COVID-19 Epidemic in Bangladesh among Rural and Urban Residents: An Online Cross-Sectional Survey of Knowledge, Attitudes, and Practices
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Respondents
2.2. Instrument
2.3. Data Collection
2.4. Sampling
2.5. Data Management and Statistical Analysis
3. Results
3.1. Socio-Demographic Characteristics
3.2. Correct Knowledge of Respondents on COVID-19
3.3. Attitudes of the Respondents towards COVID-19
3.4. Good Preventive Practices against COVID-19
3.5. Sources of Information on COVID-19
3.6. Analysis of Demographic Factors, Knowledge, and Attitudes Associated with Preventive Practices against COVID-19
4. Discussion
5. Study Limitations
6. Conclusions and Recommendations
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Rural | Urban | |||||
---|---|---|---|---|---|---|
Variables | n | % (95% C.I.) | n | % (95% C.I.) | Total n (%) | p-Value |
Total respondents | 911 | 59.9 | 609 | 40.1 | 1520 (100.0) | |
Age group (years) | <0.01 | |||||
<30 | 398 | 43.7 (40.5–46.9) | 327 | 53.7 (49.7–57.6) | 725 (47.7) | |
30–40 | 213 | 23.4 (20.7–26.2) | 206 | 33.8 (30.2–37.7) | 419 (27.6) | |
>40 | 300 | 32.9 (29.9–36.0) | 76 | 12.5 (10.0–15.3) | 376 (24.7) | |
Sex | <0.01 * | |||||
Female | 304 | 33.4 (30.4–36.5) | 271 | 45.5 (40.6–48.5) | 575 (37.8) | |
Male | 607 | 66.6 (63.5–69.6) | 338 | 55.5 (51.5–59.4) | 945 (62.1) | |
Education | <0.01 * | |||||
≤ higher secondary | 309 | 33.9 (30.9–37.0) | 49 | 8.0 (6.1–10.4) | 358 (23.6) | |
> higher secondary | 602 | 66.1 (63.0–69.1) | 560 | 92.0 (89.6–93.9) | 1162 (76.4) | |
Marital status | <0.01 | |||||
Unmarried | 595 | 65.3 (62.2–68.4) | 534 | 87.7 (84.9–90.1) | 1129 (74.2) | |
Married | 311 | 34.1 (31.1–37.3) | 75 | 12.3 (9.9–15.1) | 386 (25.3) | |
Divorced/Separated | 5 | 0.5 (0.2–1.2) | N/A | N/A | 5 (0.3) | |
Monthly family income (BDT) | <0.01 | |||||
<10,000 | 288 | 31.6 (28.7–34.7) | 52 | 8.5 (6.5–11.0) | 340 (22.3) | |
10,000–20,000 | 247 | 27.1 (24.3–30.1) | 104 | 17.1 (14.2–20.2) | 351 (23.0) | |
20,000–30,000 | 196 | 21.5 (18.9–24.3) | 146 | 24.0 (20.7–27.5) | 342 (22.5) | |
>30,000 | 180 | 19.8 (17.3–22.4) | 307 | 50.4 (46.4–54.4) | 487 (32.0) | |
COVID-19 is a global pandemic | 0.215 * | |||||
No | 13 | 1.4 (0.8–2.4) | 4 | 0.7 (0.2–1.6) | 17 (1.1) | |
Yes | 898 | 98.6 (97.6–99.2) | 605 | 99.3 (98.4–99.8) | 1503 (98.8) | |
Use internet to learn about COVID-19 | <0.01 * | |||||
No | 136 | 14.9 (12.7–17.4) | 28 | 4.6 (3.1–6.5) | 164 (10.7) | |
Yes | 775 | 85.1 (82.6–87.3) | 581 | 95.4 (93.5–96.5) | 1356 (89.2) |
Knowledge Items | Rural | Urban | ||||
---|---|---|---|---|---|---|
