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. Specialized models like Med-PaLM 2 also provides advanced capabilities in processing and understanding medical language. However, despite these advancements, these models still face considerable limitations in
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We invite applications for a fully funded PhD research scholarship in “Unsupervised Machine Learning for Cardiovascular Image Analysis”. This opportunity is available to UK (Home) candidates only
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by thousands of genes and their interactions with environments and lifestyles. The research will take a new approach using data science and medical imaging to understand how biological age can be
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Applications are invited for a fully-funded 3-year PhD studentship based in the Department of Clinical Neurosciences at the University of Cambridge under the supervision of Dr Topun Austin starting
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the Cambridge Brain Tumour Imaging laboratory is a unique laboratory involved in using imaging and other techniques o guide and improve surgery. This project is funded through the NIHR HealthTech Research Centre
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@plymouth.ac.uk ) Applications are invited for a three-year PhD studentship at the School of Psychology of the University of Plymouth. The studentship will start on 1st October 2025. Project Description
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, machine learning techniques may be integrated to accelerate simulations and improve medical image processing, ultimately aiding in stroke diagnosis and treatment planning. Please note that this is a self
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) imaging devices (endoscopes) for detecting cancer in hard-to-reach areas of the body, such as the pancreas and ovaries. Background: Cancers deep within the body are notoriously difficult to detect and treat
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applications. The PhD candidate will collaborate with both academic and industry experts, covering a wide range of topics from device design, algorithm developments, signal processing analytics and neuroimaging
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UK MS Tissue Bank (Imperial College) to reveal disease-relevant biological processes to help identify biomarkers and new treatment targets. This project will build on our unique digital MS biobank