315349
Utilizing Mississippi 2007-2011 linked birth and death data to explain district level variances in infant mortality rates
Methods: We performed secondary analysis of Mississippi’s 2007-2011 linked birth and death certificate data (MSDH, 2007-2011). The sample included 205,955 live-born singleton infant births. The dependent variable, infant death, is defined as an infant that died during the first year of life (< 365 days). Independent variables included descriptive infant characteristics such as birth weight, gestational age, and abnormal complications of the newborn, and maternal characteristics such as age, race, education, smoking, previous number of live births, and public health district of residence. Multiple logistic regression analysis was used to identify variables having an effect on the varying rates of infant mortality at the district level.
Results: Differences can be partially attributed to several mediating infant factors including birth weight, clinical gestational age, abnormal conditions of the newborn, and maternal factors including tobacco use, marital status, education, race, complications during labor and delivery, obstetric procedures and the previous number of live births, and interactions among these variables (R2=0.29, P<0.0001).
Discussion: While the logistic regression was statistically significant, the model only accounts for approximately 29% of the variability around infant mortality rates between the districts (R2=0.29). More research is needed to further explore the relationship between public health district and infant mortality.
Implications for Public Health: Identifying factors that result in district-level IMR variances could inform efforts to reduce infant deaths.
Learning Areas:
Diversity and cultureEpidemiology
Program planning
Public health or related research
Learning Objectives:
Discuss district-level variances in Mississippi infant mortality.
Keyword(s): Infant Mortality, MCH Epidemiology
Qualified on the content I am responsible for because: I am qualified to be an abstract Author on the content I am responsible for because I am an MPH student in MCH Epi and I conducted the logistic regression analysis for this project.
Any relevant financial relationships? No
I agree to comply with the American Public Health Association Conflict of Interest and Commercial Support Guidelines, and to disclose to the participants any off-label or experimental uses of a commercial product or service discussed in my presentation.