Hostname: page-component-7bb8b95d7b-dtkg6 Total loading time: 0 Render date: 2024-09-28T00:37:34.569Z Has data issue: false hasContentIssue false

In or Out? Identifying the Factors Playing a Role in Covid-19 Decision Making in Turkiye

Published online by Cambridge University Press:  11 January 2023

Hasan Giray Ankara
Affiliation:
Department of Health Management, The University of Health Sciences, Istanbul, Turkey
Havvana Degerli*
Affiliation:
Department of Health Management, The University of Health Sciences, Istanbul, Turkey
Hakan Degerli
Affiliation:
Department of Medical Services and Techniques, Vocational School of Health Services, Seyh Edebali University, Bilecik, Turkey
*
Corresponding author: Havvana Degerli, Email: hhavvanadegerli@gmail.com.
Rights & Permissions [Opens in a new window]

Abstract

Objective:

The study aimed at investigating the social, demographic, and economic factors affecting Covid-19 vaccine decisions before the vaccination started in Turkey. The study also aimed to understand the attitudes towards Covid-19 vaccines.

Methods:

The study was conducted by exploiting the data of 693 individuals living in Turkey. The data was collected via a virtually applied questionnaire according to snowball sampling in late 2020 when the vaccination program had not started in Turkey yet. Multinomial logistic regression design was used to identify the factors affecting Covid-19 vaccine decisions.

Results:

It was observed that Covid-19 vaccine acceptance was notably low before the vaccination started in Turkey. Further, almost 50% of the participants were indecisive about getting vaccinated. It was identified that age, gender, educational status, and residential status, as well as occupational status, the number of dependents, smoking, and the vaccination of governmental authorities, have associations with Covid-19 vaccination decisions.

Conclusions:

Covid-19 vaccine acceptance is generally low, although it is relatively high among vulnerable groups (i.e., the elderly and smokers), and among those who are unable to isolate themselves. In addition, the vaccination of governmental authorities is remarkably effective on Covid-19 vaccine acceptance in Turkey.

Type
Original Research
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of Society for Disaster Medicine and Public Health, Inc.

Introduction

The Covid-19 disease has spread to the world infecting millions and causing death for hundreds of thousands. Reference Dong, Du and Gardner1 The total number of cases has exceeded 352 million globally while the total worldwide number of deaths was almost 6 million at the time of this study. 2 As for Turkey, the number of cases has reached nearly 11 million and the death toll has risen to 86.125 within the same time frame. 3

Vaccination started in Turkey by January 13, 2021. Since then, primarily healthcare workers and the individuals over the age of 65 were allowed to get vaccinated. The age restrictions were gradually lowered over time, and the individuals were allowed to get vaccinated without cost if they wanted to. Reference Sallam, Al-Sanafi and Sallam4

It has been widely accepted that an effective vaccine is crucial to control the COVID-19 spread. Reference Sharpe, Gilbride and Allen5,Reference Abo and Smith6 Various vaccine development experiments have been conducted over the world to prevent the spread and to eliminate negative outcomes. Reference Bedford, Enria and Giesecke7Reference Lurie, Saville, Hatchett and Halton9 The developed vaccines have encountered different attitudes in different societies so far. Reference Alamer, Hakami and Hamdi10Reference Danabal, Magesh, Saravanan and Gopichandran12 It is important to understand the attitudes towards vaccines, the concerns about them, and the motivations behind vaccination decisions to interpret the public reaction of society. Reference Agrawal, Kolhapure, Di Pasquale, Rai and Mathur13,Reference Bish, Yardley, Nicoll and Michie14 Therefore, the factors affecting the Covid-19 vaccine decisions were investigated just before vaccinations started in Turkey. By doing this, the study aimed to understand the attitudes towards Covid-19 vaccines in general in Turkish society.

Although there is a great deal in literature that Covid-19 vaccines are widely (over 60%) accepted, Reference Malik, McFadden, Elharake and Omer15Reference Wang, Jing and Lai27 different factors affecting vaccination decisions are reported in different societies. COVID-19 vaccine acceptance varied per country/ region with many Asian countries having acceptance rates over 80%, while lower rates were reported in the Middle East, North Africa, and Europe, as well as Central Asia, and Western/ Central Africa. 28 Leng et al. Reference Leng, Maitland, Wang, Nicholas, Liu and Wang17 stated that factors such as vaccine efficacy, side effects, accessibility, and number of doses, as well as duration of protection, affected the vaccine decision. Kwok et al. Reference Kwok, Li, Wei, Tang, Wong and Lee21 found that effectiveness, side effects, and duration of the protection have impacts on the Covid-19 vaccination decision. Al-Mohaithef and Padhi, Reference Al-Mohaithef and Padhi23 also revealed that several socio-demographic determinants like education, age, and profession are effective determinants of the Covid-19 vaccine decision. In addition, Harapan et al. Reference Harapan, Wagner and Yufika22 inferred that the acceptance of a Covid-19 vaccine is associated with some occupations and vaccine efficacy. In another study, Reference Alqudeimat, Alenezi and AlHajri24 they found that factors such as demographic characteristics (age, gender, occupation) and health status were related to the vaccine acceptance level. In the study conducted by Sherman et al, Reference Sherman, Smith and Sim19 they suggested that personal and clinical characteristics, beliefs and attitudes about vaccination, and knowledge competence, as well as perception of Covid-19 risk are found to be associated with the vaccine decision. Goodman et al. 28 also revealed that the new emergence and rapid development of vaccines, as well as inconsistent messages from scientists and government leaders about the epidemic, are related to the vaccine decision. Furthermore, Karlsson et al. Reference Karlsson, Soveri and Lewandowsky25 elicited that the recommendation by the authorities was effective on the vaccination decision in their studies. Johnson et al. Reference Johnson, Mello, Walker, Hood, Jensen and Poole30 on the other hand, found that the increased knowledge of individuals about vaccine-preventable diseases was effective on the vaccine decision. Finally, Kreps et al. Reference Kreps, Prasad and Brownstein31 stated that vaccine-related characteristics, political factors/ partisanship, and health care attitudes/ practices, as well as demographic characteristics such as age, gender, and race/ ethnic origin are related to the vaccine decision.

