Univariate MiXeR
Using software provided by the authors, I ran univariate MiXeR1 on the Johnston et al multsite pain summary statistics2.
As recommended by the MiXeR authors, I ran MiXeR 20 times using 20 different subsets of the reference panel of genetic variants. This serves as a form of bootstrapping.
The table below lists the key MiXeR output parameters:
| Parameter | Value |
|---|---|
| pi (mean) | 0.003899 |
| pi (std) | 0.0001094 |
| sig2_beta (mean) | 8.855e-06 |
| sig2_beta (std) | 2.317e-07 |
| sig2_zero (mean) | 1.128 |
| sig2_zero (std) | 0.003001 |
| h2 (mean) | 0.07158 |
| h2 (std) | 0.0008682 |
| nc@p9 (mean) | 12430 |
| nc@p9 (std) | 349 |
| AIC | 84.84 |
| BIC | 94.47 |
A polygenicity score of \(\pi \approx 0.004\) indicates a very polygenic trait. A discoverability score of \(\sigma^2_\beta \approx 8.85\times 10^{-6}\) indicates very small individual genetic effects. Compared to ME/CFS, multisite pain appears to be determined by more genetic variants, each of which has a smaller genetic effect.
As befits a polygenic trait with weak effects, a very large sample size would be required to explain a significant proportion of SNP heritability. This is illustrated by the power plot:
The QQ-plot suggests a good fit between the Mixer model and the multi-site pain GWAS data:
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Dominic Holland, Oleksandr Frei, Rahul Desikan, Chun-Chieh Fan, Alexey A Shadrin, Olav B Smeland, Vijay S Sundar, Paul Thompson, Ole A Andreassen, and Anders M Dale. Beyond snp heritability: polygenicity and discoverability of phenotypes estimated with a univariate gaussian mixture model. PLoS Genetics, 16(5):e1008612, 2020. URL: https://journals.plos.org/plosgenetics/article?id=10.1371/journal.pgen.1008612. ↩
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Keira JA Johnston, Mark J Adams, Barbara I Nicholl, Joey Ward, Rona J Strawbridge, Amy Ferguson, Andrew M McIntosh, Mark ES Bailey, and Daniel J Smith. Genome-wide association study of multisite chronic pain in UK Biobank. PLoS Genetics, 15(6):e1008164, 2019. URL: https://journals.plos.org/plosgenetics/article?id=10.1371/journal.pgen.1008164. ↩

