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Scalable probabilistic PCA for large-scale genetic variation data.

Aman AgrawalAlec M ChiuMinh LeEran HalperinSriram Sankararaman
Published in: PLoS genetics (2020)
Principal component analysis (PCA) is a key tool for understanding population structure and controlling for population stratification in genome-wide association studies (GWAS). With the advent of large-scale datasets of genetic variation, there is a need for methods that can compute principal components (PCs) with scalable computational and memory requirements. We present ProPCA, a highly scalable method based on a probabilistic generative model, which computes the top PCs on genetic variation data efficiently. We applied ProPCA to compute the top five PCs on genotype data from the UK Biobank, consisting of 488,363 individuals and 146,671 SNPs, in about thirty minutes. To illustrate the utility of computing PCs in large samples, we leveraged the population structure inferred by ProPCA within White British individuals in the UK Biobank to identify several novel genome-wide signals of recent putative selection including missense mutations in RPGRIP1L and TLR4.
Keyphrases
  • genome wide
  • genome wide association
  • electronic health record
  • big data
  • dna methylation
  • immune response
  • toll like receptor
  • gene expression
  • cross sectional
  • machine learning
  • deep learning