Since vaccination is an important public health strategy to tackle communicable diseases, Reference Michel, Gusmano, Blank and Philp32 addressing the factors affecting Covid-19 vaccine decisions may contribute to tackling strategies for future epidemics (or pandemics) by enlightening the adoption of vaccination programs. Therefore, this study aims to reveal social, demographic, and economic factors that affected Covid-19 vaccine decisions just before the vaccination started in Turkish society.

Methods

The factors affecting the Covid-19 vaccine decisions in Turkey were examined. A virtual survey was conducted using a snowball sampling design in early December 2020, when the vaccination program had not yet started. The virtual survey was advantageous in data collection as it provided an opportunity to avoid person-to-person contact. A person who filled out the questionnaire was asked to send it to someone to complete the questionnaire. We calculated the sample size with a 95% confidence level, a standard deviation of 0.5, and a confidence interval (margin of error) of ± 5% according to the equation demonstrated below (See Eq. 1).

(1) $${\rm{s}} = {{\rm{z}}^2} \times p \times {{\left( {1 - p} \right)} \over {{m^2}}}$$

where s is sample size for infinite population, z is z score that is determined based on the confidence level, p is population proportion and m is margin of error. Accordingly, the data of 742 individuals were collected but 49 were excluded due to inappropriateness. Hence the research was carried out using the data of 693 volunteers (living in Turkey and aged 18 and over).

The questionnaire inquired about the social, economic, and demographic characteristics of the participants as well as their statements regarding vaccination decisions. Accordingly, age, gender, and marital status, as well as educational status, income, occupational status, and residential status were included in the model. Other factors inquired about were the number of dependents, vulnerability status like smoking/ having a chronic disease, living with someone 65 years of age or above, and the status of vaccination acceptance if governmental authorities get vaccinated, were also included in the model.

Age, income, and the number of dependents were measured by continuous variables. 2 dummies were created for each to measure gender and marital status. Educational status was measured by 3 categories in total: (1) individuals whose educational level is high school or below, (2) individuals who hold a bachelor’s degree, and (3) individuals who hold a master’s degree or above. Occupational status was also measured by 4 categories depicting whether the individual was retired, unemployed, or working in the public or private sector. Residential status was measured by 2 categories indicating whether the individual was living in a city center or in a rural area. A dummy was generated for each vulnerability indicator, i.e., smoking, having a chronic disease, and living with someone aged 65 or older. Finally, a dummy variable was created to assess an individual’s approval of the Covid-19 vaccine in the case that government officials receive the vaccination. Summary statistics of the variables used in the model are shown in Table 1.

Table 1. Summary statistics

Covid-19 vaccine decision was measured by a categorical variable where it’s assigned 1 if the respondent accepts to get vaccinated, 0 if he/ she refuses to get vaccinated, and 2 if he/ she is indecisive about getting vaccinated. Since there is no hierarchical order among these alternatives, multinomial logistic regression was performed to identify factors affecting the Covid-19 vaccine decision. Accordingly, the multinomial logit model used can be illustrated as follows:

(2) $${p_{ij}} = {{{{\rm{e}}^{{\alpha _j} + {\beta _j}{x_i}}}} \over {\mathop \sum \nolimits_{j = 1}^3 {e^{{\alpha _j} + {\beta _j}{x_i}}}}}$$

where ${p_{ij}}$ refers to the probability of decision $j$ ( $j$ = 0 - being indecisive, 1 - acceptance, and 2 - refusal in the present case) of the respondent $i$ . ${x_i}\;$ is case-specific regressors of the variables shown in Table 1. $\beta $ is a vector of coefficients. This model ensures that 0 < ${p_{ij}}$ < 1 and. To ensure model identification, ${\beta _j}$ is set to 0 for 1 of the categories, and coefficients were then interpreted in relation to that category. In our study, the base category is the acceptance of Covid-19 vaccination. The following estimates of the probability of accepting, rejecting, and being undecided were obtained using the following equations, respectively:

(3) $${P_{i1}} = {1 \over {1 + {e^{{a_2} + {\beta _2}{x_i}}} + {e^{{a_3} + {\beta _3}{x_i}}}}}$$
(4) $${P_{i2}} = {{{e^{{a_2} + {\beta _2}{x_i}}}} \over {1 + {e^{{a_2} + {\beta _2}{x_i}}} + {e^{{a_3} + {\beta _3}{x_i}}}}}$$
(5) $${P_{i3}} = {{{e^{{a_3} + {\beta _3}{x_i}}}} \over {1 + {e^{{a_2} + {\beta _2}{x_i}}} + {e^{{a_3} + {\beta _3}{x_i}}}}}$$

