Allele-Level KIR Genotyping of More Than a Million Samples: Workflow, Algorithm, and Observations

Ines Wagner(Deutsche Knochenmarkspenderdatei), Daniel Schefzyk(Deutsche Knochenmarkspenderdatei), Jens Pruschke(Deutsche Knochenmarkspenderdatei), Gerhard Schöfl(Deutsche Knochenmarkspenderdatei), Bianca Schöne(Deutsche Knochenmarkspenderdatei), Nicole Gruber(Deutsche Knochenmarkspenderdatei), Kathrin Lang(Deutsche Knochenmarkspenderdatei), Jan A. Hofmann(Deutsche Knochenmarkspenderdatei), Christine Gnahm(Deutsche Knochenmarkspenderdatei), Bianca Heyn(Deutsche Knochenmarkspenderdatei), Wesley M. Marin(University of California, San Francisco), Ravi Dandekar(University of California, San Francisco), Jill A. Hollenbach(University of California, San Francisco), Johannes Schetelig(TU Dresden), Julia Pingel(Deutsche Knochenmarkspenderdatei), Paul J. Norman(University of Colorado Anschutz Medical Campus), Jürgen Sauter(Deutsche Knochenmarkspenderdatei), Alexander H. Schmidt(Deutsche Knochenmarkspenderdatei), Vinzenz Lange(Deutsche Knochenmarkspenderdatei)
Frontiers in Immunology
December 4, 2018
Cited by 78Open Access
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Abstract

The killer-cell immunoglobulin-like receptor (KIR) genes regulate natural killer cell activity, influencing predisposition to immune mediated disease, and affecting hematopoietic stem cell transplantation outcome. Owing to the complexity of the KIR locus, with extensive gene copy number variation and allelic diversity, high-resolution characterization of KIR has so far been applied only to relatively small cohorts. Here, we present a comprehensive high-throughput KIR genotyping approach based on next generation sequencing. Through PCR amplification of specific exons, our approach delivers both copy numbers of the individual genes and allelic information for every KIR gene. Ten-fold replicate analysis of a set of 190 samples revealed a precision of 99.9%. Genotyping of an independent set of 360 samples resulted in an accuracy of more than 99% taking into account consistent copy number prediction. We applied the workflow to genotype 1.8 million stem cell donor registry samples. We report on the observed KIR allele diversity and relative abundance of alleles based on a subset of more than 300,000 samples. Furthermore we identified more than 2,000 previously unreported KIR variants repeatedly in independent samples, underscoring the large diversity of the KIR region that awaits discovery. This cost-efficient high-resolution KIR genotyping approach is now applied to samples of volunteers registering as potential donors for hematopoietic stem cell transplantation. This will facilitate the utilization of KIR as additional selection criterion to improve unrelated donor stem cell transplantation outcome. In addition, the approach may serve studies requiring high-resolution KIR genotyping, like population genetics and disease association studies.


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