Slow data public health

Eur J Epidemiol. 2023 Dec;38(12):1219-1225. doi: 10.1007/s10654-023-01049-6. Epub 2023 Oct 3.

Abstract

Surveillance and research data, despite their massive production, often fail to inform evidence-based and rigorous data-driven health decision-making. In the age of infodemic, as revealed by the COVID-19 pandemic, providing useful information for decision-making requires more than getting more data. Data of dubious quality and reliability waste resources and create data-genic public health damages. We call therefore for a slow data public health, which means focusing, first, on the identification of specific information needs and, second, on the dissemination of information in a way that informs decision-making, rather than devoting massive resources to data collection and analysis. A slow data public health prioritizes better data, ideally population-based, over more data and aims to be timely rather than deceptively fast. Applied by independent institutions with expertise in epidemiology and surveillance methods, it allows a thoughtful and timely public health response, based on high-quality data fostering trustworthiness.

Keywords: Big data; Evidence-based public health; Infodemic; Surveillance.

MeSH terms

  • COVID-19* / epidemiology
  • Data Collection
  • Humans
  • Pandemics
  • Public Health*
  • Reproducibility of Results