DataSHIELD – New Directions and Dimensions

In disciplines such as biomedicine and social sciences, sharing and combining sensitive individual-level data is often prohibited by ethical-legal or governance constraints and other barriers such as the control of intellectual property or the huge sample sizes. DataSHIELD (Data Aggregation Through...

詳細記述

書誌詳細
出版年:Data Science Journal
主要な著者: Rebecca C. Wilson, Oliver W. Butters, Demetris Avraam, James Baker, Jonathan A. Tedds, Andrew Turner, Madeleine Murtagh, Paul R. Burton
フォーマット: 論文
言語:英語
出版事項: Ubiquity Press 2017-04-01
主題:
オンライン・アクセス:http://datascience.codata.org/articles/660
その他の書誌記述
要約:In disciplines such as biomedicine and social sciences, sharing and combining sensitive individual-level data is often prohibited by ethical-legal or governance constraints and other barriers such as the control of intellectual property or the huge sample sizes. DataSHIELD (Data Aggregation Through Anonymous Summary-statistics from Harmonised Individual-levEL Databases) is a distributed approach that allows the analysis of sensitive individual-level data from one study, and the co-analysis of such data from several studies simultaneously without physically pooling them or disclosing any data. Following initial proof of principle, a stable DataSHIELD platform has now been implemented in a number of epidemiological consortia. This paper reports three new applications of DataSHIELD including application to post-publication sensitive data analysis, text data analysis and privacy protected data visualisation. Expansion of DataSHIELD analytic functionality and application to additional data types demonstrate the broad applications of the software beyond biomedical sciences.
ISSN:1683-1470