The Effect of Socio-Demographic Factors in Health-Seeking Behaviors among Bangladeshi Residents during the First Wave of COVID-19
Abstract
:1. Introduction
Objectives of the Study
2. Materials and Methods
2.1. Participants and Procedures
2.2. Ethical Approval
2.3. Measures
2.4. Socio-Demographic Information
2.5. Health-Seeking Behaviors Measure
2.6. Scoring Procedures
2.7. Statistical Analysis
3. Results
3.1. General Characteristics of Participants
3.2. Health Seeking Behavior
3.3. Outcomes of In-Depth Interviews (IDI)
3.3.1. Age-Related Outcomes
3.3.2. Gender-Related Outcomes
3.3.3. Education Level Related Outcomes
3.3.4. Employment and Income-Related Outcomes
3.3.5. Housing Type Related Outcomes
3.3.6. Religion-Related Outcomes
3.3.7. Other Outcomes
4. Discussion
4.1. Association of Age in Health-Seeking Behavior
4.2. Association of Gender in Health-Seeking Behavior
4.3. Association of Literacy Level and Access to Information in Health-Seeking Behavior
4.4. Association of Financial Solvency and Employment in Health-Seeking Behavior
4.5. Association of Housing Types in Health-Seeking Behavior
4.6. Association of Religious Sentiments and Beliefs in Health-Seeking Behavior
4.7. Association of Other Factors in Health-Seeking Behavior
5. Limitations of the Study
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Variables | n | (%) |
---|---|---|
Age | ||
11–20 years | 52 | (5.5) |
21–30 years | 603 | (63.7) |
31–40 years | 198 | (20.9) |
41–50 years | 60 | (6.3) |
>50 years | 34 | (3.6) |
Sex | ||
Male | 568 | (60.0) |
Female | 379 | (40.0) |
Education | ||
Illiterate | 27 | (2.9) |
Primary | 67 | (7.1) |
SSC | 31 | (3.3) |
HSC | 49 | (5.2) |
Undergraduate | 359 | (37.8) |
Post graduate or above | 414 | (43.8) |
Occupation | ||
Government Job | 131 | (13.8) |
Private Job | 251 | (26.5) |
Business | 37 | (3.9) |
Daily wager a | 40 | (4.2) |
Home maker | 28 | (3.0) |
Unemployed | 281 | (29.7) |
Others b | 179 | (18.9) |
Monthly income | ||
<10,000 BDT | 366 | (45.7) |
10,000–30,000 BDT | 166 | (20.7) |
>30,000 BDT | 269 | (33.6) |
Locality | ||
Slum | 39 | (4.1) |
Modern residential area | 280 | (29.5) |
Common housing area | 572 | (60.2) |
Others c | 59 | (6.2) |
Respondent Identification No. | Age (Years) | Gender | Education | Job Type | Income (BDT) | House Type |
---|---|---|---|---|---|---|
A | 11–20 | M | HSC | Student | Dependent | CHA |
B | 21–30 | F | Graduate | Private | >30,000 | MHA |
C | 21–30 | F | Undergraduate | Govt. Job | 10,000–30,000 | CHA |
D | 21–30 | M | Illiterate | Daily wager | <10,000 | Slum |
E | 21–30 | F | Graduate | Private | 10,000–30,000 | CHA |
F | 31–40 | M | Graduate | Private | >30,000 | CHA |
G | 31–40 | F | Undergraduate | Home maker | Dependent | CHA |
H | 31–40 | M | >Post graduate | Govt. Job | >30,000 | MHA |
I | 31–40 | M | >Post graduate | Private | >30,000 | CHA |
J | 31–40 | F | Illiterate | Daily wager | <10,000 | Slum |
K | 31–40 | F | >Post graduate | Private | >30,000 | MHA |
L | 31–40 | M | HSC | Private | 10,000–30,000 | CHA |
M | 41–50 | M | Undergraduate | Business | >30,000 | CHA |
N | 41–50 | F | Graduate | Business | >30,000 | CHA |
O | 41–50 | M | Graduate | Govt. Job | >30,000 | CHA |
P | 51–60 | F | Undergraduate | Home maker | Dependent | CHA |
Q | 51–60 | F | Graduate | Private | >30,000 | MHA |
R | 51–60 | M | Undergraduate | Retired | >30,000 | MHA |
S | 51–60 | F | Graduate | Home Maker | Dependent | CHA |
