Characterisation and Sociodemographic Determinants of Stunting Among Malaysian Children Aged 6-19 Years
NCT ID: NCT03364426
Last Updated: 2017-12-08
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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COMPLETED
6759 participants
OBSERVATIONAL
2012-04-12
2014-09-23
Brief Summary
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Detailed Description
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There is not a specific control treatment in this study. Rather, we calculate the risk of stunting associated with (1) a unit increase in each exposure, or (2) categories of exposure with respect to a referent category. Specifically, for the primary exposures as listed above:
* Age: risk per year increase
* Sex: risk in girls versus boys (referent)
* Ethnicity: risk in (1) Indian, (2) Chinese, (3) Indigenous or (4) Other ethnicity, versus Malay (referent)
* BMI-for-age status: risk in (1) underweight or (2) overweight, versus normal weight (referent)
* Birth order: risk in children of second, third and fourth or higher birth order, versus first born (referent)
* Maternal height: risk in children of mothers with height 155-159cm, 150-154cm, 145-149cm, and \<145cm, versus those with height 160cm or higher (referent)
* Maternal current underweight: risk in children of mothers with BMI \<18.5 kg/m2, versus those with BMI \>=18.5 kg/m2 (referent)
* Rooms (bedrooms, bathrooms, living areas) per household member: risk per unit increase in room to person ratio for each room type
* Type of toilet: risk among children in households with (1) Bore hole toilet, (2) Pour flush toilet, (3) Flush toilet with septic tank, (4) Flush toilet connected with sewerage system, versus those living in households with none, bucket or hanging latrine (referent)
* Toilet shared with other household (yes/no): risk among children in households with a shared toilet, versus those living in households without one
* Main source of drinking water: risk among children in households using water from (1) Public standpipe or other protected source, (2) Piped into yard, (3) Piped into house, versus those living in households using an unprotected source (referent)
* Main method of garbage disposal: risk among children in households having their garbage (1) Collected and thrown for recycling, (2) Collected irregularly by local authority, (3) Collected regularly by local authority, versus in those in households where garbage is buried, burned or thrown (referent)
Methods for crude analysis and gaining an introductory sense of the data include examination of variable distributions and clustering of the outcome variable of interest (stunting or height-for-age). Exposure variables are assessed by stunting status; differences between stunted and non-stunted groups are assessed using Student's t test for continuous variables, and Pearson's chi squared test (Fisher's exact test for variables with cell counts \<5) for categorical variables. Additionally, the classification and prevalence of stunting is assessed using two different references: the World Health 2007 reference and Centers for Disease Control and Prevention 2000 reference; agreement in classification between the two is calculated using Cohen's kappa.
The primary method of analysis is mixed effects Poisson regression, with stunting as the outcome of interest. Final models include all exposure variables of interest, in order to assess any independent associations between each exposure and stunting risk. All models are adjusted for clustering at the household level.
A number of secondary analyses are used in order to check the robustness and specificity of associations. These include:
1. Adding maternal age as a covariate in models, examining associations of maternal age with stunting, and the effect of its addition on other associations
2. Adding in maternal education, paternal education or head of household's education, and assessing subsequent effects as described in (1)
3. Adding in paternal height, and assessing subsequent effects as described in (1)
4. Adding in a number of theoretically uncorrelated variables to test the specificity of associations, and assessing subsequent effects as described in (1)
5. Using mixed effects linear regression, with height-for-age z-score as the outcome of interest. Final models include all exposure variables of interest, in order to assess any independent associations between each exposure and stunting risk. All models are adjusted for clustering at the household level.
Both the primary and secondary analyses are run with stunting or height-for-age expressed according to (1) the Centers for Disease Control and Prevention 2000 reference and (2) the World Health Organization 2007 reference.
Conditions
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Study Design
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OTHER
CROSS_SECTIONAL
Interventions
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No intervention
No intervention - this is was an observational, cross-sectional study to identify potential risk factors associated with stunting
Eligibility Criteria
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Inclusion Criteria
2. Whether or not the potential participant has information on all exposure and outcome variables of interest.
6 Years
19 Years
ALL
Yes
Sponsors
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Manjinder Sandhu
OTHER
Responsible Party
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Manjinder Sandhu
Reader in Global Health and Population Sciences, Division of Computational Medicine, Department of Medicine
Principal Investigators
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Daniel D Reidpath, PhD
Role: PRINCIPAL_INVESTIGATOR
Monash University Malaysia
References
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Partap U, Young EH, Allotey P, Soyiri IN, Jahan N, Komahan K, Devarajan N, Sandhu MS, Reidpath DD. HDSS Profile: The South East Asia Community Observatory Health and Demographic Surveillance System (SEACO HDSS). Int J Epidemiol. 2017 Oct 1;46(5):1370-1371g. doi: 10.1093/ije/dyx113. No abstract available.
Related Links
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South East Asia Community Observatory website
Other Identifiers
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U1111-1203-0963
Identifier Type: -
Identifier Source: org_study_id