| Literature DB >> 36016224 |
Dehua Hu1, Zhisheng Liu1,2, Liyue Gong1, Yi Kong1, Hao Liu1, Caiping Wei1, Xusheng Wu3, Qizhen Zhu1,4, Yi Guo1.
Abstract
(1) Objective: To explore Chinese residents' willingness to receive COVID-19 vaccine booster shots and identify predictors of the level of willingness based on the health belief model (HBM). (2)Entities:
Keywords: COVID-19; booster vaccination; health belief model; influencing factor; structural equation model; vaccination willingness
Year: 2022 PMID: 36016224 PMCID: PMC9416363 DOI: 10.3390/vaccines10081336
Source DB: PubMed Journal: Vaccines (Basel) ISSN: 2076-393X
Sociodemographic characteristics of the sample (n = 898).
| Variables | Total | Willingness to Receive Vaccine Booster Shots | Chi-Square | |||
|---|---|---|---|---|---|---|
| n (%) | Intended (83.9%) | Undecided (10.2%) | Unwilling (5.9%) | |||
| Gender | ||||||
| Female | 381 (57.6) | 323 (84.8) | 48 (12.6) | 10 (2.6) | 15.69 | <0.001 |
| Male | 517 (42.4) | 430 (83.2) | 44 (8.5) | 43 (8.3) | ||
| Age group | ||||||
| 18 and below | 94 (10.5) | 77 (81.9) | 13 (13.8) | 4 (4.3) | 10.39 | 0.109 |
| 19–30 | 676 (75.3) | 559 (82.7) | 73 (10.8) | 44 (6.5) | ||
| 31–40 | 93 (10.4) | 87 (93.5) | 2 (2.2) | 4 (4.3) | ||
| Above 40 | 35 (3.9) | 30 (85.7) | 4 (11.4) | 1 (2.9) | ||
| Living area | ||||||
| Urban | 715 (79.6) | 604 (84.5) | 68 (9.5) | 43 (6.0) | 2.08 | 0.353 |
| Rural | 183 (20.4) | 149 (81.4) | 24 (13.1) | 10 (5.5) | ||
| Educational background | ||||||
| Junior high school and below | 49 (5.5) | 42 (85.7) | 4 (8.2) | 3 (6.1) | 34.22 | <0.001 |
| High school | 131 (14.6) | 104 (79.4) | 17 (13.0) | 10 (7.6) | ||
| Associate college | 230 (25.6) | 206 (89.6) | 11 (4.8) | 13 (5.7) | ||
| Bachelor’s degree | 387 (43.1) | 333 (86.0) | 36 (9.3) | 18 (4.7) | ||
| Master’s degree and above | 101 (11.2) | 68 (67.3) | 24 (23.8) | 9 (8.9) | ||
| Monthly income (yuan) | ||||||
| Under 5000 | 354 (39.4) | 295 (83.3) | 43 (12.1) | 16 (4.5) | 6.72 | 0.347 |
| 5000–8000 | 306 (34.1) | 262 (85.6) | 23 (7.5) | 21 (6.9) | ||
| 8000–12,000 | 175 (19.5) | 146 (83.4) | 17 (9.7) | 12 (6.9) | ||
| Over 12,000 | 63 (7.0) | 50 (79.4) | 9 (14.3) | 4 (6.3) | ||
| Occupation | ||||||
| Medical personnel | 57 (6.3) | 53 (93.0) | 2 (3.5) | 2 (3.5) | 38.3 | <0.001 |
| Civil Service | 132 (14.7) | 111 (84.1) | 10 (7.6) | 11 (8.3) | ||
| Service industry personnel | 162 (18.0) | 139 (85.8) | 6 (3.7) | 17 (10.5) | ||
| Other corporate employees | 242 (26.9) | 200 (82.6) | 32 (13.2) | 10 (4.1) | ||
| Teachers | 39 (4.3) | 34 (87.2) | 1 (2.6) | 4 (10.3) | ||
| Students | 221 (24.6) | 179 (81.0) | 36 (16.3) | 6 (2.7) | ||
| Farmers | 23 (2.6) | 20 (87.0) | 2 (8.7) | 1 (4.3) | ||
| Others | 22 (2.4) | 17 (77.3) | 3 (13.6) | 2 (9.1) | ||
| Risk level of the area | ||||||
| Low Risk | 778 (86.6) | 657 (84.4) | 85 (10.9) | 36 (4.6) | 20.41 | <0.001 |
| Medium Risk | 101 (11.2) | 79 (78.2) | 7 (6.9) | 15 (14.9) | ||
| High Risk | 19 (2.1) | 17 (89.5) | 0 (0.0) | 2 (10.5) | ||
| Medical insurance | ||||||
| Yes | 813 (90.5) | 687 (84.5) | 78 (9.6) | 48 (5.9) | 3.98 | 0.136 |
| No | 85 (9.5) | 66 (77.6) | 14 (16.5) | 5 (5.9) | ||
Characteristics of participants’ COVID-19 vaccination. (n = 898).
