Improving Quality of Mortality Estimates Among Non-Hispanic American Indian and Alaska Native People, 2020

  • 0Division of Cancer Prevention and Control, Centers for Disease Control and Prevention, Albuquerque, New Mexico, USA.
American journal of epidemiology +

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Abstract

Racial misclassification on death certificates leads to inaccurate mortality data for American Indian and Alaska Native (AI/AN) populations. We describe methods for correcting for racial misclassification among non-Hispanic AI/AN (NH-AI/AN) populations using data from the year 2020. We linked National Death Index (NDI) records with the Indian Health Service (IHS) patient registration database to identify AI/AN decedents. Matches were then linked to the National Vital Statistics System (NVSS) mortality data to identify AI/AN individuals that had been misclassified as another race on their death certificates. Analyses were limited to NH-AI/AN and purchased/referred care delivery areas (PRCDA) or urban areas. We compared death rates and counts pre- and post- linkage and calculated sensitivity and classification ratios by region, sex, age, cause of death (COD) and urban area. Racial misclassification on death certificates among NH-AI/AN varied by geographic region. Some of the highest racial misclassification occurred in the Southern Plains and Pacific Coast. Death rates for NH-AI/AN people and differences between NH-AI/AN and Non-Hispanic White (NHW) people were larger using the linked data. Improving AI/AN mortality data using linkages between vital statistics data and IHS strengthens data quality and can help address health disparities through public health planning efforts.

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