| Literature DB >> 36016237 |
Abstract
BACKGROUND: vaccine hesitancy is defined as a delay in the acceptance or refusal of vaccination, even though immunisation is a determinant in reducing the mortality and morbidity associated with Coronavirus Disease 2019 (COVID-19). AIM: to identify and analyse the predictors of COVID-19 vaccine acceptance and/or hesitancy.Entities:
Keywords: COVID-19 vaccines; PRISMA; multivariate regression models; national studies; predictors of vaccine hesitancy; questionnaire-based studies; systematic reviews; vaccine acceptance; vaccine hesitancy
Year: 2022 PMID: 36016237 PMCID: PMC9415631 DOI: 10.3390/vaccines10081349
Source DB: PubMed Journal: Vaccines (Basel) ISSN: 2076-393X
PICOS: inclusion and exclusion criteria.
| PICOS Criteria | Inclusion Criteria | Exclusion Criteria |
|---|---|---|
| P: participants | The general population (at least one country). | Studies specifically on specific subgroups (e.g., healthcare professionals or people with a certain disease, such as diabetes or asthma) were excluded. |
| I: intervention | Questionnaire-based studies, i.e., administration of a questionnaire/survey to collect participants’ opinion/perception about COVID-19 vaccine hesitancy/acceptance. | Studies about other topics and/or that were not questionnaire-based. |
| C: comparison | When applicable (e.g., studies carried out in more than one country). | |
| O: outcomes | To estimate the predictors of vaccine acceptance or vaccine hesitancy through a multivariate regression model. | Studies not estimating the predictors of vaccine acceptance or vaccine hesitancy through a multivariate regression model. |
| S: study design | Descriptive national studies, or descriptive studies enrolling at least 500 participants from the general population and carried out at a national level. | Studies enrolling less than 500 participants from the general population. |
Previous similar or related systematic reviews on predictors of vaccine hesitancy/acceptance.
| Previous Identified Similar/Related Reviews | Covered Timeframe and Inclusion/Exclusion Criteria; Keywords and Number of Selected Studies | Main Findings and Conclusions |
|---|---|---|
| (Wang et al., 2021) [ | Beginning of pandemic up to 4 November 2020 | The stronger predictors of COVID-19 vaccination willingness were gender, educational level, influenza vaccination history and trust in the government. |
| (Roy et al., 2022) [ | Beginning of pandemic up to July 2021 | The most common predictors of vaccine acceptance were as follows: safety, efficacy, side effects, effectiveness and conspiracy beliefs (Asian countries); side effects, trust in vaccine and social influence (Europe) and information sufficiency, political roles and vaccine mandates (United States). |
* is a bolean operator used in some browsers to automatically screen for related/derived words.
Dates of the first authorised or administered COVID-19 vaccine per each studied country.
| Country | Date of the First Authorised or Administered COVID-19 Vaccine | COVID-19 Vaccine |
|---|---|---|
| Australia [ | 25 January 2021 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Brazil [ | 17 January 2021 | CoronaVac, of the Butantan Institute, in partnership with Chinese pharmaceutical company Sinovac and AstraZeneca, of the Oswaldo Cruz Foundation (Fiocruz), in collaboration with the Astrazeneca/Oxford consortium |
| China [ | 30 December 2020 | Sinopharm China Biotechnology Co., Ltd. |
| European Union | 21 December 2020 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Hong Kong [ | January 2021 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Indonesia [ | 11 January 2021 | CoronaVac, from Sinovac Biotech China |
| Israel [ | 20 December 2020 | Pfizer-BioNTech COVID-19 Vaccine |
| Japan [ | 14 February 2021 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Jordan [ | 13 January 2021 | Pfizer-BioNTech and China’s Sinopharm coronavirus vaccines |
| Kingdom of Saudi Arabia [ | 17 December 2020 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| South Korea [ | 10 February 2021 | AstraZeneca COVID-19 vaccine |
| Lebanon [ | 24 March 2021 | AstraZeneca vaccine |
| Mexico [ | 24 December 2020 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Norway [ | 21 December 2020 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Pakistan [ | 8 May 2021 | Oxford-AstraZeneca COVID-19 vaccines |
| Qatar [ | 21 December 2020 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| South Africa [ | 16 March 2021 | Pfizer-BioNTech COVID-19 Vaccine (Comirnaty) |
| Trinidad and Tobago [ | 30 March 2021 | AstraZeneca/Oxford vaccine, manufactured by SK Bioscience of South Korea |
| UK [ | 2 December 2020 | Pfizer-BioNTech COVID-19 vaccine (Comirnaty) |
| United Arab Emirates [ | 9 December 2020 | Sinopharm, Beijing Institute of Biological Products’ inactivated vaccine |
| USA [ | 11 December 2020 | Pfizer-BioNTech COVID-19 vaccine (Comirnaty) |
Figure 1PRISMA 2020 flow diagram for new systematic reviews [55]: studies about the predictors of COVID-19 vaccine hesitancy/acceptance, which were specifically calculated through multivariate regression models.
