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. 2020 Dec 5;33:106621. doi: 10.1016/j.dib.2020.106621

A population-based nationwide dataset concerning the COVID-19 pandemic and serious psychological consequences in Bangladesh

Amir H Pakpour a,b,, Firoj Al Mamun c,d, Ismail Hosen c,d, Mark D Griffiths e, Mohammed A Mamun c,d,⁎⁎
PMCID: PMC7736911  PMID: 33344737

Abstract

This paper presents the dataset concerning knowledge, preventive behavior, psychological consequences, and suicidal behavior regarding the COVID-19 pandemic in Bangladesh. Data were collected through an online based cross-sectional survey between April 1 and April 10 in 64 districts at the early stage of the COVID-19 pandemic in Bangladesh. A total of 10,067 participants’ data were recruited for analysis. The survey contained items concerning (i) socio-demographic information, (ii) knowledge concerning COVID-19, (iii) behavior towards COVID-19, (iv) lockdown and economic issues, (v) assessment of fear of COVID-19, (vi) assessment of insomnia, (vii) assessment of depression, and (viii) assessment of suicidal ideation. Data were analyzed utilizing SPSS (version 22) and are represented as frequencies and percentages based on responses to the whole survey. Given that the data were collected across the whole nation, government authorities and healthcare policymakers can use the data to develop various models and/or policies regarding preventive strategies and help raise awareness through health education towards COVID-19.

Keywords: COVID-19, Knowledge, Behavior, Mental health, Insomnia, Suicidal behavior, Bangladesh

Specifications Table

Subject Infectious diseases and public health
Specific subject area Health behaviours and psychology
Type of data Table
How data were acquired Data were collected utilizing an online survey (i.e., Google Forms web-link). A copy of the survey is included as Supplementary File.
Data format Raw, analysed
Parameters for data collection The target population were individuals in the 64 districts of Bangladesh.
Socio-demographic information, COVID-19 knowledge-related questions, COVID-19 behavior-related questions, Bangla Fear of COVID-19 Scale, Bangla Insomnia Severity Index, Bangla Patient Health Questionnaire, and COVID-19-related suicidal behavior were assessed in the survey.
Description of data collection Non-random convenience sampling using an online data collection platform was used to collect 10,067 participants’ data from a convenience sample from all 64 districts in Bangladesh. The surveys were accessed and completed via social media platform (i.e., Facebook, WhatsApp, Twitter, Snapchat, etc.), email, and via other online communicable means.
Data source location The data were collected by the Department of Public Health and Informatics, Jahangirnagar University, and the Centre for Health Innovation, Networking, Training, Action and Research – Bangladesh (CHINTA Research Bangladesh; which was formally known as the Undergraduate Research Organization), Dhaka, Bangladesh.
Data accessibility Repository name: Harvard Dataverse
Data identification number: doi: https://doi.org/10.7910/DVN/YKH9C1
Direct URL to data:
https://dataverse.harvard.edu/dataset.xhtml?persistentId=doi:10.7910/DVN/YKH9C1

Value of the data

  • This dataset is useful because it comprises data from a largescale nationwide study concerning (i) socio-demographics, (ii) COVID-19-related knowledge, (iii) COVID-19-related behavior practices, (iv) lockdown and economic issues, (v) fear of COVID-19, (vi) depression, (vii) sleep patterns and insomnia, and (viii) suicidal ideation.

  • Government departments along with non-government organizations can use the dataset for facilitating public policy in relation to COVID-19.

  • Screening for suicide and depression can be applied in those regions which are badly affected during the COVOD-19 pandemic.

  • These data can be used to make comparisons with the mental health states of populations in other countries (including suicidal ideation).

  • To reduce panic and related mental health consequences due to COVID-19, these data can be a major resource for helping developing evidence-based intervention and prevention programs.

    Further analysis of the dataset can be used to aid new methods and/or models to aid good mental health among Bangladeshi people during the COVID-19 pandemic.

