 (1.05) | 45 (3.76) | 64 (4.65) | 192 (14.91) | 307 (6.97) | |
|
| Liberal | 3 (50.00) | 36 (80.00) | 58 (90.63) | 151 (78.65) | 248 (80.78) |
|
| Cautious | 3 (50.00) | 6 (13.33) | 5 (7.81) | 40 (20.83) | 54 (17.60) |
|
| Neutral | 0 (0) | 3 (6.66) | 1 (1.56) | 1 (0.52) | 5 (1.63) |
| Community or subculture | 18 (3.16) | 48 (4.01) | 84 (6.10) | 155 (12.03) | 305 (6.88) | |
| Nicotine | 19 (3.33) | 42 (3.51) | 89 (6.46) | 143 (11.10) | 293 (6.61) | |
Figure 1User category contribution in the 10 most prevalent themes.