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View All Vacancies Engineering Location: UK Other Closing Date: Friday 01 March 2024 Reference: ENG1744 Applications are invited for a 4-year PhD studentship to conduct Human Factors/Human
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between immune cells and Glioblastoma and its impact on cancer growth. You will perform research on human primary macrophages and cancer cells isolated from glioblastoma patients. Glioblastoma is the most
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: Environment and developmental biology Epidemiological evidence in humans indicates that acute heat exposure around the time of mating results in pregnancy loss, with potential long-term consequences
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: Environment and developmental biology Summary of Project: Epidemiological evidence in humans indicates that acute heat exposure around the time of mating results in pregnancy loss, with potential long-term
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View All Vacancies Engineering Location: UK Other Closing Date: Monday 22 April 2024 Reference: ENG1742 Supervised by Setia Hermawati (Human Factors Research Group, Faculty of Engineering). Aim
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-of-the-art facilities as well as development of a mass spectrometry-based assay for detection of binding to the target protein, the human elongation factor eEF1A. This will be followed by structural
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(thickness of a human hair) that can be used to measure a person’s physical and physiological properties. This PhD will explore the use of fibre Bragg gratings (physical sensor) in combination with
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rehabilitation programme with and without supplementation of an anabolic androgen. The project offers the opportunity for the student to develop skills in delivery of human volunteer studies, working with healthy
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for which favourable pre-clinical data is emerging (i.e., the immune system). As is the case for all of these PhD’s, the successful candidate will learn a wealth of skills relating to human physiology studies
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project, we will develop and implement approaches for estimating the uncertainty in AI predictions of chemical reactivity, to help strengthen the interaction between human chemists and machine learning