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collaborative open-lab space in the Couch Biomedical Research Building. This appointment is considered a training-focused, transitional role toward an independent academic, industrial, or research career. As a
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of neuronal loss to better understand why neurons die or axons are damaged to ultimately establish new strategies for the preservation or restoration of neural tissue. We use multiple approaches, but focus
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outlining research experience, interests, and career goals. A detailed CV. Contact information for three references. The above statements are intended to describe the general nature and level of work
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of GI diseases to continue our work in functionally characterizing the impact of immune cells including ILCs in IBD. Our research program provides a highly collaborative and supportive training
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candidate will investigate the functions of bile metabolites induced by bacterial infection. We aim to advance our understanding of how infection-stimulated bile metabolites influence intestinal defense
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Position Summary The lab of Dr. Claudia Han is seeking a passionate and talented postdoctoral fellow to join our dynamic team in the Department of Pathology and Immunology and part of the Brain Glia
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, i.e., the Rural Equitable and Accessible Transportation (REAT) Center. The scholar will work with REAT consortium universities on several collaborative research projects. This is a full-time position
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an initial term appointment of one year, with the possibility of renewal subject to satisfactory performance and availability of funding for up to three years. The salary for this position will be $68,460/year
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. The above statements are intended to describe the general nature and level of work performed by people assigned to this classification. They are not intended to be construed as an exhaustive list of all job
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applicant will work closely with industry sponsors who will help to guide the project. The Elbert lab and the industry partner are interested in developing mechanistic, predictive models of neurodegenerative