High-accuracy imputation for HLA class I and II genes based on high-resolution SNP data of population-specific references
Statistical imputation of classical human leukocyte antigen ( HLA ) alleles is becoming an indispensable tool for fine-mappings of disease association signals from case–control genome-wide association studies. However, most currently available HLA imputation tools are based on European reference pop...
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Veröffentlicht in: | The pharmacogenomics journal 2015-12, Vol.15 (6), p.530-537 |
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Sprache: | eng |
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Zusammenfassung: | Statistical imputation of classical human leukocyte antigen (
HLA
) alleles is becoming an indispensable tool for fine-mappings of disease association signals from case–control genome-wide association studies. However, most currently available
HLA
imputation tools are based on European reference populations and are not suitable for direct application to non-European populations. Among the
HLA
imputation tools, The HIBAG R package is a flexible
HLA
imputation tool that is equipped with a wide range of population-based classifiers; moreover, HIBAG R enables individual researchers to build custom classifiers. Here, two data sets, each comprising data from healthy Japanese individuals of difference sample sizes, were used to build custom classifiers.
HLA
imputation accuracy in five
HLA
classes (
HLA-A
,
HLA-B
,
HLA-DRB1
,
HLA-DQB1
and
HLA-DPB1
) increased from the 82.5–98.8% obtained with the original HIBAG references to 95.2–99.5% with our custom classifiers. A call threshold (CT) of 0.4 is recommended for our Japanese classifiers; in contrast, HIBAG references recommend a CT of 0.5. Finally, our classifiers could be used to identify the risk haplotypes for Japanese narcolepsy with cataplexy,
HLA-DRB1*15:01
and
HLA-DQB1*06:02
, with 100% and 99.7% accuracy, respectively; therefore, these classifiers can be used to supplement the current lack of
HLA
genotyping data in widely available genome-wide association study data sets. |
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ISSN: | 1470-269X 1473-1150 |
DOI: | 10.1038/tpj.2015.4 |