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Primary Supervisor - Prof David S Richardson Scientific Background Genetic variation within populations is essential to their ability to adapt and survive, but most mutations that change function
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data are needed to enhance our understanding of sources, pathways and impact of litter. Cefas is developing a visible light (VL) deep learning (DL) algorithm and collected a large 89 litter category
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straightens the fingers but does not treat the underlying biology; recurrence is common and repeat operations carry escalating risks to hand function. With genetic risk variants now linked to the disorder
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of Berberis in major wheat growing areas, (ii) assess the genetic diversity of locally adapted Bhutanese wheat landraces and their typically higher resilience to rust infection, and (iii) develop a spatial
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We seek an enthusiastic and inquisitive individual with a background in a subject aligned with the Biological Sciences, Molecular Biology, Microbiology, or Genetics. Entry Requirements At least UK
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colibactin-producing bacteria thought to induce colorectal cancer. In contrast, the aetiology of prostate cancer is largely unknown, with the exception that genetics and race are established components
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-specific TEM protocol will be used to reveal their subcellular localisation. This work will be done at UEA and IOCAS (Prof. Shan Gao). Objective 2: Using the genetically tractable model diatom Phaeodactylum
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@uea.ac.uk The Norwich Research Park Biosciences Doctoral Training Programme (NRPDTP) is offering fully funded studentships for October 2026 entry. The programme offers postgraduates the opportunity
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observations and modelling of the physics and biogeochemistry of Antarctic shelf seas. You will gain experience in computer coding, statistics for environmental science, working with and piloting autonomous
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through The Lupus Trust. Training programme: Evidence synthesis, qualitative methods and analysis, mixed methods, statistical analysis potentially including meta-analysis, intensive longitudinal methods