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The Neuron Signaling Lab at National University of Singapore is seeking a motivated and skilled Research Fellow to join our interdisciplinary neuroscience team. We use advanced optical imaging and
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to study the biogenesis mechanisms of regulatory non-coding RNAs and their roles in tumor formation, specifically medulloblastoma and melanoma. Several putative oncogenic and tumor suppressor non-coding and
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biology, ideally having studied lubrication biology in the joint Experience in molecular biology, computational immunology, bioinformatics and multi-dimensional imaging including light-sheet and 3D tissue
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, proteomics, conditional knockout/knockin mice, in vivo and in vitro disease models, and 3D cell printing. Our studies utilize advanced, non-invasive clinical imaging and functional tests (e.g., OCT, OCT
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and imaging experiments. The group's research is organized around three main themes: the mechanistic modeling of pattern formation and morphogenesis; the synthesis and decomposition of developmental
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combination of animal models, fluorescent imaging, and electrophysiology to explore the cellular and organism-level function of these new receptor proteins. You will have the opportunity to use a unique set of
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, or imaging approaches in animal models and human tissue. The successful applicant will be embedded in the larger Neuroscience community at UTSW and OBI, and will benefit from a network of collaborations with
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image analysis Ability to do original and outstanding research in computational biology, and expertise in computational methods, data analysis, software and algorithm development, modeling machine
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and/or scientific computation, scientific software and algorithm development, data analysis and inference, and image analysis Ability to do original and outstanding research in computational biology
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, analysis and/or scientific computation, scientific software and algorithm development, data analysis and inference, and image analysis Ability to do original and outstanding research in computational biology