A content analysis of the tweets of e-cigarette proponents in Australia

HEALTH PROMOTION JOURNAL OF AUSTRALIA(2022)

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摘要
Issue addressed Social media sites have become platforms for public discourse on e-cigarettes, providing proponents with an opportunity to disseminate favourable information about the devices. Research examining the information being presented by Australian proponents of e-cigarettes is limited. Accordingly, this study explored the Twitter feeds of Australian proponents of e-cigarettes to determine the nature of the e-cigarette-related content being disseminated. Methods All publicly available e-cigarette-related tweets and retweets (n = 1397) disseminated over a 15-week period by five Australian e-cigarette proponents were captured and analysed. Results The main topics covered in the 1397 tweets analysed related to (a) criticism of the arguments made by public health agencies/advocates who oppose e-cigarettes (29%), (b) Australian e-cigarette policy (19%), (c) the health risks of e-cigarettes (16%) and (d) the efficacy of e-cigarettes as smoking cessation aids (13%). Proponents argued that the precautionary principle adopted by public health agencies/advocates lacks an appropriate evidence base and that legalising e-cigarettes would reduce smoking rates and smoking-related harm. Proponents minimised the risks associated with e-cigarette use and only presented evidence indicating that use facilitates smoking cessation. Conclusions The assessed tweets have the potential to reduce the public's trust in the information being presented by authoritative public health agencies/advocates. The dissemination of information downplaying the health risks associated with e-cigarettes may distort perceptions of the devices. So what? To assist tobacco control efforts, results highlight the need for (a) ongoing surveillance of the tweets of e-cigarette proponents and (b) provision of evidence-based counterarguments on social media.
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关键词
e-cigarettes, social media, tobacco control, Twitter
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