| Literature DB >> 30139376 |
Antonio P Ramos1, Robert E Weiss2, Jody S Heymann3.
Abstract
BACKGROUND: It is widely recognized that there are multiple risk factors for early-life mortality. In practice most interventions to curb early-life mortality target births based on a single risk factor, such as poverty. However, most premature deaths are not from the targeted group. Thus interventions target many births that are at not at high risk and miss many births at high risk.Entities:
Keywords: Bayesian hierarchical model; Early-life mortality; Program targeting; Risk factors
Mesh:
Year: 2018 PMID: 30139376 PMCID: PMC6108144 DOI: 10.1186/s12963-018-0172-6
Source DB: PubMed Journal: Popul Health Metr ISSN: 1478-7954
Summary statistics for the births in our data set
| Risk factor | Number of births |
|---|---|
| Maternal age | |
| < 18 | 9391 |
| 19–35 | 60,201 |
| > 35 | 3728 |
| Wealth index | |
| Lowest quintile | 14,951 |
| Second quintile | 14,492 |
| Middle quintile | 15,159 |
| Fourth quintile | 15,753 |
| Highest quintile | 12,965 |
| Maternal education | |
| No education | 40,341 |
| Primary | 11,941 |
| Secondary | 15,808 |
| Higher | 5230 |
Sample size is 73,320. The number of districts is 436
Fig. 1Distribution of estimated infant mortality risk in India, 1993-1998, by categories of risk factor. The three graphs on the right are box plots for, from top to bottom, wealth quintiles, four levels of maternal education, and three categories of maternal age. On the left panel is a plot of the range of the estimated infant mortality risk by district, where districts are ordered by median mortality risk and the horizontal lines extend from the 25% to the 75% of the distribution. These figures show considerable variation in mortality risk in groups defined by levels of a single risk factor
Classi_cation rates comparing statistical approaches against the convetional approach that target poverty (lowest quintile)
| Target group | % of correctly classified deaths |
|---|---|
| Poorest quintile | 30% |
| District | 57% |
| State | 40% |
| National | 38% |
Fig. 2District level comparisons: comparing the fraction of high risk births with infant mortality rates by district. In both panels, district mor- tality rates are plotted on the y-axis. In the left panel the x-axis is the proportion of births from poor families, those in the lowest wealth quintile. In the right panel the x-axis is the fraction of high risk births (20% highest risk births) identified by our model. Our estimates based on the statistical model match more closely the actual mortality rates than using the lowest quintile as a proxy for mortality risk
Fig. 3Maps contrasting high risk births by districts: births from the poorest 20 % families, from the 20% higher risk from our statistical model, and actual infant mortality rates