Stanford University
Showing 1-12 of 12 Results
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Helen M. Blau
Donald E. and Delia B. Baxter Foundation Professor, Director, Baxter Laboratory for Stem Cell Biology and Professor, by courtesy, of Psychiatry and Behavioral Sciences
Current Research and Scholarly InterestsProf. Helen Blau's research area is regenerative medicine with a focus on stem cells. Her research on nuclear reprogramming and demonstrating the plasticity of cell fate using cell fusion is well known and her laboratory has also pioneered the design of biomaterials to mimic the in vivo microenvironment and direct stem cell fate. Current findings are leading to more efficient iPS generation, cell based therapies by dedifferentiation a la newts, and discovery of novel molecules and therapies.
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Peter K. Jackson
Professor of Microbiology and Immunology (Baxter Labs) and of Pathology
Current Research and Scholarly InterestsDr. Jackson’s lab studies how primary cilia organize hormone, metabolite, and growth factor signaling in metabolic tissues and how their disruption causes obesity and diabetes. A second focus is defining the KRAS driven secreted factor networks that rewire the tumor microenvironment in lung and pancreatic cancers to promote immune evasion and therapeutic resistance. This work is revealing new secreted drug targets and combination strategies for precision oncology and metabolic disease.
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Yuqi Tan
Instructor, Microbiology and Immunology - Baxter Laboratory
BioDr. Tan is a computational biologist developing innovative tools to quantify cell identity, enhance stem cell engineering, and dissect cancer heterogeneity. During her Ph.D., she specialized in computational and quantitative analysis of single-cell RNA sequencing (scRNA-seq) data, contributing to multiple high-impact publications. As a postdoctoral researcher, she has advanced the integration of single-cell omics with multiplexed imaging to decode high-dimensional tissue architecture in cancer and psychiatric diseases. Her long-term vision is to leverage multi-omics and develop machine learning techniques for both 2D and 3D analysis to uncover how diverse cell types and their interactions shape development, aging, and disease.