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尼日利亚 COVID-19 信息来源及其感知准确性的预测因素:在线横断面研究。

Predictors of COVID-19 Information Sources and Their Perceived Accuracy in Nigeria: Online Cross-sectional Study.

机构信息

Department of Oral and Maxillofacial Surgery, Lagos State University Teaching Hospital, Lagos, Nigeria.

Department of Community Health & Primary Health Care, Lagos State University College of Medicine, Lagos State University Teaching Hospital, Lagos, Nigeria.

出版信息

JMIR Public Health Surveill. 2021 Jan 25;7(1):e22273. doi: 10.2196/22273.

Abstract

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.

摘要

背景

有效的沟通对于减轻与 COVID-19 大流行相关的公共卫生风险至关重要。

目的

本研究评估了尼日利亚人获取 COVID-19 信息的来源,以及这些来源信息的预测因素和感知准确性。

方法

我们于 2020 年 4 月至 5 月 COVID-19 封锁和第一波疫情期间,对居住在尼日利亚的同意参与的成年人进行了在线调查。从 7 个潜在来源(家庭和朋友、礼拜场所、医疗保健提供者、互联网、工作场所、传统媒体和公共海报/横幅)中提取 COVID-19 信息的主要来源。通过一个开放式问题,询问受访者如何确定信息的准确性。使用 STATA 15.0 软件(StataCorp Texas)进行统计分析,显著性水平为 P<.05。本研究获得了拉各斯州立大学教学医院健康研究伦理委员会的批准。

结果

共有 719 名受访者完成了调查。大多数受访者(n=642,89.3%)从互联网上获取 COVID-19 相关信息。大多数人(n=617,85.8%)认为他们的信息来源是准确的,32.6%(n=234)只依赖 7 个潜在 COVID-19 信息来源中的 1 个。与收入低于 NGN 20,000 的受访者相比,每月收入在 NGN 70,000-120,000 之间的受访者获得 COVID-19 信息的可能性更低(比值比[OR]0.49,95%置信区间[CI]0.24-0.98)。此外,相当一部分受访者从尼日利亚疾病控制中心和世界卫生组织等公认的卫生组织寻求准确的信息。

结论

互联网是 COVID-19 信息的最常见来源,抽样人群对所收到的 COVID-19 信息的感知准确性相对较高。有效的沟通需要通过本研究确定的可靠沟通渠道传播信息。这对于通过风险沟通来控制大流行可能是有益的。

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