2. Data Description

As the COVID-19 pandemic has spread out throughout the world, many Bangladeshi communities have been negatively impacted by COVID-19. In Bangladesh, during the early stage of COVID-19 pandemic, an online-based survey was conducted which collected data assessing the level of COVID-19 knowledge, attitudes, and practice among the Bangladeshi general population. The final dataset comprised a total of 10,067 participants. The dataset comprises (i) socio-demographic characteristics (e.g., gender, age group, educational status, occupational status, data discipline, residence area, marital status, comorbidities, current health condition, smoking status, alcohol-drinking status, frequency of social media use, etc.) (Table 1); (ii) sources from where participants get information regarding COVID-19 (e.g., social media, YouTube, newspaper, television, health-related website, and other sources) (Table 1); (iii); participants’ knowledge concerning COVID-19 (Table 2); (iv) participants’ behavior in preventing COVID-19 (Table 3); (v) lockdown-related questions (Table 4); (vi) assessment of fear of COVID-19 among participants (Table 5); (vii) assessment of severity of insomnia among participants (Table 6); (viii) assessment of depression among participants (Table 7); and (ix) suicidal ideation in relation to COVID-19 among participants (Table 7). Detailed information concerning all of the variables are shown in Tables 18. A copy of the complete survey can be accessed as a Supplementary File.

Table 1.

Distribution of responses in relation to socio-demographic variables.

Socio – demographics Frequency Percentages
Age group; Mean ± SD = 26.94±9.63 years
10–19 years 685 6.8
20–29 years 7175 71.3
30–39 years 1221 12.1
40–49 years 410 4.1
50–59 years 371 3.7
60 years and above (elderly) 196 1.9
Gender
Male 5650 56.1
Female 4402 43.7
Educational status
No formal education 197 2.0
Primary level (up to 5) 169 1.7
Secondary level (6 to 10) 427 4.2
Higher secondary level (11–12) 1139 11.3
Tertiary level 8135 80.8
Occupational status
Unemployed 361 3.6
Day-laborer 79 0.8
Farmer 73 07
Businessman 492 4.9
Student 5878 58.4
Government employee 561 5.6
Private employee 1381 13.7
Retired 92 0.9
Housewife 713 7.1
Others 437 4.3
Data discipline
Pure science 833 8.3
Medical or allied health sciences 2014 20.0
Arts or social science 1257 12.5
Engineering 1264 12.6
Business studies 1052 10.4
Others 1232 12.2
Divisional residence
Barisal 207 2.1
Chittagong 2048 23.9
Dhaka 4292 42.6
Khulna 1045 10.4
Mymensingh 258 2.6
Rajshahi 946 9.4
Sylhet 333 3.3
Administrative residence
Village 2336 23.2
Upazilla town 1359 13.5
District level town 2334 23.2
Divisional city 4038 40.1
Marital status
Unmarried 7081 70.3
Married 2839 28.2
Divorced 40 0.4
Widower 22 0.2
Widow 62 0.6
Others 23 0.2
Smoking status
Yes 1486 14.8
No 8581 85.2
Alcohol drinking status
Yes 267 2.7
No 9800 97.3
Current health status
Very good 6909 68.6
Acceptable 2811 27.9
Poor 312 3.1
Very poor 35 0.3
Current diseases
Diabetics Yes 399 4.0
No 2078 20.6
High blood pressure Yes 585 5.8
No 1892 18.8
Asthma/respiratory problem Yes 752 7.5
No 1725 17.1
Heart disease Yes 126 1.3
No 2351 23.4
Kidney problem Yes 83 0.8
No 2394 23.8
Cancer Yes 10 0.1
No 2467 24.5
Other diseases not listed Yes 1114 11.1
No 1363 13.5
Taking naps during the day; Mean ± SD = 1.94±0.74
Very likely 3042 30.2
Somewhat likely 4563 45.3
Not likely 2462 24.5
From Dhaka after March 17, 2020
Yes 1294 12.9
No 7671 76.2
From COVID-19 infected country after January 2020
Yes 256 2.5
No 9811 97.5
Social media user
Yes 9152 90.9
No 915 9.1
Frequency of social media use
More than 4 days a week 292 2.9
2 or 3 days a week 318 3.2
Everyday 4082 40.5
Several times a day 4451 44.2
Sources of information regarding COVID-19
Social media Yes 8277 82.2
No 1790 17.8
YouTube Yes 4365 43.4
No 5702 56.6
Newspaper Yes 4933 49.0
No 5134 51.0
Television Yes 7306 72.6
No 2761 27.4
Health-related websites Yes 4498 44.7
No 5569 55.3
Other sources Yes 1948 19.4
No 8119 80.6

Table 2.

