Literature DB >> 33837107

Impact of COVID-19 pandemic on mental health among general Bangladeshi population: a cross-sectional study.

Rajesh Das1, Md Rakib Hasan2, Sohel Daria1, Md Rabiul Islam3.   

Abstract

OBJECTIVES: Mental health problems significantly increased worldwide during the coronavirus (COVID-19) pandemic. At the early stage of the outbreak, the government of Bangladesh imposed lockdown and quarantine approaches to prevent the spread of the virus, which impacted people's daily life and health. The COVID-19 pandemic has also affected people's economic status, healthcare facilities and other lifestyle factors in Bangladesh. We aimed to assess the impact of the COVID-19 pandemic on mental health among the Bangladeshi population.
METHODS: We conducted an online cross-sectional survey among 672 Bangladeshi people aged between 15 and 65 years all over the country from 15 April to 10 May 2020. After obtaining electronic consent, we conducted a survey assessing people's sociodemographic profiles and psychometric measures. We used The University of California, Los Angeles (UCLA) Loneliness Scale-8, Patient Health Questionnaire-9, Generalized Anxiety Disorder 7-Item Scale and Pittsburgh Sleep Quality Index to assess loneliness, depression, anxiety and sleep disturbance, respectively.
RESULTS: The prevalence of loneliness, depression, anxiety and sleep disturbance was estimated at 71% (mild: 32%, moderate: 29%, severe: 10%), 38% (mild: 24%, moderate: 11%, severe: 3%), 64% (mild: 30%, moderate: 17%, severe: 17%) and 73% (mild: 50%, moderate: 18%, severe: 5%), respectively. In Bangladesh, the key factors associated with poor mental health during COVID-19 were female sex, unemployment, being a student, obesity and living without a family. The present study also identified statistically significant interrelationships among the measured mental health issues.
CONCLUSIONS: A large portion of respondents reported mental health problems during the COVID-19 pandemic in Bangladesh. The present study suggests longitudinal assessments of mental health among Bangladeshi people to determine the gravity of this issue during and after the pandemic. Appropriate supportive programmes and interventional approaches would address mental health problems in Bangladesh during the COVID-19 pandemic. © Author(s) (or their employer(s)) 2021. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  COVID-19; adult psychiatry; anxiety disorders; depression & mood disorders; public health

Year:  2021        PMID: 33837107      PMCID: PMC8042595          DOI: 10.1136/bmjopen-2020-045727

Source DB:  PubMed          Journal:  BMJ Open        ISSN: 2044-6055            Impact factor:   2.692


The study assessed the four major mental health issues among the general Bangladeshi population during the COVID-19 pandemic. The study ensured rapid data collection during public health emergencies and suitability to developing context-specific mental health programmes. Online self-reporting surveys might have multiple biases and are not representative of those without internet facilities. This cross-sectional study was not able to measure the impact of these mental illnesses over time.

Introduction

The novel coronavirus strain SARS-CoV-2 which causes COVID-19 originated from Wuhan, China. COVID-19 was declared a pandemic on 11 March 2020 due to the uncontrolled spread worldwide.1 As of 29 December 2020, over 79.2 million COVID-19 cases and over 1.7 million deaths have been reported worldwide since the start of the pandemic.2 In December 2020, we observed the highest weekly average of 4.3 million confirmed new cases than any previous time.3 This devastating condition has not yet improved due to lack of proper treatment and medications, although more than a hundred vaccine candidates are in different stages of development.4 Most countries imposed lockdown to limit the spread of the virus, which eventually affected people’s socioeconomic conditions and mental health regardless of age, sex, profession and so on.5 COVID-19 is usually transmitted through breathing droplets or contact with infected individuals. This fear of coronavirus infection impacted the lifestyle, psychological health and relationship status of people.6 About 52.1% of people felt worried during the COVID-19 pandemic, and among them 57.8%–77.9% needed mental support from their family and friends.7 Major epidemic and pandemic outbursts have several negative impacts on individual and collective mental health in the society.5 The previous Middle East respiratory syndrome (MERS) and severe acute respiratory syndrome (SARS) severely impacted the local people’s mental health.8 9 Healthcare providers experienced long-term occupational and psychological effects during the SARS outbreak.10 In the USA, a study was conducted among Capitol Hill staff workers to determine how they successfully responded to disaster-related mental health after the anthrax attacks in 2001. The study reported prevalence rates of post-traumatic stress disorder and postanthrax psychiatric disorder among respondents of 55% and 27%, respectively.11 The mental health of many individuals is potentially affected by COVID-19 in many ways. Family members and friends of patients with COVID-19, their close contacts, isolated or suspected population, healthcare providers, and the general population experience extra mental health burden during the COVID-19 pandemic.12 Therefore, understanding the impact of the COVID-19 pandemic on an individual’s mental health might reduce many current and future mental health issues. Bangladesh is a densely populated country with a population size of about 164 million people. The population density is five times higher than any other mega country.13 Several factors that affect mental health are population density, housing, economic status, employment, life experience, disease burden and so on.14 The financial condition of the general population was affected after the implementation of lockdown from 26 March 2020. The Institute of Epidemiology, Disease Control and Research of Bangladesh reported the first COVID-19 cases on 8 March 2020.15 Between 8 March and 27 December 2020, there were 509 148 confirmed cases with 7452 fatalities reported in Bangladesh. It ranks 27th among countries affected by COVID-19, contributing 0.64% COVID-19-related disease burden to the world.16 At the initial stage of the pandemic, many hospitals were not ready to treat COVID-19 and testing facilities were limited. This situation impacted the mental health of many Bangladeshi people. A few people had suicidal ideations after failing to cope with this extra mental burden.17–19 The infection has reached every corner of the country. The number of confirmed cases significantly increased, and as a result mental health-related disorders may increase, particularly among susceptible people. Therefore, more attention needs to be paid to mental health burden during and after the COVID-19 pandemic.20–22 It is equally applicable to other low-income and middle-income countries, where resources are limited to tackle any pandemic situation and its associated mental health issues.23–25 The present study aimed to assess the prevalence rates of loneliness, depression, anxiety and sleep disturbance among the general Bangladeshi population during the COVID-19 pandemic. We also expected to identify factors associated with mental health problems during the COVID-19 pandemic.

