School of Medicine


Showing 241-260 of 338 Results

  • Christine Kee Liu

    Christine Kee Liu

    Associate Professor of Medicine (Primary Care and Population Health)

    BioDr. Liu and her research program are dedicated to improving the lives of older adults with kidney disease. Currently her research focuses on mobility, which is the ability to move safely and reliably from one place to another. In older adults, poor mobility strongly predicts future disability and death. Retaining mobility has been cited by older adults as fundamental to quality to life; yet many older persons with kidney disease, especially those with late stage chronic kidney disease or outright kidney failure, have trouble just walking across the room or transferring to a chair. Dually trained in geriatric medicine and epidemiology, Dr. Liu also has significant expertise in older adult clinical trials, including safety trials of novel agents as well as intervention studies to reduce infections in older populations.

  • Jonathan T.C. Liu

    Jonathan T.C. Liu

    Professor of Pathology and Professor, by courtesy, of Bioengineering

    Current Research and Scholarly InterestsBiomedical optics
    In vivo microscopy
    Slide-free pathology
    Three-dimensional microscopy
    3D pathology
    Optical biopsy
    Image-guided surgery
    Early detection
    Artificial intelligence
    Machine learning
    Deep learning
    Computational analysis
    Computational pathology
    Virtual staining
    Molecular imaging

  • Lianli Liu

    Lianli Liu

    Clinical Assistant Professor, Radiation Oncology - Radiation Physics

    Current Research and Scholarly InterestsAI-driven medical imaging for accelerated imaging speed and improved image quality, including:
    Accelerated imaging for in-treatment patient monitoring and post-treatment patient follow up;
    Functional imaging for treatment response evaluation and prediction.
    Optimizing clinical quality assurance workflow through AI, including:
    Radiation beam data modeling for efficient commissioning;
    Model-based error detection for accurate dosimetry.

  • Nancy Fang Liu

    Nancy Fang Liu

    Clinical Assistant Professor, Medicine

    BioNancy Liu is a hospitalist and clinical assistant professor in the Department of Hospital Medicine. She earned her medical degree at the University of Pennsylvania and completed her internal medicine residency training at Stanford Health Care, where she was awarded the Julian Wolfsohn Award for dedication to leadership, clinical practice, and teaching during residency. Her interests are in quality improvement, end of life care, and health equity for underserved populations.

  • Wendy Liu, MD, PhD

    Wendy Liu, MD, PhD

    Assistant Professor of Ophthalmology

    Current Research and Scholarly InterestsDr. Liu's research interests include the role of mechanosensation in the eye as it relates to the pathophysiology of glaucoma, with the goal of finding new druggable targets in glaucoma treatment.

  • Yongkai Liu

    Yongkai Liu

    Instructor, Radiology

    BioDr. Yongkai Liu is an instructor in the Department of Radiology, Division of Neuroimaging and Neurointervention at Stanford University. His research focuses on developing and evaluating advanced techniques to improve treatment decision-making and prognostication in brain diseases—particularly stroke—using imaging and deep learning. Dr. Liu is a recipient of the prestigious K99/R00 award for his work on integrating large language models with imaging-based deep learning for stroke outcome prediction.

    Prior to joining Stanford, Dr. Liu earned his Ph.D. in Physics and Biology in Medicine from UCLA under the mentorship of Prof. Kyung Sung. This rigorous training equipped him with a strong foundation in medicine, deep learning, and physics. His Ph.D. thesis, titled “Advancing Segmentation and Classification Methods in Magnetic Resonance Imaging via Artificial Intelligence,” focused on developing cutting-edge deep learning and machine learning techniques for MRI-based clinical applications. During his master’s studies, he conducted research on CT Virtual Colonoscopy under the guidance of Prof. Jerome Liang, an IEEE Fellow.

    Dr. Liu has also made significant contributions to the academic community as a peer reviewer for leading journals, including The Lancet Digital Health, NPJ Digital Medicine, Medical Image Analysis, Medical Physics, Scientific Reports, British Journal of Radiology, BJR|Artificial Intelligence, Annals of Clinical and Translational Neurology, IEEE Transactions on Medical Imaging, IEEE Journal of Biomedical and Health Informatics, IEEE Transactions on Radiation and Plasma Medical Sciences, IEEE Transactions on Biomedical Engineering, and IEEE Transactions on Neural Networks and Learning Systems.