Figure 2Mapping analysis of keywords from the 37 selected studies.
Figure 3Mapping analysis of the authors from the 37 selected studies.
Quality assessment of the 37 selected studies with the NHLBI tool [32].
| Criteria | Score | Maximum Score | % |
|---|---|---|---|
| Was the research question or objective in this paper clearly stated? | 37 | 37 | 100 |
| Was the study population clearly specified and defined? | 36 | 37 | 97.3 |
| Was the participation rate of eligible persons at least 50%? | 24 ** | 37 | 64.9 * |
| Were all the subjects selected or recruited from the same or similar populations (including the same time period)? | 18.5 | 18.5 | 100 |
| Were inclusion and exclusion criteria for being in the study prespecified and applied uniformly to all participants? | 18.5 | 18.5 | 100 |
| Was a sample size justification, power description or variance and effect estimate provided? | 25 | 37 | 67.6 * |
| Were the exposure measures (independent variables) clearly defined, valid, reliable and implemented consistently across all study participants? | 37 | 37 | 100 |
| Was the exposure(s) assessed more than once over time? (i.e., Was the questionnaire administered at least two times in different moments?/exposure or evaluation of independent variable) | 2 | 18.5 | 10.8 * |
| Was loss to follow-up after baseline 20% or less? (i.e., % of participants who did not reply to the second questionnaire) | 1 | 18.5 | 5.4 * |
| Were the outcome measures (dependent variables) clearly defined, valid, reliable and implemented consistently across all study participants? | 37 | 37 | 100 |
| Were key potential confounding variables measured and adjusted statistically for their impact on the relationship between exposure(s) and outcome(s)? | 37 | 37 | 100 |
| Was loss to follow-up after baseline 20% or less? | 37 | 37 | 100 |
* Poor scores (below 80%); ** the participation rate was not reported in 20 out of the 37 studies.
Global predictors of vaccine hesitancy.
