| Literature DB >> 34316522 |
Md Shaharier Alam1,2, Torit Chakraborty1,2.
Abstract
In May 2020, when Bangladesh was struggling with community transmission of COVID-19, the country had to face the strongest tropical storm- Cyclone Amphan -which puts the evacuation process in jeopardy. Thus, it is crucial to measure the public risk perception about COVID-19 and its influence on the evacuation decision. This study explores the nexus between COVID-19 risk perception and coastal peoples' evacuation decisions during cyclone Amphan. With an analysis of 378 sample households survey data of the Satkhira district, this study developed the COVID-19 risk perception index using Principal Component Analysis (PCA) and categorized the respondents based on the score. The result shows that 1.85 %, 21.43 %, 45.77 %, 25.13 %, and 5.82 % have very low, low, moderate, high, and very high-risk perceptions, respectively. The analysis also reveals that 96.6 % of the respondents received an evacuation order during Amphan, but only 42 % complied with the order. The t-test analysis and common language effect size test of the survey data reveal that the respondents with a high perception score are 65 % less likely to evacuate than the respondents with low perception scores. This study has important implications in guiding concerned authorities to combat natural disasters during COVID-19 and other similar public health emergencies in the future.Entities:
Keywords: COVID-19; Cyclone Amphan; Evacuation behavior; Principal component analysis; Risk perception
Year: 2021 PMID: 34316522 PMCID: PMC8295048 DOI: 10.1016/j.heliyon.2021.e07655
Source DB: PubMed Journal: Heliyon ISSN: 2405-8440
Figure 1Map of the surveyed villages of Satkhira district (Source: Author, 2020).
Figure 2Methodological framework of the study.
Principal components (PC), variables, loadings, communality, and variance for the COVID-19 risk perception index.
| Component Name | Questionnaire Item | Communality | Loading | Variance |
|---|---|---|---|---|
| Cognitive Factors (PC1) | Are you aware of the Coronavirus disease (COVID-19) outbreak? | 0.950 | 0.946 | 30.436 % |
| Do you think the Coronavirus disease (COVID-19) outbreak is dangerous? | 0.862 | 0.818 | ||
| How much do you recall the symptom of COVID-19? | 0.811 | 0.753 | ||
| Do you think Hand Hygiene/Hand cleaning is important to control the spread of the Coronavirus disease (COVID-19) outbreak? | 0.814 | 0.859 | ||
| Do you think wearing masks is important to control the spread of the Coronavirus disease (COVID-19) outbreak? | 0.800 | 0.828 | ||
| Those that have contact with someone who has COVID-19 infection should be isolated in the right place immediately. The observation period is usually 14 days | 0.784 | 0.761 | ||
| Children and adults should take steps to prevent the COVID-19 virus from infection. | 0.671 | 0.76 | ||
| COVID-19 individuals with no symptoms of fever cannot spread the virus to anyone | 0.641 | 0.683 | ||
| Individuals should stop being crowded to prevent COVID-19 infection. | 0.676 | 0.634 | ||
| How much do you feel you understand the government's strategy to deal with the coronavirus/COVID-19 pandemic? | 0.765 | 0.662 | ||
| Do you have the process of getting tested for COVID-19 (i.e., contract numbers of official, testing location, etc.)? | 0.749 | 0.455 | ||
| It can be treated at home | 0.619 | 0.618 | ||
| I feared that my society would boycott me if I got COVID | 0.680 | 0.501 | ||
| I will not get proper treatment if I get COVID-19 | 0.677 | 0.668 | ||
| I am planning to/have already limited my travel plans/doing work from home | 0.560 | 0.517 | ||
| Political Factors (PC2) | The politician/policymakers have appropriate knowledge of the COVID-19 pandemic | 0.745 | 0.715 | 8.875 % |
