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10.2196/22273

http://scihub22266oqcxt.onion/10.2196/22273
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33428580!7837450!33428580
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suck abstract from ncbi


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pmid33428580      JMIR+Public+Health+Surveill 2021 ; 7 (1): e22273
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  • Predictors of COVID-19 Information Sources and Their Perceived Accuracy in Nigeria: Online Cross-sectional Study #MMPMID33428580
  • Erinoso O; Wright KO; Anya S; Kuyinu Y; Abdur-Razzaq H; Adewuya A
  • JMIR Public Health Surveill 2021[Jan]; 7 (1): e22273 PMID33428580show ga
  • BACKGROUND: Effective communication is critical for mitigating the public health risks associated with the COVID-19 pandemic. OBJECTIVE: This study assesses the source(s) of COVID-19 information among people in Nigeria, as well as the predictors and the perceived accuracy of information from these sources. METHODS: We conducted an online survey of consenting adults residing in Nigeria between April and May 2020 during the lockdown and first wave of COVID-19. The major sources of information about COVID-19 were distilled from 7 potential sources (family and friends, places of worship, health care providers, internet, workplace, traditional media, and public posters/banners). An open-ended question was asked to explore how respondents determined accuracy of information. Statistical analysis was conducted using STATA 15.0 software (StataCorp Texas) with significance placed at P<.05. Approval to conduct this study was obtained from the Lagos State University Teaching Hospital Health Research Ethics Committee. RESULTS: A total of 719 respondents completed the survey. Most respondents (n=642, 89.3%) obtained COVID-19-related information from the internet. The majority (n=617, 85.8%) considered their source(s) of information to be accurate, and 32.6% (n=234) depended on only 1 out of the 7 potential sources of COVID-19 information. Respondents earning a monthly income between NGN 70,000-120,000 had lower odds of obtaining COVID-19 information from the internet compared to respondents earning less than NGN 20,000 (odds ratio [OR] 0.49, 95% CI 0.24-0.98). In addition, a significant proportion of respondents sought accurate information from recognized health organizations, such as the Nigeria Centre for Disease Control and the World Health Organization. CONCLUSIONS: The internet was the most common source of COVID-19 information, and the population sampled had a relatively high level of perceived accuracy for the COVID-19 information received. Effective communication requires dissemination of information via credible communication channels, as identified from this study. This can be potentially beneficial for risk communication to control the pandemic.
  • |Adult[MESH]
  • |COVID-19/epidemiology/*prevention & control[MESH]
  • |Consumer Health Information/*standards/*statistics & numerical data[MESH]
  • |Cross-Sectional Studies[MESH]
  • |Humans[MESH]
  • |Internet/statistics & numerical data[MESH]
  • |Nigeria/epidemiology[MESH]
  • |Perception[MESH]


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