| Predictors of Vaccine Hesitancy * | n ** | % *** |
|---|---|---|
| Females | 16 | 43.2 |
| Younger/young and middle-aged | 13 | 35.1 |
| Lower perceived risk of getting infected/lower perceived risk of infection/lower fear to experiencing COVID-19 infection/perceiving infection as a low risk | 12 | 32.4 |
| Lower level of institutional trust of government, Ministry of Health and physicians or health system/lower trust in healthcare system or vaccine manufacturers/not valuing doctor’s recommendations/not trusting in medical sectors to manage COVID-19/not trusting in medical and scientific experts (e.g., WHO or national advisors)/not believing that the public authorities are handling the pandemic adequately/not trusting information provided by authorities | 10 | 27.0 |
| Not being vaccinated against influenza/were less willing to have a flu vaccine/not willing to get flu vaccines | 9 | 24.3 |
| Non-White or other minorities/non-Latinx Black/Black and Hispanic/Black, Asian and minority ethnic/other minorities, such as Arabs or non-Black African population group /migrant | 8 | 21.6 |
| Lower levels of perceived severity of COVID-19 infection/perceiving the severity of COVID-19 as a lower threat/not believing that COVID-19 can be debilitating and dangerous to health/lower levels of worry about the COVID-19 virus/perceiving the effect of the disease to have a lower effect on one’s personal health | 8 | 21.6 |
| Stronger beliefs that the vaccination would cause side effects or be unsafe/the risk of vaccines/higher levels of potential vaccine harm/stronger beliefs that the vaccine is unsafe/vaccine side effects | 8 | 21.6 |
| Lower level of education/less educated/persons with lower levels of education | 7 | 18.9 |
| Lower income/decreased family income | 7 | 18.9 |
| Republicans/Conservative/different party other than Democratic Party/not trusting in President Biden/living in a Republican-“leaning” state | 7 | 18.9 |
| Lower levels of perceived effectiveness of a COVID-19 vaccine/value of efficacy/assigning importance to the vaccine´s efficacy/lower perceived efficacy of vaccine/not believing in the vaccine’s ability to control the pandemic | 6 | 16.2 |
| Males | 5 | 13.5 |
| Non-married/single/without partners | 5 | 13.5 |
| Not residing in state capital/not living in cities or city suburb/living in a rural residential area/smaller settlements | 5 | 13.5 |
| Older | 4 | 10.8 |
| People with children at home/having children | 4 | 10.8 |
| Accepting vaccine conspiracies/they did perceive COVID-19 to be a hoax/viewing COVID-19 risks as exaggerated or believing that COVID-19 does not exist | 4 | 10.8 |
| Other major ethnic group (e.g., Emiratis or UAE nationals)/Arab ethnicity | 3 | 8.1 |
| Higher education/tertiary education (if spending more time using social media)/postgraduate | 3 | 8.1 |
| Unemployed/being self-employed, unemployed or unable to work due to a long-term illness or disability | 3 | 8.1 |
| Lower level of worry regarding health risks/complacency in health/not declaring to be concerned about one’s own health and the health of next of kin | 3 | 8.1 |
| Not shielding/less likely to wear masks | 3 | 8.1 |
| Not reporting previous exposure to COVID-19 among close persons/without COVID-19 infection in family or friends/infected by COVID-19 personally or within their family | 3 | 8.1 |
| White as major ethnic group | 2 | 5.4 |
| Employed | 2 | 5.4 |
| No chronic disease/no underlying medical conditions | 2 | 5.4 |
| Lower self-reported health outcomes | 2 | 5.4 |
| Not trusting in any source of information on COVID-19 vaccines/not trusting in the reliability of media sources regarding COVID-19 | 2 | 5.4 |
| Not being a healthcare professional/not being a medical student | 2 | 5.4 |
| Insufficient perceived information to make an informed decision about COVID-19 vaccination/adequacy of information about the vaccine | 2 | 5.4 |
| Low frequency of attention to relevant COVID-19 information/lower awareness of COVID-19-related information | 2 | 5.4 |
| A higher endorsement of the notion that only people who are at risk of serious illness should be vaccinated for COVID-19/not believing that everyone should be vaccinated | 2 | 5.4 |
| Lower general vaccine knowledge/lower general vaccine knowledge index | 2 | 5.4 |
| People who do not have a positive view of the COVID-19 vaccine/lack of confidence in the COVID-19 vaccine | 2 | 5.4 |
* Similar/equal predictors variables were aggregated, but the original designations were maintained to ensure study precision; ** number of occurrences in the 37 studies; *** 100% (n = 37).
