| Literature DB >> 35072637 |
Georgie Hudson1,2, Sonja M Jansli1,2, Sinan Erturk1,2, Daniel Morris1,2, Clarissa M Odoi1,2, Angela Clayton-Turner1, Vanessa Bray1, Gill Yourston1, Doreen Clouden1, David Proudfoot1, Andrew Cornwall1, Claire Waldron1, Til Wykes1,2, Sagar Jilka1,2,3.
Abstract
BACKGROUND: Dementia misconceptions on social media are common, with negative effects on people with the condition, their carers, and those who know them. This study codeveloped a thematic framework with carers to understand the forms these misconceptions take on Twitter.Entities:
Keywords: Alzheimer’s Disease; Twitter; co-production; dementia; misconceptions; patient and public involvement; social media; stigma
Year: 2022 PMID: 35072637 PMCID: PMC8822432 DOI: 10.2196/30388
Source DB: PubMed Journal: JMIR Aging ISSN: 2561-7605
Figure 1Neutral (black) and negative (red) search terms, as defined by carers and noncarers (eg, through researchers’ own Twitter search, or the literature). Words with an asterisk were taken from Oscar et al [8].
Figure 2Tweet extraction and categorization, outlining the number of tweets extracted, screened, not selected, and categorized by carers.
Participant characteristics, N=7.
| Characteristics | Values | ||
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| Female | 5 (71) | |
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| Male | 2 (29) | |
| Age (years), mean (SD) | 63.33 (11.79) | ||
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| White British | 6 (86) | |
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| Black/Black British | 1 (14) | |
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| Retired | 3 (50) | |
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| Employed (part-time) | 1 (17) | |
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| Self-employed | 1 (17) | |
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| Receiving Employment and Support Allowance (ESA) | 1 (17) | |
| Length of time spent being a carer (years), mean (SD)a | 8.83 (6.59) | ||
aFor this category, n=6 as there is 1 missing data point; percentages have been calculated accordingly.
Carer attribution of tweets into each framework category (categories 1-3: neutral; categories 4-6: negative), n=1497.
| Categories | Tweets categorized to each category, n (%) |
| 1. Lived experience | 97 (6.48) |
| 2. Organizational and community group statements | 308 (20.57) |
| 3. Individual comments on dementia-related topics | 232 (15.50) |
| 4. Minimizing or underestimating words/statements | 19 (1.27) |
| 5. Dehumanizing, weaponizing, or outdated words/statements | 662 (44.22) |
| 6. Incorrect or questionable words/statements | 96 (6.41) |
| 7. Othera | 34 (2.27) |
| 8. I don’t knowa | 49 (3.27) |
aFor the purpose of categorization, 2 additional categories were created: other (for tweets that clearly did not belong in any of the other categories) and I don’t know (for tweets that carers thought might belong in one of the categories, but were uncertain about).
Carer defined framework categories, and their researcher defined themes and subthemes, showing the number of tweets coded to each theme and framework category and their percentage of the total number of tweets analyzed, n=863.
| Framework categories, themes, and subthemes | Tweets, n (%) | Tweets coded to each framework category, n (%) | ||||
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| 1 (0.1) | 21 (2.4) | ||||
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| Jokes | 14 (1.6) |
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| Painting a negative picture | 3 (0.3) |
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| Unintentionally minimizing | 3 (0.3) |
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| 143 (16.6) | 737 (85.4) | ||||
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| Celebrities | 34 (3.9) |
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| 63 (7.3) |
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| Weaponizing diagnoses | 4 (0.5) |
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| Insults targeted towards politicians | 469 (54.3) |
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| Unintentionally weaponizing | 24 (2.8) |
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| 0 (0) | 34 (3.9) | ||||
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| Armchair diagnoses | 21 (2.4) |
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| Cures/causes of dementia | 11 (1.3) |
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| Assumptions about politicians | 2 (0.2) |
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| Neutral | 64 (7.4) | 64 (7.4) | ||||
| Unclear | 7 (0.8) | 7 (0.8) | ||||