| Literature DB >> 22404959 |
Oliver Gruebner1, M Mobarak H Khan, Sven Lautenbach, Daniel Müller, Alexander Krämer, Tobia Lakes, Patrick Hostert.
Abstract
BACKGROUND: Urban health is of global concern because the majority of the world's population lives in urban areas. Although mental health problems (e.g. depression) in developing countries are highly prevalent, such issues are not yet adequately addressed in the rapidly urbanising megacities of these countries, where a growing number of residents live in slums. Little is known about the spectrum of mental well-being in urban slums and only poor knowledge exists on health promotive socio-physical environments in these areas. Using a geo-epidemiological approach, the present study identified factors that contribute to the mental well-being in the slums of Dhaka, which currently accommodates an estimated population of more than 14 million, including 3.4 million slum dwellers.Entities:
Mesh:
Year: 2012 PMID: 22404959 PMCID: PMC3361672 DOI: 10.1186/1471-2458-12-177
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Physical neighbourhood characteristics
| Characteristic | Mean | SD | Min | Max | SE | N |
|---|---|---|---|---|---|---|
| Distance to nearest river (in metre) | 627.6 | 659.4 | 4.6 | 2448.3 | 15.1 | 1905 |
| Distance to nearest street (in metre) | 365.1 | 324.4 | 0.2 | 1225 | 7.4 | 1905 |
| Distance to nearest park (in metre) | 2477.2 | 2398.4 | 561.3 | 7910.2 | 54.95 | 1905 |
| Vegetation ratio | 5247.9 | 4374.7 | 118.1 | 22669.2 | 100.23 | 1905 |
| Surface water ratio | 807.54 | 1892.64 | 0 | 11750.9 | 43.4 | 1905 |
| Is your area flood affected | Yes | 69.2 | 1296 | |||
| No | 30.8 | 576 | ||||
| Does your area have a proper drainage system | Yes | 18.6 | 354 | |||
| No | 81.4 | 1546 |
Descriptive statistics for variables used in the study. The metrical variables were gained through geoprocessing in GIS (geo-epidemiological variables), the categorical variables were gained through a cohort study in 2009 (baseline data).
Socio-economic household characteristics
| Characteristic | Mean | SD | Min | Max | SE | N |
|---|---|---|---|---|---|---|
| Monthly rent for the house (in Taka) | 801.4 | 770.9 | 0 | 14000 | 17.7 | 1903 |
| How many rooms do you have | 1.89 | 2.2 | 0 | 19 | 0.1 | 1888 |
| Family size (number of family members) | 4.3 | 1.6 | 1 | 13 | 0.04 | 1905 |
| Persons living in the same room | 4 | 2.4 | 1 | 47 | 0.1 | 1905 |
| Persons sharing same meals | 4.4 | 2.5 | 1 | 54 | 0.1 | 1905 |
| Family members earning income | 1.7 | 0.9 | 0 | 6 | 0.02 | 1902 |
| Monthly family income (in Taka) | 6979.7 | 5149.5 | 0 | 140000 | 118 | 1905 |
| Working hours per day | 7.8 | 3.2 | 0 | 24 | 0.1 | 1894 |
| How many family members smoke | 0.7 | 0.6 | 0 | 6 | 0.01 | 1905 |
| Light sufficiency in the house | Yes | 26 | 495 | |||
| No | 74 | 1408 | ||||
| Family has household item | Radio | 5.7 | 109 | |||
| TV | 33.4 | 635 | ||||
| Gas burner | 28.3 | 539 | ||||
| Electric fan | 69.4 | 1321 | ||||
| Tape/CD/VCD | 17.2 | 327 | ||||
| Refrigerator | 1.5 | 28 | ||||
| Is your house provisional or permanent | Provisional | 91.5 | 1734 | |||
| Permanent | 8.5 | 161 | ||||
| Room is used also for other purposes except living | Yes | 30.1 | 568 | |||
| No | 69.9 | 1317 | ||||
| Room is sufficient for family | Yes | 23.2 | 433 | |||
| No | 76.8 | 1435 | ||||
| Housing index | Kutcha | 16.6 | 309 | |||
| Semi-pucca | 52.9 | 986 | ||||
| Pucca | 30.5 | 567 | ||||
| Cooking material | Straw, wood | 61.7 | 1174 | |||
| Kerosene | 1.6 | 30 | ||||
| Gas, electric | 36.4 | 699 | ||||
| Type of water supply | Surface water | 9.6 | 180 | |||
| Piped water | 53.4 | 1004 | ||||
| Type of toilet facility | Open latrine | 26.2 | 499 | |||
| Pit latrine | 59.6 | 1135 | ||||
| Septic tank | 14.2 | 269 | ||||
| Type of garbage disposal | Open space | 79.1 | 1501 | |||
| Bin outside house | 13.5 | 256 | ||||
| Collected | 7.4 | 141 | ||||
| Do you have a job contract | Yes | 4.8 | 91 | |||
| No | 95.2 | 1798 | ||||
| Do you think that your job is harmful to your health | Yes | 22.2 | 420 | |||
| No | 77.8 | 1476 | ||||
| Do you like your job | I like it very much | 5.5 | 103 | |||
| I like it | 62.3 | 1169 | ||||
| Its ok | 18.1 | 340 | ||||
| I don't like it | 13 | 243 | ||||
| I very much dislike it | 1.1 | 21 |
Descriptive statistics for variables used in the study. The variables were gained through a cohort study in 2009 (baseline data).
