Please use this identifier to cite or link to this item: http://ir.mu.ac.ke:8080/jspui/handle/123456789/4550
Title: Spatial distribution and cluster analysis of retail drug shop characteristics and antimalarial behaviors as reported by private medicine retailers in western Kenya: informing
Authors: Rusk, Andria
Highfield, Linda
Wilkerson, Michael J.
Harrell, Melissa
Obala, Andrew Ambogo
Amick, Benjamin
Keywords: Cluster analysis
Antimalarial drugs
Medicine outlets
Scan statistic
Issue Date: 2016
Publisher: BioMed Central
Abstract: Background:Efforts to improve malaria case management in sub-Saharan Africa have shifted focus to private anti-malarial retailers to increase access to appropriate treatment. Demands to decrease intervention cost while increasing efficacy requires interventions tailored to geographic regions with demonstrated need. Cluster analysis presents an opportunity to meet this demand, but has not been applied to the retail sector or antimalarial retailer behaviors. This research conducted cluster analysis on medicine retailer behaviors in Kenya, to improve malaria case management and inform future interventions.Methods:Ninety-seven surveys were collected from medicine retailers working in the Webuye Health and Demo-graphic Surveillance Site. Survey items included retailer training, education, antimalarial drug knowledge, recom-mending behavior, sales, and shop characteristics, and were analyzed using Kulldorff ’s spatial scan statistic. The Ber-noulli purely spatial model for binomial data was used, comparing cases to controls. Statistical significance of found clusters was tested with a likelihood ratio test, using the null hypothesis of no clustering, and a p value based on 999 Monte Carlo simulations. The null hypothesis was rejected with p values of 0.05 or less.Results:A statistically significant cluster of fewer than expected pharmacy-trained retailers was found (RR=.09, p=.001) when compared to the expected random distribution. Drug recommending behavior also yielded a statistically significant cluster, with fewer than expected retailers recommending the correct antimalarial medica-tion to adults (RR=.018, p=.01), and fewer than expected shops selling that medication more often than outdated antimalarials when compared to random distribution (RR=0.23, p=.007). All three of these clusters were co-located, overlapping in the northwest of the study area.Conclusion:Spatial clustering was found in the data. A concerning amount of correlation was found in one specific region in the study area where multiple behaviors converged in space, highlighting a prime target for interventions. These results also demonstrate the utility of applying geospatial methods in the study of medicine retailer behaviors, making the case for expanding this approach to other regions
URI: http://ir.mu.ac.ke:8080/jspui/handle/123456789/4550
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