“Overcoming Attenuation Bias in Regressions Using Polygenic Indices”, 2023-07-25 ():
Measurement error in polygenic indices (PGIs) attenuates the estimation of their effects in regression models. We analyze and compare two approaches addressing this attenuation bias: Obviously Related Instrumental Variables (ORIV) and the PGI Repository Correction (PGI-RC).
Through simulations, we show that:
the PGI-RC performs slightly better than ORIV, unless the prediction sample is very small (n < 1000) or when there is considerable assortative mating. Within families, ORIV is the best choice since the PGI-RC correction factor is generally not available.
We verify the empirical validity of the simulations by predicting educational attainment and height in a sample of siblings from the UK Biobank.
We show that applying ORIV between families increases the standardized effect of the PGI by 12% (height) and by 22% (educational attainment) compared to a meta-analysis-based PGI, yet estimates remain slightly below the PGI-RC estimates. Furthermore, within-family ORIV regression provides the tightest lower bound for the direct genetic effect, increasing the lower bound for the standardized direct genetic effect on educational attainment 0.14 → 0.18 (+29%), and for height 0.54 → 0.61 (+13%) compared to a meta-analysis-based PGI.