| Literature DB >> 34185004 |
Young Anna Argyris1, Kafui Monu2, Pang-Ning Tan1, Colton Aarts3, Fan Jiang3, Kaleigh Anne Wiseley1.
Abstract
BACKGROUND: Despite numerous counteracting efforts, antivaccine content linked to delays and refusals to vaccinate has grown persistently on social media, while only a few provaccine campaigns have succeeded in engaging with or persuading the public to accept immunization. Many prior studies have associated the diversity of topics discussed by antivaccine advocates with the public's higher engagement with such content. Nonetheless, a comprehensive comparison of discursive topics in pro- and antivaccine content in the engagement-persuasion spectrum remains unexplored.Entities:
Keywords: Twitter messaging; antivaccination movement; data visualization; health misinformation; infodemic; infodemiology; infoveillance; public health informatics; qualitative content analysis; social listening; supervised machine learning algorithm; unsupervised machine learning algorithm
Mesh:
Year: 2021 PMID: 34185004 PMCID: PMC8277307 DOI: 10.2196/23105
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Confusion matrix for the three classes of tweets.
| Actual class | Predicted class | ||
| Antivaccine | Provaccine | Neutral | |
| Antivaccine | 1344 | 166 | 40 |
| Provaccine | 175 | 1364 | 100 |
| Neutral | 25 | 48 | 2349 |
Precision, recall, and F-measure for the three classes of tweets.
| Class | Precision | Recall | F-measure |
| Antivaccine | 87.0% | 86.7% | 86.9% |
| Provaccine | 86.4% | 83.2% | 84.8% |
| Neutral | 94.4% | 97.0% | 95.7% |
Confusion matrix for the binary classification of tweets.
| Actual class | Predicted class | |
| Provaccine or antivaccine | Neutral | |
| Provaccine or antivaccine | 3049 | 140 |
| Neutral | 73 | 2349 |
Precision, recall, and F-measure for the binary classification.
| Class | Precision | Recall | F-measure |
| Provaccine or antivaccine | 97.7% | 95.6% | 96.6% |
| Neutral | 94.4% | 97.0% | 95.7% |
Figure 1Determining the optimal cluster size (k) for (A) provaccine and (B) antivaccine tweets.
Figure 2Provaccine (A) and antivaccine (B) cluster counts. In A, clusters 6, 10, 14, and 20 each hold over 5% of the tweets in the data set. In B, clusters 2, 9, 11, and 19 each hold over 5% of the tweets in the data set.
Figure 3Distance between prominent provaccine clusters and the rest of the clusters.
Figure 4Distance between prominent antivaccine clusters and the rest of the clusters.
Message frames used in prominent provaccine clusters.
| Cluster | Count | Examples | Phase 1 inductive coding: Common topics found in each cluster | Phase 2 deductive coding: Entman’s four message frames |
| Pro-C6 | 1256 tweets |
| Vaccine efficacy (preventive benefits) | (4) Suggest efficacy of vaccines as remedies |
| Pro-C10 | 1732 tweets |
| Vaccine saves the vulnerable and the immunocompromised | (3) Moral judgment of the vaccines as creating herd immunity (social good) |
| Pro-C14 | 2450 tweets |
| Criticizing antivaccine advocates | (2) Identify antivaccine advocates as the ones who cause the problem |
| Pro-C20 | 984 tweets |
| Encouraging vaccine mandates for school children | (4) Suggest mandated vaccines as remedies |
Message frames used in prominent antivaccine clusters.
| Cluster | Count | Examples | Phase 1 inductive coding: Common topics found in each cluster | Phase 2 deductive coding: Entman’s four message frames |
| Anti-C2 | 1044 tweets |
|
Advocating exemption for mandatory school immunization | (4) Suggest vaccine exemptions as remedies |
| Anti-C9 | 1654 tweets |
|
Corrupted connection between pharmaceutical companies and the government (especially Democrats) Overarching conspiracy theory connecting prescription drugs, insurance, and opioids | (3) Moral judgment about the health care system as profit driven |
| Anti-C11 | 479 tweets |
|
Schemes of pharmaceutical companies and injuries to children | (2) Identify pharmaceutical companies as causing the problems |
| Anti-C19 | 1397 tweets |
|
Vaccine injuries and safety concerns | (1) Define the problems as unsafe vaccines that cause injuries |