Academic and Scholarly Events

  • 9/9 Statistics Colloquium, Prof. Ying Wei

    STATISTICS COLLOQUIUM

     

    Ying Wei, Professor

    Department of Biostatistics

    Mailman School of Public Health

    Columbia University

     

    Integrated Quantile RAnk Test (iQRAT) for gene-level associations 

     

    Abstract

    Genetic association studies often evaluate the combined group-wise effects of rare and common genetic variants on

    phenotypes at gene level. Many approaches have been proposed for group-wise association tests, such as the widely used

    burden tests and sequence kernel association tests with sequencing data. Most of these approaches focus on identifying

    mean effects.  As thegenetic associations are complex, we propose an efficient integrated rank test to investigate the

    genetic effect across the entire distribution/quantile function of a phenotype. The resulting test complements the mean-

    based analysis and improve efficiency and robustness. The proposed testintegrates the rank score test statistics over

    quantile levels while incorporating Cauchy combination test scheme and Fisher's method to maximize the power. It

    generalized the classical quantile-specific rank-score test.  Using simulations studies and real Metabochip data on lipid

    traits, we investigated the performance of the new test in comparison with the burden tests and sequence kernel

    association tests in multiple scenarios. This is joint work with Tianying Wang and Iuliana Ionita-Laza.

     

    Bio: Ying Wei is a statistician and a Professor of Biostatistics in the Columbia University Mailman School of Public Health, working primarily on quantile regression, semiparametric models of longitudinal data, and their applications.

    Wei earned her Ph.D. in statistic from the University of Illinois at Urbana–Champaign in 2004 and has been a faculty member of Biostatistics in the Columbia University, and also an affiliated member of the Data Science Institute ever since.

    In 2011, Wei received the Noether Young Scholar Award of the American Statistical Association, "for outstanding early contributions to nonparametric statistics." In 2015, Wei was elected as a Fellow of the American Statistical Association. Wei is also an elected member of the International Statistical Institute. In 2020 she was named as a Fellow of the Institute of Mathematical Statistics "for contributions to the development, dissemination, and application of mathematical statistics".

       

    Event address for attendees:

    https://uconn-cmr.webex.com/uconn-cmr/onstage/g.php?MTID=e6c6243ddbe5366041dad514f5a20ac48

    Date and time:

    Wednesday, September 9, 2020 4:00 pm
    Eastern Daylight Time (New York, GMT-04:00)

    Duration:

    1 hour

     

    For more information, contact: Tracy Burke at tracy.burke@uconn.edu