| Literature DB >> 29047364 |
Enrique Gracia1, Antonio López-Quílez2, Miriam Marco3, Marisol Lila3.
Abstract
BACKGROUND: 'Place' matters in understanding prevalence variations and inequalities in child maltreatment risk. However, most studies examining ecological variations in child maltreatment risk fail to take into account the implications of the spatial and temporal dimensions of neighborhoods. In this study, we conduct a high-resolution small-area study to analyze the influence of neighborhood characteristics on the spatio-temporal epidemiology of child maltreatment risk.Entities:
Keywords: Area-specific risk estimation; Bayesian spatio-temporal modeling; Child maltreatment; Disease mapping; Neighborhood influences; Small-area study; Spatial inequality
Mesh:
Year: 2017 PMID: 29047364 PMCID: PMC5648468 DOI: 10.1186/s12942-017-0111-y
Source DB: PubMed Journal: Int J Health Geogr ISSN: 1476-072X Impact factor: 3.918
Variables (mean, standard deviation, minimum and maximum values) at the census block group and year level
| Variable | Mean (SD) | Min | Max |
|---|---|---|---|
| Economic status (€) | 26,320 (13,046) | 7943 | 98,560 |
| Education level | 3.155 (.33) | 2.39 | 3.86 |
| Policing activity | 7.16 (3.99) | 0 | 19 |
| Residential instability | 200 (65.96) | 4.2 | 771.3 |
| Immigrant concentration (%) | 13.28 (6.92) | 1.03 | 51.47 |
| Child protection records | 0.26 (.57) | 0 | 7 |
Results of different spatial and spatio-temporal regression Bayesian models for child maltreatment risk. Posterior mean, standard deviation (SD) and the 95% credible interval (CI) of all parameters
| Model 1 (β) | Model 2 (β + spatial heterogeneity + spatial effect) | Model 3 (β + spatial heterogeneity + spatial effect + temporal heterogeneity) | Model 4 (spatio-temporal autoregressive model) | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Mean | SD | 95% CI | Mean | SD | 95% CI | Mean | SD | 95% CI | Mean | SD | 95% CI | |
| Intercept | 4.055 | .289 | 3.500, 4.615 | 4.335 | .516 | 3.320, 5.328 | 4.284 | .520 | 3.916, 5.304 | 4.135 | .500 | 3.274, 5.127 |
| Economic statusa | −.021 | .003 | −.027, −.015 | −.016 | .004 | −.024, −.009 | −.016 | .004 | −.023, −.009 | −.016 | .004 | −.023, −.008 |
| Education level | −1.261 | .091 | −1.431, −1.083 | −1.464 | .161 | −1.745, −1.123 | −1.418 | .164 | −1.746, −1.096 | −1.391 | .157 | −1.690, −1.122 |
| Policing activity | .026 | .006 | .014, .038 | .036 | .011 | .012, .053 | .035 | .012 | .012, .057 | .031 | .011 | .009, .053 |
| Residential instability | .000 | .001 | −.001, .001 | .000 | .001 | −.001, .001 | .000 | .001 | −.001, .001 | .000 | .001 | −.001, .001 |
| Immigrant concentration | .003 | .005 | −.006, .013 | .005 | .006 | −.005, .016 | .005 | .005 | −.005, .016 | .009 | .006 | −.003, .020 |
| σθ | .329 | .084 | .136, .468 | .320 | .095 | .063, .456 | .234 | .045 | .162, .333 | |||
| σϕ | .781 | .115 | .541, .979 | .787 | .118 | .552, .976 | .257 | .062 | .149, .391 | |||
| σα | .023 | .019 | .001, .070 | .021 | .019 | .001, .070 | ||||||
| ρ | .903 | .031 | .827, .946 | |||||||||
| DIC | 8517.9 | 8164.9 | 8166.8 | 8126.1 | ||||||||
SD standard deviation, CrI credible interval, DIC deviance information criterion
σθ standard deviation unstructured term
σϕ standard deviation spatially structured term
σα Standard deviation temporally unstructured term
aThis variable was included as the cadastral value divided by 1000 to solve computational problems with the prior distributions assigned to fixed effects
Fig. 1Maps of relative risks of child maltreatment by census block group in each year of study, Valencia, Spain, 2004–2015
Fig. 2Temporal paths of relative risk in areas with stable high risk (above), and stable low risk (below). Relative risk values greater than 1 indicate higher risk than the city average. Relative risk values lower than 1 indicate lower risk than the city average
Fig. 3Temporal paths of relative risk in areas with increasing and decreasing child maltreatment risk, respectively