Litcius/Paper detail

Slow data public health

Arnaud Chioléro, Stefano Tancredi, John P. A. Ioannidis

2023European Journal of Epidemiology13 citationsDOIOpen Access PDF

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.

Topics & Concepts

Public healthData qualityMedicinePublic health surveillanceData scienceQuality (philosophy)Data collectionPopulation healthPandemicIdentification (biology)Information DisseminationInternet privacyPublic relationsComputer scienceCoronavirus disease 2019 (COVID-19)BusinessWorld Wide WebNursingPolitical scienceDiseaseMathematicsPathologyInfectious disease (medical specialty)BotanyPhilosophyMetric (unit)EpistemologyBiologyMarketingStatisticsData-Driven Disease SurveillanceMisinformation and Its ImpactsEthics in Clinical Research