The probability expressions are given in Equations (3), (4), and (5) are nonlinear. The estimated coefficients of the regressors do not represent their direct effects on the outcome variable due to the nonlinear feature of the multinomial logit model. Reference Kreps, Prasad and Brownstein31 These expressions above can be translated to linear forms illustrated as follows:

(6) $${\rm{ln}}\left( {{{{p_{i2}}} \over {{p_{i1}}}}} \right) = {\alpha _2} + {\beta _2}{X_i}$$
(7) $${\rm ln}{\left( {{{{p_{i3}}} \over {{p_{i1}}}}} \right) = {\alpha _3} + {\beta _3}{X_i}}$$

Where:

(8) $${p_{i1}} = 1 - {p_{i2}} - {p_{i3}}$$

where Eq. (6) provides the log of the odds in favor of refusing Covid-19 vaccination over accepting it and Eq. (7) provides the log of the odds in favor of being indecisive about getting Covid-19 vaccination over accepting it. The odds are also known as relative risk ratios (RRR). Hence, RRR of choosing alternative $j$ (where j = (no, undecided)) rather than alternative 1 (which is accepting Covid-19 vaccination for this study) is given by:

(9) $${{\Pr \left( {{y_i} = j} \right)} \over {\Pr \left( {{y_i} = 1} \right)}} = {\rm{exp}}\left( {x_i^{\rm{'}},{\beta _j}} \right)$$

where ${e^{x\beta }}$ gives the proportionate change in the relative risk of choosing alternative $j$ over alternative 1 (i.e., base alternative) when ${x_i}$ changes by one unit. Therefore, the RRR of a regressor implies increased (RRR > 1) or decreased probability (RRR < 1) of refusing or being indecisive about getting vaccinated relative to accepting to get vaccinated. By doing this, the coefficients obtained can be interpreted as those estimated by binary logit models.

Results

This study examined the factors affecting the COVID-19 vaccine decision before the vaccination started in Turkey. The research was carried out with 693 volunteers living in Turkey. Accordingly, the mean value of the age of the respondents was 33, 58% of the respondents were female, and 55% of the participants were married. Almost 50% of the respondents have a bachelor’s degree and 40% are unemployed. The mean monthly income of participants is 7850 TL. 15% of the respondents stated that they live with an elderly person, 20% have a smoking habit, and approximately 10% have a chronic disease. Most of the participants (almost 65%) live in the city center and about 52% of the respondents stated that if governmental authorities get vaccinated, they would accept the vaccination. Average dependent number of the respondent is 1. 26% of the participants accepted to be vaccinated, 27% refused, and 48% were indecisive about getting vaccinated.

Table 1 shows the summary statistics. Accordingly, the first column illustrates the variables used in the models. The second column shows the number of observations for each variable while the mean values of the variables can be seen in the third column. The fourth and fifth columns show the minimum and maximum values of that the variable takes. Table 2 presents multinomial logistic regression estimations results. The first and second columns in the table illustrate the panels of the model employed and the alternatives of vaccine decisions, respectively. The third column lists the variables used in the model. The fourth column demonstrates the effects of interest. The last 2 columns show the z-statistics and relative risk ratios with confidence intervals in brackets.

Table 2. Determinants of COVID-19 vaccine decision

***P < 0.01, **P < 0.05, *P < 0.1.

a Lower and upper limit at the 95% confidence interval is in parentheses.

There are 3 alternatives that the respondents can choose about getting vaccinated: (1) acceptance, (2) refusal, and (3) being indecisive. The first panel (top of Table 2) provides the estimations of refusing the vaccination in relation to accepting it. Positive coefficients imply increased odds for refusing the vaccination over accepting it, holding all other regressors constant, and vice versa. As for RRRs, they will take the values higher than 1 if the odds are in favor of refusal over acceptance and the values lower than 1 otherwise. The second panel (bottom of Table 2) provides the estimations of being indecisive about getting vaccination in relate to accepting it. Hence, a positive coefficient suggests increased odds for being indecisive over accepting the vaccination, and vice versa. RRRs will take the values higher than 1 if the odds are in favor of being indecisive over accepting Covid-19 vaccination and the values lower than 1 otherwise.

According to Panel 1, 1 unit of increase in the respondent’s age is associated with the decrease in the logarithmic chance of refusing vaccination by 0,8 over accepting it. In other words, acceptance of Covid-19 vaccination is about the increase with increasing age (RRR = 0.92; 95% CI= 0.89 - 0.96). The logarithmic chance of refusing vaccination is 0.582 greater for women compared to men implying that women are less likely to accept the vaccination compared to men. In addition, the respondents living in the city center are more likely to refuse the vaccination compared to their district-resident counterparts. Public sector employees are almost 2 times (1/ 0.47) less likely to refuse vaccination compared to private sector employees which is the reference category. The odds in favor of accepting the vaccination are greater than refusing it for the smoking variable, implying that smokers are less likely to refuse the vaccination in comparison with their non-smoking counterparts (RRR = 0.46; 95% CI = 0.25 - 0.84). Finally,. the respondents are almost 8 times less likely to refuse the vaccination if governmental authorities get vaccinated (RRR = 0.13; 95% CI = 0.8 - 0.21).

