| Literature DB >> 35746581 |
Yam B Limbu1, Rajesh K Gautam2, Long Pham3.
Abstract
This study systematically analyzes the research that used the Health Belief Model (HBM) as a theoretical basis to examine the influence of HBM constructs on COVID-19 vaccine hesitancy. Following PRISMA guidelines, PubMed, Web of Science, Google Scholar, and Scopus were searched for quantitative studies. Sixteen studies with 30,242 participants met inclusion criteria. The prevalence of COVID-19 vaccine hesitancy was 33.23% (95% CI 24.71-41.39%). Perceived barriers and perceived benefits were the most common HBM constructs that were significantly associated with vaccine hesitancy. While perceived benefits was inversely associated, a positive association was found between perceived barriers and vaccine hesitancy. Other HBM constructs that were frequently examined and inversely associated were perceived susceptibility, cues to action, perceived severity, and self-efficacy. The most common HBM modifying factor that was directly associated with COVID-19 vaccine hesitancy was gender, followed by education, age, geographical locations, occupation, income, employment, marital status, race, and ethnicity; however, a few studies report inconsistent results. Other modifying variables that influenced vaccine hesitancy were knowledge of COVID-19, prior diagnosis of COVID-19, history of flu vaccination, religion, nationality, and political affiliation. The results show that HBM is useful in predicting COVID-19 vaccine hesitancy.Entities:
Keywords: COVID-19; cues to action; health belief model; perceived barriers; perceived benefits; perceived severity; perceived susceptibility; self-efficacy; systematic review; vaccine hesitancy
Year: 2022 PMID: 35746581 PMCID: PMC9227551 DOI: 10.3390/vaccines10060973
Source DB: PubMed Journal: Vaccines (Basel) ISSN: 2076-393X
Key terms or Boolean operators used for search.
| Search | Search Terms (Boolean Operators) |
|---|---|
| 1 | “health belief model” AND “vaccination hesitancy” AND “COVID-19” |
| 2 | “health belief model” AND “vaccination hesitancy” AND “coronavirus” |
| 3 | “health belief model” AND “vaccination hesitancy” AND “SARS-CoV-2” |
| 4 | “health belief model” AND “vaccine hesitancy” OR “vaccine hesitant”AND “COVID-19” “coronavirus” “SARS-CoV-2” |
| 5 | “health belief model” AND “booster” AND “COVID-19” “coronavirus” “SARS-CoV-2” |
Figure 1PRISMA flow diagram showing search strategy and study selection process.
Key characteristics of studies included in this systematic review.
| Authors | Year of Publication | Journal | Country | Vaccine Hesitancy % | Sample | N |
|---|---|---|---|---|---|---|
| Guillon and Kergall [ | 2021 | Public Health | France | 60.6 | adult general population | 1146 |
| Badr et al. [ | 2021 | Vaccines | USA | 43.5 | adult general population | 1208 |
| Chen et al. [ | 2021 | Journal of Medical Internet Research | China | 44.3 | adult general population | 2531 |
| Du et al. [ | 2021 | Frontiers in Medicine | China | 8.44 | reproductive women | 3011 |
| Griva et al. [ | 2021 | Vaccines | Singapore | 9.9 | adult general population | 1623 |
| Hosek et al. [ | 2022 | Vaccines | USA | 19.4 | students | 1030 |
| Hossain et al. [ | 2021a | PLoS ONE | Bangladesh | 46.2 | adult general population | 1497 |
| Hossain et al. [ | 2021b | Frontiers in Public Health | Bangladesh | 41.1 | adult general population | 1497 |
| Huynh et al. [ | 2022 | Postgraduate Medicine | Vietnam | 26.2 | parents | 1015 |
| Jain et al. [ | 2021 | Epidemiology and Infection | India | 10.6 | students | 1068 |
| Le et al. [ | 2022 | BMC Public Health | Vietnam | 40.4 | students | 911 |
| Lee and You [ | 2022 | Journal of Medical Internet Research | South Korea | 53.3 | adult general population | 1016 |
| Rehati et al. [ | 2022 | Vaccines | China | 31.6 | students | 9153 |
| Toth-Manikowski et al. [ | 2022 | American Journal of Infection Control | USA | 15 | health care workers | 1974 |
| Walsh et al. [ | 2022 | Acta Psychologica | Ireland, UK | 24.75 | adult general population | 1079 |
| Wang et al. [ | 2022 | Vaccines | China | 56.4 | patients | 483 |
Components of Health Belief Model Influencing COVID-19 Vaccine Hesitancy.
| Authors and Year | Perceived Susceptibility | Perceived Severity | Perceived Benefits | Perceived Barriers | Cues to Action | Self Efficacy | Modifying Variables |
|---|---|---|---|---|---|---|---|
| Guillon and Kergall [ | × (−) | × (+) | × (−) | Female (+) | |||
| Badr et al. [ | × (−) | × (−) | Female (+) | ||||
| Chen et al. [ | × (+) | × (−) | × (+) | × (−) | × (−) | Female (+) | |
| Du et al. [ | × (−) | × (−) | × (+) | Female (+) | |||
| Griva et al. [ | × (−) | × (+) | Female (+) | ||||
| Hosek et al. [ | × (−) | × (−) | Medical discipline | ||||
| Hossain et al. [ | × (−) | × (+) | Geographic region | ||||
| Hossain et al. [ | × (−) | × (−) | × (−) | × (+) | × (−) | ||
| Huynh et al. [ | × (−) | × (−) | × (−) | × (+) | × (−) | Knowledge of COVID-19 | |
| Jain et al. [ | × (−) | × (−) | × (+) | Lack of awareness regarding their eligibility for COVID-19 vaccination (+) | |||
| Le et al. [ | × (−) | × (+) | × (−) | History of flu vaccination (−), | |||
| Lee and You [ | × (−) | × (−) | × (+) | Female (+) | |||
| Rehati et al. [ | × (−) | × (−) | Female (+) | ||||
| Toth-Manikowski et al. [ | × (−) | × (+) | × (−) | Age: Younger (+) | |||
| Walsh et al. [ | × (−), UK sample | × (−), UK sample | × (−), UK sample | Women (+) | |||
| Wang et al. [ | × (−) | × (+) | × (−) | Education (High school) |