Methods

Participants and procedures

We carried out a nationwide cross-sectional online survey between 15 April and 10 May 2020 using the Google survey tool (Google Forms). Here we used the purposive sampling technique to collect primary data from the participants. We assumed the CI, margin of error and expected prevalence at 95%, 5% and 30%, respectively. According to our assumption, the required sample size was 323. We initially thought the response rate might be 20% and invited 1615 people to participate in the survey. However, the actual response rate was 46%, with 736 responses received. After screening, we excluded 64 responses due to partial or incomplete information. Finally, we included 672 respondents (381 men, 291 women) aged between 15 and 65 years in the analysis. Before participation in the survey, the participants reviewed and acknowledged a brief description of the survey, eligibility requirements, procedures and electronic consent form. We obtained electronic consent from all participants. All the respondents of this survey were of Bangladeshi ethnicity and living in Bangladesh at that time. People aged between 15 and 65 years who understood the questions were included in this survey. Exclusion criteria included history of other psychiatric disorders such as delusions, mental retardation, bipolar disorder, schizophrenia, personality disorder, mood-congruent or mood-incongruent psychotic features, comorbid psychiatric illness, neurological disease, or clinical evidence of dementia. Additional exclusion criteria were acute medical conditions, chronic diseases and history of addiction. We did not pay for participation.

Estimations

We used two sets of questionnaires for this survey. The first one was a structured questionnaire designed by the researchers which contained the informed consent and sociodemographic information. The second set was a self-reported structured questionnaire from different psychometric assessment scales. We prepared both sets of questionnaire in English and then translated them to Bangla. First, all questionnaires were translated to Bangla by a medical graduate and a general person who were native speakers of Bangla and were fluent in English. An independent researcher compiled and addressed discrepancies to make a single Bangla forward version. A professional translator with expertise in medical translation and a medical graduate who was not involved in forward translation translated this Bangla version back to English. Again, an independent researcher compiled these back-translated versions in the same way.26 We piloted the questionnaire in a randomly selected small group to confirm clarity and understanding. We circulated the questionnaire in both English and Bengali versions for proper understanding of the questions. We sent the link of the designed Google Forms to participants through emails and social networking sites. The educated family members of illiterate or older respondents helped to collect their responses.

Sociodemographic and biophysical measures

We collected the most relevant sociodemographic information of the respondents. Collected data were regarding age, sex, body mass index (BMI), marital status, education level, occupation, economic status, residence, living status (with or without family) and smoking habit.

Loneliness Scale

The University of California, Los Angeles Loneliness Scale-8 (UCLA-8) is a short form of the UCLA Loneliness Scale which contains eight questions.27 Each question is scored from 1 to 4, depending on the respondent’s answer: 1 (never), 2 (rarely), 3 (sometimes) and 4 (often). We followed reverse scoring for two positive questions from other negative questions (‘I am an outgoing person’ and ‘I can find companionship when I want it’). The total score ranges from 8 to 32. Higher score indicates higher degree of loneliness. We divided the cumulative score into four groups: 8–16, no loneliness; 7–21, mild loneliness; 22–16, moderate loneliness; and 27 or above, severe loneliness.

