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clarifying the mechanisms by which sympathetic nerves drive ventricular arrhythmias, a leading cause of death in the developed world. The ideal candidate is a dedicated scientist with an interest in working
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to therapies and vaccines against human diseases. We are a team of highly interactive investigators that have expertise in immunology, molecular biology, virology, microbiology, structural biology, computational
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to design and perform experiments to identify pathological mechanisms underlying craniofacial pain (e.g. temporomandibular disorders pain, migraine, and eye pain) and arthritis pain (e.g. psoriatic arthritis
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to identify novel biomarkers and gain a better understanding of mechanisms underlying these inflammatory diseases. All candidates should have a strong interest in population or clinical research, be able
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. The Ur-BIOME Research Program at Duke University, led by Dr. Nazema Siddiqui in the Department of Obstetrics and Gynecology’s Division of Urogynecology, is seeking a highly motivated Postdoctoral Fellow
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clarifying the mechanisms by which sympathetic nerves drive ventricular arrhythmias, a leading cause of death in the developed world. The ideal candidate is a dedicated scientist with an interest in working
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laboratory notebooks. Monitor progress of research projects and coordinate with Principal Investigator and Program team to stay on budget and schedule to meet the milestones and deliverables. Follow standards
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research training program, unless research training under the supervision of a senior mentor is a primary purpose of the appointment. · The appointee works under the supervision of a scholar or a department
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-TEM. · The Department of Biochemistry provides a rich intellectual environment, with research in structural biology (cryo-EM, X-ray crystallography, NMR spectroscopy), and computational biology
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, computer science, bioinformatics, or o ther related disciplines is required. Strong interest, research background and experience in the methodology research in functional data analysi s, tensorregression, high