Background: There is an increasing demand by non-commercial funders that trialists should provide access to trial data once the primary analysis is completed. This has to take into account concerns about identifying individual trial participants, and the legal and regulatory requirements.
Methods: Using the good practice guideline laid out by the work funded by the Medical Research Council Hubs for Trials Methodology Research (MRC HTMR), we anonymised a dataset from a recently completed trial. Using this example, we present practical guidance on how to anonymise a dataset, and describe rules that could be used on other trial datasets. We describe how these might differ if the trial was to be made freely available to all, or if the data could only be accessed with specific permission and data usage agreements in place.
Results: Following the good practice guidelines, we successfully created a controlled access model for trial data sharing. The data were assessed on a case-by-case basis classifying variables as direct, indirect and superfluous identifiers with differing methods of anonymisation assigned depending on the type of identifier. A final dataset was created and checks of the anonymised dataset were applied. Lastly, a procedure for release of the data was implemented to complete the process.
Conclusions: We have implemented a practical solution to the data anonymisation process resulting in a bespoke anonymised dataset for a recently completed trial. We have gained useful learnings in terms of efficiency of the process going forward, the need to balance anonymity with data utilisation and future work that should be undertaken.
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http://dx.doi.org/10.1186/s13063-017-2382-9 | DOI Listing |
Forensic Sci Int
January 2025
Institute of Forensic Medicine, Department of Biomedical Engineering, University of Basel, Basel, Switzerland; Institute of Forensic Medicine, Health Department Basel-Stadt, Basel, Switzerland. Electronic address:
The identification of deceased with unknown identity is a key task in forensic investigations. Current radiologic identification approaches are often elaborative, lack statistical evidence, and are dependent on the examiner's experience and expertise. Thus, the aim of this work was to develop a 3D computational and thus, more objective identification approach.
View Article and Find Full Text PDFBMJ Open
January 2025
Leicestershire Partnership NHS Trust, Leicester, UK.
Objective: Explore the nature and prevalence of long-term conditions in individuals with intellectual disability.
Design: Retrospective longitudinal population-based study.
Setting: Primary and secondary care data across the population of Wales with the Secure Anonymised Information Linkage (SAIL) Databank.
Data Brief
February 2025
Department of Agricultural Sciences, Faculty of Agriculture and Forestry, University of Helsinki, Latokartanonkaari 5, 00014, Finland.
High Nature Value (HNV) farming systems occur in areas where the major land use is agriculture and are characterized by their significance in promoting biodiversity and ecosystem services due to their extensive land use. Despite their importance for ecological and socio-economic resilience of rural regions, these systems are often overlooked in Life Cycle Assessment (LCA) studies due to challenges in data compilation, especially from small local farms and because of the diversity of production. To address this gap, we established an international collaborative network across Europe, involving professionals directly engaged with farmers, farmer associations, and researchers to collect data on HNV farms employing a developed questionnaire examining inputs and outputs, farm structures, and herd characteristics.
View Article and Find Full Text PDFInt J Paleopathol
January 2025
School of Archaeology and Ancient History, University of Leicester, United Kingdom. Electronic address:
Objective: To gain a more holistic understanding of oral health in the past by producing an 'Index of Oro-dental Disease' (IOD), incorporating multiple oro-dental diseases and accounting for differences in antemortem/postmortem alveolar bone and tooth loss.
Materials: UK Adult Dental Health Survey, 2009 anonymised dataset (N = 6206). Archaeological dental data from skeletal individuals from medieval and post-medieval Barton-upon-Humber, North Lincolnshire (N = 214, 1150-1855) and St James's Gardens Burial Ground, London (N = 281, 1789-1853).
BMC Geriatr
January 2025
University of Southampton, Southampton, UK.
Background: To our knowledge capture-recapture techniques have not been used to estimate dementia prevalence using routinely collected data in England, nor have they been used to estimate changes in undiagnosed dementia over time. In this study we aimed to use routinely collected electronic health records to estimate the number of undiagnosed dementia cases there are in England and how this has changed over time. We also aimed to assess whether proportion of undiagnosed cases differed by age group, ethnicity, socioeconomic deprivation and sex.
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