Patient Health Questionnaire

The Patient Health Questionnaire-9 (PHQ-9) has nine different questions that assess respondents’ depressive symptoms. The total score ranges from 0 to 27 points, where each question is scored from 0 to 3 depending on the answer: 0 (not at all), 1 (several days), 2 (half of the days), and 3 (nearly every day). A score below 10 indicates no depressive symptoms, while a score of 10 or higher indicates the presence of depressive symptoms.28 To determine the gravity of depression, we divided the total score into four levels: cumulative scores <10, 10–15, 16–21 and 22–27 for no depression, mild depression, moderate depression and severe depression, respectively.

Generalized Anxiety Disorder Scale

The Generalised Anxiety Disorder 7-Item Scale (GAD-7) consists of seven basic questions that evaluate respondents’ anxiety disorder. The total score ranges from 0 to 21. Each question has four different scores depending on the response: 0 (not at all), 1 (several days), 2 (more than half the days) and 3 (nearly every day). Higher score indicates high degree of anxiety, divided into four different segments, where <5, 5–9, 10–14 and 15–21 indicate no, mild, moderate and severe anxiety, respectively.29

Pittsburgh Sleep Quality Index

We used the Pittsburgh Sleep Quality Index (PSQI) to determine the sleep quality of respondents over 1 month. This questionnaire consists of 19 specific questions in 7 different domains: (1) sleep quality (one question), (2) sleep latency (two questions), (3) sleep duration (one question), (4) sleep efficiency (three questions), (5) sleep disturbance (nine questions), (6) sleep medication (one question) and (7) daily dysfunction (two questions). Each domain score ranges from 0 to 3. The cumulative score of the seven domains ranges from 0 to 21. A higher total score indicates poor sleep quality, which determines severity. A total PSQI score below 5 indicates no sleep disturbance. A cumulative score of 5 or more indicates poor sleep. Respondents with PSQI scores greater than 10 are considered bad sleepers.30

Statistical analysis

We performed statistical analysis using Microsoft Excel 2016 and Statistical Packages for Social Sciences V.25.0. We used Microsoft Excel for data editing, sorting, coding, classification and tabulation. We then imported the Excel file into IBM SPSS software. We used descriptive statistics to analyse the characteristics of the respondents. We applied χ2 test to observe the differences in loneliness status (yes or no) with or without depression, anxiety or sleep disturbance among the respondents. We assessed the correlations between risk factors and psychometric measures (loneliness, depression, anxiety and sleep quality) using binary logistic regression analysis with a 95% CI. Statistically significant results were considered at p<0.05.

Patient and public involvement

Patients and the public were not involved in this study.

Results

The descriptive statistics for all variables of the respondents are presented in table 1. Of the 672 respondents, 57% and 43% were men and women, respectively. Half of the respondents were above 30 years of age. Of the respondents, 65% had normal BMI and about two-thirds completed higher secondary education. Of the respondents, 57%, 74% and 46% were married, non-smokers and of middle economic class, respectively. We observed two-thirds of the total respondents were living with their family (64%) in a rural area (62%).
Table 1

Distribution of variables and their association with different mental health problems among the respondents

TotalN=672Lonelinessn=478Depressionn=256Generalised anxietyn=429Sleep disturbancen=494
n%Yesχ2dfP valueYesχ2dfP valueYesχ2dfP valueYesχ2dfP value
n%n%n%n%
Age (years)
 15–3034451236692.1910.139119353.6710.056213621.1210.289242703.6210.051
 Above 303284924274137422166625277
Sex
 Male38157278731.4410.231173120.351<0.0012235910.7410.001271712.5710.109
 Female2914320069139482067123380
Body mass index (kg/m2)
 Below 18.532524750.2520.8818564.7420.09328888.1620.01726811.0820.584
 18.5–254356530871163372726331773
 Above 25205311467175371296315174
Marital status
 Unmarried28943210730.5810.446107370.2510.619187650.1610.685207720.9310.336
 Married3835726870149392426328775
Education
 Illiterate26421817.5340.111558640.19918697.3940.11719730.7140.849
 Primary85135969354161726576
 Secondary6194879233844724472
 Higher secondary4106127968146362466030274
 Graduate/above90137179374160676471
Occupation
 Service21933153703.7530.29663012.4530.006125579.2830.026158720.5630.906
 Business284207172517612071
 Student208311587688421487115374
 Unemployed217321476895441396416375
Economic status
 Low24536179730.7520.688106436.1120.047163671.3920.499177722.620.273
 Middle3104621870103331956322472
 High117178169474071619379
Residence
 Urban25538184720.2110.646109433.7910.052164640.0410.841192750.6710.413
 Rural4176219447147352656430272
Living status
 With family430642916811.6230.009179429.8630.02274641.5630.665323754.8230.185
 Without family242361877777321556417171
Smoking habit
 Smoker17726135763.0910.07950289.8810.002105592.1210.145129730.0510.825
 Non-smoker4957434369206423246536574
Loneliness
 Yes478714781002284864.751<0.00136677116.231<0.0013918258.41<0.001
 No19429002814633210353
Depression
 Yes256382288964.751<0.00125610024495177.451<0.0012228737.041<0.001
 No4166225060001854427265
Generalised anxiety
 Yes4296436685116.231<0.00124457177.451<0.0014291003668584.861<0.001
 No24336112461250012853
Sleep disturbance
 Yes494753917958.41<0.0012224537.041<0.0013667584.881<0.001494100
 No1782587493419633500

