| Literature DB >> 32750001 |
Man Hung1,2,3,4,5,6,7, Evelyn Lauren8, Eric S Hon9, Wendy C Birmingham10, Julie Xu11, Sharon Su1, Shirley D Hon12,13,14, Jungweon Park1, Peter Dang1, Martin S Lipsky1.
Abstract
BACKGROUND: The coronavirus disease (COVID-19) pandemic led to substantial public discussion. Understanding these discussions can help institutions, governments, and individuals navigate the pandemic.Entities:
Keywords: COVID-19; Twitter; artificial intelligence; business economy; coronavirus; crisis; infodemic; infodemiology; pandemic; public health; sentiment; social network
Mesh:
Year: 2020 PMID: 32750001 PMCID: PMC7438102 DOI: 10.2196/22590
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Keywords for Twitter post search (N=1,001,380).
| Keyword | Frequency, n |
| Coronavirus | 250,849 |
| Covid | 340,522 |
| COVID-19 | 108,035 |
| SARS-CoV-2 | 670 |
| Stay home | 47,772 |
| covid19 | 134,773 |
| lockdown | 46,452 |
| shelter in place | 9967 |
| coronavirus truth | 1694 |
| outbreak | 16,045 |
| pandemic | 135,879 |
| quarantine | 325,770 |
| social distancing | 65,725 |
| hoax | 14,703 |
| be kind | 4071 |
| health heroes | 88 |
| ppe | 48,710 |
| isolation | 22,459 |
| homeschooling | 3271 |
| school cancelled | 50 |
| online teaching | 475 |
Figure 1Number of tweets related to coronavirus disease (COVID-19) from March 20, 2020, to April 19, 2020.
Figure 2Frequency distribution of dominant topic tweets across sentiment types.
Figure 3Word clouds showing the most frequently used word stems across Twitter users' post descriptions related to coronavirus disease (COVID-19). The upper left image is a word cloud formed from all tweets, while the upper right image is formed from tweets of positive sentiment. The lower left image is formed from tweets of neutral sentiment, while the lower right image is formed from tweets of negative sentiment.
The most frequently used word stems across Twitter users’ post descriptions related to coronavirus disease (COVID-19) by sentiment.
| All tweets | Positive sentiment | Negative sentiment | Neutral sentiment |
| today | thank | people | time |
| time | today | time | today |
| right | time | trump | need |
| even | love | even | people |
| know | people | know | going |
| thank | need | right | week |
| think | know | need | know |
| stay home | right | think | right |
| going | work | shit | still |
| work | even | going | think |
| still | still | today | work |
| week | good | still | life |
| need | going | virus | even |
| love | think | week | thing |
| look | great | work | trump |
| year | friend | crisis | first |
| life | week | make | year |
| well | well | want | make |
| want | stay home | year | really |
| good | want | thing | stay home |
| said | life | really | everyone |
| virus | hope | said | come |
| people | look | fuck | getting |
| many | trump | life | made |
| friend | help | stay home | take |
| great | year | many | self |
| family | make | everyone | home |
| trump | family | state | back |
| come | better | stop | state |
| made | best | country | update |
| really | stay safe | come | virus |
| make | virus | world | family |
| mean | many | hospital | live |
| show | said | much | said |
| shit | made | look | gonna |
| self | getting | damn | many |
| hope | thing | mean | quarantinelife |
| thought | live | already | started |
| world | everyone | month | mean |
| first | world | well | call |
| another | really | president | much |
| live | show | china | show |
| call | come | family | house |
| thing | self | take | look |
| already | feel | made | thought |
| everyone | first | getting | working |
| much | much | live | check |
| getting | back | first | done |
| feel | every | another | keep |
| little | another | nothing | another |
Examples of tweets expressing positive, neutral, and negative sentiments about coronavirus disease (COVID-19).
| Positive sentiments | Neutral sentiments | Negative sentiments |
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Figure 4Social network graphs of the dominant topics about coronavirus disease (COVID-19), with the top 10 associated words per topic. The size of the node is proportional to the weight of the edges.
Figure 5Heat map of the average sentiment score by state in the United States. A larger number represents a more positive sentiment score.