Health Data Re-Identification: Assessing Adversaries and Potential Harms

Sharing biomedical data for research can help to improve disease understanding and support the development of preventive, diagnostic, and therapeutic methods. However, it is vital to balance the amount of data shared and the sharing mechanism chosen with the privacy protection provided. This require...

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Published inStudies in health technology and informatics Vol. 316; p. 1199
Main Authors Meurers, Thierry, Baum, Lena, Haber, Anna Christine, Halilovic, Mehmed, Heinz, Birgit, Milicevic, Vladimir, Neves, Diogo Telmo, Otte, Karen, Pasquier, Anna, Poikela, Maija, Sheykholeslami, Maryam, Wirth, Felix, Prasser, Fabian
Format Journal Article
LanguageEnglish
Published Netherlands 22.08.2024
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Abstract Sharing biomedical data for research can help to improve disease understanding and support the development of preventive, diagnostic, and therapeutic methods. However, it is vital to balance the amount of data shared and the sharing mechanism chosen with the privacy protection provided. This requires a detailed understanding of potential adversaries who might attempt to re-identify data and the consequences of their actions. The aim of this paper is to present a comprehensive list of potential types of adversaries, motivations, and harms to targeted individuals. A group of 13 researchers performed a three-step process in a one-day workshop, involving the identification of adversaries, the categorization by motivation, and the deduction of potential harms. The group collected 28 suggestions and categorized them into six types, each associated with several of six distinct harms. The findings align with previous efforts in structuring threat actors and outcomes and we believe that they provide a robust foundation for evaluating re-identification risks and developing protection measures in health data sharing scenarios.
AbstractList Sharing biomedical data for research can help to improve disease understanding and support the development of preventive, diagnostic, and therapeutic methods. However, it is vital to balance the amount of data shared and the sharing mechanism chosen with the privacy protection provided. This requires a detailed understanding of potential adversaries who might attempt to re-identify data and the consequences of their actions. The aim of this paper is to present a comprehensive list of potential types of adversaries, motivations, and harms to targeted individuals. A group of 13 researchers performed a three-step process in a one-day workshop, involving the identification of adversaries, the categorization by motivation, and the deduction of potential harms. The group collected 28 suggestions and categorized them into six types, each associated with several of six distinct harms. The findings align with previous efforts in structuring threat actors and outcomes and we believe that they provide a robust foundation for evaluating re-identification risks and developing protection measures in health data sharing scenarios.
Author Wirth, Felix
Haber, Anna Christine
Milicevic, Vladimir
Halilovic, Mehmed
Prasser, Fabian
Poikela, Maija
Neves, Diogo Telmo
Pasquier, Anna
Meurers, Thierry
Heinz, Birgit
Otte, Karen
Sheykholeslami, Maryam
Baum, Lena
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  givenname: Maryam
  surname: Sheykholeslami
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  organization: Berlin Institute of Health at Charité - Universitätsmedizin Berlin, Center of Health Data Science, Charitéplatz 1, 10117 Berlin, Germany
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Keywords Anonymization
Re-Identification
Risk Assessment
De-Anonymization
Health Data
De-Identification
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Confidentiality
Humans
Information Dissemination
Title Health Data Re-Identification: Assessing Adversaries and Potential Harms
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