Postdoctoral Researcher in Artificial Intelligence for Medical Image Analysis

University of Oxford
Oxford
3 months ago
Applications closed

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We are seeking

a postdoctoral researcher to join the SMARTbiomed Collaboration. The primary focus of this post will be the development of computational pipelines for the automated extraction and discovery of image-derived phenotypes (IDPs) across multiple imaging modalities—initially concentrating on whole-body and abdominal MRI—using UK Biobank imaging data. What We Offer
As an employer, we genuinely care about our employees’ wellbeing and this is reflected in the range of benefits that we offer including: • An excellent contributory pension scheme • 38 days annual leave • A comprehensive range of childcare services • Family leave schemes • Cycle loan scheme • Discounted bus travel and Season Ticket travel loans • Membership to a variety of social and sports clubs The post is only available as full-time. However, we can discuss flexible working hours (e.g. starting and finishing earlier in the day) to accommodate your needs. Working remotely is possible for up to 1 day/week. About the Role
The post is funded for 3 years and is based in the Big Data Institute, Old Road Campus. You will join an interdisciplinary team of researchers spanning imaging science, machine learning, genetics, and population health, working closely with collaborators at the Nuffield Department of Population Health (NDPH), the Big Data Institute (BDI), and the Department of Psychiatry. You will develop, implement, and adapt existing self-supervised and multimodal learning methods for the automated extraction and discovery of image-derived phenotypes (IDPs) across large-scale population imaging datasets such as UK Biobank. You will design and optimise scalable computational pipelines and algorithms to construct and evaluate foundation models for whole-body and abdominal MRI. Alongside this, you will conduct comprehensive and systematic literature and database searches related to self-supervised learning, medical imaging, and population-level phenotyping. About You
You will have or be close to the completion of a relevant PhD/DPhil (e.g. in Computer Science, Engineering, or Medical Image Analysis) and possess sufficient specialist knowledge in medical imaging—particularly whole-body and abdominal MRI—and machine learning to work within established research programmes. A strong, demonstrable experience in research software development using Python programming language and modern machine learning frameworks is essential. Experience of working with UK Biobank imaging or similar large-scale population would be desirable. Diversity
Committed to equality and valuing diversity
Our active teams and initiatives including our , work to make the Department of Psychiatry as supportive, welcoming and inclusive as possible.
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