| Literature DB >> 33606574 |
Scott Leo Renshaw1, Sabrina Mai1, Elisabeth Dubois1, Jeannette Sutton1, Carter T Butts1.
Abstract
In this paper, we investigate how message construction, style, content, and the textual content of embedded images impacted message retransmission over the course of the first 8 months of the coronavirus disease 2019 (COVID-19) pandemic in the United States. We analyzed a census of public communications (n = 372,466) from 704 public health agencies, state and local emergency management agencies, and elected officials posted on Twitter between January 1 and August 31, 2020, measuring message retransmission via the number of retweets (ie, a message passed on by others), an important indicator of engagement and reach. To assess content, we extended a lexicon developed from the early months of the pandemic to identify key concepts within messages, employing it to analyze both the textual content of messages themselves as well as text included within embedded images (n = 233,877), which was extracted via optical character recognition. Finally, we modelled the message retransmission process using a negative binomial regression, which allowed us to quantify the extent to which particular message features amplify or suppress retransmission, net of controls related to timing and properties of the sending account. In addition to identifying other predictors of retransmission, we show that the impact of images is strongly driven by content, with textual information in messages and embedded images operating in similar ways. We offer potential recommendations for crafting and deploying social media messages that can "cut through the noise" of an infodemic.Entities:
Keywords: COVID-19; Epidemic management/response; Public health preparedness/response; Risk communication; Social media
Mesh:
Year: 2021 PMID: 33606574 PMCID: PMC9195492 DOI: 10.1089/hs.2020.0200
Source DB: PubMed Journal: Health Secur ISSN: 2326-5094
Tweet Microstructural Features
| Variable | Definition | Tweets | Example |
|---|---|---|---|
| Image | Messages coded for the presence of an image or media | 185,012 (49.7) |
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| Video | Messages coded for the presence of a video | 16,848 (4.5) |
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| Hyperlink / URL | Message contains a hyperlink to external website | 205,490 (55.0) | All Hands on Deck! Geospatial mapping meets outbreak control. To learn more about the vital role geospatial science and technology can play in public health, go to |
| Reply | Message is in response to a tweet from another user | 84,360 (22.6) | |
| Mention | Message includes the Twitter handle of an individual or organization | 107,308 (28.8) | Thank you |
| Hashtag | Message includes a hashtag | 163,595 (44.0) | Our COVID-19 site has information for businesses about how to prepare and what to do if an employee becomes sick. |
| COVID-19 Hashtags | Message contained a hashtag for coronavirus or COVID-19 | 74,845 (20.0) (45% of all hashtag usage) | We all can be health leaders and practice physical distancing and also wear our face coverings. |
| Quote | Message quotes another message in its entirety | 32,042 (8.6) |
|
| Exclamatory | Message includes an exclamation mark (!) | 55,851 (14.9) | Stay Healthy Nevada |
| Interrogatory | Message includes a question mark (?) | 26,272 (7.0) | Do you have questions about tenant rights and the current eviction moratorium |
Lexicon Set: Definitions, Frequencies, and Examples
| Variable | Definition | In Tweets | In Images | Example (extended lexicon in italics) |
|---|---|---|---|---|
| Susceptibility | Keywords describing individuals or groups at risk of COVID-19 | 41,508 (11.0) | 14,013 (7.5) | Vulnerable, risk, unlikely, travel, veteran, older, kids, age 60, chronic, immune, dialysis, diabetes, homeless, jail, shelter, facilities, African American |
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| Surveillance | Keywords describing strategies to identify population impact | 88,380 (23.7) | 33,375 (18.0) | Test, result, case, presumptive, death, contact trace, hospitalize, dashboard, sadden, recover |
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| Symptoms | Keywords describing symptoms of disease | 10,472 (2.8) | 6,991 (3.7) | Symptom, shortness of breath, fever |
| Actions | Keywords instructing people on protective actions to take | 92,143 (24.7) | 14,466 (7.8) | Donate, follow, get tested, contact a doctor, stock up |
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| Efficacy | Keywords on how individuals are to take protective measures to safeguard themselves from the threat | 59,735 (16.0) | 22,688 (12.0) | Stay home, self-isolate, physical distance, social distance, quarantine, shelter in place, face, mask, hand wash, soap and water, 20 seconds, 6 feet, disinfect |
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| Collective efficacy | Keywords reflecting the capacity to achieve an intended effect | 48,173 (12.9) | 12,320 (6.6) | Neighbors, united, solidarity, together, community, mitigate the spread, flatten the curve, stay home save lives, shelter in place |
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| Technical information | Keywords describing mechanism of how the virus spreads | 7,973 (5.7) | 13,648 (7.0) | Droplet, cough, sneeze, surface, transmission, infect, incubate, contagious |
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| Official information | Keywords about governmental responses to COVID-19 and how to access information | 89,560 (24.0) | 35,259 (19.0) | Public health authority, official, task force, declaration, proclamation, executive order, activate, monitor, model, advisory |
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| Information sharing | Keywords that relate to outlets or events for information sharing | 57,842 (15.5) | 20,254 (10.0) | Helpline, briefing, livestream, broadcast, town hall, press conference, guidance |
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| Resilience | Keywords that express thanks and appreciation | 33,028 (8.8) | 3,516 (10.0) | Hero, salute, thank, recognize, grateful |
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| Closures and openings | Keywords about suspension or reinstatement of service, activities, and facilities | 61,307 (16.5) | 21,436 (11.0) | Suspend, close, mandatory, lockdown, visitation, cancel, large gatherings, nonessential |
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| Location | Keywords about international locales | 1,151 (<1.0) | 693 (<1.0) | China, Wuhan, Japan, Italy, Iran |
| Primary threat | Keywords used to describe COVID-19 | 132,392 (35.5) | 52,066 (28.0) | Coronavirus, COVID-19, ncov, outbreak, pandemic |
| Secondary impacts | Keywords used to describe additional threats that result from the pandemic | 86,859 (23.0) | 24,020 (13.0) | Mental health, substance abuse, domestic violence, evict, food insecure, blood drive, scam, rumor, stigma, school, unemployment panic buy, PPE, compliance, grief |
Abbreviations: COVID-19, coronavirus disease 2019; PPE, personal protective equipment.
