| Literature DB >> 33619688 |
Arcadio A Cerda1, Leidy Y García2.
Abstract
BACKGROUND: The coronavirus disease (COVID-19) pandemic has considerably affected the lives of people worldwide, impacting their health and economic welfare, and changing the behavior of our society significantly. This situation may lead to a strong incentive for people to buy a vaccine. Therefore, a relevant study to assess individuals' choices and the value of change in welfare from a COVID-19 vaccine is essential.Entities:
Mesh:
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Year: 2021 PMID: 33619688 PMCID: PMC7899739 DOI: 10.1007/s40258-021-00644-6
Source DB: PubMed Journal: Appl Health Econ Health Policy ISSN: 1175-5652 Impact factor: 2.561
Fig. 1Process of offering the different payment values (bid) to the respondents. bid = initial payment vector, bidl = lowest bid respect to initial payment vector, and bidu = highest bid respected to initial bid, for i = 1–10 (quantity of offers). See the values of the bid and sampling distribution in Table S1, Online Supplemental Material 2
Demographic and social variables, number of respondents (n), and percentage (%)
| Variable | Original sample, | Estimation sample, | Total rejectio | Protest reasons, | Income reasons, |
|---|---|---|---|---|---|
| Age, years | |||||
| 18–29 | 61 (12) | 57 (13) | 4 (4) | 3 (4) | 1 (8) |
| 30–39 | 120 (22) | 105 (24) | 15 (16) | 13 (17) | 2 (15) |
| 40–49 | 136 (26) | 113 (26) | 23 (25) | 19 (24) | 4 (31) |
| 50–59 | 130 (25) | 99 (23) | 31 (34) | 27 (35) | 4 (31) |
| ≥ 60 | 83 (15) | 65 (14) | 17 (19) | 15 (19) | 2 (15) |
| Gender | |||||
| Female | 212 (40) | 182 (41) | 30(33) | 28 (36) | 2 (15) |
| Male | 314 (59) | 255 (58) | 59(65) | 48 (62) | 11 (85) |
| Not defined | 4 (1) | 3 (1) | 2 (2) | 2 (3) | 0 (0) |
| Education | |||||
| Preliminary school | 6 (1) | 2 (1) | 4 (4) | 4 (5) | 0 (0) |
| High school | 45 (9) | 31 (7) | 14 (15) | 12(15) | 2 (15) |
| Technical | 73 (13) | 52 (12) | 21(23) | 19(24) | 2 (15) |
| University degree | 231 (44) | 207 (47) | 24 (26) | 19(24) | 5 (38) |
| Graduate degree | 175 (33) | 148 (34) | 27 (30) | 23 (29) | 4 (31) |
| Monthly income (US$) | |||||
| < 569 | 90 (17) | 56 (13) | 34 (37) | 28 (36) | 6 (46) |
| 570–953 | 62 (12) | 45 (10) | 17 (19) | 16(21) | 1 (8) |
| 954–1,476 | 64 (12) | 53 (12) | 11 (12) | 11 (14) | 0 (0) |
| 1477–2186 | 83 (15) | 73 (17) | 10 (11) | 7 (9) | 3 (23) |
| > 2186 | 231 (44) | 213 (48) | 18 (20) | 13(17) | 3 (23) |
| Type of health system | |||||
| Public | 224 (42) | 166 (38) | 58 (64) | 51 (65) | 7 (54) |
| Private | 274 (52) | 251 (57) | 23 (25) | 20 (26) | 3 (23) |
| Other | 33 (6) | 23 (5) | 10 (11) | 6 (8) | 3 (23) |
| Fear of getting infected increased in last 3 months | |||||
| 290 (55) | 247 (56) | 43 (47) | 36 (46) | 7 (54) | |
| Family or relative with COVID-19 | |||||
| 45 (9) | 33 (8) | 12 (13) | 10 (13) | 2 (15) | |
| Family or relative recovered from COVID-19 | |||||
| 93 (18) | 70 (16) | 23 (25) | 19 (24) | 4 (31) | |
Context variables by frequency of respondents (n) and percentage (%)
| Context variables | Mean | Strongly disagree, | Disagree, | Neither agree or disagree, | Agree, | Strongly agree, |
|---|---|---|---|---|---|---|
| Good knowledge about COVID-19 | 3.5 | 90 (16.95) | 53 (9.98) | 41 (7.72) | 200 (37.66) | 147 (27.68) |
| Pandemic reduced employment | 3.7 | 85 (16.01) | 47 (8.85) | 2 (0.38) | 205 (38.61) | 192 (36.16) |
| Pandemic reduced economic activity | 3.7 | 88 (16.57) | 47 (8.85) | 3 (0.56) | 200 (37.66) | 193 (36.35) |
| Adapting work at home | 3.3 | 89 (16.76) | 77 (14.5) | 76 (14.31) | 167 (31.45) | 122 (22.98) |
| Perception of good government response | 2.2 | 189 (35.59) | 190 (35.78) | 58 (10.92) | 71 (13.37) | 23 (4.33) |
| Perception of improved government response | 2.1 | 110 (20.72) | 165 (31.07) | 61(11.49) | 85 (16.01) | 110 (20.72) |
Estimation of double-bounded discrete choice models and willingness-to-pay (WTP) estimates for the basic and expanded model
| Variable | Basic model | Expanded model |
|---|---|---|
| Coefficient (standard error) | ||
| Mean WTP (beta) ($) | 252.213a | 231.924a |
| (16.668) | (16.497) | |
| Constant | 6.465 | |
| (13.102) | ||
| Income | 53.488a | |
| (21.268) | ||
| Education | 29.412c | |
| (21.267) | ||
| Relative with COVID-19 | 103.376b | |
| (60.638) | ||
| Sigma | 296.07a | 278.83a |
| (20.675) | (19.426) | |
| Sample | 440 | 440 |
| log-likelihood | − 581.541 | − 559.285 |
| Wald Chi2(3) | 35.42a | |
| WTP estimates | ||
| 95% confidence interval WTP ($) | 220 to 285 | 200 to 264 |
Values are in US dollars
a
b
c
Fig. 2Sample distribution of willingness to pay (WTP) and frequency of refusal reason. bid = initial payment vector, bidl = lowest bid respect to initial payment vector, and bidu = highest bid respected to initial bid, for i = 1 to 10 (quantity of offers). See the values of the bid and sampling distribution in Fig. S1, Online Supplemental Material 2. *Respondents could choose more than one option when rejecting WTP, reaching in our study a total of 116 choices from the 91 respondents
| In health systems with budget constraints, vaccination against COVID-19 could mix public and private financing, where people with the highest incomes pay for their vaccines. |
| Promotional campaigns to get vaccinated should focus primarily on people with less education and consider the motivating factors for this. |
| The possibility of getting vaccinated increases for people who have had relatives with COVID-19, so they can be considered part of the target group for vaccination campaigns. |