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corresponds one semester of full-time study. Find more information on the PhD programme at the Faculty of Law here . About the project/work tasks: This position is part of 19 PhD Fellowships available in
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, bleeding, pain, fatigue and many more. Do you want to discover why women become sick and what it means for the future health of mother and child? The candidate will be given the opportunity to work on the
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of these taxa, hindering correct identification, ecological monitoring, and biotechnological use. Objectives: This PhD project will fill these critical gaps by carrying out the first nationwide, seasonally
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innovation. This creates outputs such as new prototypes, research articles, and software, as well as innovative start-up companies. Read more about the centre at www.mediafutures.no . Primary Objective Advance
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outputs such as new prototypes, research articles, and software, as well as innovative start-up companies. Read more about the centre at www.mediafutures.no . Primary Objective Advance the Centre’s
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and bilateral PA and MACS building on existing and new imaging data obtained by partner groups in the ENDOTRAIN network. The objectives of the project include: Developing reaction-diffusion mathematical
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of cortisol and its metabolites, and data collected from wearable devices. The overall objective is to define the optimal range of tissue cortisol. About the project/work tasks: The project includes: A case
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minimally-invasive measurement of cortisol and aldosterone in humans. Current technology lacks the needed temporal resolution to detect abnormal hormone patterns partly due to the number of samples required
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-physiology models of interest for: Phenotype classification Estimation of the probability of developing diseases Anomaly detection Early diagnosis. The recipient will learn and apply a vast portfolio of
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to seamlessly integrate complex hormonal data, high-resolution wearable sensor streams, and endocrine test outcomes. Intelligent Artifact Detection: Develop cutting-edge Machine Learning algorithms