The most frequent predictors of vaccine hesitancy per country or region.
| n | % | |
|---|---|---|
| USA (n = 7 Studies, 100%) | ||
| Republicans/Conservative/different party other than Democratic Party/not trusting in President Biden/living in a Republican-“leaning” state | 6 | 85.7 |
| Females | 4 | 57.1 |
| Minorities | 4 | 57.1 |
| Younger | 3 | 42.9 |
| Lower income | 3 | 42.9 |
|
| ||
| Females | 2 | 50 |
| Perceiving low risk of infection | 2 | 50 |
| COVID-19 vaccines are unsafe | 2 | 50 |
| Lower efficacy of COVID-19 vaccines | 2 | 50 |
|
| ||
| Not being vaccinated against influenza | 2 | 66.7 |
| COVID-19 vaccines are unsafe | 2 | 66.7 |
| Insufficient perceived information to make an informed decision about COVID-19 vaccination or adequacy of information about the vaccine | 2 | 66.7 |
|
| ||
| Females | 2 | 66.7 |
|
| ||
| Females | 6 | 54.5 |
| Younger | 4 | 36.4 |
| Lower level of institutional trust of public authorities/government or health system | 4 | 36.4 |
| Not believing that COVID-19 can be debilitating and dangerous to health/lower perceived risk of getting infected/lower perceived severity of having COVID-19 | 4 | 36.4 |
|
| ||
| People with children at home | 2 | 66.7% |
| Lower level of institutional trust of public authorities/government or health system | 2 | 66.7% |
| Not living in cities or living in smaller settlements | 2 | 66.7% |
|
| ||
| Older | 2 | 66.7% |
| Persons with lower levels of education | 2 | 66.7 |
|
| ||
| Lower perceived risk of infection | 1 | 100% |
| Lower perceived efficacy of vaccine | 1 | 100% |
| Lower awareness of COVID-19-related information | 1 | 100% |
| Lower income | 1 | 100% |
| Minorites | 1 | 100% |
| Younger | 1 | 100% |
| Less educated | 1 | 100% |
| Without partner | 1 | 100% |
n: number of studies.
* Only some of the collected sociodemographic variables are reported here due to space limitations; ** studies that not exclusively evaluate predictors of vaccine acceptance and/or hesitancy.
| Author, Year, Geographic Region, Database; Journal (Impact Factor JCR 2021 and Quartile SJR 2021) | Study Aim | Sample Size (Number of Participants that Completed the Study, i.e., Valid Respondents) and Main Characteristics * | Methods; Date of the Administration of the Questionnaire | Findings | Discussion and Conclusion |
|---|---|---|---|---|---|
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| (Kerr et al., 2021) [ |
| 25,334 respondents | Online surveys | Reported willingness to receive a vaccine | Information provided by medical and scientific experts (credible sources) seems to be determinant of vaccine acceptance. |
| (Mascherini and Nivakoski, 2022) |
| 29,755 respondents | Cross-national survey covering all 27 EU | A total of 71.3% respondents were very likely or rather likely to get the COVID-19 vaccine. | Clear, precise and transparent messages about vaccines need to be delivered by policymakers |
| (Price et al., 2022) |
| 3474 respondents | Cross-sectional survey | A total of 65% respondents reported being likely or very likely to get the COVID-19 vaccine (USA 63%, UK 66.6%, Norway 69.5%, and Australia 71.1%). | Information provided by authorities should be used to increase the proportion of citizens willing to get the COVID-19 vaccine. Study findings should be used in future vaccination campaigns and public health measures. |
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| (Reiter et al., 2020) [ |
| 2006 adults | Online survey | 69% of respondents were willing to get a COVID-19 vaccine. | These findings can |
| (Khubchandani et al., 2021) [ |
| 1878 adults | A multi-item validated questionnaire. | Likelihood of getting a COVID-19 immunisation: very likely (52%), | Special attention to the groups identified in this study as vaccine-hesitant. It is recommended that evidence-based communication interventions, such as mass media strategies and/or policy measures, are defined. |
| (Ruiz and Bell, 2021) [ |
| 804 English-speaking adults. | Internet survey | 62.2% of respondents were extremely or somewhat likely to get COVID-19 vaccine. | The present study contributes to guide public health experts, regarding the development of the strategies for |
| (Latkin et al., 2021) [ |
| 1056 respondentsFemale (70.1%); more than 59 years (43.3%); White (69.%); some college and above (80.5%); employed (56.7%); USD 50,000 or more (57.1%); not at all worried about COVID-19 infecting family or self (7.2%); Conservative (28%). | A national panel survey (telephone and web) | 53.6% participants reported intending to be vaccinated. | Campaigns should address study findings, i.e., |
