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Measuring missing heritability: Inferring the contribution of common variants

Author(s)
Golan, David; Rosset, Saharon; Lander, Eric Steven
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Abstract
Genome-wide association studies (GWASs), also called common variant association studies (CVASs), have uncovered thousands of genetic variants associated with hundreds of diseases. However, the variants that reach statistical significance typically explain only a small fraction of the heritability. One explanation for the “missing heritability” is that there are many additional disease-associated common variants whose effects are too small to detect with current sample sizes. It therefore is useful to have methods to quantify the heritability due to common variation, without having to identify all causal variants. Recent studies applied restricted maximum likelihood (REML) estimation to case–control studies for diseases. Here, we show that REML considerably underestimates the fraction of heritability due to common variation in this setting. The degree of underestimation increases with the rarity of disease, the heritability of the disease, and the size of the sample. Instead, we develop a general framework for heritability estimation, called phenotype correlation–genotype correlation (PCGC) regression, which generalizes the well-known Haseman–Elston regression method. We show that PCGC regression yields unbiased estimates. Applying PCGC regression to six diseases, we estimate the proportion of the phenotypic variance due to common variants to range from 25% to 56% and the proportion of heritability due to common variants from 41% to 68% (mean 60%). These results suggest that common variants may explain at least half the heritability for many diseases. PCGC regression also is readily applicable to other settings, including analyzing extreme-phenotype studies and adjusting for covariates such as sex, age, and population structure.
Date issued
2014-11
URI
http://hdl.handle.net/1721.1/97248
Department
Massachusetts Institute of Technology. Department of Biology
Journal
Proceedings of the National Academy of Sciences
Publisher
National Academy of Sciences (U.S.)
Citation
Golan, David, Eric S. Lander, and Saharon Rosset. “Measuring Missing Heritability: Inferring the Contribution of Common Variants.” Proceedings of the National Academy of Sciences 111, no. 49 (November 24, 2014): E5272–E5281.
Version: Final published version
ISSN
0027-8424
1091-6490

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