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Design and evaluation of a data anonymization pipeline to promote Open Science on COVID-19

Carolin E. M. Jakob, Florian Kohlmayer, Thierry Meurers, Jörg Janne Vehreschild, Fabian Praßer

2020Scientific Data58 citationsDOIOpen Access PDF

Abstract

The Lean European Open Survey on SARS-CoV-2 Infected Patients (LEOSS) is a European registry for studying the epidemiology and clinical course of COVID-19. To support evidence-generation at the rapid pace required in a pandemic, LEOSS follows an Open Science approach, making data available to the public in real-time. To protect patient privacy, quantitative anonymization procedures are used to protect the continuously published data stream consisting of 16 variables on the course and therapy of COVID-19 from singling out, inference and linkage attacks. We investigated the bias introduced by this process and found that it has very little impact on the quality of output data. Current laws do not specify requirements for the application of formal anonymization methods, there is a lack of guidelines with clear recommendations and few real-world applications of quantitative anonymization procedures have been described in the literature. We therefore believe that our work can help others with developing urgently needed anonymization pipelines for their projects.

Topics & Concepts

PaceComputer scienceData scienceData anonymizationInferenceCoronavirus disease 2019 (COVID-19)Pipeline (software)PandemicData qualityOpen scienceProcess (computing)Data miningInformation privacyComputer securityMedicineBusinessGeographyArtificial intelligenceStatisticsMetric (unit)DiseaseInfectious disease (medical specialty)GeodesyMarketingOperating systemProgramming languageMathematicsPathologyPrivacy-Preserving Technologies in DataCOVID-19 Digital Contact TracingData-Driven Disease Surveillance
Design and evaluation of a data anonymization pipeline to promote Open Science on COVID-19 | Litcius