Matches in SemOpenAlex for { <https://semopenalex.org/work/W4382011343> ?p ?o ?g. }
- W4382011343 endingPage "630" @default.
- W4382011343 startingPage "621" @default.
- W4382011343 abstract "Despite the proven safety and clinical efficacy of the Measles vaccine, many countries are seeing new heights of vaccine hesitancy or refusal, and are experiencing a resurgence of measles infections as a consequence. With the use of novel machine learning tools, we investigated the prevailing negative sentiments related to Measles vaccination through an analysis of public Twitter posts over a 5-year period. We extracted original tweets using the search terms related to “measles” and “vaccine,” and posted in English from January 1, 2017, to December 15, 2022. Of these, 155,363 tweets were identified to be negative sentiment tweets from unique individuals, through the use of Bidirectional Encoder Representations from Transformers (BERT) Named Entity Recognition and SieBERT, a pretrained sentiment in English analysis model. This was followed by topic modeling and qualitative thematic analysis performed inductively by the study investigators. A total of 11 topics were generated after applying BERTopic. To facilitate a global discussion of results, the topics were grouped into four different themes through iterative thematic analysis. These include (a) the rejection of “anti-vaxxers” or antivaccine sentiments, (b) misbeliefs and misinformation regarding Measles vaccination, (c) negative transference due to COVID-19 related policies, and (d) public reactions to contemporary Measles outbreaks. Theme 1 highlights that the current public discourse may further alienate those who are vaccine hesitant because of the disparaging language often used, while Themes 2 and 3 highlight the typology of misperceptions and misinformation underlying the negative sentiments related to Measles vaccination and the psychological tendency of disconfirmation bias. Nonetheless, the analysis was based solely on Twitter and only tweets in English were included; hence, the findings may not necessarily generalize to non-Western communities. It is important to further understand the thinking and feeling of those who are vaccine hesitant to address the issues at hand." @default.
- W4382011343 created "2023-06-27" @default.
- W4382011343 creator A5009405411 @default.
- W4382011343 creator A5036917049 @default.
- W4382011343 creator A5044924985 @default.
- W4382011343 creator A5048976333 @default.
- W4382011343 creator A5091731578 @default.
- W4382011343 creator A5092262159 @default.
- W4382011343 date "2023-08-01" @default.
- W4382011343 modified "2023-09-27" @default.
- W4382011343 title "Examining the Prevailing Negative Sentiments Surrounding Measles Vaccination: Unsupervised Deep Learning of Twitter Posts from 2017 to 2022" @default.
- W4382011343 cites W1924618820 @default.
- W4382011343 cites W1979290264 @default.
- W4382011343 cites W1997491007 @default.
- W4382011343 cites W2079578139 @default.
- W4382011343 cites W2084518431 @default.
- W4382011343 cites W2150418259 @default.
- W4382011343 cites W2316122468 @default.
- W4382011343 cites W2647297335 @default.
- W4382011343 cites W2754477858 @default.
- W4382011343 cites W2888571776 @default.
- W4382011343 cites W2911801429 @default.
- W4382011343 cites W2950092971 @default.
- W4382011343 cites W2959736309 @default.
- W4382011343 cites W2990609372 @default.
- W4382011343 cites W3011549120 @default.
- W4382011343 cites W3025523449 @default.
- W4382011343 cites W3088320621 @default.
- W4382011343 cites W3124516888 @default.
- W4382011343 cites W3170553392 @default.
- W4382011343 cites W3193702746 @default.
- W4382011343 cites W3204815115 @default.
- W4382011343 cites W4206236567 @default.
- W4382011343 cites W4220927473 @default.
- W4382011343 cites W4226208059 @default.
- W4382011343 cites W4281560933 @default.
- W4382011343 cites W4282965197 @default.
- W4382011343 cites W4283724611 @default.
- W4382011343 cites W4295094782 @default.
- W4382011343 cites W4378082743 @default.
- W4382011343 doi "https://doi.org/10.1089/cyber.2023.0025" @default.
- W4382011343 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/37358808" @default.
- W4382011343 hasPublicationYear "2023" @default.
- W4382011343 type Work @default.
- W4382011343 citedByCount "0" @default.
- W4382011343 crossrefType "journal-article" @default.
- W4382011343 hasAuthorship W4382011343A5009405411 @default.
- W4382011343 hasAuthorship W4382011343A5036917049 @default.
- W4382011343 hasAuthorship W4382011343A5044924985 @default.
- W4382011343 hasAuthorship W4382011343A5048976333 @default.
- W4382011343 hasAuthorship W4382011343A5091731578 @default.
- W4382011343 hasAuthorship W4382011343A5092262159 @default.
- W4382011343 hasConcept C136764020 @default.
- W4382011343 hasConcept C138816342 @default.
- W4382011343 hasConcept C142724271 @default.
- W4382011343 hasConcept C144024400 @default.
- W4382011343 hasConcept C15744967 @default.
- W4382011343 hasConcept C159047783 @default.
- W4382011343 hasConcept C190248442 @default.
- W4382011343 hasConcept C22070199 @default.
- W4382011343 hasConcept C2776438120 @default.
- W4382011343 hasConcept C2776552730 @default.
- W4382011343 hasConcept C2776990098 @default.
- W4382011343 hasConcept C2780657872 @default.
- W4382011343 hasConcept C36289849 @default.
- W4382011343 hasConcept C38652104 @default.
- W4382011343 hasConcept C41008148 @default.
- W4382011343 hasConcept C518677369 @default.
- W4382011343 hasConcept C71924100 @default.
- W4382011343 hasConcept C74196892 @default.
- W4382011343 hasConceptScore W4382011343C136764020 @default.
- W4382011343 hasConceptScore W4382011343C138816342 @default.
- W4382011343 hasConceptScore W4382011343C142724271 @default.
- W4382011343 hasConceptScore W4382011343C144024400 @default.
- W4382011343 hasConceptScore W4382011343C15744967 @default.
- W4382011343 hasConceptScore W4382011343C159047783 @default.
- W4382011343 hasConceptScore W4382011343C190248442 @default.
- W4382011343 hasConceptScore W4382011343C22070199 @default.
- W4382011343 hasConceptScore W4382011343C2776438120 @default.
- W4382011343 hasConceptScore W4382011343C2776552730 @default.
- W4382011343 hasConceptScore W4382011343C2776990098 @default.
- W4382011343 hasConceptScore W4382011343C2780657872 @default.
- W4382011343 hasConceptScore W4382011343C36289849 @default.
- W4382011343 hasConceptScore W4382011343C38652104 @default.
- W4382011343 hasConceptScore W4382011343C41008148 @default.
- W4382011343 hasConceptScore W4382011343C518677369 @default.
- W4382011343 hasConceptScore W4382011343C71924100 @default.
- W4382011343 hasConceptScore W4382011343C74196892 @default.
- W4382011343 hasIssue "8" @default.
- W4382011343 hasLocation W43820113431 @default.
- W4382011343 hasLocation W43820113432 @default.
- W4382011343 hasOpenAccess W4382011343 @default.
- W4382011343 hasPrimaryLocation W43820113431 @default.
- W4382011343 hasRelatedWork W1966053040 @default.
- W4382011343 hasRelatedWork W1991000489 @default.
- W4382011343 hasRelatedWork W2115923358 @default.
- W4382011343 hasRelatedWork W2356932359 @default.
- W4382011343 hasRelatedWork W2367615637 @default.