Distribution of responses in relation to COVID-19 knowledge-related variables.

Knowledge related questions Frequency Percentages
Spreading Can be spread from infected individuals cough or exhalation Yes 9905 98.4
No 162 1.6
Can be spread from infected individuals by touch Yes 8732 86.7
No 1335 13.3
Can be spread from wild animals Yes 2857 28.4
No 7210 71.6
Can be spread form infected individuals faces Yes 2350 23.3
No 7717 76.7
Can be spread from companion animals or pets such as cats and dogs Yes 3141 31.2
No 6926 68.8
Can be spread through parcels from infected countries Yes 2009 20.0
No 8058 80.0
Symptoms Has an incubation period ranging from 2 to 14 days Yes 9416 93.5
No 651 6.5
Individuals may not develop any symptoms Yes 6525 64.8
No 3542 35.2
The most common symptoms are fever, tiredness, and dry cough Yes 8500 84.4
No 1567 15.6
Individuals may develop respiratory problems Yes 8478 84.2
No 1589 15.8
Some individuals may have aches and pains, nasal congestion, runny nose, sore throat, or diarrhea. Yes 7525 74.7
No 2542 25.3
Individuals with comorbidities are more likely to develop serious illness (e.g., organ failure) Yes 6332 62.9
No 3735 37.1
Preventive measures Washing hands regularly for 20 s Yes 9801 97.4
No 266 2.6
Avoid touching eyes, nose, and mouth Yes 9602 95.4
No 465 4.6
Wearing masks is mandatory Yes 8897 88.4
No 1170 11.6
Avoiding close contact from the infected individuals Yes 9455 93.9
No 612 6.1
Maintain at least one-meter (three feet) distance between yourself and anyone who is coughing or sneezing. Yes 9076 90.2
No 991 9.8
Quarantine at home if you feel unwell and isolate the infected individual Yes 9244 91.8
No 823 8.2
Treatments Taking pills such as paracetamol Yes 3831 38.1
No 6236 61.9
To date, there is no vaccine and no specific antiviral medicine to prevent or treat COVID-2019 Yes 8919 88.6
No 1148 11.4

Table 3.

Distribution of responses related to COVID-19 preventive behaviors.

Preventive behavior related questions Frequency Percentages
Cleaning hands with an alcohol-based hand rub or wash them with soap and water Never 87 0.9
Seldom 196 1.9
Sometimes 965 9.6
Often 3059 30.4
Almost always 5760 57.2
Practicing respiratory hygiene (covering mouth and nose with bent elbow or tissue when coughing or sneezing). Never 307 3.0
Seldom 318 3.2
Sometimes 983 9.8
Often 2036 20.2
Almost always 6423 63.8
Maintaining at least one-meter (three feet) distance from anyone who is coughing or sneezing Never 463 4.6
Seldom 1157 11.5
Sometimes 2083 20.7
Often 3322 33.0
Almost always 3042 30.2
Staying at home if feeling unwell Never 222 2.2
Seldom 365 3.6
Sometimes 856 8.5
Often 2076 20.6
Almost always 6176 61.3
Self-isolating or staying at home for seven days Not a single day 781 7.8
1 day 93 0.9
2 days 140 1.4
3 days 256 2.5
4 days 320 3.2
5 days 488 4.8
6 days 491 4.9
7 days 7498 74.5
Going outside for 15 min or more in the past 7 days Not a single day 4920 48.9
1 day 1279 12.7
2 days 1155 11.5
3 days 780 7.7
4 days 409 4.1
5 days 332 3.3
6 days 168 1.7
7 days 1024 10.2
Had face-to-face contact with another individual for 15 min or more in past seven days Not a single day 5088 50.5
1 day 1820 18.1
2 days 952 9.5
3 days 669 6.6
4 days 346 3.4
5 days 265 2.6
6 days 131 1.3
7 days 796 7.9

Table 4.

