Publication | Open Access
Efficiently controlling for case-control imbalance and sample relatedness in large-scale genetic association studies
128
Citations
44
References
2017
Year
Unknown Venue
Case-control ImbalanceGeneticsGenetic EpidemiologyGenetic FoundationGenome-wide Association StudiesClinical GeneticsGenome-wide Association StudyGenetic AnalysisGenotype-phenotype AssociationComputational GenomicsStatistical ComputingBiostatisticsSample SizeWhole Genome StudiesPublic HealthStatisticsPersonal GenomicsQuantitative GeneticsMixed ModelStatistical GeneticsPopulation GeneticsBioinformaticsLinear Mixed ModelMedicineSample Relatedness
Abstract In genome-wide association studies (GWAS) for thousands of phenotypes in large biobanks, most binary traits have substantially fewer cases than controls. Both of the widely used approaches, linear mixed model and the recently proposed logistic mixed model, perform poorly – producing large type I error rates – in the analysis of phenotypes with unbalanced case-control ratios. Here we propose a scalable and accurate generalized mixed model association test that uses the saddlepoint approximation (SPA) to calibrate the distribution of score test statistics. This method, SAIGE, provides accurate p-values even when case-control ratios are extremely unbalanced. It utilizes state-of-art optimization strategies to reduce computational time and memory cost of generalized mixed model. The computation cost linearly depends on sample size, and hence can be applicable to GWAS for thousands of phenotypes by large biobanks. Through the analysis of UK Biobank data of 408,961 white British European-ancestry samples for >1400 binary phenotypes, we show that SAIGE can efficiently analyze large sample data, controlling for unbalanced case-control ratios and sample relatedness.
| Year | Citations | |
|---|---|---|
Page 1
Page 1