According to Panel 2, the odds of being indecisive to get vaccinated decrease with 1 unit of increase in the respondent’s age (RRR = 0.96; 95% CI = 0.94 - 0.99). In another saying, older respondents are less likely to be indecisive about getting vaccinated. In addition, the participants with the highest level of education are more likely to be indecisive about getting vaccinated than their less-educated counterparts. The logarithmic chance of being indecisive about vaccination is 0.562 greater for the respondents living in the city center compared to their counterparts living in the districts, implying that the respondents living in the city center are comparatively more likely to be indecisive about getting vaccinated. Unemployed individuals (RRR = 0.53; 95% CI = 0.28 - 1) and public sector employees (RRR = 0.52; 95% CI = 0.30 -0.91) are almost 2 times less likely to be indecisive about getting vaccinated compared to private sector employees. The logarithmic chance of being indecisive about getting vaccinated is 0.538 lower for smokers. In other words, smokers are less likely to be indecisive about getting vaccinated compared to non-smokers. In addition, being indecisive about getting vaccinated is less likely to occur if governmental authorities get vaccinated (RRR = 0.89; 95% CI = 0.39 -0.90). Finally, 1 unit increase in the number of respondents’ financial dependents is associated with the decrease in the odds of being indecisive about vaccination over accepting it. In other words, individuals with a higher number of dependents are less likely to be indecisive about getting vaccinated (RRR =0.77; 95% CI = 0.61 - 0.95).

Taking all these into the consideration, it is obvious that the probability of accepting the vaccination tends to increase with increasing age of the respondent. In addition, public sector employees are more likely to accept the vaccination. The respondents living in the city center are less likely to accept vaccination. Smokers are more likely to accept vaccination. Finally, the vaccination of governmental authorities is associated with the increase in Covid-19 vaccine acceptance. It is therefore understood that Covid-19 vaccine acceptance is relatively high among vulnerable groups.

It is understood that Covid-19 vaccine acceptance is significantly low (26%) in Turkey as literature suggests more than 70% of acceptance in other countries including France, Reference Fu, Wei, Pei, Li, Sun and Liu20,Reference Gagneux-Brunon, Detoc and Bruel34,Reference Ward, Alleaume, Peretti-Watel and COCONEL35 the USA, Reference Detoc, Bruel, Frappe, Tardy, Botelho-Nevers and Gagneux-Brunon36Reference Taylor, Landry, Paluszek, Groenewoud, Rachor and Asmundson38 China, Reference Wang, Jing and Lai27,Reference Lazarus, Ratzan and Palayew37Reference Lin, Hu, Zhao, Alias, Danaee and Wong39 and Denmark, as well as Portugal, Netherland, Germany. Reference Lin, Hu, Zhao, Alias, Danaee and Wong39 This also includes the United Kingdom, Reference Neumann-Böhme, Varghese and Sabat40,Reference Salali and Uysal41 Canada, Reference Lazarus, Ratzan and Palayew37 Italy, Reference Neumann-Böhme, Varghese and Sabat40,Reference Barello, Nania, Dellafiore, Graffigna and Caruso42 and Australia, Reference Rhodes, Hoq, Measey and Danchin43 as well as Brazil, South Africa, South Korea, and Mexico. Countries like India, Spain, Singapore, and Sweden, as well as Nigeria, Poland, Reference Lazarus, Ratzan and Palayew37 Israel, Reference Dror, Eisenbach and Taiber44 and Indonesia, Reference Harapan, Wagner and Yufika22 coupled with Ecuador, Reference Lazarus, Ratzan and Palayew37,Reference Sarasty, Carpio, Hudson, Guerrero-Ochoa and Borja45 and Malaysia, Reference Wong, Alias, Wong and Lee18 make the list.

The study identifies that age, gender, educational status, and occupational status, as well as residential status, smoking, and the vaccination of governmental authorities, have impacts on Covid-19 vaccine decisions of individuals living in Turkey.

Accordingly, it was revealed that the probability of accepting the vaccination increases with the increasing age of the participants. Although there are conflicting findings in literature, Reference Kwok, Li, Wei, Tang, Wong and Lee21,Reference Alqudeimat, Alenezi and AlHajri24,Reference Kreps, Prasad and Brownstein31,Reference Rhodes, Hoq, Measey and Danchin43 the result is in line with the studies suggesting age effects. Reference Malik, McFadden, Elharake and Omer15,Reference Leng, Maitland, Wang, Nicholas, Liu and Wang17,Reference Sherman, Smith and Sim19,Reference Al-Mohaithef and Padhi23,Reference Ward, Alleaume, Peretti-Watel and COCONEL35,Reference Neumann-Böhme, Varghese and Sabat40,Reference Graffigna, Palamenghi, Boccia and Barello47,Reference Mahmud, Mohsin, Khan, Mian and Zaman48 Higher acceptance of the Covid-19 vaccine among elderlies may be explained by the fact that older individuals are more vulnerable to the Covid-19 infection. Hence, they may be more likely to get vaccinated due to their higher levels of fear. Contrasting age effects in literature may be attributed to different beliefs in different cultures. In this context, it is believed that exploring the levels of fear due to Covid-19 infection among elderlies living in different societies may contribute to existing literature.