| (Nguyen et al., 2021) [ |
| 459,235 respondents | Census Bureau’s Household Pulse Survey | On average, 62% of respondents reported being willing to receive at least one COVID-19 vaccine. | Interventions |
| (Omaduvie et al., 2021) [ |
| 68348 respondents | Household Pulse Survey | 23.5% reported vaccine hesitancy. | Knowledge of state-specific information can be useful to define specific intervention programs. |
| (Hao et al., 2022) |
| Approximately | National survey | On average, around 72% of respondents declared to have gotten vaccinated for the coronavirus. | Study finding contribute to understand the profile of citizens who do not accept the vaccine, which can be helpful to design new programs/interventions. |
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| (Dong et al., 2020) [ |
| 1236 respondents | Survey: an online discrete choice experiment | Explanatory variables of vaccine hesitancy: lower efficacy (less than 70% or 90%); shorter duration of action (less than 12 or 18 months); more adverse events, number of shots (more than one injection); production place (non-imported vaccines); and price (higher price). | Identified preferences should be used to develop COVID-19 vaccination programs in China. |
| (Wang et al., 2020) [ |
| 2058 adults | Anonymous cross-sectional | 91.3% respondents reported that they would accept COVID-19 vaccination after the vaccine becomes available | Education |
| (Chen et al., 2021) [ |
| 3195 adults | A cross-sectional survey: an online questionnaire | 83.8% were willing to receive a COVID-19 vaccine | COVID-19 vaccine information (e.g., safety and efficacy issues) should be propagated to ensure vaccination acceptance |
| (Zhao et al, 2021) |
| 34,041 respondents | Online survey | 55.3% of respondents were willing to get vaccinated. | Tailored public health programs, measures or interventions should consider study findings, such as differences in the profile of vaccine hesitancy between different regions. |
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| (Williams et al., 2020) [ |
| 3436 people (time 1) | Two-wave online survey (prospective study) | 74% respondents reported being willing to receive a COVID-19 vaccine. | Mass media and social marketing interventions should address the concerns of subpopulations and diverse communities. |
| (Sherman et al., 2021) [ |
| 1500 adults | Cross-sectional survey. | 64% respondents declared themselves very likely to become vaccinated against COVID-19. | Findings should be used to design COVID-19 vaccination campaigns, which could explain the risk of COVID-19 to third parties and necessity for everyone to be vaccinated. |
| (Sherman et al., 2022) [ |
| 1500 adults | Online cross-sectional survey | 73.5% of participants reported being likely to be vaccinated against COVID-19 | Continued engagement |
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| (Seale et al., 2021) [ |
| 1420 Australian adults (18 years and older) | A national cross-sectional online survey. | 80% (n = 1143) agreed with the | These findings should support governmental political health measures to identify the appropriate strategies that will |
| (Alley et al., 2021) [ |
| 2343 Australian | Two surveys | Willingness to be vaccinated: April (87%) and August (85%). | Strategies to promote COVID-19 vaccination should target women, and people with a certificate or diploma, |
| (Attwell et al., 2021) [ |
| 1313 adults | Online survey | 65% were willing to vaccinate, with 27% being in the “maybe” category. | The dimension of the undecided group about receiving a COVID-19 vaccine (over a quarter (27%)) suggests that this group will be important to the effective nationwide rollout of the vaccine. Research to understand the motivation of undecides is urgently needed. |
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| (Albahri et al., 2021) [ |
| 2705 respondents | Online cross-sectionalMultivariable | 60.1% respondents were willing to get the COVID-19 vaccine. | Initiatives are recommended to fight vaccine misinformation. For instance, providing information on vaccine safety and efficacy (e.g., side effects or highlighting the advantages of getting herd immunity through vaccination over natural acquired immunity). |
| (Alremeithi et al., 2021) [ |
| 1882 people | Questionnaire | 89% respondents agreed that SARS-CoV-2 infection would be successfully controlled. | Intensification of awareness programs and good practices were recommended. |
| (Harapan et al., 2020) [ |
