Abstract

BackgroundThe relationship between health services and population outcomes is an important area of public health research that requires bringing together data on outcomes and the relevant service environment. Linking independent, existing datasets geographically is potentially an efficient approach; however, it raises a number of methodological issues which have not been extensively explored. This sensitivity analysis explores the potential misclassification error introduced when a sample rather than a census of health facilities is used and when household survey clusters are geographically displaced for confidentiality.MethodsUsing the 2007 Rwanda Service Provision Assessment (RSPA) of all public health facilities and the 2007–2008 Rwanda Interim Demographic and Health Survey (RIDHS), five health facility samples and five household cluster displacements were created to simulate typical SPA samples and household cluster datasets. Facility datasets were matched with cluster datasets to create 36 paired datasets. Four geographic techniques were employed to link clusters with facilities in each paired dataset. The links between clusters and facilities were operationalized by creating health service variables from the RSPA and attaching them to linked RIDHS clusters. Comparisons between the original facility census and undisplaced clusters dataset with the multiple samples and displaced clusters datasets enabled measurement of error due to sampling and displacement.ResultsFacility sampling produced larger misclassification errors than cluster displacement, underestimating access to services. Distance to the nearest facility was misclassified for over 50% of the clusters when directly linked, while linking to all facilities within an administrative boundary produced the lowest misclassification error. Measuring relative service environment produced equally poor results with over half of the clusters assigned to the incorrect quintile when linked with a sample of facilities and more than one-third misclassified due to displacement.ConclusionsAt low levels of geographic disaggregation, linking independent facility samples and household clusters is not recommended. Linking facility census data with population data at the cluster level is possible, but misclassification errors associated with geographic displacement of clusters will bias estimates of relationships between service environment and health outcomes. The potential need to link facility and population-based data requires consideration when designing a facility survey.

Highlights

  • The relationship between health services and population outcomes is an important area of public health research that requires bringing together data on outcomes and the relevant service environment

  • Comparing first the master dataset across linking methods, we find the distance to the closest facility is similar; links to more facilities, more types of health facilities, and more family planning (FP) methods and HIV services are found when linking by administrative boundary compared to the 5 km buffer

  • The facility sample datasets systematically underestimate the percentage of clusters that are within 5 km of a health facility, underestimate the number and type of linked facilities within 5 km, and underestimate the percentage of clusters that are linked to a facility providing each contraceptive method and each HIV service compared to the facility census dataset

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Summary

Introduction

The relationship between health services and population outcomes is an important area of public health research that requires bringing together data on outcomes and the relevant service environment. Examining these relationships requires bringing together data on health outcomes with data on the relevant health service environment; interest in linking these two types of data is growing [6,7] Household surveys such as the Demographic and Health Surveys (DHS) are a leading source of data on population health status and health care-seeking behavior, while health facility surveys are an increasingly accessible source of data on the availability and quality of health services. Geographic linking is attractive because it has the potential to be an efficient approach that maximizes the use of existing data [20] Linking these data sources, raises a number of methodological issues that have not been extensively explored

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