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(or equivalent) in an appropriate discipline. Ideal candidate will have some prior knowledge in deep learning and computer graphics. Subject area: Medical imaging, biomedical engineering, computer science & IT
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of state-of-the-art imaging technologies, high resolution single cell data sets that will be established on non-trial samples. The PhD will include bioinformatic support from internal and international
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essential scientific skills for image analyses and opportunities for students to attend relevant workshops and conferences in the field of imaging, neuroscience, and aging. We also encourage students
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, confocal, super-resolution, and electron: transmission electron microscopy) complementary expertise in image analysis Hands-on experience with epithelial barrier assessment assays (transepithelial
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the aquatic environment, focusing on their gills, a mitochondria-rich organ. Employing advanced imaging techniques and next generation sequencing tools, the candidate is expected to study stress-induced
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position is $90,700-$238,300. Application Requirements Document requirements Curriculum Vitae - CV must clearly list current and/or pending qualifications (e.g. board eligibility/certification, medical
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(see below) You are expected to acquaint yourself with the research areas at DTU Physics as listed below and formulate a statement about which of these fields have your interest. You are also welcome
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cornerstone for the application of optics and photonics in a manifold of research and technology fields ranging from optical fiber communications, metrology, environmental and medical sensing and imaging, and
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malfunction and is associated with high morbidity and mortality. Current imaging techniques of fibrosis are indirect and possess substantial limitations, hence the medical need for accurate and sensitive
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to frailty assessment could be beneficial. Manual measurements from CT scans, however, are labor-intensive and subject to observer variability. The advent of deep learning in medical imaging presents a