Estimating heritability explained by local ancestry and evaluating stratification bias in admixture mapping from summary statistics

bioRxiv : the preprint server for biology(2023)

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摘要
The heritability explained by local ancestry markers in an admixed population (h27) provides crucial insight into the genetic architecture of a complex disease or trait. Estimation of h27 can be susceptible to biases due to population structure in ancestral populations. Here, we present heritability estimation from admixture mapping summary statistics (HAMSTA), an approach that uses summary statistics from admixture mapping to infer heritability explained by local ancestry while adjusting for biases due to ancestral stratification. Through extensive simulations, we demonstrate that HAMSTA h27 estimates are approximately unbiased and are robust to ancestral stratification compared to existing approaches. In the presence of ancestral stratification, we show a HAMSTA-derived sampling scheme provides a calibrated family-wise error rate (FWER) of -5% for admixture mapping, unlike existing FWER estimation approaches. We apply HAMSTA to 20 quantitative phenotypes of up to 15,988 self-reported African American individuals in the Population Architecture 7 in the 20 phenotypes range from 0.0025 to 0.033 (mean hb2 using Genomics and Epidemiology (PAGE) study. We observe hb2 7 0.012 +/- 9.2 3 10-4), which translates to hb2 ranging from 0.062 to 0.85 (mean hb2 1/4 0.30 +/- 0.023). Across these phenotypes we find little evidence of inflation due to ancestral population stratification in current admixture mapping studies (mean inflation factor of 0.99 +/- 0.001). Overall, HAMSTA provides a fast and powerful approach to estimate genome-wide heritability and evaluate biases in test statistics of admixture mapping studies. 1/4
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关键词
local ancestry,heritability,stratification bias,admixture mapping
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