P values are significant at 95% CI (p<0.05). Significant p values are shown in bold.

df, degrees of freedom; n, Number.

Distribution of variables and their association with different mental health problems among the respondents P values are significant at 95% CI (p<0.05). Significant p values are shown in bold. df, degrees of freedom; n, Number. The prevalence of loneliness, depression, anxiety and sleep disturbance was estimated at 71%, 38%, 64% and 73%, respectively (figure 1). The proportion of respondents experiencing loneliness was higher in (1) people living without family members versus with family members (77% vs 68%, p=0.009) and (2) people with versus without much depression (89% vs 60%, p<0.001), anxiety (85% vs 46%, p<0.001) and sleep disturbance (79% vs 49%, p<0.001), respectively. The proportion of respondents with depression was higher in (1) women versus men (48% vs 31%, p<0.001), (2) unemployed versus service (44% vs 30%, p=0.006), (3) non-smoker versus smoker (42% vs 28%, p=0.002), (4) people of lower economic status versus middle (43% vs 33%, p=0.047), (5) respondents living with family members versus without family members (42% vs 33%, p=0.020), and (6) people with versus without much loneliness (48% vs 14%, p<0.001), anxiety (57% vs 5%, p<0.001) and sleep disturbance (45% vs 19%, p<0.001), respectively. The proportion of respondents with anxiety was higher in (1) women versus men (71% vs 69%, p=0.001), (2) students versus service (71% vs 57%, p=0.026), (3) people with BMI below 18.5 kg/m2 versus above 25 kg/m2 (88% vs 63%, p=0.017), and (4) people with versus without much loneliness (77% vs 32%, p<0.001), depression (95% vs 44%, p<0.001) and sleep disturbance (75% vs 35%, p<0.001), respectively. Finally the proportion of respondents with sleep disturbance was higher in people with versus without much loneliness (82% vs 53%, p<0.001), depression (87% vs 65%, p<0.001) and anxiety (85% vs 53%, p<0.001), respectively.
Figure 1

Mental health problems among the respondents based on their distribution and gravity.

Mental health problems among the respondents based on their distribution and gravity. We performed binary logistic regression analysis to measure the correlations between dependent and independent variables (table 2). Respondents living with family members were 0.46 times less likely than respondents living away from family members to suffer from loneliness (OR=0.46, 95% CI 0.28 to 0.75, p=0.002). Respondents on business occupations were 1.76 times more likely than the unemployed group to have depression (OR=1.76, 95% CI 1.04 to 2.99, p=0.036). Respondents from the middle economic class were 1.62 times more likely than those from high economic class to have depression (OR=1.62, 95% CI 1.04 to 2.25, p=0.033). Urban respondents were 0.66 times less likely to have depression than rural respondents (OR=0.66, 95% CI 0.43 to 0.99, p=0.044). Respondents living with family members were 1.80 times more likely to have depression than respondents living away from family members (OR=1.80, 95% CI 1.13 to 2.87, p=0.014). The probability of suffering from loneliness was 2.96 times higher in respondents who already have depression (OR=2.96, 95% CI 1.73 to 5.05, p<0.001), 3.95 times higher in respondents with anxiety (OR=3.95, 95% CI 2.51 to 6.21, p<0.001) and 2.64 times higher in respondents suffering from sleep disturbance (OR=2.64, 95% CI 1.72 to 4.05, p<0.001), respectively. The probability of having depression was 18.51 times higher in respondents with anxiety (OR=18.51, 95% CI 9.52 to 35.71, p<0.001) and 1.36 times higher in respondents suffering from sleep disturbance (OR=1.36, 95% CI 0.81 to 2.35, p<0.001), respectively. The likelihood of having anxiety was 3.60 times higher in respondents suffering from sleep disturbance (OR=3.60, 95% CI 2.24 to 5.65, p<0.001).
Table 2

