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network including epigenetics experts (QMUL Centre for Epigenetics), cardiovascular geneticists (Prof. Patricia Munroe) and computational collaborators (Dr. Camille Berthelot). About You We seek
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understand. You will have a proven ability to manage a complex workload and deliver on multiple projects in parallel. About the School/Department/Institute/Project The Academic Centre for Healthy Ageing (ACHA
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About the Role A fully funded Postdoctoral Research Associate position is available to join a team led by Prof Susana Godinho to study the role of microtubule alterations in normal physiology and
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About the Role The Global Partnerships and Opportunities Manager (Incoming) is responsible for implementing and (in collaboration with colleagues) developing Queen Mary’s Study Abroad Programme for
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are encouraged to contact Prof. Daniel Chan (Head of Department) email: dchan@rvc.ac.uk or Prof Vicky Lipscomb (Clinical Director) email: vlipscomb@rvc.ac.uk or Dr Serena Maini (Head of Ophthalmology) email
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will compare the development of annelids and molluscs and combine single-cell transcriptomics with classic embryological approaches and state-of-the-art computational methods. The findings from
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project investigating mechanosensing in Diptera. This post will focus on using detailed wing geometry models and kinematic measurements in computational fluid and structural dynamics simulations to recover
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Tumour Margin Detection Paradigm For Use In Neurosurgical Oncology”. In this role, you will work closely with the clinical project lead (Prof. Dimitrios Paraskevopoulos) and the engineering project lead
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. Research will focus on identifying and publishing results in methods to build foundation models, using multimodal and multiscale health data. The role is funded for 24 months in the first instance. About You
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About the Role We are seeking a researcher for a new programme focused on improving understanding of cancer risk and developing novel multicancer risk prediction models to support cancer prevention