T | 51–60 | M | HSC | Business | >30,000 | CHA |
Variables | Overall n (%) | Male n (%) | Female n (%) |
---|---|---|---|
Aware about COVID-19 | |||
Yes (1) | 859 (90.7) | 501 (88.2) | 358 (94.5) |
No (0) | 88 (9.30) | 67 (11.8) | 21 (5.50) |
Mode of transport use | |||
Public (0) | 221 (23.3) | 146 (25.6) | 75 (19.7) |
Private (1) | 255 (26.9) | 166 (29.2) | 89 (23.5) |
No transport use (2) | 471 (49.7) | 256 (45.1) | 215 (56.7) |
Wear mask | |||
Always (2) | 845 (89.2) | 490 (86.3) | 355 (93.7) |
Occasionally (1) | 62 (6.50) | 50 (8.8) | 12 (3.3) |
Never (0) | 40 (4.20%) | 28 (4.90) | 12 (3.2) |
Use of hand gloves | |||
Yes (2) | 293 (30.9) | 134 (23.6) | 159 (42.0) |
No (0) | 441 (46.6) | 305 (53.7) | 136 (35.9) |
Occasionally (1) | 213 (22.5) | 129 (22.7) | 84 (22.2) |
Disinfected foods before use | |||
Always (2) | 536 (56.6) | 276 (48.6) | 260 (68.6) |
Occasionally (1) | 194 (20.5) | 137 (24.0) | 57 (15.0) |
Never (0) | 217 (22.9) | 155 (27.3) | 62 (16.4) |
Ordered food online | |||
Yes (1) | 168 (17.7) | 79 (13.9) | 89 (23.5) |
No (0) | 779 (82.3) | 489 (86.1) | 290 (76.5) |
Join public gathering | |||
Yes (0) | 289 (30.5) | 214 (37.5) | 75 (19.7) |
No (1) | 658 (69.5) | 354 (62.3) | 304 (80.2) |
Contact with active cases | |||
Yes (0) | 96 (10.1) | 58 (10.2) | 38 (10.0) |
No (1) | 500 (52.8) | 308 (54.2) | 192 (50.7) |
Don’t know | 351 (37.1) | 202 (35.6) | 149 (39.3) |
Contact with persons who came from Abroad within 30 days | |||
Yes (0) | 108 (11.4%) | 82 (14.4%) | 26 (6.90%) |
No (1) | 839 (88.6%) | 486 (85.6%) | 353 (93.1%) |
Travel abroad within 30 days | |||
Yes (0) | 35 (3.70) | 20 (3.5) | 15 (4.0) |
No (1) | 912 (96.3) | 548 (96.5) | 363 (96.0) |
History of smoking | |||
Yes (0) | 150 (15.8) | 143 (25.2) | 7 (1.8) |
No (1) | 797 (84.2) | 425 (74.8) | 372 (98.2) |
History of consuming alcohol | |||
Yes (0) | 34 (3.6) | 29 (5.1) | 5 (1.3) |
No (1) | 913 (96.4) | 539 (94.9) | 374 (98.7) |
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Mou, T.J.; Afroz, K.A.; Haq, M.A.; Jahan, D.; Ahmad, R.; Islam, T.; Chowdhury, K.; Kumar, S.; Irfan, M.; Islam, M.S.; et al. The Effect of Socio-Demographic Factors in Health-Seeking Behaviors among Bangladeshi Residents during the First Wave of COVID-19. Healthcare 2022, 10, 483. https://doi.org/10.3390/healthcare10030483
Mou TJ, Afroz KA, Haq MA, Jahan D, Ahmad R, Islam T, Chowdhury K, Kumar S, Irfan M, Islam MS, et al. The Effect of Socio-Demographic Factors in Health-Seeking Behaviors among Bangladeshi Residents during the First Wave of COVID-19. Healthcare. 2022; 10(3):483. https://doi.org/10.3390/healthcare10030483
Chicago/Turabian StyleMou, Taslin Jahan, Khandaker Anika Afroz, Md. Ahsanul Haq, Dilshad Jahan, Rahnuma Ahmad, Tariqul Islam, Kona Chowdhury, Santosh Kumar, Mohammed Irfan, Md. Saiful Islam, and et al. 2022. "The Effect of Socio-Demographic Factors in Health-Seeking Behaviors among Bangladeshi Residents during the First Wave of COVID-19" Healthcare 10, no. 3: 483. https://doi.org/10.3390/healthcare10030483
APA StyleMou, T. J., Afroz, K. A., Haq, M. A., Jahan, D., Ahmad, R., Islam, T., Chowdhury, K., Kumar, S., Irfan, M., Islam, M. S., Islam, M. F., Adnan, N., & Haque, M. (2022). The Effect of Socio-Demographic Factors in Health-Seeking Behaviors among Bangladeshi Residents during the First Wave of COVID-19. Healthcare, 10(3), 483. https://doi.org/10.3390/healthcare10030483