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BACKGROUND: Reliable and timely information on disease-specific treatment burdens within a health system is critical for the planning and monitoring of service provision. Health management information systems (HMIS) exist to address this need at national scales across Africa but are failing to deliver adequate data because of widespread underreporting by health facilities. Faced with this inadequacy, vital public health decisions often rely on crudely adjusted regional and national estimates of treatment burdens. METHODS AND FINDINGS: This study has taken the example of presumed malaria in outpatients within the largely incomplete Kenyan HMIS database and has defined a geostatistical modelling framework that can predict values for all data that are missing through space and time. The resulting complete set can then be used to define treatment burdens for presumed malaria at any level of spatial and temporal aggregation. Validation of the model has shown that these burdens are quantified to an acceptable level of accuracy at the district, provincial, and national scale. CONCLUSIONS: The modelling framework presented here provides, to our knowledge for the first time, reliable information from imperfect HMIS data to support evidence-based decision-making at national and sub-national levels.

Original publication

DOI

10.1371/journal.pmed.0030271

Type

Journal article

Journal

PLoS Med

Publication Date

06/2006

Volume

3

Keywords

Africa, Decision Support Systems, Management, Delivery of Health Care, Disease Notification, Geographic Information Systems, Health Facility Administration, Humans, Malaria, Management Information Systems, Medical Records Systems, Computerized, Models, Statistical, Public Health Informatics, Regional Medical Programs, Reproducibility of Results, Time Factors