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Using classification tree modelling to investigate drug prescription practices at health facilities in rural Tanzania

  • Dan K. Kajungu
  • , Majige Selemani
  • , Irene Masanja
  • , Amuri Baraka
  • , Mustafa Njozi
  • , Rashid Khatib
  • , Alexander N. Dodoo
  • , Fred Binka
  • , Jean MacQ
  • , Umberto Dalessandro
  • , Niko Speybroeck
  • INDEPTH Network
  • Université catholique de Louvain
  • Ifakara Health Institute
  • Medical Research Council Unit at the LSTHM
  • Institute of Tropical Medicine Antwerp
  • Clos Chapelle-aux Champs

Research output: Contribution to journalArticlepeer-review

12 Citations (Scopus)

Abstract

Background: Drug prescription practices depend on several factors related to the patient, health worker and health facilities. A better understanding of the factors influencing prescription patterns is essential to develop strategies to mitigate the negative consequences associated with poor practices in both the public and private sectors. Methods. A cross-sectional study was conducted in rural Tanzania among patients attending health facilities, and health workers. Patients, health workers and health facilities-related factors with the potential to influence drug prescription patterns were used to build a model of key predictors. Standard data mining methodology of classification tree analysis was used to define the importance of the different factors on prescription patterns. Results: This analysis included 1,470 patients and 71 health workers practicing in 30 health facilities. Patients were mostly treated in dispensaries. Twenty two variables were used to construct two classification tree models: one for polypharmacy (prescription of 3 drugs) on a single clinic visit and one for co-prescription of artemether-lumefantrine (AL) with antibiotics. The most important predictor of polypharmacy was the diagnosis of several illnesses. Polypharmacy was also associated with little or no supervision of the health workers, administration of AL and private facilities. Co-prescription of AL with antibiotics was more frequent in children under five years of age and the other important predictors were transmission season, mode of diagnosis and the location of the health facility. Conclusion: Standard data mining methodology is an easy-to-implement analytical approach that can be useful for decision-making. Polypharmacy is mainly due to the diagnosis of multiple illnesses.

Original languageEnglish
Article number311
JournalMalaria Journal
Volume11
DOIs
Publication statusPublished - 2012

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

Keywords

  • Anti-malarials
  • Classification trees
  • Co-prescription
  • Data mining
  • Polypharmacy
  • Tanzania

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