| Literature DB >> 35335059 |
Muhammad Mainuddin Patwary1,2, Md Ashraful Alam3,4, Mondira Bardhan1,2, Asma Safia Disha1,2, Md Zahidul Haque1,2, Sharif Mutasim Billah1,2, Md Pervez Kabir1,2, Matthew H E M Browning5, Md Mizanur Rahman6, Ali Davod Parsa7, Russell Kabir7.
Abstract
Widespread vaccination against COVID-19 is critical for controlling the pandemic. Despite the development of safe and efficacious vaccinations, low-and lower-middle income countries (LMICs) continue to encounter barriers to care owing to inequitable access and vaccine apprehension. This study aimed to summarize the available data on COVID-19 vaccine acceptance rates and factors associated with acceptance in LMICs. A comprehensive search was performed in PubMed, Scopus, and Web of Science from inception through August 2021. Quality assessments of the included studies were carried out using the eight-item Joanna Briggs Institute Critical Appraisal tool for cross-sectional studies. We performed a meta-analysis to estimate pooled acceptance rates with 95% confidence intervals (CI). A total of 36 studies met the inclusion criteria and were included in the review. A total of 83,867 respondents from 33 countries were studied. Most of the studies were conducted in India (n = 9), Egypt (n = 6), Bangladesh (n = 4), or Nigeria (n = 4). The pooled-effect size of the COVID-19 vaccine acceptance rate was 58.5% (95% CI: 46.9, 69.7, I2 = 100%, 33 studies) and the pooled vaccine hesitancy rate was 38.2% (95% CI: 27.2-49.7, I2 = 100%, 32 studies). In country-specific sub-group analyses, India showed the highest rates of vaccine acceptancy (76.7%, 95% CI: 65.8-84.9%, I2= 98%), while Egypt showed the lowest rates of vaccine acceptancy (42.6%, 95% CI: 16.6-73.5%, I2= 98%). Being male and perceiving risk of COVID-19 infection were predictors for willingness to accept the vaccine. Increasing vaccine acceptance rates in the global south should be prioritized to advance global vaccination coverage.Entities:
Keywords: COVID-19; SARS-CoV-2; low- and lower-middle income countries; meta-analysis; vaccine; vaccine acceptance; vaccine hesitancy
Year: 2022 PMID: 35335059 PMCID: PMC8950670 DOI: 10.3390/vaccines10030427
Source DB: PubMed Journal: Vaccines (Basel) ISSN: 2076-393X
Characteristics of included studies.
| SL | Author | Country | Study Design | Survey Period | Target | Sample | Vaccine | Factors Associated with Vaccine Acceptance |
|---|---|---|---|---|---|---|---|---|
| 1 | Adebisi et al. [ | Nigeria | Cross-sectional | August 2020 | General population | 517 | 74.47 | Age, geopolitical location, education level. |
| 2 | Ahmed et al. [ | Somalia | Cross-sectional | 26 December 2020–28 January 2021 | General population | 4543 | 76.78 | Female, living in Galmudug, Hirshabelle and Southwest, student, worker in the healthcare sector, adherence score, presence of flu symptoms. |
| 3 | Ahmed et al. [ | Pakistan | Cross-sectional | April 2021 | General population | 655 | 61.98 | Older age, sometimes/not following Anti-COVID-19 SOPs, high chance of being infected, vaccination having the potential of preventing COVID-19 spread, observing the effects of the vaccine on others, knowing more about the vaccine, belief that a Muslim’s trust in God was sufficient to protect one from infection, the vaccine was prepared in a hurry without sufficient testing and could harm those with low immunity, seeing everyone else getting vaccinated, pressure from friends and family. |
| 4 | Akiful Haque et al. [ | Bangladesh | Cross-sectional | 17 January–2 February 2021 | General population | 7357 | 65.05 | Graduates or above, age ≥ 50 years, students, monthly income ≥ 41,000 BDT, rural resident, respondents from Khulna division, family members diagnosed with COVID-19, presence of chronic disease, vaccinated in the last few years. |
| 5 | Alam et al. [ | Bangladesh | Cross-sectional | 3–25 January 2021 | Healthcare professionals | 831 | 43.80 | Female, 18–34 age group, work in public/government institutes, nurses, not having received the flu vaccine in the previous year. |
| 6 | Arshad et al. [ | Pakistan | Cross-sectional | January 2021 | General population | 2158 | 48.19 | Gender, age, marital status, education level, occupation, profession, monthly income, residential area, myths, conspiracy beliefs. |