n | % (95% C.I) | n | % (95% C.I.) | Total n (%) | p-Value | |
Total respondents | 911 | 59.9 | 609 | 40.1 | 1520 (100.0) | |
Transmission modes | ||||||
k1. Contact with respiratory droplets | 483 | 53.0 (49.8–56.2) | 405 | 66.5 (62.7–70.2) | 888 (58.4) | <0.01 * |
k2. Touching and shaking hands with an infected person | 781 | 85.7 (83.3–87.9) | 565 | 92.8 (90.5–94.6) | 1346 (88.5) | <0.01 * |
k3. The use of objects used by an infected person | 672 | 73.8 (70.8–76.5) | 501 | 82.3 (79.1–85.1) | 1173 (77.1) | <0.01 * |
k4. Sexual route | 281 | 30.8 (27.9–33.9) | 201 | 33.0 (29.4–36.8) | 482 (31.7) | 0.399 * |
k5. Person-to-person | 704 | 77.3 (74.5–79.9) | 479 | 78.7 (75.3–81.8) | 1183 (77.8) | 0.571 * |
k6. Close contact | 632 | 69.4 (66.3–72.3) | 465 | 76.4 (71.9–79.6) | 1097 (72.1) | <0.01 * |
Signs and symptoms | ||||||
k7. Fever | 875 | 96.0 (94.9–97.2) | 587 | 96.4 (94.7–97.7) | 1462 (96.0) | 0.786 * |
k8. Tiredness | 459 | 50.4 (47.1–53.1) | 339 | 55.7 (51.7–59.6) | 798 (52.5) | <0.05 * |
k9. Dry cough | 780 | 85.6 (83.2–87.8) | 551 | 90.5 (88.0–92.6) | 1331 (87.5) | <0.01 * |
k10. Shortness of breath/Breathing difficulties | 696 | 76.4 (73.6–79.1) | 544 | 89.3 (86.7–91.6) | 1240 (81.5) | <0.01 * |
k11. Aches and pains | 433 | 47.5 (44.3–50.8) | 311 | 51.1 (47.1–55.0) | 744 (48.9) | 0.191 * |
k12. Nasal congestion | 261 | 28.6 (25.8–31.7) | 223 | 36.6 (32.9–40.5) | 484 (31.8) | <0.01 * |
k13. Running nose | 315 | 34.6 (31.5–37.7) | 216 | 35.5 (31.7–39.3) | 531 (35.0) | 0.742 * |
k14. Sore throat | 348 | 38.2 (35.1–41.4) | 326 | 53.5 (49.6–57.5) | 674 (44.3) | <0.01 * |
k15. Diarrhea | 447 | 49.1 (47.7–54.2) | 335 | 55.0 (51.0–58.9) | 782 (51.4) | <0.05 * |
Treatments/prevention | ||||||
k16. The incubation period (2 weeks) | 786 | 86.3 (83.9–88.4) | 561 | 92.1 (89.8–94.1) | 1347 (88.6) | <0.01 * |
k17. COVID-19 vaccines, drugs, or treatments is available | 686 | 75.3 (72.4–78.0) | 477 | 78.3 (74.9–81.5) | 1163 (76.5) | 0.068 * |
k18. Lock-down | 475 | 52.1 (48.9–55.4) | 415 | 68.1 (64.4–71.8) | 890 (58.5) | <0.01 * |
k19. Self-isolation | 417 | 45.8 (42.6–49.0) | 355 | 58.3 (54.3–62.2) | 772 (50.7) | <0.01 * |
k20. Home quarantine | 770 | 84.5 (82.1–86.8) | 505 | 82.9 (79.8–85.8) | 1275 (83.8) | 0.434 * |
Summarized knowledge about COVID-19 | <0.01 * | |||||
Good | 226 | 24.8 (22.1–27.7) | 218 | 35.8 (32.1–39.7) | 444 (29.2) | |
Poor | 685 | 75.2 (72.3–77.9) | 391 | 64.2 (60.3–67.9) | 1076 (70.8) |
Attitude Items | Rural | Urban | ||||
---|---|---|---|---|---|---|
n | % (95% C.I) | n | % (95% C.I.) | Total n (%) | p-Value | |