| Do you think Public Health Authorities in Bangladesh are doing enough to control the Coronavirus disease (COVID-19) outbreak? | 0.824 | 0.796 | ||
| How much do you trust the country's politicians to deal effectively with the pandemic? | 0.847 | 0.827 | ||
| Protective Behavior (PC3) | To what extent do you feel your country's actions limit the spread of coronavirus makes a difference? | 0.650 | 0.232 | 7.952 % |
| People from the minor religious/cultural group may face discrimination during this pandemic | 0.581 | 0.317 | ||
| To what extent do you feel that the personal actions you are taking to limit coronavirus spread make a difference? | 0.920 | 0.756 | ||
| I plan to/have already taken COVID protection measures (disinfectant, mask, sanitized, hand gloves, washing my hands more, and disinfecting my home.) | 0.864 | 0.764 | ||
| I am planning to/have reduced to shake the hand, avoid crowded space, etc. | 0.822 | 0.638 | ||
| Trust Factor (PC4) | Authorities have been negligent in issuing early warnings for COVID-19 disease. | 0.926 | 0.846 | 6.071 % |
| The number of confirmed cases and death is under-reported by the authority | 0.918 | 0.826 | ||
| I am worried/anxious/alarmed and frightened by the quarantine | 0.635 | 0.269 | ||
| Fatality Perception Factor (PC5) | Assuming that you have been infected with coronavirus, what do you believe is your likelihood of dying from it? | 0.420 | 0.501 | 5.997 % |
| Religious Factor (PC6) | Without doing anything, only relying on God and Only Religious rituals can prevent COVID-19 spread. | 0.839 | 0.313 | 4.870 % |
| Willingness Factor (PC7) | Are you willing to carry out prevention measures currently recommended by the authority? | 0.670 | 0.698 | 4.122 % |
| Prejudicial Factors (PC8) | Have you heard any rumors regarding the COVID-19 during this pandemic? | 0.663 | 0.668 | 3.466 % |
| COVID-19 is a punishment of God | 0.821 | 0.317 | ||
| Healthcare managers and staff exaggerate the risk of COVID-19 | 0.847 | 0.177 | ||
| Emotional Factors (PC9) | COVID-19 will NOT affect very many people in the country I'm currently living in | 0.666 | 0.518 | 2.954 % |
| I will probably get sick with the coronavirus/COVID-19 | 0.696 | 0.395 |
Extraction Method: Principal Component Analysis.
Figure 4Risk perception of coastal people about the factors of COVID-19 based on Likert Scale data.
Figure 3Risk perception categories of coastal people about COVID-19.
Socio-economic characteristics of the respondents and their association with COVID-19 risk perception.
| Socio-Economic Variable | Category | Percentage | N | Chi-square | Effect Size (Cramer's V/Phi) |
|---|---|---|---|---|---|
| Age | 18yr than 30 yr | 15.1 % | 57 | χ2 = 22.994, df = 3, sig = 0.001∗∗ | 0.247 |
| 30 yr to 45 yr | 51.3 % | 194 | |||
| 45yr to 60 yr | 27.8 % | 105 | |||
| Greater than 60 year | 5.8 % | 22 | |||
| Gender | Male | 70.1 % | 265 | χ2 = 0.013, df = 1, sig = 0.11 | 0.006 |
| Female | 29.9 % | 113 | |||
| Education | Illiterate | 33.3 % | 126 | χ2 = 96.252, df = 6, sig = 0.001∗∗ | 0.505 |
| Class I–V | 24.1 % | 91 | |||
| Class VI-X | 19.8 % | 75 | |||
| SSC or Equivalent | 10.8S% | 41 | |||
| HSC or Equivalent | 8.7 % | 33 | |||
| Honors or Equivalent | 2.6 % | 10 | |||
| Masters or Equivalent | 0.5 % | 2 | |||
| Religion | Muslim | 94.7 % | 358 | χ2 = 0.934, df = 2, sig = 0.627 | 0.05 |
| Hindu | 4.8 % | 18 | |||
| Christian | 0.5 % | 2 | |||
| Income | <5000 BDT | 0.8 % | 3 | χ2 = 18.516, df = 3, sig = 0.001∗∗ | 0.221 |
| 5000-10000 BDT | 33.3 % | 126 | |||
| 10000 to 20000 BDT | 64.0 % | 242 | |||
| 20000 to 30000 BDT | 1.9 % | 7 |
Note: N=378, Significant variables are marked with (∗∗).
