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cancer and neurodegenerative diseases. Duties and Responsibilities: Design and develop small molecules, nucleic acids and peptide therapeutics. Design, prepare and characterize nanoparticles. Employ state
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models capable of incorporating the effects of morphology and nanoparticle distribution. The framework will be extended to include damage and softening phenomena induced by matrix–nanoparticle interactions
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Oxidation Reaction for application in fuel cell systems. To achieve this we will develop Hybrid bioanodes incorporating nanoparticle catalysts with electroactive bacteria to improve fuel utilisation and
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) in Paris. It will be co-supervised by Catherine AMIENS, from the LCC's 'Engineering of Metallic Nanoparticles' team (https://www.lcc-toulouse.fr/ en/engineering-of-metal-nanoparticles-team-l/ ) and
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are seeking a Research Technologist who will work on a multidisciplinary team in the lab of Dr. Joel Sunshine developing degradable nanoparticle systems for gene delivery and immunotherapy. Responsibilities
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gold–lipid nanoparticles for localized glioblastoma treatment, optimized through a Quality by Design approach supported by computational modeling. Following process and formulation optimization
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hydrogel scaffold loaded with MIL-100 (an iron-based metal organic framework or Fe-MOF) and SBA-15 silica (an ordered mesoporous silica nanoparticle or MSN) to treat Hepatocellular Carcinoma. This scaffold
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enhanced fluorescence (PEF), - identifying optimal properties of functionalized plasmonic nanoparticles to enhance the PEF effect, - characterizing and measuring the PEF enhancement of the developed fiber
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selection process for an indefinite employment contract within the framework of a Line of Research R&D line: Development of lipid nanoparticles in the context of immunotherapy and gene therapy https
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nanoparticles. The project is a collaboration between researchers in the Schools of Chemistry and Computer Science, combining cutting edge machine learning methods with world-leading electron microscopy