| 1359 respondents | A cross-sectional online survey | 93.3% of respondents would like to be vaccinated (95% effectiveness) and 67.0% of respondents would like to be vaccinated (50% effectiveness). | Acceptance of the COVID-19 vaccine was influenced by their effectiveness in the present study. It seems governments need to address the perceived risk in communities and more vaccination strategies/measures for |
| (Al-Mohaithef and Padhi, 2020) [ |
| 992 respondents | Questionnaires (social media platforms and email) | 64.7% showed interest in accepting the COVID-19 vaccine. | Addressing sociodemographic determinants as well as tailored health education interventions to promote COVID-19 vaccination, |
| (El-Elimat et al., 2021) [ |
| 3100 respondents | Online, cross-sectional, and self-administered questionnaire | 37.4% declared that they would accept COVID-19 vaccines | Study finding should be considered in informative vaccination campaigns, such as to offer transparent information on the safety and efficacy of vaccines (e.g., production technology). |
| (Green et al., 2021) [ |
| 957 adults | Cross-sectional survey | People who want to be vaccinated immediately: men (27.3% of the Jewish and 23.1% of the Arab respondents) and women (13.6% of Jewish and 12.0% of Arab respondents). | Besides ensuring an effective communication to the general population, vaccine promotion campaigns should be designed to effectively communicate to target groups. |
| (Khaled et al., 2021) [ |
| 1038 respondents | Phone survey | 42.7% of respondents declared that they were willing to be vaccinated. | Study findings should be used to define tailored public health programs, measure, or interventions. |
| (Qamar et al., 2021) [ |
| 936 respondents | Questionnaire | 70% agreed to be vaccinated if recommended. | These finding should be used to define information interventions. For instance, disseminating credible information through healthcare workers. Government officials, social media influencer channels or media outlets. |
| (Wong et al., 2021) [ |
| 1200 respondents (adults) | Random telephone survey | 42.2% of respondents indicated acceptance of COVID-19 vaccine. | Study findings are relevant formulation and implementation of vaccination strategies. |
| (Hanna et al., 2022) [ |
| 1209 respondents | Online questionnaire via social media platforms | 63.4% reported they would accept COVID-19 vaccination. | Education and awareness programs are needed to improve knowledge about COVID-19 infection and vaccination, such as among residents of rural areas. |
| (Hwang et al., 2022) [ |
| 13,021 adults | National survey | 60.2% of the participants were not vaccine-hesitant. | Identified predictors variables should be considered in future studies. |
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| (Prati et al., 2020) [ |
| 624 adults | Questionnaire: online platform. | 75.8% respondents intended to receive a vaccine. | Trust, conspiracy beliefs and worry should be considered when designing new vaccination programs. |
| (Bagić et al., 2022) [ |
| 758 respondents | A sociological surveyBinary logistic regression | 63.9% declared they would receive a COVID-19 vaccination. | Study finding should be considered when designing informative vaccination campaigns. |
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| (Carnalla et al., 2021) [ |
| 10,796 respondents | Data from | 62.3% declared they would accept COVID-19 vaccination | National campaigns |
| (Moore et al., 2021) [ |
| 173,178 respondents | Anonymous online survey | 10.5% of respondents were vaccine-hesitant. | The identified explanatory variables can facilitate the elaboration of communication strategies to increase vaccine adherence, although the global vaccine hesitancy was low. |
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| (De Freitas et al., 2021) [ |
| 615 respondents | Online survey | 62.8 % of participants declared that they would get the COVID-19 vaccine. | Study findings may be used to design and prioritise future intervention areas. |
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| (Kollamparambil et al., 2021) [ |
| 4440 respondents | Nationally representative National Income Dynamics Study—Coronavirus Rapid | 55% of | Clearer information on the risk messaging on COVID-19 vs. efficacy and safety of the vaccines. Information campaigns should target the identified groups. |
* Only some of the collected sociodemographic variables are reported here due to space limitations; ** studies that not exclusively evaluate predictors of vaccine acceptance and/or hesitancy.