Background:
Stigma is the deleterious, structural force that devalues members of groups that hold undesirable characteristics. Since stigma is created and reinforced by society-through in-person and online social interactions-referencing the novel coronavirus as the "Chinese virus" or "China virus" has the potential to create and perpetuate stigma.
Objective:
The aim of this study was to assess if there was an increase in the prevalence and frequency of the phrases "Chinese virus" and "China virus" on Twitter after the March 16, 2020, US presidential reference of this term.
Methods:
Using the Sysomos software (Sysomos, Inc), we extracted tweets from the United States using a list of keywords that were derivatives of "Chinese virus." We compared tweets at the national and state levels posted between March 9 and March 15 (preperiod) with those posted between March 19 and March 25 (postperiod). We used Stata 16 (StataCorp) for quantitative analysis, and Python (Python Software Foundation) to plot a state-level heat map.
Results:
A total of 16,535 "Chinese virus" or "China virus" tweets were identified in the preperiod, and 177,327 tweets were identified in the postperiod, illustrating a nearly ten-fold increase at the national level. All 50 states witnessed an increase in the number of tweets exclusively mentioning "Chinese virus" or "China virus" instead of coronavirus disease (COVID-19) or coronavirus. On average, 0.38 tweets referencing "Chinese virus" or "China virus" were posted per 10,000 people at the state level in the preperiod, and 4.08 of these stigmatizing tweets were posted in the postperiod, also indicating a ten-fold increase. The 5 states with the highest number of postperiod "Chinese virus" tweets were Pennsylvania (n=5249), New York (n=11,754), Florida (n=13,070), Texas (n=14,861), and California (n=19,442). Adjusting for population size, the 5 states with the highest prevalence of postperiod "Chinese virus" tweets were Arizona (5.85), New York (6.04), Florida (6.09), Nevada (7.72), and Wyoming (8.76). The 5 states with the largest increase in pre- to postperiod "Chinese virus" tweets were Kansas (n=697/58, 1202%), South Dakota (n=185/15, 1233%), Mississippi (n=749/54, 1387%), New Hampshire (n=582/41, 1420%), and Idaho (n=670/46, 1457%).
Conclusions:
The rise in tweets referencing "Chinese virus" or "China virus," along with the content of these tweets, indicate that knowledge translation may be occurring online and COVID-19 stigma is likely being perpetuated on Twitter.
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Networks of Negativity: Gaining Attention Through Cyberbullying.
Felmlee D, Francisco S, Hardy M
Int J Environ Res Public Health. 2025; 21(12.
PMID: 39767538
PMC: 11727666.
DOI: 10.3390/ijerph21121699.
From Tweets to Streets: Observational Study on the Association Between Twitter Sentiment and Anti-Asian Hate Crimes in New York City from 2019 to 2022.
Wei H, Hswen Y, Merchant J, Drew L, Nguyen Q, Yue X
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PMID: 39250221
PMC: 11420573.
DOI: 10.2196/53050.
Psychological Distress and Behavioral Vigilance in Response to Minority Stress and Threat among Members of the Asian American and Pacific Islander Community during the COVID-19 Pandemic.
Franks A, Nguyen R, Xiao Y, Abbott D
Eur J Investig Health Psychol Educ. 2024; 14(3):488-504.
PMID: 38534894
PMC: 10968754.
DOI: 10.3390/ejihpe14030033.
#StopAsianHate: A content analysis of TikTok videos focused on racial discrimination against Asians and Asian Americans during the COVID-19 pandemic.
Jacques E, Basch C, Fera J, Jones 2nd V
Dialogues Health. 2024; 2:100089.
PMID: 38515482
PMC: 10953867.
DOI: 10.1016/j.dialog.2022.100089.
Perceived racism and discrimination and youth substance use in the United States - Intersections with sex and ethnicity.
Dai H, Thiel G, Hafer D
Prev Med. 2023; 178:107811.
PMID: 38081420
PMC: 10928724.
DOI: 10.1016/j.ypmed.2023.107811.
Public health risk communication through the lens of a quarantined community: Insights from a coronavirus hotspot in Germany.
Licht A, Wetzker W, Scholz J, Scherag A, Weis S, Pletz M
PLoS One. 2023; 18(10):e0292248.
PMID: 37824455
PMC: 10569635.
DOI: 10.1371/journal.pone.0292248.
The Role of Social Media in Building Pandemic Resilience in an Urban Community: A Qualitative Case Study.
