Senior Transition Research Fellowship in Cardiovascular Research (Clinical)

University of Oxford
Oxford
1 week ago
Applications closed

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RDM Division of Cardiovascular Medicine, John Radcliffe Hospital, Oxford, OX3 9DUCardiovascular Research Transition Fellowships (Clinical and Non-Clinical): BHF Oxford Centre of Research ExcellenceThe BHF Oxford Centre of Research Excellence (BHF Oxford CRE) Transition Fellowships Programme aims to support and develop outstanding postdoctoral researchers with either a basic science or clinical background. The fellowships are for two years, supporting the researchers’ transition to securing highly competitive external funding opportunities, and their emerging independence in a field that will add value to the Oxford cardiovascular research programme. The BHF Oxford Centre has three core Research Themes and includes over 70 individual Principal Investigators and their research groups across multiple University departments and locations. The core Themes for the BHF Oxford CRE areBig Data & Computational Science,Repair & RegenerationandDrug Discovery & Deliverywhich draw on multiple disciplines to advance cardiovascular sciences and benefits for patients. . Applications are invited in any of the BHF Oxford CRE research themes. The proposed research project will be hosted by a cardiovascular research group at the University of Oxford, and should be developed in liaison with a sponsor who is a . This advertisement is for the Clinical Senior Transition Research Fellowship. Application deadline:12noon on Wednesday 28th May 2025Interviews are expected to be held in the week commencing 7th July 2025 The University is an equal opportunity employer.

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