The findings suggest that women are more likely to refuse Covid-19 vaccination compared to men, confirming the existing literature. Reference Malik, McFadden, Elharake and Omer15,Reference Alqudeimat, Alenezi and AlHajri24,Reference Kreps, Prasad and Brownstein31,Reference Ward, Alleaume, Peretti-Watel and COCONEL35,Reference Detoc, Bruel, Frappe, Tardy, Botelho-Nevers and Gagneux-Brunon36,Reference Neumann-Böhme, Varghese and Sabat40,Reference Al-Mistarehi, Kheirallah and Yassin46 The finding may be related to their beliefs about the exposure of adverse effects of the vaccination during their current or future pregnancy or breastfeeding. In addition, the participants with higher level of education are less likely to be indecisive about the vaccination. This can be the case if the knowledge of the vaccines increases with the increased level of education. Hence, more educated individuals may be more decisive about the vaccinated owing to their higher level of knowledge. Such finding is also in line with previous literature highlighting the impacts of educational status on vaccine decisions. Reference Al-Mohaithef and Padhi23,Reference Graffigna, Palamenghi, Boccia and Barello47

It is obvious that public sector employees are more likely to accept the vaccination compared to their counterparts working in private sector. This is probably related to the lack of distance working opportunities for public employees. Since they will be unable to isolate themselves in their occupational time, they may desire to get vaccinated more than those living in private sector. The finding confirms the literature suggesting occupational effects on vaccine decisions. Reference Malik, McFadden, Elharake and Omer15,Reference Alqudeimat, Alenezi and AlHajri24

It was identified that smokers are clearly more likely to accept the vaccination compared to non-smokers. This may be related to the relatively high risk of smokers. Since it is well stated that smokers are more prone to the adverse effects of the Covid-19 infection, Reference Zhao, Meng and Kumar49Reference Cattaruzza, Zagà, Gallus, D’Argenio and Gorini52 they may desire to get vaccinated more in comparison to their non-smoking counterparts. The result confirms the findings of Alqudeimat et al. Reference Alqudeimat, Alenezi and AlHajri24 while it conflicts with Mozid et al. Reference Mozid, Amin and Jhumur53

It was revealed that the vaccination of governmental authorities has a significant impact on Covid-19 vaccine acceptance. The participants are more likely to accept the vaccination if governmental authorities get vaccinated. The finding confirms Viswanath et al. Reference Paul, Sikdar and Mahanta55 while it conflicts with Kreps et al. Reference Kreps, Prasad and Brownstein31 The finding is probably related to decreased disbeliefs about Covid-19 vaccines after the authorities get vaccinated. Contradictory observations from different societies may imply different trust levels to governmental authorities. Hence, further studies investigating the effects of governmental authorities on the attitudes towards Covid-19 vaccination programs may contribute to existing literature of vaccine studies.

Interestingly, it is observed that the participants living in the city center are less likely to accept vaccination compared to those living in the rural areas. The finding, which conflicts with existing literature by Mahmud et al., Reference Mahmud, Mohsin, Khan, Mian and Zaman48 is unexpected since the risk of spread is comparatively high in urban areas due to higher population. Further research exploring vaccination motivations of urban people in Turkey may contribute to broader literature.

The research conducted has a few strengths and limitations. First, the study detects the reaction of Turkish population towards Covid-19 vaccines before the vaccination in action. Therefore, the study enlightens policy makers in terms of vaccination acceptance in case of an epidemic (or pandemic). Second, since the research about the factors affecting vaccination decision in Turkey is limited; the study contributes to literature by revealing the characteristics playing a role in vaccination decision.

The research also has some limitations. Since the study aims to evaluate the reactions towards Covid-vaccines before the vaccination started in Turkey; the data is required to be collected in limited time. Due to this, the study collected the data in a short period. Relatively high number of participants would be possible if longer periods devoted to the data collection process.

Conclusion

This study investigates social, demographic, and economic factors affecting Covid-19 vaccine decisions just before the vaccination program started in Turkey. Exploiting the data of 693 individuals, the study reveals that age, gender, educational status, occupational status, residential status, smoking, the number of dependents, and the vaccination of governmental authorities play significant roles in determining Covid-19 vaccine decisions.

It was identified that Covid-19 acceptance is notably low just before the vaccination program started in Turkey. Further, it is observed almost that half of the participants are indecisive about getting vaccinated. In the light of existing literature suggesting augmenting effects of increased levels of education Reference Malik, McFadden, Elharake and Omer15,Reference Al-Mistarehi, Kheirallah and Yassin46,Reference Paul, Sikdar and Mahanta55 and awareness Reference Mannan and Knowledge56Reference Huynh, Nguyen, Nguyen, Lam, Pham and Nguyen58 on Covid-19 acceptance, it is thought that the provision of more and accurate information about the vaccines may either (i) increase Covid-19 vaccine acceptance or (ii) reduce Covid-19 vaccine hesitancy in Turkey.

The study reveals that Covid-19 vaccine acceptance is relatively high among vulnerable groups, i.e., elderlies and smokers, and among those who are unable to isolate themselves, i.e., public employees. In addition, it is understood that the vaccination of governmental authorities is remarkably effective on Covid-19 vaccine acceptance in Turkey. Therefore, the study affirms that the public demonstration of the vaccination of governmental authorities to encourage the public to get vaccinated may play a critical role to increase vaccination rates in Turkey. Further studies exploring the effects of such demonstration on the vaccination rates in particular may contribute to literature about Covid-19 pandemic.

Finally, it is important to note that the study deals with the decisions just before the vaccination program started in Turkey. Hence, a comparative study exploring the motivations of Covid-19 vaccine acceptance (or refusal) in future may also contribute to literature.

Availability of data and materials

The authors agree to the conditions of the publication including the availability of data and materials in our manuscript.

Funding

The authors received no financial support for the research, authorship, and/or publication of this article.

