Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Rebecca Wilson is active.

Publication


Featured researches published by Rebecca Wilson.


International Journal of Epidemiology | 2014

DataSHIELD: taking the analysis to the data, not the data to the analysis

Amadou Gaye; Yannick Marcon; Julia Isaeva; Philippe Laflamme; Andrew Turner; Elinor M. Jones; Joel Minion; Andrew W Boyd; Christopher Newby; Marja-Liisa Nuotio; Rebecca Wilson; Oliver Butters; Barnaby Murtagh; Ipek Demir; Dany Doiron; Lisette Giepmans; Susan Wallace; Isabelle Budin-Ljøsne; Carsten Schmidt; Paolo Boffetta; Mathieu Boniol; Maria Bota; Kim W. Carter; Nick deKlerk; Chris Dibben; Richard W. Francis; Tero Hiekkalinna; Kristian Hveem; Kirsti Kvaløy; Seán R. Millar

Background: Research in modern biomedicine and social science requires sample sizes so large that they can often only be achieved through a pooled co-analysis of data from several studies. But the pooling of information from individuals in a central database that may be queried by researchers raises important ethico-legal questions and can be controversial. In the UK this has been highlighted by recent debate and controversy relating to the UK’s proposed ‘care.data’ initiative, and these issues reflect important societal and professional concerns about privacy, confidentiality and intellectual property. DataSHIELD provides a novel technological solution that can circumvent some of the most basic challenges in facilitating the access of researchers and other healthcare professionals to individual-level data. Methods: Commands are sent from a central analysis computer (AC) to several data computers (DCs) storing the data to be co-analysed. The data sets are analysed simultaneously but in parallel. The separate parallelized analyses are linked by non-disclosive summary statistics and commands transmitted back and forth between the DCs and the AC. This paper describes the technical implementation of DataSHIELD using a modified R statistical environment linked to an Opal database deployed behind the computer firewall of each DC. Analysis is controlled through a standard R environment at the AC. Results: Based on this Opal/R implementation, DataSHIELD is currently used by the Healthy Obese Project and the Environmental Core Project (BioSHaRE-EU) for the federated analysis of 10 data sets across eight European countries, and this illustrates the opportunities and challenges presented by the DataSHIELD approach. Conclusions: DataSHIELD facilitates important research in settings where: (i) a co-analysis of individual-level data from several studies is scientifically necessary but governance restrictions prohibit the release or sharing of some of the required data, and/or render data access unacceptably slow; (ii) a research group (e.g. in a developing nation) is particularly vulnerable to loss of intellectual property—the researchers want to fully share the information held in their data with national and international collaborators, but do not wish to hand over the physical data themselves; and (iii) a data set is to be included in an individual-level co-analysis but the physical size of the data precludes direct transfer to a new site for analysis.


BMC Medical Ethics | 2017

The ECOUTER methodology for stakeholder engagement in translational research

Madeleine Murtagh; Joel Minion; Andrew Turner; Rebecca Wilson; Mwenza Blell; Cynthia Ochieng; Barnaby Murtagh; Stephanie Roberts; Oliver Butters; Paul R. Burton

BackgroundBecause no single person or group holds knowledge about all aspects of research, mechanisms are needed to support knowledge exchange and engagement. Expertise in the research setting necessarily includes scientific and methodological expertise, but also expertise gained through the experience of participating in research and/or being a recipient of research outcomes (as a patient or member of the public). Engagement is, by its nature, reciprocal and relational: the process of engaging research participants, patients, citizens and others (the many ‘publics’ of engagement) brings them closer to the research but also brings the research closer to them. When translating research into practice, engaging the public and other stakeholders is explicitly intended to make the outcomes of translation relevant to its constituency of users.MethodsIn practice, engagement faces numerous challenges and is often time-consuming, expensive and ‘thorny’ work. We explore the epistemic and ontological considerations and implications of four common critiques of engagement methodologies that contest: representativeness, communication and articulation, impacts and outcome, and democracy. The ECOUTER (Employing COnceptUal schema for policy and Translation Engagement in Research) methodology addresses problems of representation and epistemic foundationalism using a methodology that asks, “How could it be otherwise?” ECOUTER affords the possibility of engagement where spatial and temporal constraints are present, relying on saturation as a method of ‘keeping open’ the possible considerations that might emerge and including reflexive use of qualitative analytic methods.ResultsThis paper describes the ECOUTER process, focusing on one worked example and detailing lessons learned from four other pilots. ECOUTER uses mind-mapping techniques to ‘open up’ engagement, iteratively and organically. ECOUTER aims to balance the breadth, accessibility and user-determination of the scope of engagement. An ECOUTER exercise comprises four stages: (1) engagement and knowledge exchange; (2) analysis of mindmap contributions; (3) development of a conceptual schema (i.e. a map of concepts and their relationship); and (4) feedback, refinement and development of recommendations.ConclusionECOUTER refuses fixed truths but also refuses a fixed nature. Its promise lies in its flexibility, adaptability and openness. ECOUTER will be formed and re-formed by the needs and creativity of those who use it.


Wellcome Open Research | 2017

Synthetic ALSPAC longitudinal datasets for the Big Data VR project

Demetris Avraam; Rebecca Wilson; Paul R. Burton

Three synthetic datasets - of observation size 15,000, 155,000 and 1,555,000 participants, respectively - were created by simulating eleven cardiac and anthropometric variables from nine collection ages of the ALSAPC birth cohort study. The synthetic datasets retain similar data properties to the ALSPAC study data they are simulated from (co-variance matrices, as well as the mean and variance values of the variables) without including the original data itself or disclosing participant information. In this instance, the three synthetic datasets have been utilised in an academia-industry collaboration to build a prototype virtual reality data analysis software, but they could have a broader use in method and software development projects where sensitive data cannot be freely shared.


American Scientific Publishers | 2010

Astrobiology, Emergence, Search and Detection of Life

V. K. Pearson; Rebecca Wilson; I. Gilmour


Data Science Journal | 2017

DataSHIELD – New Directions and Dimensions

Rebecca Wilson; Oliver Butters; Demetris Avraam; James Baker; Jonathan A. Tedds; Andrew Turner; Madeleine Murtagh; Paul R. Burton


F1000Research | 2016

Digital methodology to implement the ECOUTER engagement process

Rebecca Wilson; Oliver Butters; Tom Clark; Joel Minion; Andrew Turner; Madeleine Murtagh


Archive | 2017

Big Data VR simulated datasets

Rebecca Wilson; Demetris Avraam; Paul R. Burton


F1000Research | 2016

The Biomedical Research Infrastructure Software as a Service Kit (BRISSKit): technical description [version 1; referees: 2 approved with reservations]

Oliver Butters; S Issa; J Lusted; M Newbury; R Parsloe; N Holden; Rc Free; Tim Beck; Rebecca Wilson; Paul R. Burton; Jonathan A. Tedds


F1000Research | 2016

The Biomedical Research Infrastructure Software as a Service Kit (BRISSKit): technical description

Oliver Butters; Shajid Issa; Jeff Lusted; Malcolm Newbury; Russ Parsloe; Nick Holden; Robert C. Free; Tim Beck; Rebecca Wilson; Paul R. Burton; Jonathan A. Tedds


Jisc Data Spring: Sandpit 2 | 2015

AMASED Second Phase (Jisc Data Spring Sandpit 2)

Rebecca Wilson; Paul R. Burton

Collaboration


Dive into the Rebecca Wilson's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Tim Beck

University of Leicester

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge