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公众对新冠疫苗接种的态度:新冠疫苗接种态度量表(C-VAS)的验证

Public Attitude Towards COVID-19 Vaccination: Validation of COVID-Vaccination Attitude Scale (C-VAS).

作者信息

Alam Md Moddassir, Melhim Loai Kayed B, Ahmad Mohammad Tauheed, Jemmali Mahdi

机构信息

Department of Health Information Management and Technology, College of Applied Medical Sciences, University of Hafr Al-Batin, Hafr Al-Batin, 39524, Saudi Arabia.

College of Medicine, King Khalid University, Abha, 61421, Saudi Arabia.

出版信息

J Multidiscip Healthc. 2022 Apr 29;15:941-954. doi: 10.2147/JMDH.S353594. eCollection 2022.

Abstract

INTRODUCTION

The fear of emergence of newer strains of SARS-CoV-2 as well as concerns of waning of protection after doses of COVID-19 vaccine has created a degree of global uncertainty surrounding the pandemic. Some of the emerging strains of SARS-CoV-2 have shown potential for causing serious disease and death, a threat that has been ameliorated by ensuring the vaccine coverage in populations. Still, the vaccine coverage remains unsatisfactory in certain populations. Hence, understanding and working on the factors which affect acceptance of the vaccine amongst the public can be considered a priority for public health as much as ensuring availability of the vaccines.

OBJECTIVE

This research work aims to build and validate a scale to assess the public attitude towards COVID vaccination. The proposed scale has been named as COVID Vaccination Attitude Scale (C-VAS).

MATERIALS AND METHODS

A three-stage process was used to develop the C-VAS which includes (1) item generation (deductive and inductive approach); (2) item-refinement (pre-testing and pilot testing, exploratory factor analysis (EFA); and (3) scale validation (confirmatory factor analysis, CFA). The sample size used for this research was 840. In order to overcome the issue of common method bias, the data was collected in two phases. The sample n1 (411) was used for EFA and the sample n2 (429) was employed for undertaking CFA. Common method bias was assessed to check if variations in responses are caused by the instrument instead of the actual dispositions of the respondents. Items of the scale were taken by reviewing the extant literature about vaccination, from the relevant established theories such as health belief model and by interviewing with domain experts. The content validity of the scale was determined.

RESULTS

EFA extracted five factors, labelled as "Perceived Benefits", "Perceived Barriers", "Perceived Severity", "Health Motivation" and "Perceived Risk". To further validate the factor-item structure CFA was performed.

CONCLUSION

The measurement model was assessed by applying CFA to examine the reliability, accuracy and validity of the scale. Development of this scale can help in understanding factors that affect vaccine acceptability behavior. This can be used in promoting COVID vaccine coverage in countries and societies which still have low vaccination rates especially due to lack of acceptance of the vaccine. This scale also has the potential to understand public behavior in relation to similar future outbreaks and the acceptance of the mitigatory vaccines.

摘要

引言

对新型严重急性呼吸综合征冠状病毒2(SARS-CoV-2)毒株出现的担忧,以及对新冠疫苗接种后保护作用减弱的担忧,在全球范围内引发了一定程度的不确定性。一些新出现的SARS-CoV-2毒株已显示出导致严重疾病和死亡的可能性,通过确保人群中的疫苗接种覆盖率,这一威胁已得到缓解。然而,某些人群中的疫苗接种覆盖率仍不尽人意。因此,了解并研究影响公众接受疫苗的因素,与确保疫苗供应一样,可被视为公共卫生的优先事项。

目的

本研究旨在构建并验证一个用以评估公众对新冠疫苗接种态度的量表。所提议的量表被命名为新冠疫苗接种态度量表(C-VAS)。

材料与方法

采用三阶段流程来开发C-VAS,其中包括(1)条目生成(演绎法和归纳法);(2)条目优化(预测试和试点测试、探索性因素分析(EFA));以及(3)量表验证(验证性因素分析,CFA)。本研究使用的样本量为840。为克服共同方法偏差问题,数据分两个阶段收集。样本n1(411)用于EFA,样本n2(429)用于进行CFA。评估共同方法偏差,以检查回答中的差异是否由测量工具而非受访者的实际倾向引起。量表的条目通过回顾有关疫苗接种的现有文献、从健康信念模型等相关既定理论以及与领域专家访谈获取。确定了量表的内容效度。

结果

EFA提取了五个因素,分别标记为“感知益处”、“感知障碍”(原文此处有误,应为“感知障碍”)、“感知严重性”、“健康动机”和“感知风险”。为进一步验证因素-条目结构,进行了CFA。

结论

通过应用CFA评估测量模型,以检验量表的可靠性、准确性和有效性。该量表的开发有助于理解影响疫苗可接受性的因素。这可用于提高疫苗接种率仍然较低的国家和社会的新冠疫苗接种覆盖率,特别是由于缺乏对疫苗的接受度导致接种率低的情况。该量表还有助于理解公众在未来类似疫情爆发时的行为以及对缓解性疫苗的接受情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/70dd/9064483/c732549089c0/JMDH-15-941-g0001.jpg

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