Rapidly scalable and low-cost public health surveillance reporting system for COVID-19

BMJ Health Care Inform. 2024 Jan 18;31(1):e100759. doi: 10.1136/bmjhci-2023-100759.

Abstract

Objective: Data-driven innovations are essential in strengthening disease control. We developed a low-cost, open-source system for robust epidemiological intelligence in response to the COVID-19 crisis, prioritising scalability, reproducibility and dynamic reporting.

Methods: A five-tiered workflow of data acquisition; processing; databasing, sharing, version control; visualisation; and monitoring was used. COVID-19 data were initially collated from press releases and then transitioned to official sources.

Results: Key COVID-19 indicators were tabulated and visualised, deployed using open-source hosting in October 2022. The system demonstrated high performance, handling extensive data volumes, with a 92.5% user conversion rate, evidencing its value and adaptability.

Conclusion: This cost-effective, scalable solution aids health specialists and authorities in tracking disease burden, particularly in low-resource settings. Such innovations are critical in health crises like COVID-19 and adaptable to diverse health scenarios.

Keywords: Data Interpretation, Statistical; Data Visualization; Health Communication; Information Dissemination; Public health informatics.

MeSH terms

  • COVID-19* / epidemiology
  • Humans
  • Public Health Surveillance
  • Reproducibility of Results