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Joint testing of rare variant burden scores using non-negative least squares.

Authors :
Ziyatdinov, Andrey
Mbatchou, Joelle
Marcketta, Anthony
Backman, Joshua
Gaynor, Sheila
Zou, Yuxin
Joseph, Tyler
Geraghty, Benjamin
Herman, Joseph
Watanabe, Kyoko
Ghosh, Arkopravo
Kosmicki, Jack
Locke, Adam
Thornton, Timothy
Kang, Hyun Min
Ferreira, Manuel
Baras, Aris
Abecasis, Goncalo
Marchini, Jonathan
Source :
American Journal of Human Genetics. Oct2024, Vol. 111 Issue 10, p2139-2149. 11p.
Publication Year :
2024

Abstract

Gene-based burden tests are a popular and powerful approach for analysis of exome-wide association studies. These approaches combine sets of variants within a gene into a single burden score that is then tested for association. Typically, a range of burden scores are calculated and tested across a range of annotation classes and frequency bins. Correlation between these tests can complicate the multiple testing correction and hamper interpretation of the results. We introduce a method called the sparse burden association test (SBAT) that tests the joint set of burden scores under the assumption that causal burden scores act in the same effect direction. The method simultaneously assesses the significance of the model fit and selects the set of burden scores that best explain the association at the same time. Using simulated data, we show that the method is well calibrated and highlight scenarios where the test outperforms existing gene-based tests. We apply the method to 73 quantitative traits from the UK Biobank, showing that SBAT is a valuable additional gene-based test when combined with other existing approaches. This test is implemented in the REGENIE software. Gene-based burden tests are commonly used in exome-wide association studies. We introduce SBAT (sparse burden association test), which jointly models a set of burden scores under the assumption that the causal burden scores act in the same effect direction. We apply SBAT to 73 quantitative traits in the UK Biobank. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00029297
Volume :
111
Issue :
10
Database :
Academic Search Index
Journal :
American Journal of Human Genetics
Publication Type :
Academic Journal
Accession number :
179972260
Full Text :
https://doi.org/10.1016/j.ajhg.2024.08.021