| 7 | Bongomin et al. [ | Uganda | Cross-sectional | 29 March–14 April 2021 | General population | 317 | 68.14 | Female, patients who agreed or strongly agreed that they had some immunity against COVID-19, patients who had a history of vaccine hesitancy for their children. |
| 8 | Bono et al. [ | Bangladesh | Cross-sectional | 10 December 2020–9 February 2021 | General population | 230 | 89.57 | COVID-19 knowledge, worry/fear regarding COVID-19, higher income, younger age, testing negative for COVID-19. |
| DR Congo | 219 | 59.36 | ||||||
| Benin | 159 | 48.43 | ||||||
| Uganda | 107 | 88.79 | ||||||
| Malawi | 81 | 61.73 | ||||||
| Mali | 55 | 74.55 | ||||||
| 9 | Bono et al. [ | The Democratic Republic of Congo | Cross-sectional | 24 August–8 September 2020 | General population | 4131 | 55.92 | Middle or high-income, being tested for COVID-19, COVID-19 community vaccine acceptance, acknowledging the existence of COVID-19, healthcare worker. |
| 10 | Carcelen et al. [ | Zambia | Cross-sectional | 23–29 November 2020 | Caregivers | 2400 | 65.71 | Belief in the COVID-19 vaccine safety and efficacy. |
| 11 | Carpio et al. [ | Kenya | Cross-sectional | 7–15 April 2020 | General population | 963 | 95.64 | Vaccine duration of protection and efficacy, perceived probability of being hospitalized, age, gender, education, location, region of residence, household income. |
| 12 | Dinga et al. [ | Cameroon | Cross-sectional | May–August 2020 | General population | 2512 | 15.45 | NR * |
| 13 | Echoru et al. [ | Western Uganda | Cross-sectional | July–September 2020 | General population | 1067 | 53.61 | Younger, male, tertiary level of students, Muslims, married, on-salary earners, rural dwellers. |
| 14 | Elgendy and Abdelrahim [ | Egypt | Cross-sectional | April–May 2021 | General population | 871 | 88.06 | NR |
| 15 | El-Sokkary et al. [ | Egypt | Cross-sectional | 25–31 January 2021 | Healthcare professionals | 308 | 25.97 | Income, years of experience. |
| 16 | Fares et al. [ | Egypt | Observational | December 2020–January 2021 | Healthcare professionals | 385 | 21.04 | Male, interacting directly with COVID-19 patients, taking non-compulsory vaccines, recommending COVID-19 vaccination to others, receiving advice from hospitals to get the vaccine, trust in vaccine producers, pharmaceutical companies, and authorities. |
| 17 | Hammam et al. [ | Egypt | Cross-sectional | April 2021 | Healthcare professionals | 187 | 30.48 | NR |
| 18 | Harapan et al. [ | Indonesia | Cross-sectional | 25 March–6 April 2020 | General population | 1359 | 93.30 | Female, middle-aged, retired, married, healthcare worker, moderate perceived risk of COVID-19 infection. |
| 19 | Huynh et al. [ | Vietnam | Cross-sectional | December 2020–January 2021 | General population | 425 | 84.00 | Knowledge of COVID-19, cues to action toward the vaccine. |
| 20 | Jain et al. [ | India | Cross-sectional | 2 February–7 March 2021 | Healthcare students | 1068 | 89.42 | NR |
| 21 | Kanyike et al. [ | Uganda | Cross-sectional | 15–21 March 2021 | Healthcare students | 600 | 37.33 | Male, being single, very high or moderate perceived risk of contracting COVID-19, receiving any vaccine in the past five years, COVID-19 vaccine hesitancy, |
| 22 | Kaur et al. [ | India | Cross-sectional | January 2021 | Healthcare professionals | 520 | 63.08 | Dental professional, involved in COVID-19 duties, preference for natural immunity over the vaccine, belief in COVID-19 vaccine safety, interest in vaccine information, belief that vaccine should be compulsory. |
| 23 | Kitonsa et al. [ | Uganda | Cross-sectional | September–November 2020 | Healthcare professionals | 657 | 70.17 | NR |
| 24 | Kumari et al. [ | India | Cross-sectional | 13–25 March 2021 | General population | 1294 | 83.54 | Older, belief that the vaccine is harmless, belief that vaccine benefits outweigh the risks, belief that getting vaccinated is a societal responsibility, belief that sufficient data about the vaccine is available, belief that the vaccine will eradicate COVID-19, role model getting vaccinated, many other people getting vaccinated, higher socioeconomic status, developed place of residence. |
