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MagicalRsq-X: A cross-cohort transferable genotype imputation quality metric

  • Quan Sun
  • , Yingxi Yang
  • , Jonathan D. Rosen
  • , Jiawen Chen
  • , Xihao Li
  • , Wyliena Guan
  • , Min Zhi Jiang
  • , Jia Wen
  • , Rhonda G. Pace
  • , Scott M. Blackman
  • , Michael J. Bamshad
  • , Ronald L. Gibson
  • , Garry R. Cutting
  • , Wanda K. O'Neal
  • , Michael R. Knowles
  • , Charles Kooperberg
  • , Alexander P. Reiner
  • , Laura M. Raffield
  • , April P. Carson
  • , Stephen S. Rich
  • Jerome I. Rotter, Ruth J.F. Loos, Eimear Kenny, Byron C. Jaeger, Yuan I. Min, Christian Fuchsberger, Yun Li

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Since genotype imputation was introduced, researchers have been relying on the estimated imputation quality from imputation software to perform post-imputation quality control (QC). However, this quality estimate (denoted as Rsq) performs less well for lower-frequency variants. We recently published MagicalRsq, a machine-learning-based imputation quality calibration, which leverages additional typed markers from the same cohort and outperforms Rsq as a QC metric. In this work, we extended the original MagicalRsq to allow cross-cohort model training and named the new model MagicalRsq-X. We removed the cohort-specific estimated minor allele frequency and included linkage disequilibrium scores and recombination rates as additional features. Leveraging whole-genome sequencing data from TOPMed, specifically participants in the BioMe, JHS, WHI, and MESA studies, we performed comprehensive cross-cohort evaluations for predominantly European and African ancestral individuals based on their inferred global ancestry with the 1000 Genomes and Human Genome Diversity Project data as reference. Our results suggest MagicalRsq-X outperforms Rsq in almost every setting, with 7.3%–14.4% improvement in squared Pearson correlation with true R2, corresponding to 85–218 K variant gains. We further developed a metric to quantify the genetic distances of a target cohort relative to a reference cohort and showed that such metric largely explained the performance of MagicalRsq-X models. Finally, we found MagicalRsq-X saved up to 53 known genome-wide significant variants in one of the largest blood cell trait GWASs that would be missed using the original Rsq for QC. In conclusion, MagicalRsq-X shows superiority for post-imputation QC and benefits genetic studies by distinguishing well and poorly imputed lower-frequency variants.

Original languageEnglish
Pages (from-to)990-995
Number of pages6
JournalAmerican Journal of Human Genetics
Volume111
Issue number5
DOIs
StatePublished - 2 May 2024

Keywords

  • cross-cohort
  • genome-wide association studies
  • genotype imputation
  • imputation quality
  • machine learning
  • quality control
  • rare variants
  • variant filtering
  • whole-genome sequencing

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