Total respondents | 911 | 59.9 | 609 | 40.1 | 1520 (100.0) | |
A1. The government should lock-down the travel areas to avoid the spread of COVID-19 | <0.01 | |||||
Strongly agree | 639 | 70.1 (67.1–73.0) | 491 | 80.6 (77.3–83.6) | 1130 (74.3) | |
Agree | 220 | 24.1 (21.5–27.0) | 97 | 15.9 (13.2–19.0) | 317 (20.8) | |
Neutral | 30 | 3.3 (2.3–4.6) | 10 | 1.6 (0.8–2.9) | 40 (2.6) | |
Disagree | 19 | 2.1 (1.3–3.2) | 10 | 1.6 (0.8–2.9) | 29 (1.9) | |
Strongly disagree | 3 | 0.3 (0.1–0.9) | 1 | 0.2 (0.0–0.8) | 4 (0.2) | |
A2. Home quarantine can reduce COVID-19 outbreaks | <0.05 | |||||
Strongly agree | 449 | 49.3 (46.0–52.5) | 342 | 56.2 (52.2–60.1) | 791 (52.0) | |
Agree | 359 | 39.4 (36.3–42.6) | 216 | 35.5 (31.7–39.3) | 575 (37.8) | |
Neutral | 48 | 5.3 (4.0–6.9) | 25 | 4.1 (2.7–5.9) | 73 (4.8) | |
Disagree | 45 | 4.9 (3.7–6.5) | 15 | 2.5 (1.4–3.9) | 60 (3.9) | |
Strongly disagree | 10 | 1.1 (0.6–1.9) | 11 | 1.8 (1.0–3.1) | 21 (1.3) | |
A3. Isolation and treatment of infected people are effective ways to reduce the spread of the virus | <0.01 | |||||
Strongly agree | 426 | 46.8 (43.5–50.0) | 355 | 58.3 (54.3–62.2) | 781 (51.3) | |
Agree | 390 | 42.8 (39.6–46.0) | 206 | 33.8 (30.2–37.7) | 596 (39.2) | |
Neutral | 64 | 7.0 (5.5–8.8) | 39 | 6.4 (4.7–8.6) | 103 (6.7) | |
Disagree | 27 | 3.0 (2.0–4.2) | 7 | 1.1 (0.5–2.2) | 34 (2.2) | |
Strongly disagree | 4 | 0.4 (0.1–1.0) | 2 | 0.3 (.1–1.0) | 6 (0.3) | |
A4. Personal hygiene is important in controlling the spread of COVID-19 | <0.01 | |||||
Strongly agree | 545 | 59.8 (56.6–63.0) | 455 | 74.7 (71.1–78.0) | 1000 (65.7) | |
Agree | 315 | 34.6 (31.5–37.7) | 134 | 24.0 (18.9–25.4) | 449 (29.5) | |
Neutral | 40 | 4.4 (3.2–5.9) | 12 | 2.0 (1.1–3.3) | 52 (3.4) | |
Disagree | 9 | 1.0 (0.5–1.8) | 7 | 1.1 (0.5–2.2) | 16 (1.0) | |
Strongly disagree | 2 | 0.2 (0.0–0.7) | 1 | 0.2 (0.0–0.8) | 3 (0.1) | |
Summarized attitude towards COVID-19 | <0.01 * | |||||
Good | 683 | 75.0 (72.1–77.7) | 517 | 84.9 (81.9–87.6) | 1200 (78.9) | |
Poor | 228 | 25.0 (22.3–27.9) | 92 | 15.1 (12.4–18.1) | 320 (21.1) |
Practice Items | Rural | Urban | ||||
---|---|---|---|---|---|---|
n | % (95% C.I) | n | % (95% C.I) | Total n (%) | p-Value | |
Total respondents | 911 | 59.9 | 609 | 40.1 | 1520 (100.0) | |
Preventive practices | ||||||
P1. Practice self-isolation/Home quarantine | 777 | 85.3 (82.9–87.5) | 561 | 92.1 (89.8–94.1) | 1338 (88.0) | <0.01* |
P2. Ensure sufficient food stock | 297 | 32.3 (29.6–35.7) | 211 | 34.4 (30.9–38.5) | 508 (33.4) | 0.437 * |
P3. Practice respiratory hygiene | 507 | 55.7 (52.4–58.9) | 371 | 60.9 (57.0–64.7) | 878 (57.7) | <0.05 * |
