Prediction of individual genetic risk to disease from genome-wide association studies

  1. Naomi R. Wray1,4,
  2. Michael E. Goddard2,3, and
  3. Peter M. Visscher1
  1. 1 Genetic Epidemiology, Queensland Institute of Medical Research, Queensland 4029, Brisbane, Australia;
  2. 2 Faculty of Land and Food Resources, University of Melbourne, Victoria 3010, Australia;
  3. 3 Department of Primary Industries, Victoria 3049, Australia

Abstract

Empirical studies suggest that the effect sizes of individual causal risk alleles underlying complex genetic diseases are small, with most genotype relative risks in the range of 1.1–2.0. Although the increased risk of disease for a carrier is small for any single locus, knowledge of multiple-risk alleles throughout the genome could allow the identification of individuals that are at high risk. In this study, we investigate the number and effect size of risk loci that underlie complex disease constrained by the disease parameters of prevalence and heritability. Then we quantify the value of prediction of genetic risk to disease using a range of realistic combinations of the number, size, and distribution of risk effects that underlie complex diseases. We propose an approach to assess the genetic risk of a disease in healthy individuals, based on dense genome-wide SNP panels. We test this approach using simulation. When the number of loci contributing to the disease is >50, a large case-control study is needed to identify a set of risk loci for use in predicting the disease risk of healthy people not included in the case-control study. For diseases controlled by 1000 loci of mean relative risk of only 1.04, a case-control study with 10,000 cases and controls can lead to selection of ∼75 loci that explain >50% of the genetic variance. The 5% of people with the highest predicted risk are three to seven times more likely to suffer the disease than the population average, depending on heritability and disease prevalence. Whether an individual with known genetic risk develops the disease depends on known and unknown environmental factors.

Footnotes

  • 4 Corresponding author.

    4 E-mail Naomi.Wray{at}qimr.edu.au; fax 61-7-3362-0101.

  • Article published online before print. Article and publication date are at http://www.genome.org/cgi/doi/10.1101/gr.6665407

    • Received May 2, 2007.
    • Accepted July 19, 2007.
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