| Variables | Total | Willingness to Get COVID-19 Vaccine Boosters | Chi-Square | |||
|---|---|---|---|---|---|---|
| n (%) | Intended (83.9%) | Undecided (10.2%) | Unwilling (5.9%) | |||
| Type of vaccines | ||||||
| 1 injection | 23 (2.6) | 15 (65.2) | 3 (13.0) | 5 (21.7) | 18.18 | 0.001 |
| 2 injections | 490 (54.6) | 399 (81.4) | 59 (12.0) | 32 (6.5) | ||
| 3 injections | 385 (42.9) | 339 (88.1) | 30 (7.8) | 16 (4.2) | ||
| Manufacturer of vaccines | ||||||
| Wuhan Institute of | 88 (9.8) | 77 (87.5) | 8 (9.1) | 3 (3.4) | 27.11 | 0.007 |
| Beijing Institute of | 121 (13.5) | 102 (84.3) | 10 (8.3) | 9 (7.4) | ||
| Sinovac Biotech Co., Ltd. in Beijing, China | 514 (57.2) | 445 (86.6) | 43 (8.4) | 26 (5.1) | ||
| Tianjin Cansino | 41 (4.6) | 30 (73.2) | 5 (12.2) | 6 (14.6) | ||
| Anhui Zhifei Longcom | 40 (4.5) | 27 (67.5) | 10 (25.0) | 3 (7.5) | ||
| Other manufacturers | 16 (1.8) | 11 (68.8) | 4 (25.0) | 1 (6.3) | ||
| No knowledge of the | 78 (8.7) | 61 (78.2) | 12 (15.4) | 5 (6.4) | ||
| Perceived effects from the primary series | ||||||
| Very high | 392 (43.7) | 373 (95.2) | 9 (2.3) | 10 (2.6) | 259.3 | <0.001 |
| High | 372 (41.4) | 323 (86.8) | 37 (9.9) | 12 (3.2) | ||
| Moderate | 115 (12.8) | 50 (43.5) | 44 (38.3) | 21 (18.3) | ||
| Low | 13 (1.4) | 4 (30.8) | 2 (15.4) | 7 (53.8) | ||
| Very low | 6 (0.7) | 3 (50.0) | 0 (0.0) | 3 (50.0) | ||
| Friends’ willingness to | 697.0 | |||||
| Very high | 452 (50.3) | 438 (96.9) | 7 (1.5) | 7 (1.5) | ||
| High | 296 (33.0) | 271 (91.6) | 18 (6.1) | 7 (2.4) | <0.001 | |
| Moderate | 113 (12.6) | 35 (31.0) | 66 (58.4) | 12 (10.6) | ||
| Low | 19 (2.1) | 8 (42.1) | 1 (5.3) | 10 (52.6) | ||
| Very low | 18 (2.0) | 1 (5.6) | 0 (0.0) | 17 (94.4) | ||
| Family members’ | ||||||
| Very high | 505 (56.2) | 492 (97.4) | 4 (0.8) | 9 (1.8) | 528.9 | <0.001 |
| High | 249 (27.7) | 215 (86.3) | 27 (10.8) | 7 (2.8) | ||
| Moderate | 110 (12.2) | 39 (35.5) | 55 (50.0) | 16 (14.5) | ||
| Low | 20 (2.2) | 7 (35.0) | 5 (25.0) | 8 (40.0) | ||
| Very low | 14 (1.6) | 0 (0.0) | 1 (7.1) | 13 (92.9) | ||
Reasons for receiving booster shots (n = 577).
