Genotype imputation from low-coverage data for medical and population genetic analyses

  1. Toomas Kivisild1,7
  1. 1Department of Human Genetics, KU Leuven, Leuven 3000, Belgium;
  2. 2Department of Archaeology and Museology, Masaryk University, 662 43 Brno, Czech Republic;
  3. 3Center of Molecular Medicine, Central European Institute of Technology, Masaryk University, 662 43 Brno, Czech Republic;
  4. 4Center for Human Genetics, University Hospitals Leuven, University of Leuven, Leuven 3000, Belgium;
  5. 5Laboratory of Neurobiology, Neuroscience Department, KU Leuven, Leuven 3000, Belgium;
  6. 6Neurology Department, University Hospitals Leuven, Leuven 3000, Belgium;
  7. 7Estonian Biocentre, Institute of Genomics, University of Tartu, Tartu 51010, Estonia
  • Corresponding author: toomas.kivisild{at}kuleuven.be
  • Abstract

    Genotype imputation from low-pass sequencing data presents unique opportunities for genomic analyses but comes with specific challenges. In this study, we explore the impact of quality filters on genetic ancestry and Polygenic Score (PGS) estimation after imputing 32,769 low-pass genome-wide sequences (LPS) from noninvasive prenatal screening (NIPS) with an average autosomal sequence depth of ∼0.15×. In studies involving ultra-low coverage sequences, conventional approaches to secure genotype accuracy may fail, especially when multiple samples are pooled. To enhance the proportion of high-quality genotypes in large data sets, we introduce a filtering approach called GDI that combines genotype probability (GP), alternate allele dosage (DS), and INFO score filters. We demonstrate that the imputation tools QUILT and GLIMPSE2 achieve similar accuracy, which is high enough for broad-scale ancestry mapping but insufficient for high resolution principal component analysis (PCA), when applied without filters. With the GDI approach, we can achieve quality that is adequate for such purposes. Furthermore, we explored the impact of imputation errors, choice of variants, and filtering methods on PGS prediction for height in 1911 subjects with height data. We show that polygenic scores predict 23.7% of variance in height in our imputed data and that, contrary to the effect on PCA, the GDI filter does not improve the performance of PGS in height prediction. These results highlight that imputed LPS data can be leveraged for further biomedical and population genetic use, but there is a need to consider each downstream analysis tool individually for its imputation quality thresholds and filtering requirements.

    Footnotes

    • [Supplemental material is available for this article.]

    • Article published online before print. Article, supplemental material, and publication date are at https://www.genome.org/cgi/doi/10.1101/gr.280175.124.

    • Freely available online through the Genome Research Open Access option.

    • Received October 29, 2024.
    • Accepted July 16, 2025.

    This article, published in Genome Research, is available under a Creative Commons License (Attribution 4.0 International), as described at http://creativecommons.org/licenses/by/4.0/.

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