A system to build distributed multivariate models and manage disparate data sharing policies: implementation in the scalable national network for effectiveness research.

Published

Journal Article

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.The objective was to implement infrastructure that supports the functionality of some existing research networks (e.g., cohort discovery, workflow management, and estimation of multivariate analytic models on centralized data) while adding additional important new features, such as algorithms for distributed iterative multivariate models, a graphical interface for multivariate model specification, synchronous and asynchronous response to network queries, investigator-initiated studies, and study-based control of staff, protocols, and data sharing policies.Based on the requirements gathered from statisticians, administrators, and investigators from multiple institutions, the authors developed infrastructure and tools to support multisite comparative effectiveness studies using web services for multivariate statistical estimation in the SCANNER federated network.The authors implemented massively parallel (map-reduce) computation methods and a new policy management system to enable each study initiated by network participants to define the ways in which data may be processed, managed, queried, and shared. The authors illustrated the use of these systems among institutions with highly different policies and operating under different state laws.Federated research networks need not limit distributed query functionality to count queries, cohort discovery, or independently estimated analytic models. Multivariate analyses can be efficiently and securely conducted without patient-level data transport, allowing institutions with strict local data storage requirements to participate in sophisticated analyses based on federated research networks.

Full Text

Duke Authors

Cited Authors

  • Meeker, D; Jiang, X; Matheny, ME; Farcas, C; D'Arcy, M; Pearlman, L; Nookala, L; Day, ME; Kim, KK; Kim, H; Boxwala, A; El-Kareh, R; Kuo, GM; Resnic, FS; Kesselman, C; Ohno-Machado, L

Published Date

  • November 2015

Published In

Volume / Issue

  • 22 / 6

Start / End Page

  • 1187 - 1195

PubMed ID

  • 26142423

Pubmed Central ID

  • 26142423

Electronic International Standard Serial Number (EISSN)

  • 1527-974X

International Standard Serial Number (ISSN)

  • 1067-5027

Digital Object Identifier (DOI)

  • 10.1093/jamia/ocv017

Language

  • eng