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matrices. They pave the way towards multi-layered: multi-coloured, -spectral, -helicity, high spatial and temporal resolution unclonable QR code generation with an unprecedented 5 layers of 'invisible
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cohorts. Responsibilities include planning experiments and analysing data; handling of human tissue samples; immunohistochemistry and histopathology; RNA and protein biochemistry; spatial proteomics
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establish and validate microfluidic co-culture systems using human glomerular cells and benchmark these platforms against human kidney multi-omic and spatial datasets. These systems will be further developed
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high content imaging, multimodality in vivo imaging, proteomics, spatial and single-cell transcriptomics. As part of King’s Health Partners, we have an excellent environment for basic-clinical
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bronchoscopy samples and tissue. Spatial transcriptomics will be used to characterise cellular populations, functional cell states and cell- cell interactions. To validate epithelial-immune cell interactions in
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biodiversity trends and they will develop and undertake analyses of biological change in response to human perturbation of the Earth system over different spatial and temporal scales. Key responsibilities
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the working group Economic Geography, which focuses on theory-led, evidence-based, and policy relevant research on spatial aspects of innovation-based socio-economic sustainability transitions. Our research
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at the Barts Cancer Institute (Queen Mary University of London). This role will involve analysing existing spatial-omics data sets and developing novel computational tools to understand the risk of developing
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at the Barts Cancer Institute (Queen Mary University of London). This role will involve analysing existing spatial-omics data sets and developing novel computational tools to understand the risk of developing
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responsibilities include testing hypotheses and analysing scientific data from a variety of sources, including sequencing and transcriptomics (including spatial transcriptomics), reviewing and refining working