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which is a young and rapidly growing group at the Clinical Epidemiology Division and includes 40 professionals, including researchers, postdocs and PhD-students. Our research focuses on risk factors and
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for a postdoc who is curious and eager to solve biological questions with focus on translational melanoma research. Specifically, we are interested in understanding the systemic immune response and the
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communication skills are essential, as is proven ability to work in multidisciplinary teams. It is expected that the postdoc also supervise students and other researchers if necessary, as well as contribute
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science” contexts. Successful postdocs are expected to possess exceptional organizational skills. Above all, we will evaluate highly the ability of the candidate to work independently while also being a
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, advanced microscopic techniques, studies on protein trafficking, nanodelivery and neuroscience is also meritorious. Good teamwork skills, the ability to work independently, and very good knowledge of English
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Do you want to contribute to top quality medical research? The Niklas Björkström group is part of the Center for Infectious Medicine (CIM), a leading research unit in translational studies
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that includes experienced ophthalmologists, senior epidemiologists, statisticians, and collaborators from the industry sector. This postdoc position is for a period of two years and can start immediately. Your
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murine models of cancer. The applicant is expected to have a strong interest in senescence and cancer. The applicant will work in close collaboration with other PhD students, postdocs and researchers
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of the group leader (Dr. Hong Qian). In addition, the candidate is also expected to participate in collaborated projects and supervision of junior students in the group during her/his postdoc training
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Do you want to contribute to improving human health? Decscription of the researchgroup Our lab is advancing precision cancer medicine through deep learning models of the molecular networks within