Distribution of responses related to lockdown-related variables.

Lockdown-related question Frequency Percentages
Problems faced during lockdown Feeling uncomfortable Yes 6391 63.5
No 3676 36.5
Cannot buy necessary things Yes 4262 42.3
No 5805 57.7
Unable to maintain usual daily routine like before Yes 6066 60.3
No 4001 39.7
Unable to engage in daily physical exercise Yes 3231 32.1
No 6836 67.9
Afraid of going out to sunbathe (e.g., open place, corridor, terrace) Yes 1829 18.2
No 8238 81.8
Unable to play in the field Yes 1902 18.9
No 8165 81.1
Unable to concentrate on household activities Yes 2780 27.6
No 7287 72.4
Facing other problems not listed here Yes 3689 36.6
No 6378 63.4
Having enough food supply Agree 2001 19.9
Disagree 3855 38.3
Undecided 4211 41.8
Experiencing panic due to economic recession Agree 8814 87.6
Disagree 624 6.2
Undecided 629 6.2
Having economic hardship Agree 4283 42.5
Disagree 1373 13.6
Undecided 2230 22.2

Table 5.

Distribution of responses on the fear of COVID-19 scale.

Fear of COVID-19 Scale (FCV-19S) Frequency Percentages
I am most afraid of Coronavirus-19 Strongly disagree 558 5.5
Disagree 1083 10.8
Neither agree nor disagree 1881 18.7
Agree 4898 48.7
Strongly agree 1647 16.4
It makes me uncomfortable to think about Coronavirus-19 Strongly disagree 611 6.1
Disagree 1434 14.2
Neither agree nor disagree 1584 15.7
Agree 5125 50.9
Strongly agree 1313 13.0
My hands become clammy when I think about Coronavirus-19 Strongly disagree 1998 19.8
Disagree 3820 37.9
Neither agree nor disagree 2018 20.0
Agree 1764 17.5
Strongly agree 467 4.6
I am afraid of losing my life because of Coronavirus-19 Strongly disagree 1516 15.1
Disagree 2681 26.6
Neither agree nor disagree 1757 17.5
Agree 3336 33.1
Strongly agree 777 7.7
When watching news and stories about Coronavirus-19 on social media, I become nervous or anxious. Strongly disagree 738 7.3
Disagree 1312 13.0
Neither agree nor disagree 1156 11.5
Agree 5769 57.3
Strongly agree 1092 10.8
I cannot sleep because I'm worrying about getting Coronavirus-19 Strongly disagree 2074 20.6
Disagree 4287 42.6
Neither agree nor disagree 1548 15.4
Agree 1751 17.4
Strongly agree 407 4.0
My heart races or palpitates when I think about getting Coronavirus-19 Strongly disagree 1509 15.0
Disagree 3216 31.9
Neither agree nor disagree 1368 13.6
Agree 3131 31.1
Strongly agree 843 8.4

Table 6.

Distribution of responses on the Insomnia Severity Index.

Insomnia Severity Index (ISI) Frequency Percentages
Difficulty falling asleep None 3548 35.2
Mild 1945 19.3
Moderate 2404 23.9
Severe 1247 12.4
Very severe 923 9.2
Difficulty staying asleep None 4441 44.4
Mild
Moderate 4370 43.4
Severe 948 9.4
Very severe 308 3.1
Problems waking up too early None 5607 55.7
Mild 1425 14.2
Moderate 1968 19.5
Severe 765 7.6
Very severe 302 3.0
How SATISFIED/DISSATISFIED are you with your CURRENT sleep pattern? Very satisfied 1759 17.5
Satisfied 3622 36.0
Moderately satisfied 2819 28.0
Dissatisfied 1294 12.9
Very dissatisfied 573 5.7
How NOTICEABLE to others do you think your sleep problem is in terms of impairing the quality of your life? Not at all noticeable 5769 57.3
A little 1533 15.2
Somewhat 1980 19.7
Much 472 4.7
Very much noticeable 313 3.1
How WORRIED/DISTRESSED are you about your current sleep problem? Not at all worried 5300 52.6
A little 1989 19.8
Somewhat 1620 16.1
Much 803 8.0
Very much worried 355 3.5
To what extent do you consider your sleep problem to INTERFERE with your daily functioning (e.g., daytime fatigue, mood, ability to function at work/daily chores, concentration, memory, mood, etc.) CURRENTLY? Not at all interfering 4443 44.1
A little 1929 19.2
Somewhat 2387 23.7
Much 748 7.4
Very much interfering 560 5.6

