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Activity Number: 415 - Recent advancements in the analysis of large-scale GWAS
Type: Contributed
Date/Time: Thursday, August 12, 2021 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics in Genomics and Genetics
Abstract #318339
Title: Knowledge Transfer with False Negative Control Improves the Accuracy of Polygenic Prediction
Author(s): Yifei Hu* and Xinge Jessie Jeng
Companies: North Carolina State University and North Carolina State University
Keywords: False Negative Control; Polygenic Prediction; Large scale hypothesis testing; Transfer learning
Abstract:

It is known that genetic liability is the single largest contributor to phenotypic variation. However, predicting complex disease risk based on whole-genome data is methodologically challenging due to limited detection power for individual signal variants that have small effect sizes. Existing methods typically explain only a small fraction of trait variance. In this paper, we propose a new dimension reduction method based on false negative control to facilitate powerful polygenic prediction. By utilizing high-quality, out-of-sample GWAS summary statistics, we are able to effectively remove variants that are not functionally relevant and transfer the knowledge to perform more efficient joint modeling using the target data. Although the target data with individual genotype and phenotype measures may have a limited sample size, the proposed method, using both the target data and the out-of-sample summary statistics, can facilitate more powerful and accurate polygenic prediction.


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