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Integrating DHIS2 and R for Enhanced Cholera Surveillance in Lebanon: A Case Study on Improving Data Quality

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  • Abass Toufic Jouny

    (Epidemiological Surveillance Program, Ministry of Public Health, Ras En Nabaa, Beirut 1107, Lebanon
    Mediterranean and Black Sea Programme in Intervention Epidemiology Training (MediPIET), European Centre for Disease Prevention and Control (ECDC), 171 83 Stockholm, Sweden)

  • Hawraa Sweidan

    (Epidemiological Surveillance Program, Ministry of Public Health, Ras En Nabaa, Beirut 1107, Lebanon
    Mediterranean and Black Sea Programme in Intervention Epidemiology Training (MediPIET), European Centre for Disease Prevention and Control (ECDC), 171 83 Stockholm, Sweden)

  • Maryo Baakliny

    (Epidemiological Surveillance Program, Ministry of Public Health, Ras En Nabaa, Beirut 1107, Lebanon)

  • Nada Ghosn

    (Epidemiological Surveillance Program, Ministry of Public Health, Ras En Nabaa, Beirut 1107, Lebanon)

Abstract

During the 2022–2023 cholera outbreak in Lebanon, cases were reported through the District Health Information System 2 (DHIS2). We developed automated procedures in R computing language to improve completeness of routinely notified variables, apply case definition criteria, improve geographic accuracy and documentation of laboratory results. We developed R scripts for data cleaning, standardization, and reclassification, plotted epidemic curves and produced maps to display cholera incidence rates and rapid diagnostic test (RDT) coverage by district. We shared the R scripts on GitHub platform for open adaptation and use. Prior to cleaning, missingness reached 99.7% for inpatient status and 17–35% for other key variables. After cleaning, all fields were complete. Initially, 92.8% of cases were notified through DHIS2 as suspected and 7.2% as confirmed. Following reclassification, 40% were classified as suspected, 5.8% as confirmed, and 48.6% with unspecified classification. Laboratory data revealed that 5.8% of cases were culture positive, 2.2% RDT positive, and 65.1% had no documented testing. Among facility-entered cases (n = 5953), 11.4% were reported from a different governorate than the patient’s residence. At the time of the outbreak, the daily maps were generated based on place of residence. Integrating R-based analytics with DHIS2 enhanced data completeness, improved case classification, and enabled more better spatial and laboratory analysis. This combined approach provided a clearer epidemiological picture of the cholera outbreak, supporting data-driven public health decision-making and highlighting the value of integrating analytical tools with routine surveillance systems.

Suggested Citation

  • Abass Toufic Jouny & Hawraa Sweidan & Maryo Baakliny & Nada Ghosn, 2025. "Integrating DHIS2 and R for Enhanced Cholera Surveillance in Lebanon: A Case Study on Improving Data Quality," IJERPH, MDPI, vol. 22(11), pages 1-10, November.
  • Handle: RePEc:gam:jijerp:v:22:y:2025:i:11:p:1684-:d:1789273
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