2021
DOI: 10.4258/hir.2021.27.1.39
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API Driven On-Demand Participant ID Pseudonymization in Heterogeneous Multi-Study Research

Abstract: Objectives: To facilitate clinical and translational research, imaging and non-imaging clinical data from multiple disparate systems must be aggregated for analysis. Study participant records from various sources are linked together and to patient records when possible to address research questions while ensuring patient privacy. This paper presents a novel tool that pseudonymizes participant identifiers (PIDs) using a researcher-driven automated process that takes advantage of application-programming interfac… Show more

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Cited by 7 publications
(7 citation statements)
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“…All ARIES data are de-identified using an integrated utility 49 to facilitate use by the study team and potential reuse by other researchers. Data for a given patient can be added using a secure record linkage mechanism connecting ARIES data instances with data pulled from the AR-CDR.…”
Section: Data Sharingmentioning
confidence: 99%
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“…All ARIES data are de-identified using an integrated utility 49 to facilitate use by the study team and potential reuse by other researchers. Data for a given patient can be added using a secure record linkage mechanism connecting ARIES data instances with data pulled from the AR-CDR.…”
Section: Data Sharingmentioning
confidence: 99%
“…To support optimal data integration for analysis, we combined all study data into a single collection using the Arkansas Research Image Enterprise System (ARIES) [46,47]. ARIES supports integration of multimedia data, including sound files, and extracts from both the REDCap database and the UAMS Arkansas Research Clinical Data Repository (AR-CDR) [48,49]. All ARIES data are de-identified using an integrated utility [49] to facilitate use by the study team and potential reuse by other researchers.…”
Section: Data Sharingmentioning
confidence: 99%
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“…That is, to establish the required degree of trust in real persons who join the VPP, a certain level of security and privacy must be provided. Two common methods for this objective are anonymization and pseudo-anonymization [13]. The former is the changing of personal information so that the individual information about personal or material relationships can no longer be assigned to a certain person or determinable natural person or only with an unreasonably great expense of time, costs, and effort.…”
Section: Introductionmentioning
confidence: 99%
“…(4) These imaging data are deposited into the ARIES instance of the Perl Open Source DICOM Archive (POSDA) (Bennett et al, 2018 ), a data curation tool that tracks the time and date of image data receipt, manages unique data identifiers, and performs image verification and de-identification with change history. (5) Pseudonymous subject identifiers are generated to maintain secure linkages across the imaging and non-imaging data from AR-CDR using the On-Demand Cohort and API Subject Identifier Pseudonymization (O-CASP) (Syed et al, 2020 ) to ensure the anonymity of research subjects. (6) All de-identified data (research assessments, clinical information, demographics, and imaging) are collected into the ARIES data repository, which consists of a MongoDB NoSQL database (Banker, 2011 ; Han et al, 2011 ) as the default storage location for all non-image data, and a semantic database (triple-store) (Rohloff et al, 2007 ) to manage data integration and provide semantic representations of metadata and key components of study data.…”
Section: Introductionmentioning
confidence: 99%