25 image-encryption Postdoctoral research jobs at University of Washington in United States
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Position Overview School / Campus / College: School of Medicine Organization: Radiology Title: Postdoctoral Scholar, Department of Radiology, Diagnostic Imaging Sciences Center (DISC) Position
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Position Overview School / Campus / College: College of the Environment Organization: Applied Physics Lab Title: Postdoctoral Scholar in advanced ultrasound methods for both cardiovascular imaging
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advanced spatial biology techniques, such as spatial transcriptomics, proteomics, and multiplexed imaging, to analyze brain tissue. Lead data analysis and interpretation, integrating multi-omic and imaging
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involved in imaging, biomarker and genetic projects to better understand the causes, preclinical progression and pathology of Alzheimer’s disease. We encourage involvement by fellows in those studies
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of Radiology, within WashU Medicine in St. Louis, a top-ranked medical school in research. The candidate will work on identifying multimodal biomarkers, specifically leveraging magnetic resonance imaging (MRI
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progression. These projects utilize a wide breadth of technologies from single cell sequencing to mass spectrometry to high throughput, quantitative imaging. In addition, we use human genetics, AAV viral
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academic and industry partners ensuring a broad-based, growth-oriented experience and a large, diverse field of colleagues. The Kummer lab specializes in techniques including imaging, molecular biology
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Position Summary This position involves the development, implementation and refinement of novel image reconstruction methods for photoacoustic computed tomography (PACT). This will involve
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. Another primary focus is the cross-modal integration of Alzheimer’s disease genomics with brain-imaging derived phenotypes to elucidate how genetics contributes to disease heterogeneity. Overall
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of research that encompasses the discovery of new molecular targets for cardiovascular disease prevention, and the application of ML/AI approaches to cardiovascular imaging and other data for improved