Regression analysis of variables by mental health problems among the respondents

Lonelinessn=478Depressionn=256Generalised anxietyn=429Sleep disturbancen=494
OR95% CIP valueOR95% CIP valueOR95% CIP valueOR95% CIP value
Age (years)
 15–300.6060.359 to 1.0230.0610.6530.386 to 1.1050.1120.8570.490 to 1.5010.590.8340.499 to 1.3940.489
 Above 301111
Sex
 Male0.6660.411 to 1.0800.0991.6241.000 to 2.6370.051.4530.869 to 2.4310.1541.0360.648 to 1.6580.882
 Female1111
Body mass index (kg/m2)
 Below 18.51.5740.557 to 4.4430.3920.8890.346 to 2.2820.8060.270.072 to 1.0110.0520.8180.289 to 2.3190.706
 18.5–251.2440.399 to 3.8770.7060.8320.287 to 2.4100.7350.3470.085 to 1.4110.1390.8770.281 to 2.7370.821
 Above 251111
Marital status
 Unmarried0.9020.508 to 1.6000.7230.8450.463 to 1.5420.5841.0970.599 to 2.0110.7631.0090.578 to 1.7640.974
 Married1111
Education
 Illiterate0.4980.211 to 1.1720.1111.0760.476 to 2.4300.8610.5110.215 to 1.2110.1271.3460.617 to 2.9350.455
 Primary1.3650.491 to 3.7940.5511.5450.620 to 3.8510.3510.5660.210 to 1.5250.260.8550.350 to 2.0900.732
 Secondary1.1230.293 to 4.3090.8661.8130.507 to 6.4850.360.2440.059 to 1.0060.0510.8290.249 to 2.7630.761
 Higher secondary0.5180.204 to 1.3140.1661.0060.430 to 2.3510.9890.7880.311 to 2.0000.6161.3960.589 to 3.3100.449
 Graduate/above1111
Occupation
 Service0.8890.292 to 2.7110.8360.3150.099 to 1.0090.0520.8550.296 to 2.4810.7740.8940.318 to 2.5150.831
 Business1.4760.895 to 2.4340.1271.761.037 to 2.9940.0361.30.754 to 2.2370.3441.1610.702 to 1.9230.559
 Student0.6280.264 to 1.9620.2530.7520.363 to 1.0520.0930.5480.362 to 0.9520.4520.5240.241 to 1.1830.263
 Unemployed111
Economic status
 Low1.1110.636 to 1.9410.7121.4780.832 to 2.6240.1830.5620.312 to 1.0110.0541.5880.893 to 2.8240.115
 Middle1.1330.725 to 1.7710.5831.6181.038 to 2.2520.0330.9810.613 to 1.5720.9380.8520.558 to 1.3000.458
 High1111
Residence
 Urban1.060.697 to 1.6110.7850.6550.434 to 0.9880.0441.1460.737 to 1.7810.5450.9290.618 to 1.3970.724
 Rural1111
Living status
 With family0.4570.278 to 0.7510.0021.7971.126 to 2.8670.0140.8420.511 to 1.3880.5011.3440.844 to 2.1400.213
 Without family1111
Smoking habit
 Smoker0.6370.376 to 1.0780.0931.4410.849 to 2.4470.1761.0320.611 to 1.7430.9060.9250.567 to 1.5090.755
 Non-smoker1111
Loneliness
 Yes2.891.669 to 5.000<0.0013.9522.500 to 6.211<0.0012.5251.647 to 3.875<0.001
 No111
Depression
 Yes2.9581.733 to 5.050<0.00118.5189.615 to 35.714<0.0011.3440.800 to 2.2570.263
 No111
Generalised anxiety
 Yes3.9522.506 to 6.211<0.00118.5189.523 to 35.714<0.0013.3672.127 to 3.519<0.001
 No111
Sleep disturbance
 Yes2.6381.718 to 4.048<0.0011.3850.814 to 2.3520.2293.5582.237 to 5.649<0.001
 No111

P values are significant at 95% CI (p<0.05). Significant p values are shown in bold.

n, Number.

Regression analysis of variables by mental health problems among the respondents P values are significant at 95% CI (p<0.05). Significant p values are shown in bold. n, Number.

