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Knowledge and Attitudes towards Antibiotic Use and Resistance - A Latent Class Analysis of a Swedish Population-Based Sample

Author

Listed:
  • Martina Vallin
  • Maria Polyzoi
  • Gaetano Marrone
  • Senia Rosales-Klintz
  • Karin Tegmark Wisell
  • Cecilia Stålsby Lundborg

Abstract

Background: In 2006, a study investigating knowledge and attitudes regarding antibiotic use and resistance in Sweden, indicated high level of knowledge but also areas in need of improvement. Objective: (i) To provide an update on the knowledge and attitudes to antibiotic use and resistance of the Swedish population, and (ii) to identify which groups within the population are in particular need of improved knowledge or attitudes. Methods: A questionnaire was sent by post in 2013 to 2,500 randomly-selected individuals aged 18–74, living in Sweden. Latent class analyses were conducted to group respondents based on their responses. The association between socio-demographic characteristics and the probability of belonging to each latent class was assessed. Results: The response rate was 57%. Ninety-four per cent of the responders knew that bacteria could become resistant to antibiotics and the majority answered correctly to the questions regarding antibiotic resistance development. The respondents expressed confidence in doctors who decided not to prescribe antibiotics. Three latent classes related to ‘knowledge regarding antibiotic use and resistance’, two regarding ‘attitudes towards antibiotic accessibility and infection prevention’ and three regarding ‘attitudes towards antibiotic use and effects’ were revealed. Men, younger and more educated people were more knowledgeable but males had a less restrictive attitude. Respondents with high levels of knowledge on antibiotics were more likely to have appropriate restrictive attitudes to antibiotics. Conclusion: Knowledge on antibiotic use and resistance is maintained high and has improved in Sweden compared to 2006. People with lower education and elderly are especially in need of improved knowledge about antibiotic use and resistance.

Suggested Citation

  • Martina Vallin & Maria Polyzoi & Gaetano Marrone & Senia Rosales-Klintz & Karin Tegmark Wisell & Cecilia Stålsby Lundborg, 2016. "Knowledge and Attitudes towards Antibiotic Use and Resistance - A Latent Class Analysis of a Swedish Population-Based Sample," PLOS ONE, Public Library of Science, vol. 11(4), pages 1-18, April.
  • Handle: RePEc:plo:pone00:0152160
    DOI: 10.1371/journal.pone.0152160
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    References listed on IDEAS

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    1. Beth A. Reboussin & Edward H. Ip & Mark Wolfson, 2008. "Locally dependent latent class models with covariates: an application to under‐age drinking in the USA," Journal of the Royal Statistical Society Series A, Royal Statistical Society, vol. 171(4), pages 877-897, October.
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    1. Elena Narcisa Pogurschi & Carmen Daniela Petcu & Alexandru Eugeniu Mizeranschi & Corina Aurelia Zugravu & Daniela Cirnatu & Ioan Pet & Oana-Mărgărita Ghimpețeanu, 2022. "Knowledge, Attitudes and Practices Regarding Antibiotic Use and Antibiotic Resistance: A Latent Class Analysis of a Romanian Population," IJERPH, MDPI, vol. 19(12), pages 1-16, June.
    2. Felicia Robertson & Sverker C. Jagers & Björn Rönnerstrand, 2018. "Managing Sustainable Use of Antibiotics—The Role of Trust," Sustainability, MDPI, vol. 10(1), pages 1-13, January.
    3. Olga J Horvat & Ana D Tomas & Milica M Paut Kusturica & Alisa V Savkov & Dragica U Bukumirić & Zdenko S Tomić & Ana J Sabo, 2017. "Is the level of knowledge a predictor of rational antibiotic use in Serbia?," PLOS ONE, Public Library of Science, vol. 12(7), pages 1-13, July.

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