Table 7.

Distribution of responses on the Patient Health Questionnaire.

Patient Health Questionnaire (PHQ-9) Frequency Percentages
Little interest or pleasure in doing things Not at all 2175 21.6
Several days 5087 50.5
More than half days 1623 16.1
Nearly everyday 1182 11.7
Feeling down, depressed or hopeless Not at all 2445 24.3
Several days 5083 50.5
More than half days 1529 15.2
Nearly everyday 1010 10.0
Trouble falling or staying asleep, or sleeping too much Not at all 3400 33.8
Several days 3970 39.4
More than half days 1560 15.5
Nearly everyday 1137 11.3
Feeling tired or having little energy Not at all 3470 34.5
Several days 4533 45.0
More than half days 1320 13.1
Nearly everyday 744 7.4
Poor appetite or overheating Not at all 4979 49.5
Several days 3444 34.2
More than half days 1046 10.4
Nearly everyday 598 5.9
Feeling bad about yourself-or that you are a failure or have let yourself or your family down Not at all 5903 58.6
Several days 2739 27.2
More than half days 739 7.3
Nearly everyday 686 6.8
Trouble concentrating on things, such as reading the newspaper or watching television Not at all 3222 32.0
Several days
More than half days 5632 55.9
Nearly everyday 1213 12.0
Moving or speaking so slowly that other people could have noticed. Or the opposite-being so fidgety or restless that you have been moving around a lot more than usual Not at all 6697 66.5
Several days 2421 24.0
More than half days 607 6.0
Nearly everyday 342 3.4
Thoughts that you would be better off dead, or of hurting yourself Not at all 8290 82.3
Several days 1228 12.2
More than half days 284 2.8
Nearly everyday 265 2.6

Table 8.

Distribution of responses related to suicidal behavior.

Suicide-related question Frequency Percentages
“Do you think about committing suicide, and are these thoughts persistent and related to COVID-19 issues?” Yes 506 5.0
No 9581 95.0

3. Experimental Design, Materials and Methods

Cross-sectional data collection was carried out among 64 districts of Bangladesh between April 1 and 10 (2020). In each district, three or four research assistants (approximately 250 in total) were utilized to facilitate the completion of an online survey form via social media platforms among individuals living in those districts (approximately 250 RAs). A total of 10,067 participants out of approximately 11,000 were eligible. The inclusion criteria were (i) being Bangladeshi, (ii) residing in Bangladesh, and (iii) being aged over 10 years.

The survey comprised socio-demographic information including age, gender, educational status, occupational status, current place of residence, marital status, current cigarette smoking behavior (yes/no), current alcohol-drinking behavior (yes/no), and frequency of social media use. Current health status was assessed using a single question (i.e., “Are you suffering from any of the following health-related issues?”) with seven response choices (i.e., diabetes, high blood pressure, asthma/respiratory problem, heart disease, kidney problems, cancer, and any other health conditions not listed) where each positive response was scored as one point.

