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presentation, ability to work efficiently in a team and with collaborators · Experience in Single Cell Multi-omics techniques and multiple component analysis programs is an advantage · Previous
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: · Perform collaborative research with multiple faculty members at ARDMRI on projects involving genomics data analysis using single cell RNA-seq, CHIP-seq/ATAC-seq, spatial transcriptomics, HiC/HiCHIP, RIBO
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, pancreas pathology, and novel therapeutics, also in the context of the analysis of live pancreas tissue from organ donors obtained from the Network for Organ Donors with Diabetes (nPOD) , of which Dr
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, shaping the future of medicine through cutting-edge research. The Sun Lab is seeking a highly motivated Postdoctoral Fellow to join our research team studying transcription factor–regulated T cell function
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evolution. Our work builds on experience developing pangenome graph construction and analysis tools (PGGB, ODGI, IMPG) and contributions to the Telomere-to-Telomere Consortium and Human Pangenome Reference
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sequencing, metabolism, drug development, structural biology, and large-scale data analysis and computational biology. For more information about Dr. Deng’s lab, please visit here. As a successful candidate
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, animal models, and human tissues, conduct bioinformatics analysis for high-throughput sequencing data, and report research findings in scientific publications and oral/poster presentations at select
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culture, molecular cloning, flow cytometric analysis, multiple-omics analysis, bioinformatics, and animal experiments is preferred. · Be highly motivated individuals who can work in a team
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qualifications should include: A PhD, MD or MD/PhD in molecular biology, cancer genetics, cancer biology, pathology, immunology, or a related biomedical field. Familiarity with flow cytometry, RNA/DNA analysis
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. Strong fundamentals in cancer biology and statistics are essential. Demonstrated proficiency in multiple programming languages such as Python/R, with experience in computational analysis of omics datasets