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considered a plus. Proficiency in oral and written English is necessary. As the PhD student will be part of a multi-disciplinary team of experts in cancer biology, proteomics, bioinformatics and mathematics
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following the instructions on the web page Entry requirements (eligibility) for doctoral education. A) General eligibility requirement You meet the general eligibility requirement for doctoral/third-cycle/PhD
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salamander heart regeneration model and identified an important role for tight junction remodelling in guiding heart muscle cell restoration. The PhD project aims to deepen our understanding of the role
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character, with an active role in the education of Nutrition in Karolinska Institutet. The doctoral student project and the duties of the doctoral student We are looking for a PhD candidate in nutrition and
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for doctoral/third-cycle/PhD education if you: have been awarded a second-cycle/advanced/master qualification (i.e. master degree), or have satisfied the requirements for courses comprising at least 240 credits
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of four years of full-time doctoral education is required. One Ph.D. position is available in bioinformatics with a focus on large-scale data analysis using artificial intelligence. The research project is
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autoimmune diseases, in particular in myositis. The student will study the targets of the autoantibodies by taking advantage of molecular and bioinformatic approaches. The student will collect and handle human
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of four years of full-time doctoral education is required. The research group The PhD student will be working in the Stina Wickström/Rolf Kiessling research group under the main supervision of Stina
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PhD-level and masters-level statisticians, and doctoral students. The group is involved in a wide variety of research projects, including the development of statistical methods, population-based cohort
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phenotypes. In this PhD you will address this by a deep learning model of drug responses in cancer. The PhD position focuses on predicting cell type-specific drug responses, identifying transcriptional