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cultures to uncover the biological mechanisms underlying resilience in APOE4 carriers. EDUCATION AND EXPERIENCE: ● PhD in neuroscience, life sciences Required Qualifications: KNOWLEDGE, SKILLS, AND ABILITIES
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postdoctoral fellow with interest in organic chemistry and radiopharmaceutical development. Successful candidates will join the Molecular Imaging Program at Stanford within the Department of Radiology, Stanford
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-cell genomics, transcriptome imaging, optical electrophysiology, and machine learning to study how the genome builds a brain across spatial and temporal scales. Key questions we aim to address include: 1
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. The project provides a unique opportunity to use clinically relevant animal models, transgenic mice, in vitro and ex vivo cultures, live cell and tissue imaging, single cell technologies, and bioinformatic
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and brain histology, molecular and cellular biology, electrophysiology, calcium imaging and animal handling experience are encouraged to apply. Required Qualifications: Completion of PhD, MD, or MD PhD
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work directly with Alexander Vezeridis, MD, PhD, on active projects and will have the opportunity to contribute to project design and direction. This position is ideal for researchers looking to deepen
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students and staff who make this work possible. The Classics community is comprised of 20 tenure-line, academic council faculty, three lecturers, PhD students, and undergraduate majors and minors
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resource for non-routine inquiries such as requests for statistics or surveys. Test prototype software and participate in approval and release process for new software. DESIRED QUALIFICATIONS: Advanced
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Postdoctoral Fellow position in the area of peptide chemistry or radiochemistry is available immediately in the Molecular Imaging Program at Stanford (MIPS), Stanford University School of Medicine
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. Investigate polypharmacy and multimorbidity in newly diagnosed patients with autoimmune rheumatic diseases. Contribute to studies utilizing natural language processing (NLP) to assess patient self-management