COVID-19 knowledge was assessed based on questions relating to: (i) spread of infection (six true/false statements; e.g. ‘COVID-19 can spread by touching others’), (ii) symptoms (six true/false statements; e.g., ‘The most common symptoms of COVID-19 are fever, tiredness, and dry cough’), (iii) prevention behaviors (six true/false statements; e.g., ‘Washing hands regularly for 20 s’), and (iv) treatment (two statements; e.g., ‘Taking pills like antibiotics when you have fever’). To create a total COVID-19 knowledge score, each correct answer scored one point and incorrect answers scored zero. All responses are summed to calculate a total score ranging from 0 to 20 where higher scores reflected better knowledge concerning COVID-19. There is no recoding of any items in calculating the total score [1].

COVID-19 preventive behavior was assessed based on four items (e.g., “How often do you clean your hands with an alcohol-based hand rub or wash them with soap and water?”) responded to on a five-point Likert scale from 1 (never) to 5 (almost always). All items are summed to calculate a total score ranging from 4 to 20, with higher scores reflecting higher performing COVID-19 preventive behaviors.

Fear of COVID-19 was assessed using the Bangla Fear of COVID-19 Scale which comprises seven items (e.g., ‘I am afraid of losing my life because of Coronavirus-19′) responded to on a five-point Likert scale from 1 (strongly disagree) to 5 (strongly agree). All items are summed to calculate a total score ranging from 7 to 35, with higher scores indicating higher fear of COVID-19. There is no recoding of any items in calculating the total score [1,2].

Insomnia was assessed using the Bangla Insomnia Severity Index which comprises seven item (e.g., “How satisfied/dissatisfied are you with your current sleep pattern?”) responded to on a five-point Likert scale from 0 (very satisfied) to 4 (very dissatisfied). All items are summed up to calculate a total score ranging from 0 to 28, with higher scores indicating higher insomnia symptomology. There is no recoding of any items in calculating the total score [3].

Depression was assessed using the Bangla Patient Health Questionnaire which comprises nine items (e.g., “Little or interest or pleasure in doing things”) responded to on a five-point Likert scale from 0 (not at all) to 3 (nearly every day). All items are summed to calculate a total score ranging from 0 to 27, with higher scores indicating higher levels of depression. There is no recoding of any items in calculating the total score [4,5].

COVID-19-related suicidal behavior was assessed using a binary (yes/no) response to a single question (“Do you think about committing suicide, and are these thoughts persistent and related to COVID-19 issues?”) which was used in previous Bangladeshi studies [5,6]. Data were analyzed using the Statistical Packages for Social Science (SPSS) version 23.0, AMOS version 23.0 and ArcGIS 10.5 for analysis. Frequency and percentages were calculated.

Ethics Statement

In collecting the data, the 1975 Helsinki declaration and ethical permission to collect the data was granted from Biosafety, Biosecurity, and Ethical Committee of Jahangirnagar University, Bangladesh (BBEC, JU/M 2O20/COVlD-l9/(9)2) and the Institute of Allergy and Clinical Immunology of Bangladesh ethics board, Bangladesh (IRBIACIB/CEC/03202005). Additionally, written informed consent was provided by all participants prior to starting the survey. They were informed about the purpose and nature of the data and they had the right to withdraw their data if they wanted to. For participants under 18 years, parental consent was taken and all the participants were assured about the confidentiality of their data.

CRediT Author Statement

Amir H. Pakpour: Conceptualization, Investigation, Writing original draft and Analyses; Firoj Al Mamun: Conceptualization and Investigation; Ismail Hosen Conceptualization and Investigation; Mark D. Griffiths: Writing, Review and Editing; Mohammed A. Mamun: Conceptualization, Investigation, Writing original draft, Analyses and validation.

Declaration of Competing Interest

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Acknowledgments

The data collection was self-funded, and was facilitated by approximately 250 research assistants across 64 districts in Bangladesh. The authors would like to acknowledge and thank all the voluntary RAs for their time and help in collecting the data.

Footnotes

Supplementary material associated with this article can be found, in the online version, at doi:10.1016/j.dib.2020.106621.

Contributor Information

Amir H. Pakpour, Email: pakpour_amir@yahoo.com.

Mohammed A. Mamun, Email: mamunphi46@gmail.com.

Appendix. Supplementary materials

mmc1.docx (34.2KB, docx)

References

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

mmc1.docx (34.2KB, docx)

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