Conflicts of interest

Authors declare that they have no conflicts of interest.

Ethical statement

Written informed consent for publication was received from the participants before answering the survey. This study was ethically approved by the Scientific Research Projects unit of the University of Health Sciences with the registration number 20/500 on December 11, 2020. The principles outlined in the Declaration of Helsinki have been followed.

References

Dong, E, Du, H, Gardner, L. An interactive web-based dashboard to track COVID-19 in real-time. The Lancet infectious diseases. 2020;20(5):533-534.CrossRefGoogle ScholarPubMed
World Health Organization. COVID-19 Dashboard; 2021. https://covid19.who.int/ Google Scholar
World Health Organization. COVID-19 region dashboard.; 2021. https://covid19.who.int/region/euro/country/tr Google Scholar
Sallam, M, Al-Sanafi, M, Sallam, M. A global map of covid-19 vaccine acceptance rates per country: an updated concise narrative review. J Multidiscip Healthc. 2022;15:21-45.CrossRefGoogle ScholarPubMed
Sharpe, HR, Gilbride, C, Allen, E, et al. The early landscape of coronavirus disease 2019 vaccine development in the UK and rest of the world. Immunology. 2020;160(3):223-232.CrossRefGoogle ScholarPubMed
Abo, SMC, Smith, SR. Is a covid-19 vaccine likely to make things worse? Vaccines. 2020;8(4):761.CrossRefGoogle ScholarPubMed
Bedford, J, Enria, D, Giesecke, J, et al. COVID-19: towards controlling of a pandemic. Lancet. 2020;395(10229):1015-18. doi: 10.1016/S0140-6736(20)30673-5 CrossRefGoogle ScholarPubMed
Thanh Le, T, Andreadakis, Z, Kumar, A, et al. The COVID-19 vaccine development landscape. Nat Rev Drug Discov. 2020;19(5):305-06. doi: 10.1038/d41573-020-00073-5 CrossRefGoogle ScholarPubMed
Lurie, N, Saville, M, Hatchett, R, Halton, J. Developing Covid-19 vaccines at pandemic speed. N Engl J Med. 2020;382 (21):1969-73. doi: 10.1056/NEJMp2005630 CrossRefGoogle ScholarPubMed
Alamer, E, Hakami, F, Hamdi, S, et al. Knowledge, attitudes and perception toward COVID-19 vaccines among adults in Jazan Province, Saudi Arabia. Vaccines. 2021;9(11):1259.CrossRefGoogle ScholarPubMed
Green, MS, Abdullah, R, Vered, S, Nitzan, D. A study of ethnic, gender and educational differences in attitudes toward COVID-19 vaccines in Israel–implications for vaccination implementation policies. Israel J Health Policy Res. 2021;10(1):1-12.CrossRefGoogle Scholar
Danabal, KGM, Magesh, SS, Saravanan, S, Gopichandran, V. Attitude towards COVID 19 vaccines and vaccine hesitancy in urban and rural communities in Tamil Nadu, India–a community-based survey. BMC Health Services Res. 2021;21(1):1-10.CrossRefGoogle Scholar
Agrawal, A, Kolhapure, S, Di Pasquale, A, Rai, J, Mathur, A. Vaccine hesitancy as a challenge or vaccine confidence as an opportunity for childhood immunisation in India. Infect Dis Ther. 2020;9:421-432.CrossRefGoogle ScholarPubMed
Bish, A, Yardley, L, Nicoll, A, Michie, S. Factors associated with uptake of vaccination against pandemic influenza: a systematic review. Vaccine. 2011;29(38):6472-6484.CrossRefGoogle ScholarPubMed
Malik, AA, McFadden, SM, Elharake, J, Omer, SB. Determinants of COVID-19 vaccine acceptance in the US. EClinicalMedicine. 2020;26:100495.CrossRefGoogle ScholarPubMed
Sun, S, Lin, D, Operario, D. Interest in COVID-19 vaccine trials participation among young adults in China: willingness, reasons for hesitancy, and demographic and psychosocial determinants. medRxiv. 2020;2020.07.20152678.CrossRefGoogle Scholar
Leng, A, Maitland, E, Wang, S, Nicholas, S, Liu, R, Wang, J. Individual preferences for COVID-19 vaccination in China. Vaccine. 2021;39(2):247-254.CrossRefGoogle ScholarPubMed
Wong, LP, Alias, H, Wong, PF, Lee, HY, AbuBakar S. The use of the health belief model to assess predictors of intent to receive the COVID-19 vaccine and willingness to pay. Hum Vaccines Immunother. 2020;16(9):2204-2214.CrossRefGoogle ScholarPubMed
Sherman, SM, Smith, LE, Sim, J, et al. COVID-19 vaccination intention in the UK: results from the COVID-19 vaccination acceptability study (CoVAccS), a nationally representative cross-sectional survey. Hum Vaccines Immunother. 2021;17(6):1612-1621.CrossRefGoogle ScholarPubMed
Fu, C, Wei, Z, Pei, S, Li, S, Sun, X, Liu, P. Acceptance and preference for COVID-19 vaccination in health-care workers (HCWs). MedRxiv. 2020;4(9). https://doi.org/10.1101/2020.04.09.20060103 Google Scholar