George J, Elayan S, Sykora M, Solter M, Feick R, Hewitt C
Int J Environ Res Public Health. 2023; 20(17).
PMID: 37681847
PMC: 10488116.
DOI: 10.3390/ijerph20176707.
[The covid-19 pandemic and international mobility in Brazil: challenges for the health and social protection of international migrants in times of uncertainty].
Granada D, Silveira C, Inoue S, Matsue R, Martin D
Hist Cienc Saude Manguinhos. 2023; 30(suppl 1):e2023033.
PMID: 37585977
PMC: 10481635.
DOI: 10.1590/S0104-59702023000100033.
Deep learning for COVID-19 topic modelling via Twitter: Alpha, Delta and Omicron.
Lande J, Pillay A, Chandra R
PLoS One. 2023; 18(8):e0288681.
PMID: 37527236
PMC: 10393149.
DOI: 10.1371/journal.pone.0288681.
COVID-19 health information trust and prejudicial attitudes predict healthcare disruptions in the first year of COVID-19 among people living with HIV.
Kalichman S, Kalichman M, Shkembi B, Eaton L
J Behav Med. 2023; 46(5):812-820.
PMID: 36881251
PMC: 9989585.
DOI: 10.1007/s10865-023-00399-6.
Development of a COVID-19-Related Anti-Asian Tweet Data Set: Quantitative Study.
Mokhberi M, Biswas A, Masud Z, Kteily-Hawa R, Goldstein A, Gillis J
JMIR Form Res. 2023; 7:e40403.
PMID: 36693148
PMC: 9976773.
DOI: 10.2196/40403.
The cost of anti-Asian racism during the COVID-19 pandemic.
Huang J, Krupenkin M, Rothschild D, Lee Cunningham J
Nat Hum Behav. 2023; 7(5):682-695.
PMID: 36658211
DOI: 10.1038/s41562-022-01493-6.
The experiences of UK-Chinese individuals during the COVID-19 pandemic: A qualitative interview study.
Al-Talib M, Bailey P, Zhou Q, Wong K
PLoS One. 2023; 18(1):e0280341.
PMID: 36649253
PMC: 9844865.
DOI: 10.1371/journal.pone.0280341.
User-Chatbot Conversations During the COVID-19 Pandemic: Study Based on Topic Modeling and Sentiment Analysis.
Chin H, Lima G, Shin M, Zhunis A, Cha C, Choi J
J Med Internet Res. 2023; 25:e40922.
PMID: 36596214
PMC: 9885754.
DOI: 10.2196/40922.
Public Opinion Manipulation on Social Media: Social Network Analysis of Twitter Bots during the COVID-19 Pandemic.
Weng Z, Lin A
Int J Environ Res Public Health. 2022; 19(24).
PMID: 36554258
PMC: 9779151.
DOI: 10.3390/ijerph192416376.
Factors influencing customers' dine out intention during COVID-19 reopening period: The moderating role of country-of-origin effect.
Wei C, Chen H, Lee Y
Int J Hosp Manag. 2022; 95:102894.
PMID: 36540680
PMC: 9756831.
DOI: 10.1016/j.ijhm.2021.102894.
COVID-19-associated discrimination in Germany.
Dollmann J, Kogan I
Res Soc Stratif Mobil. 2022; 74:100631.
PMID: 36540419
PMC: 9756773.
DOI: 10.1016/j.rssm.2021.100631.
COVID vaccine stigma: detecting stigma across social media platforms with computational model based on deep learning.
Straton N
Appl Intell (Dordr). 2022; :1-26.
PMID: 36531971
PMC: 9735096.
DOI: 10.1007/s10489-022-04311-8.
Development, Validation, and Utilization of a Social Media Use and Mental Health Questionnaire among Middle Eastern and Western Adults: A Pilot Study from the UAE.
Hegazi O, Alalalmeh S, Alfaresi A, Dashtinezhad S, Bahada A, Shahwan M
Int J Environ Res Public Health. 2022; 19(23).
PMID: 36498139
PMC: 9736958.
DOI: 10.3390/ijerph192316063.
Media attention toward COVID-19 across 18 countries: The influence of cultural values and pandemic severity.
Ng R, Tan Y
PLoS One. 2022; 17(12):e0271961.
PMID: 36477463
PMC: 9728893.
DOI: 10.1371/journal.pone.0271961.