Discussion

This study examines the impact of the COVID-19 pandemic on the mental health of the general Bangladeshi population. We observed the prevalence rates of loneliness, depression, anxiety and sleep disturbance among the general population were 71%, 38%, 64% and 73%, respectively (figure 1). We observed the associated factors behind the mental health issues are female sex, low economic status, being a student or unemployed, and living without a family. The findings showed a much higher rate of loneliness, depression, anxiety and sleep disturbance among Bangladeshi people during the COVID-19 pandemic. Consistent with our study findings, a cross-sectional epidemiological study reported a higher prevalence of stress (73.4%), depression (50.7%), anxiety (44.7%) and sleep disturbance (36.1%) among Chinese people at the early stage of the outbreak.31 The higher rates of mental health problems in the present study are consistent with the previous SARS and MERS outbreaks.8 9 During the early stage of the pandemic, people had little knowledge about the virus, preventive measures and treatment procedures, fatality rate, and so on. The little information and uncertainty about COVID-19 might contribute to the higher rate of mental health problems. The present study found that about three in every four people in Bangladesh suffered from loneliness at any level of gravity during the lockdown period. Among them, 39% were suffering from moderate to severe loneliness. People living without family during lockdown are more prone to developing loneliness than people living with family. A previous report suggested that social isolation during the COVID-19 pandemic was a risk factor for loneliness.32 People with considerable loneliness are prone to developing other mental health problems, low well-being and suicidal behaviours.33 34 Following the current findings, one study conducted in the UK observed 36% of the respondents felt lonely during the COVID-19 pandemic, which is higher than any previous time.35 Another two studies also reported higher loneliness scores among the general population during COVID-19 than the past times.36 37 We observed a high prevalence of loneliness among people living without their family members. In agreement with the present findings, a recent study reported increased levels of loneliness among women, young people, single, unemployed and those who have other psychiatric illnesses.38 Public communication regarding social distancing and mental well-being involving psychologists, social scientists and mental health specialists can reduce the burden of loneliness.39 Among the respondents, 38% experienced depressive symptoms, including mild (24%), moderate (11%) and severe (3%) symptoms. We also observed a higher prevalence of depressive symptoms among women, people of low economic class, unemployed people, students and people living without a family. Several previous studies also reported a higher rate of depressive symptoms among women than men during the COVID-19 pandemic.40–43 Similar to the results of the present study, an increased rate of depression was reported in several recent studies in Spain, China and Hong Kong due to the COVID-19 pandemic.44–46 However, some previous studies reported depression symptoms among the general Chinese population were 16.5% and among Japanese people 11.4%.47 48 These inconsistencies might be the result of developed socioeconomic status and healthcare facilities. Among the study participants, 64% reported anxiety symptoms, where 30%, 17% and 17% were mild, moderate and severe cases, respectively. Similar to our findings, a study reported the prevalence rate of anxiety disorder in China was 28.8%, ranging from moderate to severe symptoms.49 Also, a high prevalence of anxiety disorder was observed among respondents from many countries during the COVID-19 pandemic compared with previous times.4 40 The prevalence rate of anxiety among Bangladeshi students was 71% in the present study. Final-year students of different education levels might contribute to this high rate due to uncertainty in examinations and the job market. We observed 73% of the general population were suffering from sleep disturbance during the COVID-19 pandemic. Among them, 50%, 18% and 5% reported mild, moderate and severe sleep disturbance. The present study also demonstrated that respondents suffering from loneliness, depression or anxiety are more likely to have sleep disturbance than healthy individuals. Many recent studies reported similar findings. A previous study in China observed that among the general population 29.2% had insomnia, 27.9% had depressive symptoms and 31.6% had anxiety disorder during the COVID-19 pandemic.50 Similarly, another study among Italian people observed 42.2% sleep disturbance, 17.4% moderate or severe insomnia, 24.7% depressive symptoms and 23.2% anxiety symptoms.51 To prevent the rapid spread of COVID-19 infection, the Bangladesh government has closed all educational institutions since 18 March 2020. A country-wide lockdown has been imposed to limit public movement since 26 March 2020 and ordered people to stay at home.17 The country-wide movement restrictions and stay at home orders greatly impacted the market economy, offices, business organisations and transport systems.52 53 Most of the Bangladeshi population depend on regular income, and due to the indefinite lockdown they were uncertain about returning to their workplace. This situation created a confounding impact on their mental health status.54 In Bangladesh, we observed several reported suicide cases during the COVID-19 pandemic as a result of getting infected, economic loss, social security, job security and emotional breakdown among marginalised wage earners.55 56 An Indian case study suggested that COVID-19 may significantly impact the mental health status and influence suicidal ideation and suicide attempts among the affected people; other comorbid diseases may aggravate the situation.57 We found that 44% of unemployed and 30% of service holders were suffering from depression. About 43% of people belonging to the lower economic class faced depression during the lockdown period. The prevalence rates of mental health problems before the COVID-19 period varied from 6.5% to 31.0% among adults in Bangladesh.58 The significant increase in prevalence rates of mental health issues during the COVID-19 pandemic (ranging from 38% to 73%) in the present study is a concern. Therefore, the National Institute of Mental Health of Bangladesh has announced some recommendations. Recommendations regarding the management of mental health during the COVID-19 pandemic include using psychotropics, avoiding COVID-19 news or scrolling the news several times a day, authenticating sources of information, less use of social media, employing simple relaxation techniques such as breathing exercises, and so on.59 In agreement with these suggestions, several studies also recommended online responses, counselling, social support, and training on mental health for patients, healthcare professionals, public service holders, youth, students and elderly populations to manage mental health problems.24 60 61 Worldwide, the COVID-19 pandemic has revealed how unprepared the healthcare systems are, as well as the scarcity of resources (personal protective equipment, testing kits and so on) to combat the situation.62