Kwok, KO, Li, KK, Wei, WI, Tang, A, Wong, SYS, Lee, SS. Influenza vaccine uptake, COVID-19 vaccination intention and vaccine hesitancy among nurses: a survey. Int J Nurs Stud. 2021;114:103854.CrossRefGoogle ScholarPubMed
Harapan, H, Wagner, AL, Yufika, A, et al. Acceptance of a COVID-19 vaccine in Southeast Asia: a cross-sectional study in Indonesia. Front Public Health. 2020;8:381. Published 2020 Jul 14. doi: 10.3389/fpubh.2020.00381 CrossRefGoogle ScholarPubMed
Al-Mohaithef, M, Padhi, BK. Determinants of COVID-19 Vaccine acceptance in Saudi Arabia: a web-based national survey. J Multidiscip Healthc. 2020;13:1657-1663. doi: 10.2147/JMDH.S276771 CrossRefGoogle ScholarPubMed
Alqudeimat, Y, Alenezi, D, AlHajri, B, et al. Acceptance of a COVID-19 vaccine and its related determinants among the general adult population in Kuwait. Med Princ Pract. 2021;30(3):262-271. doi: 10.1159/000514636 CrossRefGoogle ScholarPubMed
Karlsson, LC, Soveri, A, Lewandowsky, S, et al. Fearing the disease or the vaccine: the case of COVID-19. Pers Individ Dif. 2021;172:110590. doi: 10.1016/j.paid.2020.110590 CrossRefGoogle ScholarPubMed
Pogue, K, Jensen, JL, Stancil, CK, et al. Influences on attitudes regarding potential COVID-19 Vaccination in the United States. Vaccines (Basel). 2020;8(4):582. doi: 10.3390/vaccines8040582 CrossRefGoogle ScholarPubMed
Wang, J, Jing, R, Lai, X, et al. Acceptance of COVID-19 Vaccination during the COVID-19 Pandemic in China. Vaccines (Basel). 2020;8(3):482. doi: 10.3390/vaccines8030482 CrossRefGoogle ScholarPubMed
Republic of Turkey Ministry of Health. Turkish national covid-19 vaccine administration strategy; 2022. https://covid19asi.saglik.gov.tr/TR-77706/covid-19-asisi-ulusal-uygulama-stratejisi.html Google Scholar
Goodman, JL, Grabenstein, JD, Braun, MM. Answering key questions about covid-19 vaccines. JAMA. 2020;324(20):2027-2028. doi: 10.1001/jama.2020.20590 CrossRefGoogle ScholarPubMed
Johnson, DK, Mello, EJ, Walker, TD, Hood, SJ, Jensen, JL, Poole, BD. Combating vaccine hesitancy with vaccine-preventable disease familiarization: an interview and curriculum intervention for college students. Vaccines. 2019; 7(2):39. https://doi.org/10.3390/vaccines7020039 CrossRefGoogle ScholarPubMed
Kreps, S, Prasad, S, Brownstein, JS, et al. Factors associated with US adults’ likelihood of accepting covid-19 vaccination [published correction appears in JAMA Netw Open. 2020 Nov 2;3(11):e2030649]. JAMA Netw Open. 2020;3(10):e2025594. doi:10.1001/jamanetworkopen.2020.25594CrossRefGoogle Scholar
Michel, JP, Gusmano, M, Blank, PR, Philp, I. Vaccination and healthy ageing: how to make life-course vaccination a successful public health strategy. Euro Geriatric Med. 2010;1(3):155-165.CrossRefGoogle Scholar
Cameron, AC, Trivedi, PK. Microeconometrics: methods and applications. Cambridge University Press; 2005.CrossRefGoogle Scholar
Gagneux-Brunon, A, Detoc, M, Bruel, S, et al. Intention to get vaccinations against COVID-19 in French healthcare workers during the first pandemic wave: a cross-sectional survey. J Hosp Infect. 2021;108:168-173. doi: 10.1016/j.jhin.2020.11.020 CrossRefGoogle ScholarPubMed
Ward, JK, Alleaume, C, Peretti-Watel, P; COCONEL, Group. The French public’s attitudes to a future COVID-19 vaccine: the politicization of a public health issue. Soc Sci Med. 2020;265:113414. doi: 10.1016/j.socscimed.2020.113414 CrossRefGoogle ScholarPubMed
Detoc, M, Bruel, S, Frappe, P, Tardy, B, Botelho-Nevers, E, Gagneux-Brunon, A. Intention to participate in a COVID-19 vaccine clinical trial and to get vaccinated against COVID-19 in France during the pandemic. Vaccine. 2020;38(45):7002-7006. doi: 10.1016/j.vaccine.2020.09.041 CrossRefGoogle Scholar
Lazarus, JV, Ratzan, SC, Palayew, A, et al. A global survey of potential acceptance of a COVID-19 vaccine [published correction appears in Nat Med. 2021 Jan 11;:]. Nat Med. 2021;27(2):225-228. doi: 10.1038/s41591-020-1124-9 CrossRefGoogle ScholarPubMed
Taylor, S, Landry, CA, Paluszek, MM, Groenewoud, R, Rachor, GS, Asmundson, GJG. A proactive approach for managing covid-19: the importance of understanding the motivational roots of vaccination hesitancy for sars-cov2. Front Psychol. 2020;11:575950.CrossRefGoogle ScholarPubMed