| Reasons for Receiving Booster Shots | n (%) |
|---|---|
| Supporting vaccination policy in China | 282 (48.9) |
| Vaccination required by workplace or school | 73 (12.7) |
| Further enhancing the protective effect of the COVID-19 vaccine | 155 (26.9) |
| Fears of contracting a mutant strain of the coronavirus despite vaccination | 57 (9.9) |
| Chose to receive the booster vaccination because of others’ vaccination | 10 (1.7) |
Reliability and validity of HBM measures.
| Items | Cronbach’s α | AVE 1 | CR 2 |
|---|---|---|---|
| Perceived Severity | 0.822 | 0.565 | 0.834 |
| Perceived Susceptibility | 0.705 | 0.553 | 0.710 |
| Perceived Benefits | 0.876 | 0.641 | 0.877 |
| Perceived Barriers | 0.917 | 0.742 | 0.919 |
| Self-Efficacy | 0.832 | 0.621 | 0.831 |
| Cues to Action | 0.836 | 0.631 | 0.837 |
1 AVE is the average variance extracted from the model; 2 CR is composite reliability.
Correlation matrix of HBM measures. (n = 898).
| Perceived Severity | Perceived Susceptibility | Perceived Benefits | Perceived Barriers | Self-Efficacy | Cues to Action | |
|---|---|---|---|---|---|---|
| Perceived | 0.752 1 | |||||
| Perceived | 0.385 | 0.744 | ||||
| Perceived | 0.284 | 0.352 | 0.801 | |||
| Perceived | 0.225 | 0.104 | −0.213 | 0.861 | ||
| Self-Efficacy | 0.305 | 0.315 | 0.655 | −0.101 | 0.788 | |
| Cues to Action | 0.302 | 0.299 | 0.670 | −0.107 | 0.723 | 0.794 |
1 The value of the diagonal is the square root of the average variance extracted from each construct.
Effect of HBM variables on public COVID-19 booster vaccination intentions.
| Paths | C.R. 1 | Unstandardized Path Coefficients 2 | Standardized Path | |
|---|---|---|---|---|
| Perceived Severity → Booster Vaccination willingness | −0.561 | −0.031 | −0.023 | 0.575 |
| Perceived Susceptibility → Booster Vaccination willingness | −2.207 | −0.125 | −0.109 | 0.027 |
| Perceived Benefit → Booster Vaccination willingness | 2.102 | 0.233 | 0.148 | 0.036 |
| Perceived Barriers → Booster Vaccination willingness | −4.053 | −0.139 | −0.151 | <0.001 |
| Cues to Action → Booster Vaccination willingness | 2.977 | 0.438 | 0.308 | 0.003 |
1 C.R.: Critical ratio, dividing the regression weight estimate by the estimate of its standard error gives. 2 Path coefficient: the value that the dependent variable goes up by when the independent variable goes up by 1.
Figure 1The moderating effects of self-efficacy on the relationship between perceived susceptibility and booster vaccination intention.
Figure 2The moderating effects of self-efficacy on the relationship between perceived benefits and booster vaccination intentions.
Figure 3The moderating effects of self-efficacy on the relationship between perceived barriers and booster vaccination intentions.