| Literature DB >> 21332980 |
Geòrgia Escaramís1, Josep L Carrasco, John J Aponte, Delino Nhalungo, Ariel Nhacolo, Pedro Alonso, Carlos Ascaso.
Abstract
BACKGROUND: Reducing childhood mortality is the fourth goal of the Millennium Development Goals agreed at the United Nations Millennium Summit in September 2000. However, childhood mortality in developing countries remains high. Providing an accurate picture of space and time-trend variations in child mortality in a region might generate further ideas for health planning actions to achieve such a reduction. The purpose of this study was to examine the spatio-temporal variation for child mortality rates in Manhiça, a district within the Maputo province of southern rural Mozambique during the period 1997-2005 using a proper generalized linear mixed model.Entities:
Mesh:
Year: 2011 PMID: 21332980 PMCID: PMC3050678 DOI: 10.1186/1476-072X-10-14
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Associations between log standardised mortality rates (log of observed cases/expected cases) for children and socio-demographic indicators adjusted by global mean time-trend among the 115 Manhiça neighbourhoods derived from the Poisson regression models.
| Covariates | Categories | Estimate | p-value |
|---|---|---|---|
| (standard error) | |||
| Time | Continuous | 0.005 (0.009) | 0.5736 |
| time2 | -0.027 (0.004) | <0.0001 | |
| % households with WC | <74% | 0.170 (0.095) | 0.3546 |
| 74-82% | 0.080 (0.077) | ||
| 82-89% | 0.075 (0.067) | ||
| >89% | |||
| % households with kitchen | <40% | -0.094 (0.099) | 0.5196 |
| 40-49% | -0.086 (0.080) | ||
| 49-59% | -0.001 (0.069) | ||
| >59% | |||
| % cane households | <62% | -0.065 (0.086) | 0.1963 |
| 62-72% | 0.090 (0.067) | ||
| 72-81% | 0.008 (0.060) | ||
| >81% | |||
| % households with a single construction | <54% | 0.213 (0.072) | 0.0003 |
| 54-60% | 0.023 (0.070) | ||
| 60-67% | -0.080 (0.066) | ||
| >67% | |||
| % households with an illiterate mother | <49% | 0.005 (0.090) | 0.4626 |
| 49-54% | 0.009 (0.082) | ||
| 54-59% | 0.088 (0.071) | ||
| >59% | |||
Figure 1First plot: dots indicate annual log standardised mortality rates for Manhiça district, while the smoothed line is the estimated second-order polynomial time trend derived from the Poisson regression model. The same information is shown in subsequent plots per each of the 115 neighbourhoods that comprise Manhiça. Last plot: boxplots showing the variability among the 115 intercept, first- and second-order polynomial estimates derived from the 115 neighbourhood-specific Poisson regression models.
Model parameter estimates derived from the Poisson regression mixed models used to evaluate the spatio-temporal variation in Manhiça child mortality rates (log standardised mortality rates; log of observed cases/expected cases) during the period 1997-2005.
| Parameter symbol | Description of parameter | Estimate | ||||
|---|---|---|---|---|---|---|
| (Standard Error) | ||||||
| Model 0* | Model 1 | Model2 | Model 3 | |||
| α0 | Baseline log-rate across all areas | 0.101 (0.051) | 0.129 (0.063) | 0.114 (0.062) | 0.114 (0.062) | |
| α1 | Log of the overall curvature trend during the period 1997-2005 | 0.009 (0.010) | 0.008 (0.010) | 0.008 (0.010) | 0.008 (0.010) | |
| α2 | -0.028 (0.004) | -0.028 (0.004) | -0.028 (0.004) | -0.028 (0.004) | ||
| Log-relative risks of % households with a single construction | <54% | 0.276 (0.068) | 0.231 (0.085) | 0.224 (0.084) | 0.220 (0.084) | |
| 54-60% | 0.090 (0.069) | 0.052 (0.082) | 0.050 (0.082) | 0.051 (0.082) | ||
| 60-67% | -0.031 (0.067) | -0.060 (0.076) | -0.059 (0.076) | -0.056 (0.076) | ||
| >67% | baseline | baseline | baseline | baseline | ||
| Variance component reflecting the non structured variability of neighbourhood-specific intercepts | -- | 0.051 (0.017) | -- | -- | ||
| Variance component reflecting the spatially-structured variability of neighbourhood-specific intercepts | -- | -- | 0.094 (0.030) | 0.092 (0.032) | ||
| Variance components reflecting the non-structured variability of neighbourhood-specific curvature time trend | -- | -- | -- | 0.0006 (0.0013) | ||
| -- | -- | -- | 0.00008 (0.0002) | |||
| ϕ | Dispersion parameter | 1.218 | 1.067 | 1.057 | 1.036 | |
| 3394.66* | 2713.22 | 2704.94 | 2711.24 | |||
*Model 0 is a Poisson regression model, which does not include random effects, the coefficient estimates are maximum likelihood estimates and the goodness of fit measure here is the Schwarz information criterion (BIC) based on the likelihood instead of the quasi-likelihood.
Figure 2Left-bottom panel: the estimated second-order polynomial time trend derived from the Poisson regression mixed model; dashed lines correspond to the 95% confidence intervals of the estimated time trend curvature. Left-hand side map represents point predictions of underlying relative risks for child mortality in Manhiça district common in the entire period from 1997 to 2005, derived from the Poisson regression mixed model. Right-hand side map shows the significance of the underlying relative risks with a 90% of confidence.
Figure 3Point predictions of relative risks for child mortality in Manhiça district, derived from the Poisson regression mixed model corresponding from left to right to: 1997, 1999, 2001, 2003 and 2005.
Figure 4Annual rainfall (mm) in Manhiça district during the period 1997-2005