Genotype imputation accuracy and the quality metrics of the minor ancestry in multi-ancestry reference panels

Author:

Shi MingyangORCID,Tanikawa Chizu,Munter Hans Markus,Akiyama Masato,Koyama Satoshi,Tomizuka Kohei,Matsuda Koichi,Lathrop Gregory Mark,Terao Chikashi,Koido MasaruORCID,Kamatani YoichiroORCID

Abstract

AbstractLarge-scale imputation reference panels are now available and have contributed to efficient genome-wide association studies through genotype imputation. However, it is still under debate whether large-size multi-ancestry or small-size population-specific reference panels are the optimal choices for under-represented populations. We imputed genotypes of East Asian (EAS; 180k Japanese) subjects using the Trans-Omics for Precision Medicine (TOPMed) reference panel and found that the standard imputation quality metric (Rsq) substantially overestimated the dosage r2(squared correlation between imputed dosage and true genotype). Variance component analysis of Rsq revealed that the increased imputed-genotype certainty (dosages closer to 0, 1, or 2) caused upward bias, indicating some systemic bias in the imputation. Through systematic simulations using different template switching rates (θ value) in the hidden Markov model, we uncovered that the lower θ value increased the imputed-genotype certainty and Rsq; however, dosage r2was insensitive to the θ value, thereby causing a deviation. In simulated reference panels with different sizes and ancestral diversities, the θ value estimates from Minimac decreased with the size of a single ancestry and increased with the ancestral diversity. Thus, Rsq could overestimate or underestimate dosage r2for a subpopulation in the multi-ancestry panel and the deviation represents different imputed-dosage distributions. Finally, despite the impact of θ value, distant ancestries in the reference panel contributed only a few additional variants passing a predefined Rsq threshold. We conclude that the θ value has a substantial impact on the imputed dosage and the imputation quality metric value.

Publisher

Cold Spring Harbor Laboratory

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