| Literature DB >> 32287039 |
Alaa Abd-Alrazaq1, Dari Alhuwail2,3, Mowafa Househ1, Mounir Hamdi1, Zubair Shah1.
Abstract
BACKGROUND: The recent coronavirus disease (COVID-19) pandemic is taking a toll on the world's health care infrastructure as well as the social, economic, and psychological well-being of humanity. Individuals, organizations, and governments are using social media to communicate with each other on a number of issues relating to the COVID-19 pandemic. Not much is known about the topics being shared on social media platforms relating to COVID-19. Analyzing such information can help policy makers and health care organizations assess the needs of their stakeholders and address them appropriately.Entities:
Keywords: 2019-nCov; SARS-CoV-2; Twitter; coronavirus, COVID-19; disease surveillance; health informatics; infodemiology; infoveillance; public health; social media
Mesh:
Year: 2020 PMID: 32287039 PMCID: PMC7175788 DOI: 10.2196/19016
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Data preprocessing workflow.
Figure 2Flowchart of selection of tweets.
Numbers and percentages of tweets (N=167,073) related to each topic (diagonal values) and at the intersection of two topics (off-diagonal values).
| Themes and subtopics | China, n (%) | Outbreak of COVID-19a, n (%) | Eating meat, n (%) | Developing bioweapon, n (%) | Deaths caused by COVID-19, n (%) | Fear and stress about COVID-19, n (%) | Travel bans and warnings, n (%) | Economic losses, n (%) | Panic buying, n (%) | Increased racism, n (%) | Wearing masks, n (%) | Quarantining subjects, n (%) | |||||||||||||
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| China | 27,128 (16.24) | —b | — | — | — | — | — | — | — | — | — | — | ||||||||||||
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| Outbreak of COVID-19 | 2776 (1.66) | 7468 (4.47) | — | — | — | — | — | — | — | — | — | — | ||||||||||||
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| Eating meat | 4200 (2.51) | 560 (0.34) | 12,772 (7.65) | — | — | — | — | — | — | — | — | — | ||||||||||||
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| Developing bioweapon | 808 (0.48) | 151 (0.09) | 220 (0.13) | 2021 (1.21) | — | — | — | — | — | — | — | — | ||||||||||||
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| Deaths caused by COVID-19 | 4332 (2.59) | 905 (0.54) | 2621 (1.57) | 219 (0.13) | 17,606 (10.54) | — | — | — | — | — | — | — | ||||||||||||
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| Fear and stress about COVID-19 | 1820 (1.09) | 484 (0.29) | 841 (0.50) | 137 (0.08) | 1421 (0.85) | 8785 (5.26) | — | — | — | — | — | — | ||||||||||||
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| Travel bans and warnings | 912 (0.55) | 424 (0.25) | 175 (0.10) | 25 (0.01) | 313 (0.19) | 339 (0.20) | 4358 (2.61) | — | — | — | — | — | ||||||||||||
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| Economic losses | 1019 (0.61) | 273 (0.16) | 208 (0.12) | 65 (0.04) | 192 (0.11) | 198 (0.12) | 67 (0.04) | 2565 (1.54) | — | — | — | — | ||||||||||||
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| Panic buying | 598 (0.36) | 175 (0.10) | 115 (0.07) | 39 (0.02) | 183 (0.11) | 161 (0.10) | 83 (0.05) | 826 (0.49) | 2161 (1.29) | — | — | — | ||||||||||||
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| Increased racism | 614 (0.37) | 98 (0.06) | 134 (0.08) | 7 (0.01) | 191 (0.11) | 192 (0.11) | 32 (0.02) | 9 (0.01) | 22 (0.01) | 2136 (1.28) | — | — | ||||||||||||
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| Wearing masks | 560 (0.34) | 221 (0.13) | 166 (0.10) | 16 (0.01) | 293 (0.18) | 218 (0.13) | 113 (0.07) | 50 (0.03) | 178 (0.10) | 51 (0.03) | 3397 (2.03) | — | ||||||||||||
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| Quarantining subjects | 524 (0.31) | 148 (0.09) | 90 (0.05) | 15 (0.01) | 251 (0.15) | 134 (0.08) | 322 (0.19) | 32 (0.02) | 20 (0.01) | 12 (0.01) | 39 (0.02) | 2014 (1.21) | ||||||||||||
aCOVID-19: coronavirus disease.
b—: not available.
Results of sentiment and interaction analysis for tweets (N=167,073).
| Topics | Sentiment, mean (SD) | Followers, mean (SD) | Likes, mean (SD) | Retweets, mean (SD) | Interaction rates | User mentions, n (%) | Link sharing, n (%) |
| China | 0.028 (0.254) | 5971.83 (182,938.26) | 5.48 (128.42) | 1.65 (51.08) | 0.00120 | 10,323 (6.18) | 11,041 (6.61) |
| Outbreak | 0.037 (0.229) | 20,498.22 (272,064.16) | 6.48 (88.02) | 2.69 (50.75) | 0.00045 | 2038 (1.23) | 3090 (1.85) |
| Eating meat | 0.082 (0.282) | 7177.12 (176,101.49) | 12.34 (295.47) | 7.09 (136.75) | 0.00271 | 3815 (2.28) | 7140 (4.27) |
| Developing bioweapon | 0.016 (0.241) | 3071.80 (22,697.08) | 6.66 (114.81) | 2.24 (37.53) | 0.00290 | 1036 (0.62) | 706 (0.42) |
| Deaths caused by COVID-19a | –0.057 (0.287) | 9020.53 (204,289.34) | 6.00 (86.42) | 2.44 (39.75) | 0.00094 | 6847 (4.10) | 5924 (3.55) |
| Fear and stress about COVID-19 | 0.015 (0.247) | 11,755.66 (310,842.61) | 7.11 (129.05) | 2.42 (48.22) | 0.00081 | 3851 (2.30) | 2693 (1.61) |
| Travel bans and warnings | 0.032 (0.248) | 9003.54 (154,933.20) | 3.93 (33.27) | 0.92 (8.07) | 0.00054 | 2122 (1.27) | 1210 (0.72) |
| Economic losses | 0.035 (0.247) | 13,361.82 (287,310.56) | 15.33 (517.00) | 3.58 (109.51) | 0.00141 | 1225 (0.73) | 846 (0.51) |
| Panic buying | 0.031 (0.248) | 12,121.17 (456,517.30) | 4.07 (38.95) | 0.89 (8.51) | 0.00041 | 944 (0.56) | 609 (0.36) |
| Increased racism | –0.033 (0.264) | 2878.38 (64,604.27) | 9.87 (80.57) | 1.66 (14.89) | 0.00400 | 685 (0.41) | 427 (0.26) |
| Wearing masks | 0.035 (0.262) | 7557.34 (147,010.30) | 8.08 (105.39) | 1.88 (28.68) | 0.00132 | 1200 (0.72) | 1062 (0.64) |
| Quarantining subjects | 0.012 (0.263) | 6800.47 (87835.42) | 5.64 (39.10) | 1.90 (17.12) | 0.00111 | 896 (0.54) | 630 (0.38) |
aCOVID-19: coronavirus disease.