Negative Binomial Regression Model
| Estimate | % Change | Std. Error | P Value | |
|---|---|---|---|---|
| Intercept | -4.962 | -99.3 | 0.039 | <.001 |
| Account properties | ||||
| Governor account | 1.273 | 257.2 | 0.009 | <.001 |
| Log follower count | 0.768 | 115.5 | 0.002 | <.001 |
| Mayor account | 0.532 | 70.2 | 0.008 | <.001 |
| Log(+1) friends count | -0.089 | -8.5 | 0.002 | <.001 |
| State EM account | -0.005 | -0.5 | 0.012 | NS |
| Local EM account | -0.442 | -35.7 | 0.009 | <.001 |
| CDC-affiliated accounts | 0.027 | 2.7 | 0.015 | NS |
| World Health Organization | 0.158 | 17.1 | 0.023 | <.001 |
| Microstructural properties | ||||
| Incl. video | 0.214 | 23.9 | 0.014 | <.001 |
| Incl. hashtag | -0.034 | -3.3 | 0.007 | <.001 |
| Incl. image | -0.13 | -12.2 | 0.011 | <.001 |
| Incl. quote | 0.073 | 7.6 | 0.01 | <.001 |
| Incl. question mark (?) | -0.115 | -10.9 | 0.01 | <.001 |
| Incl. mention | -0.227 | -20.3 | 0.006 | <.001 |
| Incl. exclamation (!) | -0.19 | -17.3 | 0.008 | <.001 |
| Incl. URL | -0.381 | -31.7 | 0.006 | <.001 |
| Reply | -1.712 | -81.9 | 0.007 | <.001 |
| Incl. #COVID19 hashtag | 0.044 | 4.5 | 0.01 | <.001 |
| Lexical categories (message content) | ||||
| Surveillance | 0.231 | 26.0 | 0.007 | <.001 |
| Technical information | 0.083 | 8.7 | 0.011 | <.001 |
| Actions | -0.077 | -7.4 | 0.006 | <.001 |
| Efficacy | 0.422 | 52.5 | 0.007 | <.001 |
| Symptoms | 0.127 | 13.5 | 0.016 | <.001 |
| Primary threat | 0.174 | 19.0 | 0.008 | <.001 |
| Secondary impacts | 0.121 | 12.9 | 0.006 | <.001 |
| Official responses | 0.156 | 16.9 | 0.006 | <.001 |
| Location | 0.506 | 65.9 | 0.044 | <.001 |
| Collective efficacy | 0.085 | 8.9 | 0.008 | <.001 |
| Closures/openings | 0.066 | 6.8 | 0.007 | <.001 |
| Resilience | -0.084 | -8.1 | 0.009 | <.001 |
| Susceptibility | 0.001 | 0.1 | 0.008 | NS |
| Information sharing | -0.137 | -12.8 | 0.008 | <.001 |
| Image textual content | ||||
| Image has text | 0.008 | 0.8 | 0.009 | N.S. |
| # of images | -0.018 | -1.8 | 0.006 | <.01 |
| Surveillance | 0.224 | 25.1 | 0.012 | <.001 |
| Technical information | 0.054 | 5.5 | 0.016 | <.001 |
| Actions | 0.032 | 3.3 | 0.015 | <.05 |
| Efficacy | 0.161 | 17.5 | 0.013 | <.001 |
| Symptoms | 0.122 | 13.0 | 0.021 | <.001 |
| Primary threat | 0.057 | 5.9 | 0.01 | <.001 |
| Secondary impacts | 0.052 | 5.3 | 0.012 | <.001 |
| Official responses | 0.036 | 3.7 | 0.011 | <.001 |
| Location | 0.019 | 1.9 | 0.058 | NS |
| Collective efficacy | -0.04 | -3.9 | 0.015 | <.01 |
| Closures/openings | 0.121 | 12.9 | 0.013 | <.001 |
| Resilience | 0.143 | 15.4 | 0.026 | <.001 |
| Susceptibility | 0.184 | 20.2 | 0.015 | <.001 |
| Information sharing | -0.003 | -0.3 | 0.013 | NS |
| Period effects – national emergency declaration period | ||||
| Postdeclaration | 0.256 | 29.2 | 0.014 | <.001 |
| Period effects – month | ||||
| February | -0.043 | -4.2 | 0.014 | <.01 |
