PLoS Genetics (May 2013)

Imputation-based meta-analysis of severe malaria in three African populations.

  • Gavin Band,
  • Quang Si Le,
  • Luke Jostins,
  • Matti Pirinen,
  • Katja Kivinen,
  • Muminatou Jallow,
  • Fatoumatta Sisay-Joof,
  • Kalifa Bojang,
  • Margaret Pinder,
  • Giorgio Sirugo,
  • David J Conway,
  • Vysaul Nyirongo,
  • David Kachala,
  • Malcolm Molyneux,
  • Terrie Taylor,
  • Carolyne Ndila,
  • Norbert Peshu,
  • Kevin Marsh,
  • Thomas N Williams,
  • Daniel Alcock,
  • Robert Andrews,
  • Sarah Edkins,
  • Emma Gray,
  • Christina Hubbart,
  • Anna Jeffreys,
  • Kate Rowlands,
  • Kathrin Schuldt,
  • Taane G Clark,
  • Kerrin S Small,
  • Yik Ying Teo,
  • Dominic P Kwiatkowski,
  • Kirk A Rockett,
  • Jeffrey C Barrett,
  • Chris C A Spencer,
  • Malaria Genomic Epidemiology Network,
  • Malaria Genomic Epidemiological Network

DOI
https://doi.org/10.1371/journal.pgen.1003509
Journal volume & issue
Vol. 9, no. 5
p. e1003509

Abstract

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Combining data from genome-wide association studies (GWAS) conducted at different locations, using genotype imputation and fixed-effects meta-analysis, has been a powerful approach for dissecting complex disease genetics in populations of European ancestry. Here we investigate the feasibility of applying the same approach in Africa, where genetic diversity, both within and between populations, is far more extensive. We analyse genome-wide data from approximately 5,000 individuals with severe malaria and 7,000 population controls from three different locations in Africa. Our results show that the standard approach is well powered to detect known malaria susceptibility loci when sample sizes are large, and that modern methods for association analysis can control the potential confounding effects of population structure. We show that pattern of association around the haemoglobin S allele differs substantially across populations due to differences in haplotype structure. Motivated by these observations we consider new approaches to association analysis that might prove valuable for multicentre GWAS in Africa: we relax the assumptions of SNP-based fixed effect analysis; we apply Bayesian approaches to allow for heterogeneity in the effect of an allele on risk across studies; and we introduce a region-based test to allow for heterogeneity in the location of causal alleles.