Strengths and limitations of this study

The present study has some limitations. First, online self-reporting surveys might have multiple biases and are not representative of those without internet facilities. Second, this cross-sectional study was not able to measure the impact of these mental illnesses over time. Third, we did not assess the altered lifestyle of the respondents during the COVID-19 pandemic. The present study also has some advantages. First, this is the first ever study in Bangladesh to assess the four major mental health issues during the COVID-19 pandemic. This study provides an idea about the mental health of the Bangladeshi population during the COVID-19 pandemic.

Future research

This study highlights the need for mental health assessment and proper management of these issues during the COVID-19 pandemic and future research among healthcare professionals to explore their actual mental health status in this pandemic situation.

Conclusion

In summary, our findings reflect the gravity of mental health problems during the COVID-19 pandemic. A large portion of the general population in Bangladesh were affected mentally with different levels of severity. We suggest intensive mental healthcare services for the Bangladeshi people. Therefore, integrated government, non-government and community activities can ensure individual and collective mental health. Mental health support, social security and economic stability should also be top priorities to grow confidence among the general population.
  46 in total

Review 1.  Guidelines for the process of cross-cultural adaptation of self-report measures.

Authors:  D E Beaton; C Bombardier; F Guillemin; M B Ferraz
Journal:  Spine (Phila Pa 1976)       Date:  2000-12-15       Impact factor: 3.468

2.  Exposure to bioterrorism and mental health response among staff on Capitol Hill.

Authors:  Carol S North; Betty Pfefferbaum; Meena Vythilingam; Gregory J Martin; John K Schorr; Angela S Boudreaux; Edward L Spitznagel; Barry A Hong
Journal:  Biosecur Bioterror       Date:  2009-12

3.  Association of loneliness with all-cause mortality: A meta-analysis.

Authors:  Laura Alejandra Rico-Uribe; Francisco Félix Caballero; Natalia Martín-María; María Cabello; José Luis Ayuso-Mateos; Marta Miret
Journal:  PLoS One       Date:  2018-01-04       Impact factor: 3.240

4.  Prevalence and predictors of general psychiatric disorders and loneliness during COVID-19 in the United Kingdom.

Authors:  Lambert Zixin Li; Senhu Wang
Journal:  Psychiatry Res       Date:  2020-06-30       Impact factor: 3.222

5.  Evaluation of serum amino acids and non-enzymatic antioxidants in drug-naïve first-episode major depressive disorder.

Authors:  Md Rabiul Islam; Samia Ali; James Regun Karmoker; Mohammad Fahim Kadir; Maizbha Uddin Ahmed; Zabun Nahar; Sardar Mohammad Ashraful Islam; Mohammad Safiqul Islam; Abul Hasnat; Md Saiful Islam
Journal:  BMC Psychiatry       Date:  2020-06-24       Impact factor: 3.630

6.  Prevalence and socio-demographic correlates of psychological health problems in Chinese adolescents during the outbreak of COVID-19.

Authors:  Shuang-Jiang Zhou; Li-Gang Zhang; Lei-Lei Wang; Zhao-Chang Guo; Jing-Qi Wang; Jin-Cheng Chen; Mei Liu; Xi Chen; Jing-Xu Chen
Journal:  Eur Child Adolesc Psychiatry       Date:  2020-05-03       Impact factor: 4.785

7.  Population challenges for Bangladesh in the coming decades.

Authors:  Peter Kim Streatfield; Zunaid Ahsan Karar
Journal:  J Health Popul Nutr       Date:  2008-09       Impact factor: 2.000

8.  Psychological interventions for people affected by the COVID-19 epidemic.

Authors:  Li Duan; Gang Zhu
Journal:  Lancet Psychiatry       Date:  2020-02-19       Impact factor: 27.083

9.  Online mental health services in China during the COVID-19 outbreak.

Authors:  Shuai Liu; Lulu Yang; Chenxi Zhang; Yu-Tao Xiang; Zhongchun Liu; Shaohua Hu; Bin Zhang
Journal:  Lancet Psychiatry       Date:  2020-02-19       Impact factor: 27.083

10.  Psychological distress, anxiety, family violence, suicidality, and wellbeing in New Zealand during the COVID-19 lockdown: A cross-sectional study.

