2015
DOI: 10.1093/jamia/ocv017
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A system to build distributed multivariate models and manage disparate data sharing policies: implementation in the scalable national network for effectiveness research

Abstract: Background Centralized and federated models for sharing data in research networks currently exist. To build multivariate data analysis for centralized networks, transfer of patient-level data to a central computation resource is necessary. The authors implemented distributed multivariate models for federated networks in which patient-level data is kept at each site and data exchange policies are managed in a study-centric manner.Objective The objective was to implement infrastructure that supports the function… Show more

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Cited by 20 publications
(15 citation statements)
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“…This framework is used in Scalable National Network for Effectiveness Research (SCANNER) [127], which is a health research network infrastructure for distributed data reuse.…”
Section: Privacy-preserving Distributed Statistical Computationmentioning
confidence: 99%
“…This framework is used in Scalable National Network for Effectiveness Research (SCANNER) [127], which is a health research network infrastructure for distributed data reuse.…”
Section: Privacy-preserving Distributed Statistical Computationmentioning
confidence: 99%
“…One crucial aspect of systems architectures for CRI is the ability to protect confidentiality of participants; articles in this group covered methods for securely sharing data across sites, detecting protected health information and pseudonymization [14][15][16]. Efforts related to data standardization included a comparison of data models, processes for data harmonization, federated data sharing, and minimum datasets [17][18][19][20]. These papers addressed a wide range of disease areas, including cancer, lung disease, and rare diseases, as well as Down syndrome, heart disease, and diabetes [21][22][23].…”
Section: Architectures and Standardsmentioning
confidence: 99%
“…New technologies such as secure multiparty computation (MPC) can perform an encrypted computation such that neither the researcher nor server learns more about each other's data than the result of the computation [19]. In this setting the communication and computation are encrypted.…”
Section: Separating the Data From The Analysismentioning
confidence: 99%
“…Differential privacy involves balancing privacy concerns with the utility of the analyses: too much noise can render results meaningless but very private. Prototype systems are evaluating the practicality of differential privacy in a variety of systems from search-engine analytics [25] and mobile devices [26] to neuroimaging [16] to social science [27] and medical informatics [19].…”
Section: Separating the Data From The Analysismentioning
confidence: 99%