Health knowledge and behaviour
| Characteristic | Category | N | % |
|---|---|---|---|
| Do you think that smoking tobacco is bad for your health | Yes | 1855 | 97.8 |
| No | 42 | 2.2 | |
| ...physical exercise is good for your health | Yes | 1833 | 97.2 |
| No | 52 | 2.8 | |
| ...polluted/clogged water/garbage near the house spread disease and increase the risk of poor health | Yes | 1657 | 88.8 |
| No | 209 | 11.2 | |
| ...air pollution is bad for your health | Yes | 1756 | 93.8 |
| No | 116 | 6.2 | |
| Do you smoke cigarettes | Yes | 475 | 24.9 |
| No | 1430 | 75.1 | |
| Do you smoke inside your room | Yes | 334 | 17.5 |
| No | 1571 | 82.5 | |
| Community membership | Yes | 170 | 9 |
| No | 1726 | 91 | |
| Do you use a bed net | Yes | 1873 | 98.4 |
| No | 30 | 1.6 | |
| Education | 0 years spent in school | 1234 | 64.7 |
| 1-5 years primary school | 368 | 19.3 | |
| 6-10 years secondary school | 180 | 9.5 | |
| 11+ years higher education | 123 | 6.5 | |
| Marital status | Married | 1700 | 89.2 |
| Not married/divorced/other | 205 | 10.8 | |
| Migrant | Yes | 1711 | 89.9 |
| No | 193 | 10.1 | |
| Age group | 15-24 years | 419 | 22 |
| 25-34 years | 628 | 33 | |
| 35-44 years | 430 | 22.6 | |
| 45-54 years | 230 | 12.1 | |
| 55-64 years | 131 | 6.9 | |
| 65-74 years | 49 | 2.6 | |
| 75+ years | 18 | 1 | |
| Gender | Female | 983 | 51.6 |
| Male | 922 | 48.4 | |
| Having had a disease | Yes | 1469 | 77.4 |
| No | 429 | 22.6 |
Descriptive statistics for variables used in the study. The variables were gained through a cohort study in 2009 (baseline data).
Figure 1Geo-epidemiological approach used for this study. Parallelograms stand for geoprocessing or statistical processes, rhombuses for selection criteria and rectangles for outcomes. Note that levels were used only for conceptualising the socio-physical environment. All variables were available on the individual level, i.e. for each respondent separately and no aggregation to higher levels was done in order to prevent information loss.
Figure 2Histograms for derived factors. Descriptive statistics for the factors extracted through factor analysis in SPSS 17.
Explanatory variables used for this study
| Level | Health-determining factor (explained variance) | Original variables (Pearson correlation coefficients) | |
|---|---|---|---|
| Natural environment (4.3%) | ○ Larger amounts of vegetation in 100 m around the households (0.8) | ||
| ○ Longer distances to the nearest major street (0.7) | |||
| ○ Lesser amounts of surface water in 100 m around the households (-0.6) | |||
| Flood non- affectedness (4.1%) | ○ Whether the area was regarded as flood non-affected (0.7) | ||
| ○ Whether the area was regarded as having a proper drainage system (0.7) | |||
| ○ Longer distances to the nearest river (0.5) | |||
| Housing quality (6.3%) | ○ Better-quality fuel for cooking (0.9) | ||
| ○ Owning a gas burner (0.8) | |||
| ○ Higher monthly rent for the house (0.6) | |||
| ○ Better construction materials (0.5) | |||
| Access to basic services (4.7%) | ○ Owning an electric fan (0.6) | ||
| ○ Short distance to the nearest river (0.5) | |||
| ○ Better water supply (0.5) | |||
| ○ Large distance to the nearest park area | |||
| (-0.8) | |||
| Sanitation (3.6%) | ○ Better toilet facility (0.7) | ||
| ○ Better garbage disposal (0.6) | |||
| Housing sufficiency (3.6%) | ○ Whether the room was used for other purposes aside from living (0.7) | ||
| ○ Sufficient light in the house (0.6) | |||
| ○ Whether the room was regarded as sufficient for one's family (0.5) | |||
| Housing durability (3.5%) | ○ Whether the house was considered to be permanent (0.8) | ||
| ○ Household had a refrigerator (0.7) | |||
| Household wealth (4.3%) | ○ Owning a Tape/CD/VCD (0.7) | ||
| ○ Owning a radio (0.6) | |||
| ○ Owning a TV (0.6) | |||
| ○ Higher number of rooms (0.5) | |||
| Job satisfaction (4%) | ○ Not thinking that the job is harmful to one's health (0.8) | ||
