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Activity Number: 1 - Invited E-Poster Session
Type: Invited
Date/Time: Sunday, August 2, 2020 : 12:30 PM to 3:30 PM
Sponsor: Biometrics Section
Abstract #314071
Title: A Minimax Optimal Ridge-Type Set Test for Global Hypothesis with Applications in Whole Genome Sequencing Association Studies
Author(s): Xihong Lin* and Yaowu Liu
Companies: Harvard TH Chan School of Public Health and Harvard University
Keywords:
Abstract:

Testing a global hypothesis for a set of variables is a fundamental problem in statistics with a wide range of applications. The well-known classical tests are not robust to the signal strength and could have a substantial loss of power when signals are weak or moderate, a situation we commonly encounter in contemporary applications. In this paper, we propose a Minimax Optimal Ridge-type Set Test (MORST), a simple and generic method for testing a global hypothesis. The power of MORST is robust and considerably higher than that of the classical tests when the strength of signals is weak or moderate. In the meantime, MORST only requires a slight increase in computation compared to these existing tests, making it applicable to the analysis of massive genome-wide data. We also provide the generalizations of MORST that are parallel to the traditional Wald test and Rao's score test in asymptotic settings. Extensive simulations demonstrated the robust power of MORST and that the type I error of MORST is well controlled. We applied MORST to the analysis of the whole genome sequencing data from the ARIC study, where MORST detected 20\%--250\% more signal regions than classical methods.


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