| March | 0.842 | 132.1 | 0.016 | <.001 |
| April | 0.381 | 46.4 | 0.018 | <.001 |
| May | 0.214 | 23.9 | 0.018 | <.001 |
| June | 0.411 | 50.8 | 0.018 | <.001 |
| July | 0.41 | 50.7 | 0.018 | <.001 |
| August | 0.23 | 25.9 | 0.018 | <.001 |
| Period effects – time of day | ||||
| 12 am UTC | -0.612 | -45.8 | 0.033 | <.001 |
| 1 am UTC | -0.333 | -28.3 | 0.034 | <.001 |
| 2 am UTC | -0.131 | -12.3 | 0.035 | <.001 |
| 3 am UTC | -0.073 | -7.0 | 0.037 | NS |
| 5 am UTC | -0.295 | -25.5 | 0.051 | <.001 |
| 6 am UTC | -0.314 | -26.9 | 0.064 | <.001 |
| 7 am UTC | 0.01 | 1.0 | 0.077 | NS |
| 8 am UTC | -0.56 | -42.9 | 0.072 | <.001 |
| 9 am UTC | -0.561 | -42.9 | 0.065 | <.001 |
| 10 am UTC | -0.501 | -39.4 | 0.049 | <.001 |
| 11 am UTC | -0.668 | -48.7 | 0.039 | <.001 |
| 12 pm UTC | -0.569 | -43.4 | 0.034 | <.001 |
| 1 pm UTC | -0.583 | -44.2 | 0.032 | <.001 |
| 2 pm UTC | -0.597 | -45.0 | 0.032 | <.001 |
| 3 pm UTC | -0.656 | -48.1 | 0.031 | <.001 |
| 4 pm UTC | -0.613 | -45.8 | 0.031 | <.001 |
| 5 pm UTC | -0.617 | -46.0 | 0.031 | <.001 |
| 6 pm UTC | -0.694 | -50.0 | 0.031 | <.001 |
| 7 pm UTC | -0.567 | -43.3 | 0.031 | <.001 |
| 8 pm UTC | -0.631 | -46.8 | 0.031 | <.001 |
| 9 pm UTC | -0.597 | -45.0 | 0.032 | <.001 |
| 10 pm UTC | -0.534 | -41.4 | 0.032 | <.001 |
| 11 pm UTC | -0.379 | -31.5 | 0.032 | <.001 |
| Period effects – day of week | ||||
| Sunday | 0.318 | 37.4 | 0.011 | <.001 |
| Monday | 0.099 | 10.4 | 0.009 | <.001 |
| Tuesday | 0.079 | 8.2 | 0.009 | <.001 |
| Thursday | 0.112 | 11.9 | 0.009 | <.001 |
| Friday | 0.062 | 6.4 | 0.009 | <.001 |
| Saturday | 0.139 | 14.9 | 0.01 | <.001 |
Observations: 372,466; Akaike Information Criterion: 2,271,754
Log-likelihood: -1,1357,790; dispersion parameter: 0.514; standard error: 0.001
Note: The percent change is the exponentiated β coefficient – 1 × 100.
Abbreviations: CDC, Centers for Disease Control and Prevention; EM, emergency management; NS, not significant; UTC, coordinated universal time.
Figure 1.Effects of time period and account type on message retransmission. Bars indicate effects of content covariates (horizontal axis) on log expected retweet count (Table 3); whiskers indicate 95% confidence intervals.
Figure 2.Effects of messages structural features on message retransmission. Bars indicate effects of content covariates (horizontal axis) on log expected retweet count (Table 3); whiskers indicate 95% confidence intervals.
Figure 3.Effects of message keyword (lexical) categories on message retransmission. Bars indicate effects of content covariates (horizontal axis) on log expected retweet count (Table 3); whiskers indicate 95% confidence intervals.
Figure 4.Effects of image textual content (lexical) categories on message retransmission. Bars indicate effects of content covariates (horizontal axis) on log expected retweet count (Table 3); whiskers indicate 95% confidence intervals.