Affiliation:
1. School of Statistics University of Minnesota Minneapolis Minnesota USA
2. Division of Biostatistics and Health Data Science School of Public Health, University of Minnesota Minneapolis Minnesota USA
Abstract
Recently a nonparametric method called LS‐imputation has been proposed for large‐scale trait imputation based on a GWAS summary dataset and a large set of genotyped individuals. The imputed trait values, along with the genotypes, can be treated as an individual‐level dataset for downstream genetic analyses, including those that cannot be done with GWAS summary data. However, since the covariance matrix of the imputed trait values is often too large to calculate, the current method imposes a working assumption that the imputed trait values are identically and independently distributed, which is incorrect in truth. Here we propose a “divide and conquer/combine” strategy to estimate and account for the covariance matrix of the imputed trait values via batches, thus relaxing the incorrect working assumption. Applications of the methods to the UK Biobank data for marginal association analysis showed some improvement by the new method in some cases, but overall the original method performed well, which was explained by nearly constant variances of and mostly weak correlations among imputed trait values.
Funder
National Institutes of Health
Subject
Statistics and Probability,Epidemiology