Authors:  Susanna Every-Palmer; Matthew Jenkins; Philip Gendall; Janet Hoek; Ben Beaglehole; Caroline Bell; Jonathan Williman; Charlene Rapsey; James Stanley
Journal:  PLoS One       Date:  2020-11-04       Impact factor: 3.240

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  40 in total

1.  Community-based decentralized mental health services are essential to prevent the epidemic turn of post-Covid mental disorders in Bangladesh: A call to action.

Authors:  Md Rabiul Islam; Mohammad Saydur Rahman; Mma Shalahuddin Qusar
Journal:  Health Sci Rep       Date:  2022-07-20

2.  Prevalence and associated risk factors for mental health problems among patients with polycystic ovary syndrome in Bangladesh: A nationwide cross-Sectional study.

Authors:  Moynul Hasan; Sumaya Sultana; Md Sohan; Shahnaj Parvin; Md Ashrafur Rahman; Md Jamal Hossain; Mohammad Saydur Rahman; Md Rabiul Islam
Journal:  PLoS One       Date:  2022-06-22       Impact factor: 3.752

3.  The massive attack of COVID-19 in India is a big concern for Bangladesh: The key focus should be given on the interconnection between the countries.

Authors:  Sohel Daria; Md Asaduzzaman; Mohammad Shahriar; Md Rabiul Islam
Journal:  Int J Health Plann Manage       Date:  2021-05-19

4.  'This bloody rona!': using the digital story completion method and thematic analysis to explore the mental health impacts of COVID-19 in Australia.

Authors:  Priya Vaughan; Caroline Lenette; Katherine Boydell
Journal:  BMJ Open       Date:  2022-01-17       Impact factor: 2.692

5.  One-year changes in the prevalence and positive psychological correlates of depressive symptoms during the COVID-19 pandemic among medical science students in northeast of Iran.

Authors:  Seyedmohammad Mirhosseini; Samuel Grimwood; Ali Dadgari; Mohammad Hasan Basirinezhad; Rasoul Montazeri; Hossein Ebrahimi
Journal:  Health Sci Rep       Date:  2022-01-12

Review 6.  Sleep disturbances during the COVID-19 pandemic: A systematic review, meta-analysis, and meta-regression.

Authors:  Haitham A Jahrami; Omar A Alhaj; Ali M Humood; Ahmad F Alenezi; Feten Fekih-Romdhane; Maha M AlRasheed; Zahra Q Saif; Nicola Luigi Bragazzi; Seithikurippu R Pandi-Perumal; Ahmed S BaHammam; Michael V Vitiello
Journal:  Sleep Med Rev       Date:  2022-01-22       Impact factor: 11.401

7.  Association of Covid-19 pandemic-related stress and depressive symptoms among international medical students.

Authors:  Lu Lu; Xiaobin Wang; Xuehang Wang; Xiaoxi Guo; Bochen Pan
Journal:  BMC Psychiatry       Date:  2022-01-07       Impact factor: 3.630

8.  A cross-sectional study of COVID-19-related knowledge, risk perceptions, and preventive practices among pharmacy students in Bangladesh.

Authors:  Sadia Afruz Ether; Faisal Abdullah Emon; Asm Roknuzzaman; Md Rakibuzzaman; Fahad Imtiaz Rahman; Md Rabiul Islam
Journal:  SAGE Open Med       Date:  2022-01-18

9.  Post-secondary Student Mental Health During COVID-19: A Meta-Analysis.

Authors:  Jenney Zhu; Nicole Racine; Elisabeth Bailin Xie; Julianna Park; Julianna Watt; Rachel Eirich; Keith Dobson; Sheri Madigan
Journal:  Front Psychiatry       Date:  2021-12-10       Impact factor: 4.157

10.  Impact of online education on fear of academic delay and psychological distress among university students following one year of COVID-19 outbreak in Bangladesh.

Authors:  Md Jamal Hossain; Foyez Ahmmed; S M Abdur Rahman; Sherejad Sanam; Talha Bin Emran; Saikat Mitra
Journal:  Heliyon       Date:  2021-06-26
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