    Dr. Liu is an emerging leader in neuroimaging, stroke research, and artificial intelligence, earning widespread recognition for his work. His accolades include the K99/R00 Award, the AJNR Lucien Levy Award, the David M. Yousem Research Fellow Award, and being named a semi-finalist for the 2024 Cornelius G. Dyke Award, all of which underscore his potential to make significant contributions in the future (https://med.stanford.edu/rsl/news/yongkai-liu-receives-research-fellow-award.html).

  • Amy Lo

    Amy Lo

    Adjunct Clinical Associate Professor, Pathology

    BioDr. Amy Lo is a pathologist with board certification in anatomic pathology, clinical pathology and molecular genetic pathology. She completed her MD and MS at the University of Illinois at Chicago and her residency in both anatomic and clinical pathology at Northwestern University. She then joined the faculty at Northwestern University as a Clinical Instructor and Advanced Gastrointestinal/Surgical Pathology Fellow. Amy then completed a molecular genetic pathology fellowship at Stanford University.

    In 2016, Amy joined Genentech as research pathology scientist supporting drug research and development with a focus in oncology and individualized drug development.
    Additionally, Amy continues clinical work as an Adjunct Clinical Associate Professor in pathology at Stanford University and Lucille Packard’s Children’s Hospital.

  • Clara Lo

    Clara Lo

    Clinical Professor, Pediatrics - Hematology & Oncology

    Current Research and Scholarly InterestsResearch interests include:
    Biomarkers and targeted therapy in pediatric immune thrombocytopenia
    Transfusion-related iron overload
    Hemophilia and other rare bleeding disorders
    Thrombophilia

  • Michelle Lo

    Michelle Lo

    Clinical Assistant Professor, Medicine

    BioDr. Michelle Lo MD, FACP is a Clinical Assistant Professor in the Division of Hospital Medicine and Stanford School of Medicine. Growing up in Taiwan and in the Bay Area, she received her undergraduate degree in Molecular and Cellular Biology at University of California Berkeley, and her medical degree at David Geffen School of Medicine at UCLA. She then moved to NYU Grossman School of Medicine for her residency in Internal Medicine. She continued as Clinical Assistant Professor at NYU Grossman School of Medicine-Tisch Hospital from 2019-2020. After working in NYC during the COVID-19 pandemic, she returned to California to continue her career at Kaiser Permanente Santa Clara as a Hospitalist and affiliate Clinical Instructor at Stanford School of Medicine from 2020-2025, where she co-developed the Point of Care Ultrasound curriculum and was awarded the Hospitalist Teaching Award 3 years. She joined the Stanford School of Medicine Faculty in 2025. Her interests include medical education, curricular development, and use of Point-of-Care Ultrasound in the care of hospitalized patients.

  • Nathan Lo

    Nathan Lo

    Assistant Professor of Medicine (Infectious Diseases) and, by courtesy, of Epidemiology and Population Health

    Current Research and Scholarly InterestsOur research group is interested in studying the transmission of infectious diseases and impact of public health interventions with an ultimate goal of informing public health policy. We study a diverse set of pathogens, both domestically and internationally, including vaccine-preventable infections (including COVID-19) and neglected parasitic diseases (such as schistosomiasis). Our group applies diverse computational methodologies, including tools from fields of epidemiology, mathematical and statistical modeling, simulation, and policy analysis.

    A large emphasis of our work is translating scientific evidence into public health policy. Our track record includes multiple studies that have changed policy in the fields of neglected parasitic diseases and COVID-19. We work closely with policy organizations like the World Health Organization and the California Department of Public Health. Nathan was the lead writer of the World Health Organization guidelines on schistosomiasis (2022) and strongyloidiasis (2024).

    Our current research focuses on the following areas:
    (1) Vaccine-preventable infectious diseases (including COVID-19 and measles) in the United States, with a focus on studying vaccines, transmission dynamics, and re-emergence of vaccine-eliminated diseases
    (2) Public health strategies for control and elimination of globally important neglected infectious diseases, such as helminths infections (schistosomiasis, strongyloidiasis) and typhoid fever

    Our current NIH funded projects include:
    (1) Real-time predictive modeling for public health departments to control infectious diseases (DP2 AI170485, PI: Lo)
    (2) Precision mapping of Schistosoma mansoni risk for targeted public health control and elimination (R01 AI179771, PI: Lo)

    Hiring
    We are seeking to fill multiple research positions at all levels. Candidates interested in working on computational public health research related to infectious diseases with a strong quantitative background are highly encouraged to apply. If you an interested, please submit a cover letter, CV, and names of two references to Nathan.Lo@stanford.edu.