| 25 | Lamptey et al. [ | Ghana | Cross-sectional | 14 October–12 December 2020 | General population | 1000 | 54.10 | Being married, government worker, high-risk perceptions. |
| 26 | Lazarus et al. [ | India | Cross-sectional | 16–20 June 2020 | General population | 742 | 74.53 | Male, older, higher education. |
| Nigeria | 670 | 65.22 | ||||||
| South Korea | 752 | 79.79 | ||||||
| 27 | Lazarus et al. [ | South Korea | Cross-sectional | 16–20 June 2020 | General population | 619 to 773 | 79.79 | NR |
| India | 74.53 | |||||||
| Nigeria | 65.22 | |||||||
| 28 | Mohamad et al. [ | Syria | Cross-sectional | 23 December 2020–5 January 2021 | General population | 3402 | 35.82 | Female, younger, urban resident, not married, no kids, not a healthcare worker, not a smoker, no fear of COVID-19, perceived severity of COVID-19, belief in the natural origin of the virus, knowledge on vaccine hesitancy. |
| 29 | Panda et al. [ | India | Cross-sectional | February 2021 | General population | 359 | 8.08 | NR |
| 30 | Parvej et al. [ | Bangladesh | Cross-sectional | 17–26 April 2021 | General population | 1529 | 67.04 | Muslim, highly educated, living in urban areas, believing vaccines protect against infectious diseases and vaccines, having no health-related risks. |
| 31 | Paudel et al. [ | Nepal | Cross-sectional | 27 January–3 February 2021 | Healthcare professionals | 266 | 38.35 | NR |
| 32 | Qunaibi et al. [ | Algeria | Cross-sectional | 14–29 January 2021 | General population | 2706 | 3.62 | Receiving the influenza vaccine regularly, health care worker, resident in country with higher rates of COVID-19 infections. |
| Egypt | 5339 | 8.04 | ||||||
| Mauritania | 99 | 8.08 | ||||||
| Morocco | 3775 | 7.89 | ||||||
| Sudan | 313 | 15.34 | ||||||
| Syria | 1232 | 10.71 | ||||||
| Tunisia | 665 | 6.47 | ||||||
| Yemen | 226 | 9.29 | ||||||
| 33 | Ramesh Masthi and Sowmyashree [ | India | Cross-sectional | January 2021 | General population | 846 | 64.42 | NR |
| 34 | Saied et al. [ | Egypt | Cross-sectional | 8–15 January 2021 | Healthcare students | 2133 | 34.79 | Pharmacy student, higher academic year or graduate, average to very good self-perception of health status, good self-rated COVID-19 knowledge level, presence of confirmed COVID-19 infection in a close social network. |
| 35 | Skjefte et al. [ | India | Cross-sectional | 28 October–18 November 2020 | Pregnant women, mothers of young children | 1639 | Pregnant women (52) | NR |
| Philippines | 1034 | NR | ||||||
| 36 | Solis Arce et al. [ | Burkina Faso | Cross-sectional | 15 October–4 December 2020 | General population | 977 | 66.53 | Protection for self, family, and community, recommendation from health workers and government. |
| India | 17 June 2020–18 January 2021 | General population | 1680 | 84.29 | ||||
| Mozambique | 30 October–30 November 2020 | General population | 862 | 89.10 | ||||
| Nepal | 1–11 December 2020 | General population | 1389 | 96.62 | ||||
| Nigeria | 18 November–18 December 2020 | General population | 1868 | 76.18 | ||||
| Pakistan 1 | 24 July–9 September 2020 | General population | 1633 | 76.12 | ||||
| Pakistan 2 | 2 September–13 October 2020 | General population | 1492 | 66.49 | ||||
| Rwanda | 22 October–15 November 2020 | General population | 1355 | 84.87 | ||||
| Sierra Leone 1 | 2–19 October 2020 | General population | 1070 | 78.04 | ||||
| Sierra Leone 2 | 7 October 2020–20 January 2021 | General population | 2110 | 87.91 | ||||
| Uganda 1 | 21 September–12 December 2020 | General population | 3362 | 85.81 | ||||
| Uganda 2 | 23 November–12 December 2020 | General population | 1366 | 76.50 |
* NR, Not Reported.
Figure 1PRISMA flow diagram of the study selection process.
Figure 2Forest plot of vaccine acceptance rates across LMICs.
Figure 3Forest plot of vaccine hesitancy rates across LMICs.
Figure 4Forest plot of country-specific vaccine acceptance rates within LMICs.
Figure 5Forest plot of country-specific vaccine hesitancy rates within LMICs.
Figure 6Meta-analysis of COVID-19 vaccination acceptance factors across LMICs.