| ○ Liking one's job (0.7) | |||
| ○ Fewer working hours per day (-0.4) | |||
| Income generation (3.7%) | ○ A large number of family members earning income (0.7) | ||
| ○ Having a job contract (0.4) | |||
| ○ Higher monthly family income (0.7) | |||
| ○ Working more hours a day (0.2) | |||
| Population density (5.2%) | ○ Higher number of family members (0.8) | ||
| ○ Higher numbers of persons sharing the same meals (0.7) | |||
| ○ Higher number of persons living in the same room (0.7) | |||
| Smoking behavior (4.8%) | ○ Not smoking cigarettes (0.8) | ||
| ○ Not smoking inside the room (0.8) | |||
| ○ Small number of family members who smoke (-0.7) | |||
| Environmental health knowledge (3.9%) | ○ Thinking that polluted, stagnant water and garbage near one's house could spread disease and increase the risk of poor health (0.8) | ||
| ○ And that air pollution is bad for one's health(0.6) | |||
| Personal health knowledge (3.4%) | ○ Thinking that smoking tobacco is bad for one's health (0.7) | ||
| ○ And that physical exercise can be good for one's health (0.7) | |||
| Community | Original variables were used | ||
| member | |||
| Using bed net | |||
| Education | |||
| Married | |||
| Migrant | |||
| Age | |||
| Gender | |||
| Disease | |||
Mental health-determining factors (HDF) were used as explanatory variables. They were prior extracted through factor analysis in SPSS 17. In the table, we report the name of each HDF (i.e. the factors) and in brackets the explained variance. The original variables which were found to be correlated with these HDF are also displayed, with Pearson correlation coefficients in brackets.
Figure 3Descriptive statistics for WHO-5 scores (mental well-being), self-rated health and diseases. For A and B, a bootstrap hypothesis test of equality between the both groups was applied with gender being equal (p value = 0.55) and wealth group being significantly different from each other (p value = 0.04), indicated by a reference band in grey. For B, least poor implies to the upper wealth index quintile, while most poor implies to the lowest. Note that for C and D, a WHO-5 scored 13 or above has been found to be indicative of good mental well-being in high-income country settings (cf. horizontal line).
Determinants of mental well-being (WHO-5)
| Level | Mental health- determining factor (HDF) | Multivariable generalized linear regression | ||
|---|---|---|---|---|
| Coefficient | 95%CI LL/UL | |||
| Natural environment | -0.06*** | -0.08/-0.03 | ||
| Flood non-affectedness | 0.06*** | 0.04/0.09 | ||
| Housing quality | 0.03* | 0.01/0.06 | ||
| Basic services | --- | --- | ||
| Sanitation | 0.08*** | 0.06/0.11 | ||
| Housing sufficiency | 0.07*** | 0.04/0.09 | ||
| Housing durability | 0.07*** | 0.05/0.09 | ||
| Household wealth | --- | --- | ||
| Job satisfaction | 0.09*** | 0.06/0.11 | ||
| Income generation | 0.08*** | 0.06/0.11 | ||
| Population density | -0.05*** | -0.07/-0.02 | ||
| Smoking behaviour | --- | --- | ||
| Environmental health | 0.11*** | 0.08/0.13 | ||
| knowledge | ||||
| Personal health | -0.03* | -0.05/-0.004 | ||
| knowledge | ||||
| Community member | 0.07. | -0.02/0.15 | ||
| Using bed net | --- | --- | ||
| Education | --- | --- | ||
| Married | --- | --- | ||
| Migrant | 0.06. | -0.02/0.15 | ||
| Age | -0.01*** | -0.01/-0.004 | ||
| Gender: | ||||
| Female | Reference | |||
| Male | 0.11*** | 0.06/0.16 | ||
| Having had a disease: | ||||
| No | Reference | |||
| Yes | -0.22*** | -0.28/-0.16 | ||
A multivariable generalised linear regression model was used assuming a negative-binomial distribution of the target variable mental well-being (WHO-5 score). The explaining variables (HDF) are displayed in the table. A forward/backward model selection approach was used based on AIC. Note that despite conceptualising the HDF at different levels, all analyses were done at the individual level.