| Literature DB >> 35537056 |
Francisco Alejandro Montiel Ishino1, Xiaohui Liu1,2, Bandana Kar3, Tracy Onega2, Faustine Williams1.
Abstract
BACKGROUND: The COVID-19 pandemic exacerbated existing racial/ethnic health disparities in the United States. Monitoring nationwide Twitter conversations about COVID-19 and race/ethnicity could shed light on the impact of the pandemic on racial/ethnic minorities and help address health disparities.Entities:
Keywords: geo-tagged COVID-19 tweets; racial/ethnic disparity; racial/ethnic stratification; surveillance
Year: 2022 PMID: 35537056 PMCID: PMC9153911 DOI: 10.2196/30371
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Figure 1Data management and workflow.
Example tweets about each racial/ethnic group.
| Ethnic group | Example tweets |
| Asians |
“Eating at #Italianos for the #1stTime. My #Wife told Me not to eat any #AsianFood because the #Covid19 started in Asia.” “Asian fam, stay safe out there. We 'bout to be targeted much more now than ever. This is an okay time to be paranoid. sadly.” “A terror attack in Texas due to anti-Asian hatred and bigotry. THIS is why it is appalling and abhorrent to apply a nationality and ethnicity to a f*cking virus.” “Latinos and Asians in New York City are disproportionately representing the proportion of COVID-19 cases.” |
| Blacks |
“Our COUNTRY is shut down, not because of a black guy, but because of a white guy @realDonaldTrump#COVID19.” “I am disappointed in my fellow blacks for being so ignorant during this time. I just read a comment that said “they puttin the virus in the COVID tests now that Black people being tested, so they get sick.” “There is research showing that Black women and other minorities aren’t believed when they report symptoms in the E.R. Could this lead to major racial disparities in the survival rates of COVID-19 patients?#CNNTownHall” |
| Latinos |
“I live in one of the epicenters of the epicenter of this damn #COVID19 crisis. Working class Black & Latino folks. When will we get tested?” “Important. Even here in Iowa, #COVID19 is disproportionately impacting Black and Latino people.” “As of April 12, a total of 31 Latinos have died from complications from COVID-19, according to data from the medical examiner’s office. But that figure is not accurate.” Via @mizamudio “Younger blacks and Latinos are dying of COVID-19 at higher rates in California.” |
| Whites |
“White nationalists looking to weaponize coronavirus pandemic, both literally and figuratively.” “Striking maps of Milwaukee by overlaying COVID cases on high African American (left) or White population.” “White supremacy backfiring on Trump. He closed the border to China, but not Europe. Most covid-19 cases in USA have a Euro/British origin.” “Same people ok with a bunch of white folks parading around with guns protesting a pandemic had a problem with black folks protesting police brutality and injustice.” |
Figure 2Distribution of the volume of tweets related to conversations about COVID-19 and (A) Asians, (B) Blacks, (C) Latinos, and (D) Whites.
Figure 3COVID-19 cases for (A) Asians (the blue for Wyoming indicates no data), (B) Blacks, (C) Latinos, and (D) Whites.
Figure 4COVID-19 deaths for (A) Asians, (B) Blacks, (C) Latinos, and (D) Whites.
Association between COVID-19 cases and racial/ethnic group–related tweets.
| Model, outcome, and measurement variable | Coefficient | Confidence interval | Adjusted | ||
|
| |||||
|
| Asian tweet volume | 288.192 | 0.00 | 162.3 to 414.0 | 0.72 |
|
| Asian population | 0.002 | 0.00 | 0 to 0 | |
|
| |||||
|
| Black tweet volume | 97.088 | 0.28 | –80.3 to 274.5 | 0.08 |
|
| Black population | 0.004 | 0.07 | 0 to 0 | |
|
| |||||
|
| Latino tweet volume | 2161.828 | 0.05 | –24.0 to 4347.7 | 0.26 |
|
| Latino population | 0.001 | 0.00 | 0 to 0 | |
|
| |||||
|
| White tweet volume | 163.938 | 0.07 | –12.3 to 340.1 | 0.19 |
|
| White population | 0.001 | 0.03 | 0 to 0 | |
Association between COVID-19 deaths and racial/ethnic group–related tweets.
| Model, outcome, and measurement variable | Coefficient | Confidence interval | Adjusted | ||
|
| |||||
|
| Asian tweet volume | 93.3750 | 0.00 | 68.9 to 117.7 | 0.57 |
|
| Asian population | –0.0001 | 0.02 | 0 to 0 | |
|
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|
| Black tweet volume | 47.6001 | 0.00 | 24.1 to 71.0 | 0.23 |
|
| Black population | –0.0002 | 0.39 | 0 to 0 | |
|
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|
| Latino tweet volume | 719.2882 | 0.00 | 463.4 to 975.1 | 0.38 |
|
| Latino population | –0.0001 | 0.29 | 0 to 0 | |
|
| |||||
|
| White tweet volume | 60.2326 | 0.00 | 26.1 to 94.3 | 0.18 |
|
| White population | –0.0002 | 0.07 | 0 to 0 | |