Centre for Neural Engineering, The University of Melbourne, Melbourne, VIC, Australia.
Department of Medicine (Royal Melbourne Hospital), The University of Melbourne, Melbourne, VIC, Australia.
Eur J Hum Genet. 2020 Dec;28(12):1743-1752. doi: 10.1038/s41431-020-0700-2. Epub 2020 Jul 30.
Human Leucocyte Antigen (HLA) testing is useful in the clinical work-up of coeliac disease (CD) with high negative but low positive predictive value. We construct a genomic risk score (GRS) using HLA risk genotypes to improve CD prediction and guide exclusion criteria. Imputed HLA genotypes for five European CD case-control GWAS (n > 15,000) were used to construct and validate an interpretable HLA-based risk model (HDQ), which shows statistically significant improvements in predictive performance upon all previous HLA-based risk models. Conditioning on this model, we find two novel associations, HLA-DQ6.2 and HLA-DQ7.3, that interact significantly with HLA-DQ2.5 (p = 2.51 × 10, 1.99 × 10, respectively). Integrating these novel alleles into a new risk model (HDQ) leads to predictive performance equivalent or better than the strongest reported GRS (GRS) using 228 single nucleotide polymorphisms (SNPs). We also demonstrate that our proposed HLA-based models can be implemented using only six HLA tagging SNPs with statistically equivalent predictive performance. Using insights from our model to guide exclusionary criteria, we find the positive predictive value of CD testing in high-risk populations can be increased by 55%, from 17.5 to 27.1%, while maintaining a negative predictive value above 99%. Our results suggest that HLA typing is currently undervalued in CD assessment.
人类白细胞抗原 (HLA) 检测在乳糜泻 (CD) 的临床评估中很有用,其阴性预测值高,但阳性预测值低。我们使用 HLA 风险基因型构建基因组风险评分 (GRS),以提高 CD 预测能力并指导排除标准。使用五个欧洲 CD 病例对照 GWAS 的 HLA 基因型推断数据构建并验证了一种可解释的 HLA 风险模型 (HDQ),该模型在所有以前基于 HLA 的风险模型上均显示出统计学上显著的预测性能提升。在该模型的基础上,我们发现了两个新的关联,HLA-DQ6.2 和 HLA-DQ7.3,它们与 HLA-DQ2.5 显著相互作用(p 值分别为 2.51×10-5 和 1.99×10-5)。将这些新的等位基因整合到一个新的风险模型 (HDQ) 中,可提高预测性能,与使用 228 个单核苷酸多态性 (SNP) 的最强报告 GRS(GRS)相当或更好。我们还证明,仅使用六个 HLA 标记 SNP 就可以实现我们提出的基于 HLA 的模型,其预测性能具有统计学等效性。利用我们模型的见解来指导排除标准,我们发现高危人群中 CD 检测的阳性预测值可以从 17.5%提高到 27.1%,而保持 99%以上的阴性预测值。我们的结果表明,HLA 分型在 CD 评估中目前被低估。