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facilities and leading research groups in e.g. gastroenterology, oncology, immunology, microbiology & virology, clinical genetics/-omics, molecular biology and translational research. The Raes lab has a long
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towards CRC. The presence of genetic differences, including single nucleotide polymorphisms (SNPs), in mucin genes can give rise to a large repertoire of structurally diverse mRNA isoforms via alternative
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neuroinflammation, myelin breakdown, and neuronal loss. Although brain lipid metabolism has been known to be altered in MS and AD for a long time, and many genetic risk variants are linked to lipid metabolism, little
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, biochemistry, genomics, bacterial genetics and bioinformatics. You can work both independently as well as in an international team You can plan and perform laboratory experiments accurately You have strong
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are highly polymorphic and gene polymorphisms affecting mucin gene expression have been reported to influence susceptibility towards CRC. The presence of genetic differences, including single nucleotide
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, storage and demand. YOUR TASKS You will develop mathematical models and metaheuristic algorithms for complex optimization problems in the context described above, see e.g., https://arxiv.org/abs/2503.01325
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learning algorithms. The two PhD students hired through this vacancy will primarily contribute to the development of debiased learning methods and assumption-lean modeling tools, and their application
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. Construct a model-based collision detection algorithm that exploits this mechanical compliance. Evaluate vibration dampening techniques in collaboration with the researchers from VUB. Design a hybrid robot
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. Digital Extraction from Historical Taxonomic Literature Application of OCR and machine learning algorithms to digitize printed and handwritten documents; Linking specimen mentions in literature to digital
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. Defining predictive tasks based on clinical goals. Selecting and setting up appropriate data preprocessing pipelines. Training and evaluation of computer vision models. Internal and external algorithmic