P4. Wash hand frequently using hand sanitizer | 712 | 78.2 (75.4–80.7) | 554 | 91.0 (88.5–93.1) | 1266 (83.2) | <0.01 * |
P5. Use face mask | 697 | 76.5 (73.7–79.2) | 484 | 79.5 (76.1–82.5) | 1181 (77.6) | 0.187 * |
P6. Avoid touching nose, mouth and eyes | 688 | 75.5 (72.7–78.2) | 501 | 82.3 (79.1–85.1) | 1189 (78.2) | <0.01 * |
P7. Maintain social distance (min 1 m) | 440 | 48.3 (45.1–51.5) | 418 | 68.6 (64.9–72.2) | 858 (56.4) | <0.01 * |
P8. Avoid practice of handshake | 446 | 49.0 (45.7–52.2) | 319 | 52.4 (48.4–56.3) | 765 (50.3) | 0.209 * |
P9. Avoid practice of handshake hug | 678 | 74.4 (71.5–77.2) | 474 | 77.8 (74.4–81.0) | 1152 (75.7) | 0.143 * |
P10. Avoid visit to any public places | 413 | 45.3 (42.1–48.6) | 230 | 37.8 (34.0–41.7) | 643 (42.3) | <0.01 * |
P11. Avoid contact with infected person | 796 | 87.4 (85.1–88.9) | 555 | 91.1 (88.7–93.2) | 1351 (88.8) | <0.05 * |
P12. Seek immediate medical attention/treatment regarding primary symptoms | 556 | 61.0 (57.8–64.2) | 426 | 70.0 (66.2–73.5) | 982 (64.6) | <0.01* |
Summarized preventive practices against COVID-19 | <0.01 * | |||||
Good | 200 | 22.0 (19.4–24.7) | 198 | 32.5 (28.9–36.3) | 398 (26.2) | |
Poor | 711 | 78.0 (75.3–80.6) | 411 | 67.5 (63.7–71.1) | 1122 (73.8) |
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Rahman, M.S.; Karamehic-Muratovic, A.; Amrin, M.; Chowdhury, A.H.; Mondol, M.S.; Haque, U.; Ali, P. COVID-19 Epidemic in Bangladesh among Rural and Urban Residents: An Online Cross-Sectional Survey of Knowledge, Attitudes, and Practices. Epidemiologia 2021, 2, 1-13. https://doi.org/10.3390/epidemiologia2010001
Rahman MS, Karamehic-Muratovic A, Amrin M, Chowdhury AH, Mondol MS, Haque U, Ali P. COVID-19 Epidemic in Bangladesh among Rural and Urban Residents: An Online Cross-Sectional Survey of Knowledge, Attitudes, and Practices. Epidemiologia. 2021; 2(1):1-13. https://doi.org/10.3390/epidemiologia2010001
Chicago/Turabian StyleRahman, Md. Siddikur, Ajlina Karamehic-Muratovic, Miftahuzzannat Amrin, Arman Hossain Chowdhury, Md. Selim Mondol, Ubydul Haque, and Parveen Ali. 2021. "COVID-19 Epidemic in Bangladesh among Rural and Urban Residents: An Online Cross-Sectional Survey of Knowledge, Attitudes, and Practices" Epidemiologia 2, no. 1: 1-13. https://doi.org/10.3390/epidemiologia2010001
APA StyleRahman, M. S., Karamehic-Muratovic, A., Amrin, M., Chowdhury, A. H., Mondol, M. S., Haque, U., & Ali, P. (2021). COVID-19 Epidemic in Bangladesh among Rural and Urban Residents: An Online Cross-Sectional Survey of Knowledge, Attitudes, and Practices. Epidemiologia, 2(1), 1-13. https://doi.org/10.3390/epidemiologia2010001