The contrast between respondent evacuation status and socio-demographic profile.
| Indicator | Evacuee | Non-evacuee | Chi-square | Effect Size (Cramer's V/Phi) | |
|---|---|---|---|---|---|
| Age | Less than 30 yr | 21 (36.8 %) | 36 (63.2 %) | χ2 = 16.991, df = 3, sig = 0.001∗∗ | V = 0.212 |
| 30 yr to 45 yr | 66 (34 %) | 128 (66 %) | |||
| 45yr to 60 yr | 60 (57.1 %) | 45 (42.9 %) | |||
| Greater than 60 yr | 12 (54.5 %) | 10 (45.5 %) | |||
| Gender | Male | 107 (40.4 %) | 158 (59.6 %) | χ2 = 1.034, df = 1, sig = 0.309 | ϕ = -.052 |
| Female | 52 (46.0 %) | 61 (54.0 %) | |||
| Religion | Muslim | 148 (41.3 %) | 210 (58.7 %) | χ2 = 4.209, df = 2, sig = 0.122 | V = 0.106 |
| Hindu | 11 (61.1 %) | 7 (38.9 %) | |||
| Christian | 0 (0 %) | 2 (100 %) | |||
| Education | Illiterate | 67 (53.2 %) | 59 (46.8 %) | χ2 = 24.683, df = 6, sig = 0.001∗∗ | V = 0.256 |
| Class I–V | 41 (45.1 %) | 50 (54.9 %) | |||
| Class VI-X | 30 (40 %) | 45 (60 %) | |||
| SSC or Equivalent | 10 (24.4 %) | 31 (75.6 %) | |||
| HSC or Equivalent | 5 (15.2 %) | 28 (84.8 %) | |||
| Honors or Equivalent | 6 (60 %) | 4 (40 %) | |||
| Masters or Equivalent | 0 (0 %) | 2 (100 %) | |||
| Number of Family Member | 3 Member | 16 (50 %) | 16 (50 %) | χ2 = 1.087, df = 3, sig = 0.780 | V = 0.054 |
| 4 Member | 61 (42.7 %) | 82 (57.3 %) | |||
| 5 Member | 54 (40.6 %) | 79 (59.4 %) | |||
| >5 Member | 28 (40 %) | 42 (60 %) | |||
| Marital Status | Married | 153 (41.6 %) | 215 (58.4 %) | χ2 = 5.054, df = 2, sig = 0.08 | V = 0.116 |
| Unmarried | 0 (0 %) | 2 (100 %) | |||
| Widow/Divorced | 6 (75 %) | 2 (25 %) | |||
| Occupation | Agriculture/Farming | 49 (53.8 %) | 42 (46.2 %) | χ2 = 13.960, df = 3, sig = 0.003 ∗∗ | V = 0.192 |
| Business | 61 (45.9 %) | 72 (54.1 %) | |||
| Service | 34 (35.4 %) | 62 (64.6 %) | |||
| Others | 15 (25.9 %) | 43 (74.1 %) | |||
| Household Type | Pucca | 3 (6.3 %) | 45 (93.8 %) | χ2 = 100.651, df = 3, sig = 0.001∗∗ | V = 0.516 |
| Semi-Pucca | 30 (21.4 %) | 110 (78.6 %) | |||
| Katcha | 102 (63 %) | 60 (37 %) | |||
| Wooden House | 24 (85.7 %) | 4 (14.3 %) | |||
| Cattle Ownership | Yes | 124 (48.1 %) | 134 (51.9 %) | χ2 = 11.999, df = 1, sig = 0.001∗∗ | ϕ = 0.178 |
| No | 35 (29.2 %) | 85 (70.8 %) | |||
| Child Below 6 yr | Yes | 51 (40.5 %) | 75 (59.5 %) | χ2 = 0.195, df = 1, sig = 0.658 | ϕ = -0.23 |
| No | 108 (42.9 %) | 144 (57.1 %) | |||
| Old (60+) | Yes | 65 (31.7 %) | 140 (68.3 %) | χ2 = 19.712, df = 1, sig = 0.001∗∗ | ϕ = -0.228 |
| No | 94 (54.3 %) | 79 (45.7 %) | |||
| Income | <5000 BDT | 0 (0 %) | 3 (100 %) | χ2 = 7.467, df = 3, sig = 0.058 | V = 0.141 |
| 5000-10000 BDT | 54 (42.9 %) | 72 (57.1 %) | |||
| 10000 to 20000 BDT | 105 (43.4 %) | 137 (56.6 %) | |||
| 20000 to 30000 BDT | 0 (0 %) | 7 (100 %) |
Note: N = 378, Significant variables are marked with (∗∗).
Mean difference of perception scores of COVID-19 risk between evacuee and non-evacuee during cyclone Amphan.
| Evacuation Status | N | Mean | Standard Deviation | t value | |
|---|---|---|---|---|---|
| COVID-19 Risk | Evacuee | 159 | -.9286 | 2.71772 | -5.309∗ |
| Perception Score | Non-Evacuee | 219 | .6742 | 3.02087 |
∗p < 0.05.