University of California San Francisco

Eyler, Lauren
Lauren Eyler, M.D., MPH

Resident Research Fellow
General Surgery

    Biography

    Lauren Eyler, M.D., M.P.H., is a general surgery resident at UCSF. During the research years of her residency, she is currently pursuing a Ph.D. in Biostatistics at UC Berkeley. She previously received her B.S. from Yale University in Molecular, Cellular, and Developmental Biology, her M.P.H. from UC Berkeley, and her M.D. from UCSF. Her research focuses on developing novel machine learning algorithms to help build surgical systems and improve health equity in low- and middle-income countries.

    Education

    Education

    Yale University - B.S., Molecular, Cellular, & Developmental Biology - 2011
    University of California, Berkeley - M.P.H., Interdisciplinary Program - 2015
    University of California, San Francisco School of Medicine - M.D. - 2016

    Residencies

    University of California San Francisco Medical Center - General Surgery Intern - 2016-2017
    University of California San Francisco Medical Center - General Surgery Resident - 2017-present

    Fellowships
    Post Graduate Training

    UCSF General Surgery Residency Program

    Clinical Interests

    Improving surgical care in low-resource settings

    Foreign Languages Spoken

    Spanish (fluent), French (basic)

    Kisitu DK, Eyler LE, Kajja I, Waiswa G, Beyeza T, Feldhaus I, Juillard C, Dicker RA. A pilot orthopedic trauma registry to assess needs and disparities in Ugandan district hospitals. 11th Academic Surgical Congress. Jacksonville, Florida. February 2, 2016. Oral Presentation.

    Grants and Funding

    UC Berkeley/NIH Biomedical Big Data Fellowship

    Research Narrative

    Lauren is interested in developing novel machine learning algorithms to help build surgical systems and improve health equity in low- and middle-income countries (LMICs). 


    She previously wrote a k-medoids clustering based algorithm to define simple, population-specific metrics of economic status for LMICs based on Demographic and Health Surveys (DHS) data. These EconomicClusters models may be used for health disparities research in settings where traditional metrics, which are based on lengthy questionnaires, are not feasible to assess. She developed an R package available on Github and R Shiny app so that other researchers may develop EconomicClusters models for any country with DHS data.


    She is currently working on a statistical algorithm to minimize the computational capacity required to predict hypotensive events from pulse oximetry waveform data.

    Research Interests

    Global Surgery
    Health Equity
    Biostatistics
    Machine Learning

    Research Pathways