Lin, Y, Hu, Z, Zhao, Q, Alias, H, Danaee, M, Wong, LP. Understanding COVID-19 vaccine demand and hesitancy: A nationwide online survey in China. PLoS Negl Trop Dis. 2020;14:e0008961.CrossRefGoogle ScholarPubMed
Neumann-Böhme, S, Varghese, NE, Sabat, I, et al. Once we have it, will we use it? A European survey on willingness to be vaccinated against COVID-19. Euro J Health Econs. 2020;1-6.Google ScholarPubMed
Salali, GD, Uysal, MS. COVID-19 vaccine hesitancy is associated with beliefs on the origin of the novel coronavirus in the UK and Turkey. Psychol Med. 2020;1-3.Google ScholarPubMed
Barello, S, Nania, T, Dellafiore, F, Graffigna, G, Caruso, R. ‘Vaccine hesitancy’ among university students in Italy during the COVID-19 pandemic. Eur J Epidemiol. 2020;35:781-783.CrossRefGoogle ScholarPubMed
Rhodes, A, Hoq, M, Measey, MA, Danchin, M. Intention to vaccinate against COVID-19 in Australia. Lancet Infect Dis. 2021;21(5):e110. doi: 10.1016/S1473-3099(20)30724-6 CrossRefGoogle ScholarPubMed
Dror, AA, Eisenbach, N, Taiber, S, et al. Vaccine hesitancy: the next challenge in the fight against COVID-19. Eur J Epidemiol. 2020;35:775-779.CrossRefGoogle ScholarPubMed
Sarasty, O, Carpio, CE, Hudson, D, Guerrero-Ochoa, PA, Borja, I. The demand for a COVID-19 vaccine in Ecuador. Vaccines. 2020;38:8090-8098.CrossRefGoogle ScholarPubMed
Al-Mistarehi, AH, Kheirallah, KA, Yassin, A, et al. Determinants of the willingness of the general population to get vaccinated against COVID-19 in a developing country. Clin Exper Vaccine Res. 2021;10(2):171.CrossRefGoogle ScholarPubMed
Graffigna, G, Palamenghi, L, Boccia, S, Barello, S. Relationship between citizens’ health engagement and intention to take the COVID-19 vaccine in Italy: a mediation analysis. Vaccines. 2020;8(4):576.CrossRefGoogle ScholarPubMed
Mahmud, S, Mohsin, M, Khan, IA, Mian, AU, Zaman, MA. Knowledge, beliefs, attitudes and perceived risk about COVID-19 vaccine and determinants of COVID-19 vaccine acceptance in Bangladesh. PloS One. 2021;16(9):e0257096.CrossRefGoogle ScholarPubMed
Zhao, Q, Meng, M, Kumar, R, et al. The impact of COPD and smoking history on the severity of COVID-19: A systemic review and meta-analysis. J Med Virol. 2020;92(10):1915-1921. doi: 10.1002/jmv.25889 CrossRefGoogle ScholarPubMed
Reddy, RK, Charles, WN, Sklavounos, A, Dutt, A, Seed, PT, Khajuria, A. The effect of smoking on COVID-19 severity: a systematic review and meta-analysis. J Med Virol. 2021;93(2):1045-1056.CrossRefGoogle ScholarPubMed
Vardavas, CI, Nikitara, K. COVID-19 and smoking: a systematic review of the evidence. Tobacco Induced Dis. 2020;18.Google ScholarPubMed
Cattaruzza, MS, Zagà, V, Gallus, S, D’Argenio, P, Gorini, G. Tobacco smoking and COVID-19 pandemic: old and new issues. a summary of the evidence from the scientific literature. Acta Biomed. 2020;91(2):106-112. doi: 10.23750/abm.v91i2.9698 Google ScholarPubMed
Mozid, NE, Amin, MA, Jhumur, SS, et al. COVID-19 risk of infection and vaccination during Ramadan fasting: knowledge and attitudes of Bangladeshi general population. Heliyon. 2021;7(10):e08174. doi: 10.1016/j.heliyon.2021.e08174 CrossRefGoogle ScholarPubMed
Viswanath, K, Bekalu, M, Dhawan, D, Pinnamaneni, R, Lang, J, McLoud, R. Individual and social determinants of COVID-19 vaccine uptake. BMC Public Health. 2021;21(1):1-10.CrossRefGoogle ScholarPubMed
Paul, A, Sikdar, D, Mahanta, J, et al. Peoples’ understanding, acceptance, and perceived challenges of vaccination against COVID-19: a cross-sectional study in Bangladesh. PLoS One. 2021;16(8):e0256493. doi: 10.1371/journal.pone.0256493 CrossRefGoogle ScholarPubMed
Mannan, DKA, Knowledge, Farhana KM., attitude, and acceptance of a COVID-19 vaccine: a global cross-sectional study. Int Res J Bus Soc Sci. 2021;6(4).Google Scholar
Holzmann-Littig, C, Braunisch, MC, Kranke, P, et al. COVID-19 vaccination acceptance and hesitancy among healthcare workers in Germany. Vaccines. 2021;9(7):777.CrossRefGoogle ScholarPubMed
Huynh, G, Nguyen, TV, Nguyen, DD, Lam, QM, Pham, TN, Nguyen, HTN. Knowledge about covid-19, beliefs and vaccination acceptance against covid-19 among high-risk people in Ho Chi Minh City, Vietnam. Infect Drug Resist. 2021;14:1773-1780. doi: 10.2147/IDR.S308446 CrossRefGoogle ScholarPubMed
Figure 0

Table 1. Summary statistics

Figure 1

Table 2. Determinants of COVID-19 vaccine decision